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		<title>Sensors: Biosensors: Sensors in Biomechanics and Biomedicine</title>
		<link>http://www.mdpi.com/journal/sensors/special_issues/biomech_biomed/</link>
		<description>Dear Colleagues,   In recent years, there has developed a considerable research interest in  biomechanical and biomedical sensors and their inherent information  processing techniques. This has led to many innovative applications in  biomedicine and biomedical engineering. Such developments have also  created exciting opportunities for solving a variety of complex problems  in healthcare. The aim of this special issue is to present recent  research findings on developments in the application of sensor-  technologies to healthcare and human performance. In particular, the  special issue will report on various sensor applications for measuring  either the whole body or individual limbs. Authors are encouraged to  submit manuscripts for publication on the following (but not limited to)  areas:

Biosensors, sensor design, sensor fusion for improved diagnosis
Biomechanical sensors for health, human performance and biometrics
Smart sensors
Sensor signals and associated signal processing

Application areas (but not limited to):

Disease diagnosis e.g. Cardiovascular, neurological, musculoskeletal,  gait, sleep apnea
Ageing healthcare e.g. Falls and injury prevention, stroke,  Parkinson’s disease, dementia
Patient tracking and monitoring
Movement analysis and sports performance
Human computer interface

Prof. Dr. Rezaul K. Begg  Guest Editor{snippet name="submission_info"}</description>
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	<item rdf:about="http://www.mdpi.com/1424-8220/11/5/4943/">
	<title>Sensors, Vol. 11, Pages 4943-4971: Commercialisation of CMOS Integrated Circuit Technology in Multi-Electrode Arrays for Neuroscience and Cell-Based Biosensors</title>
	<link>http://www.mdpi.com/1424-8220/11/5/4943/</link>
	<description>The adaptation of standard integrated circuit (IC) technology as a transducer in cell-based biosensors in drug discovery pharmacology, neural interface systems and electrophysiology requires electrodes that are electrochemically stable, biocompatible and affordable. Unfortunately, the ubiquitous Complementary Metal Oxide Semiconductor (CMOS) IC technology does not meet the first of these requirements. For devices intended only for research, modification of CMOS by post-processing using cleanroom facilities has been achieved. However, to enable adoption of CMOS as a basis for commercial biosensors, the economies of scale of CMOS fabrication must be maintained by using only low-cost post-processing techniques. This review highlights the methodologies employed in cell-based biosensor design where CMOS-based integrated circuits (ICs) form an integral part of the transducer system. Particular emphasis will be placed on the application of multi-electrode arrays for in vitro neuroscience applications. Identifying suitable IC packaging methods presents further significant challenges when considering specific applications. The various challenges and difficulties are reviewed and some potential solutions are presented.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/5/4943/</guid>
	<pubDate>Wed, 04 May 2011 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-05-04</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>5</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>4943</prism:startingPage>
		<prism:endingPage>4971</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Commercialisation of CMOS Integrated Circuit Technology in Multi-Electrode Arrays for Neuroscience and Cell-Based Biosensors</dc:title>
	<dc:date>2011-05-04</dc:date>
	<dc:identifier>doi: 10.3390/s110504943</dc:identifier>
		<dc:creator>Anthony H. D. Graham</dc:creator>
		<dc:creator>Jon Robbins</dc:creator>
		<dc:creator>Chris R. Bowen</dc:creator>
		<dc:creator>John Taylor</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/4/3545/">
	<title>Sensors, Vol. 11, Pages 3545-3594: A Review of Non-Invasive Techniques to Detect and Predict Localised Muscle Fatigue</title>
	<link>http://www.mdpi.com/1424-8220/11/4/3545/</link>
	<description>Muscle fatigue is an established area of research and various types of muscle fatigue have been investigated in order to fully understand the condition. This paper gives an overview of the various non-invasive techniques available for use in automated fatigue detection, such as mechanomyography, electromyography, near-infrared spectroscopy and ultrasound for both isometric and non-isometric contractions. Various signal analysis methods are compared by illustrating their applicability in real-time settings. This paper will be of interest to researchers who wish to select the most appropriate methodology for research on muscle fatigue detection or prediction, or for the development of devices that can be used in, e.g., sports scenarios to improve performance or prevent injury. To date, research on localised muscle fatigue focuses mainly on the clinical side. There is very little research carried out on the implementation of detecting/predicting fatigue using an autonomous system, although recent research on automating the process of localised muscle fatigue detection/prediction shows promising results.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/4/3545/</guid>
	<pubDate>Thu, 24 Mar 2011 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-03-24</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>4</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>3545</prism:startingPage>
		<prism:endingPage>3594</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Review of Non-Invasive Techniques to Detect and Predict Localised Muscle Fatigue</dc:title>
	<dc:date>2011-03-24</dc:date>
	<dc:identifier>doi: 10.3390/s110403545</dc:identifier>
		<dc:creator>Mohamed R. Al-Mulla</dc:creator>
		<dc:creator>Francisco Sepulveda</dc:creator>
		<dc:creator>Martin Colley</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/2/1489/">
	<title>Sensors, Vol. 11, Pages 1489-1525: Estimating Three-Dimensional Orientation of Human Body Parts by Inertial/Magnetic Sensing</title>
	<link>http://www.mdpi.com/1424-8220/11/2/1489/</link>
	<description>User-worn sensing units composed of inertial and magnetic sensors are becoming increasingly popular in various domains, including biomedical engineering, robotics, virtual reality, where they can also be applied for real-time tracking of the orientation of human body parts in the three-dimensional (3D) space. Although they are a promising choice as wearable sensors under many respects, the inertial and magnetic sensors currently in use offer measuring performance that are critical in order to achieve and maintain accurate 3D-orientation estimates, anytime and anywhere. This paper reviews the main sensor fusion and filtering techniques proposed for accurate inertial/magnetic orientation tracking of human body parts; it also gives useful recipes for their actual implementation.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/2/1489/</guid>
	<pubDate>Wed, 26 Jan 2011 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-01-26</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>2</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>1489</prism:startingPage>
		<prism:endingPage>1525</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Estimating Three-Dimensional Orientation of Human Body Parts by Inertial/Magnetic Sensing</dc:title>
	<dc:date>2011-01-26</dc:date>
	<dc:identifier>doi: 10.3390/s110201489</dc:identifier>
		<dc:creator>Angelo Maria Sabatini</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/2/1277/">
	<title>Sensors, Vol. 11, Pages 1277-1296: Energy-Efficiency Analysis of a Distributed Queuing Medium Access Control Protocol for Biomedical Wireless Sensor Networks in Saturation Conditions</title>
	<link>http://www.mdpi.com/1424-8220/11/2/1277/</link>
	<description>The aging population and the high quality of life expectations in our society lead to the need of more efficient and affordable healthcare solutions. For this reason, this paper aims for the optimization of Medium Access Control (MAC) protocols for biomedical wireless sensor networks or wireless Body Sensor Networks (BSNs). The hereby presented schemes always have in mind the efficient management of channel resources and the overall minimization of sensors’ energy consumption in order to prolong sensors’ battery life. The fact that the IEEE 802.15.4 MAC does not fully satisfy BSN requirements highlights the need for the design of new scalable MAC solutions, which guarantee low-power consumption to the maximum number of body sensors in high density areas (i.e., in saturation conditions). In order to emphasize IEEE 802.15.4 MAC limitations, this article presents a detailed overview of this de facto standard for Wireless Sensor Networks (WSNs), which serves as a link for the introduction and initial description of our here proposed Distributed Queuing (DQ) MAC protocol for BSN scenarios. Within this framework, an extensive DQ MAC energy-consumption analysis in saturation conditions is presented to be able to evaluate its performance in relation to IEEE 802.5.4 MAC in highly dense BSNs. The obtained results show that the proposed scheme outperforms IEEE 802.15.4 MAC in average energy consumption per information bit, thus providing a better overall performance that scales appropriately to BSNs under high traffic conditions. These benefits are obtained by eliminating back-off periods and collisions in data packet transmissions, while minimizing the control overhead.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/2/1277/</guid>
	<pubDate>Tue, 25 Jan 2011 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-01-25</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>2</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>1277</prism:startingPage>
		<prism:endingPage>1296</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Energy-Efficiency Analysis of a Distributed Queuing Medium Access Control Protocol for Biomedical Wireless Sensor Networks in Saturation Conditions</dc:title>
	<dc:date>2011-01-25</dc:date>
	<dc:identifier>doi: 10.3390/s110201277</dc:identifier>
		<dc:creator>Begonya Otal</dc:creator>
		<dc:creator>Luis Alonso</dc:creator>
		<dc:creator>Christos Verikoukis</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/1212/">
	<title>Sensors, Vol. 11, Pages 1212-1228: A New Tissue Resonator Indenter Device and Reliability Study</title>
	<link>http://www.mdpi.com/1424-8220/11/1/1212/</link>
	<description>Knowledge of tissue mechanical properties is widely required by medical applications, such as disease diagnostics, surgery operation, simulation, planning, and training. A new portable device, called Tissue Resonator Indenter Device (TRID), has been developed for measurement of regional viscoelastic properties of soft tissues at the Bio-instrument and Biomechanics Lab of the University of Toronto. As a device for soft tissue properties in-vivo measurements, the reliability of TRID is crucial. This paper presents TRID’s working principle and the experimental study of TRID’s reliability with respect to inter-reliability, intra-reliability, and the indenter misalignment effect as well.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/1212/</guid>
	<pubDate>Thu, 20 Jan 2011 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-01-20</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>1212</prism:startingPage>
		<prism:endingPage>1228</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A New Tissue Resonator Indenter Device and Reliability Study</dc:title>
	<dc:date>2011-01-20</dc:date>
	<dc:identifier>doi: 10.3390/s110101212</dc:identifier>
		<dc:creator>Ming Jia</dc:creator>
		<dc:creator>Jean W. Zu</dc:creator>
		<dc:creator>Alireza Hariri</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/1105/">
	<title>Sensors, Vol. 11, Pages 1105-1176: Advances in Electronic-Nose Technologies Developed for Biomedical Applications</title>
	<link>http://www.mdpi.com/1424-8220/11/1/1105/</link>
	<description>The research and development of new electronic-nose applications in the biomedical field has accelerated at a phenomenal rate over the past 25 years. Many innovative e-nose technologies have provided solutions and applications to a wide variety of complex biomedical and healthcare problems. The purposes of this review are to present a comprehensive analysis of past and recent biomedical research findings and developments of electronic-nose sensor technologies, and to identify current and future potential e-nose applications that will continue to advance the effectiveness and efficiency of biomedical treatments and healthcare services for many years. An abundance of electronic-nose applications has been developed for a variety of healthcare sectors including diagnostics, immunology, pathology, patient recovery, pharmacology, physical therapy, physiology, preventative medicine, remote healthcare, and wound and graft healing. Specific biomedical e-nose applications range from uses in biochemical testing, blood-compatibility evaluations, disease diagnoses, and drug delivery to monitoring of metabolic levels, organ dysfunctions, and patient conditions through telemedicine. This paper summarizes the major electronic-nose technologies developed for healthcare and biomedical applications since the late 1980s when electronic aroma detection technologies were first recognized to be potentially useful in providing effective solutions to problems in the healthcare industry.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/1105/</guid>
	<pubDate>Wed, 19 Jan 2011 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-01-19</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>1105</prism:startingPage>
		<prism:endingPage>1176</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Advances in Electronic-Nose Technologies Developed for Biomedical Applications</dc:title>
	<dc:date>2011-01-19</dc:date>
	<dc:identifier>doi: 10.3390/s110101105</dc:identifier>
		<dc:creator>Alphus D. Wilson</dc:creator>
		<dc:creator>Manuela Baietto</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/638/">
	<title>Sensors, Vol. 11, Pages 638-660: Sensing Movement: Microsensors for Body Motion Measurement</title>
	<link>http://www.mdpi.com/1424-8220/11/1/638/</link>
	<description>Recognition of body posture and motion is an important physiological function that can keep the body in balance. Man-made motion sensors have also been widely applied for a broad array of biomedical applications including diagnosis of balance disorders and evaluation of energy expenditure. This paper reviews the state-of-the-art sensing components utilized for body motion measurement. The anatomy and working principles of a natural body motion sensor, the human vestibular system, are first described. Various man-made inertial sensors are then elaborated based on their distinctive sensing mechanisms. In particular, both the conventional solid-state motion sensors and the emerging non solid-state motion sensors are depicted. With their lower cost and increased intelligence, man-made motion sensors are expected to play an increasingly important role in biomedical systems for basic research as well as clinical diagnostics.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/638/</guid>
	<pubDate>Mon, 10 Jan 2011 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2011-01-10</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>638</prism:startingPage>
		<prism:endingPage>660</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Sensing Movement: Microsensors for Body Motion Measurement</dc:title>
	<dc:date>2011-01-10</dc:date>
	<dc:identifier>doi: 10.3390/s110100638</dc:identifier>
		<dc:creator>Hansong Zeng</dc:creator>
		<dc:creator>Yi Zhao</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/362/">
	<title>Sensors, Vol. 11, Pages 362-383: Inference of the Activity Timeline of Cattle Foraging on a Mediterranean Woodland Using GPS and Pedometry</title>
	<link>http://www.mdpi.com/1424-8220/11/1/362/</link>
	<description>The advent of the Global Positioning System (GPS) has transformed our ability to track livestock on rangelands. However, GPS data use would be greatly enhanced if we could also infer the activity timeline of an animal. We tested how well animal activity could be inferred from data provided by Lotek GPS collars, alone or in conjunction with IceRobotics IceTag pedometers. The collars provide motion and head position data, as well as location. The pedometers count steps, measure activity levels, and differentiate between standing and lying positions. We gathered synchronized data at 5-min resolution, from GPS collars, pedometers, and human observers, for free-grazing cattle (n = 9) at the Hatal Research Station in northern Israel. Equations for inferring activity during 5-min intervals (n = 1,475), classified as Graze, Rest (or Lie and Stand separately), and Travel were derived by discriminant and partition (classification tree) analysis of data from each device separately and from both together. When activity was classified as Graze, Rest and Travel, the lowest overall misclassification rate (10%) was obtained when data from both devices together were subjected to partition analysis; separate misclassification rates were 8, 12, and 3% for Graze, Rest and Travel, respectively. When Rest was subdivided into Lie and Stand, the lowest overall misclassification rate (10%) was again obtained when data from both devices together were subjected to partition analysis; misclassification rates were 6, 1, 26, and 17% for Graze, Lie, Stand, and Travel, respectively. The primary problem was confusion between Rest (or Stand) and Graze. Overall, the combination of Lotek GPS collars with IceRobotics IceTag pedometers was found superior to either device alone in inferring animal activity.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/362/</guid>
	<pubDate>Fri, 31 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-31</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>362</prism:startingPage>
		<prism:endingPage>383</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Inference of the Activity Timeline of Cattle Foraging on a Mediterranean Woodland Using GPS and Pedometry</dc:title>
	<dc:date>2010-12-31</dc:date>
	<dc:identifier>doi: 10.3390/s110100362</dc:identifier>
		<dc:creator>Eugene D. Ungar</dc:creator>
		<dc:creator>Iris Schoenbaum</dc:creator>
		<dc:creator>Zalmen Henkin</dc:creator>
		<dc:creator>Amit Dolev</dc:creator>
		<dc:creator>Yehuda Yehuda</dc:creator>
		<dc:creator>Arieh Brosh</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/310/">
	<title>Sensors, Vol. 11, Pages 310-328: Sensory System for Implementing a Human—Computer Interface Based on Electrooculography</title>
	<link>http://www.mdpi.com/1424-8220/11/1/310/</link>
	<description>This paper describes a sensory system for implementing a human–computer interface based on electrooculography. An acquisition system captures electrooculograms and transmits them via the ZigBee protocol. The data acquired are analysed in real time using a microcontroller-based platform running the Linux operating system. The continuous wavelet transform and neural network are used to process and analyse the signals to obtain highly reliable results in real time. To enhance system usability, the graphical interface is projected onto special eyewear, which is also used to position the signal-capturing electrodes.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/310/</guid>
	<pubDate>Wed, 29 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-29</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>310</prism:startingPage>
		<prism:endingPage>328</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Sensory System for Implementing a Human—Computer Interface Based on Electrooculography</dc:title>
	<dc:date>2010-12-29</dc:date>
	<dc:identifier>doi: 10.3390/s110100310</dc:identifier>
		<dc:creator>Rafael Barea</dc:creator>
		<dc:creator>Luciano Boquete</dc:creator>
		<dc:creator>Jose Manuel Rodriguez-Ascariz</dc:creator>
		<dc:creator>Sergio Ortega</dc:creator>
		<dc:creator>Elena López</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/207/">
	<title>Sensors, Vol. 11, Pages 207-227: Sensing Pressure Distribution on a Lower-Limb Exoskeleton Physical Human-Machine Interface</title>
	<link>http://www.mdpi.com/1424-8220/11/1/207/</link>
	<description>A sensory apparatus to monitor pressure distribution on the physical human-robot interface of lower-limb exoskeletons is presented. We propose a distributed measure of the interaction pressure over the whole contact area between the user and the machine as an alternative measurement method of human-robot interaction. To obtain this measure, an array of newly-developed soft silicone pressure sensors is inserted between the limb and the mechanical interface that connects the robot to the user, in direct contact with the wearer’s skin. Compared to state-of-the-art measures, the advantage of this approach is that it allows for a distributed measure of the interaction pressure, which could be useful for the assessment of safety and comfort of human-robot interaction. This paper presents the new sensor and its characterization, and the development of an interaction measurement apparatus, which is applied to a lower-limb rehabilitation robot. The system is calibrated, and an example its use during a prototypical gait training task is presented.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/207/</guid>
	<pubDate>Tue, 28 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-28</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>207</prism:startingPage>
		<prism:endingPage>227</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Sensing Pressure Distribution on a Lower-Limb Exoskeleton Physical Human-Machine Interface</dc:title>
	<dc:date>2010-12-28</dc:date>
	<dc:identifier>doi: 10.3390/s110100207</dc:identifier>
		<dc:creator>Stefano Marco Maria De Rossi</dc:creator>
		<dc:creator>Nicola Vitiello</dc:creator>
		<dc:creator>Tommaso Lenzi</dc:creator>
		<dc:creator>Renaud Ronsse</dc:creator>
		<dc:creator>Bram Koopman</dc:creator>
		<dc:creator>Alessandro Persichetti</dc:creator>
		<dc:creator>Fabrizio Vecchi</dc:creator>
		<dc:creator>Auke Jan Ijspeert</dc:creator>
		<dc:creator>Herman Van der Kooij</dc:creator>
		<dc:creator>Maria Chiara Carrozza</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/180/">
	<title>Sensors, Vol. 11, Pages 180-206: In Vivo Bioluminescent Imaging (BLI): Noninvasive Visualization and Interrogation of Biological Processes in Living Animals</title>
	<link>http://www.mdpi.com/1424-8220/11/1/180/</link>
	<description>In vivo bioluminescent imaging (BLI) is increasingly being utilized as a method for modern biological research. This process, which involves the noninvasive interrogation of living animals using light emitted from luciferase-expressing bioreporter cells, has been applied to study a wide range of biomolecular functions such as gene function, drug discovery and development, cellular trafficking, protein-protein interactions, and especially tumorigenesis, cancer treatment, and disease progression. This article will review the various bioreporter/biosensor integrations of BLI and discuss how BLI is being applied towards a new visual understanding of biological processes within the living organism.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/180/</guid>
	<pubDate>Tue, 28 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-28</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>180</prism:startingPage>
		<prism:endingPage>206</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>In Vivo Bioluminescent Imaging (BLI): Noninvasive Visualization and Interrogation of Biological Processes in Living Animals</dc:title>
	<dc:date>2010-12-28</dc:date>
	<dc:identifier>doi: 10.3390/s110100180</dc:identifier>
		<dc:creator>Dan M. Close</dc:creator>
		<dc:creator>Tingting Xu</dc:creator>
		<dc:creator>Gary S. Sayler</dc:creator>
		<dc:creator>Steven Ripp</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/11/1/138/">
	<title>Sensors, Vol. 11, Pages 138-161: Biosensors for Brain Trauma and Dual Laser Doppler Flowmetry: Enoxaparin Simultaneously Reduces Stroke-Induced Dopamine and Blood Flow while Enhancing Serotonin and Blood Flow in Motor Neurons of Brain, In Vivo</title>
	<link>http://www.mdpi.com/1424-8220/11/1/138/</link>
	<description>Neuromolecular Imaging (NMI) based on adsorptive electrochemistry, combined with Dual Laser Doppler Flowmetry (LDF) is presented herein to investigate the brain neurochemistry affected by enoxaparin (Lovenox®), an antiplatelet/antithrombotic medication for stroke victims. NMI with miniature biosensors enables neurotransmitter and neuropeptide (NT) imaging; each NT is imaged with a response time in milliseconds. A semiderivative electronic reduction circuit images several NT’s selectively and separately within a response time of minutes. Spatial resolution of NMI biosensors is in the range of nanomicrons and electrochemically-induced current ranges are in pico- and nano-amperes. Simultaneously with NMI, the LDF technology presented herein operates on line by illuminating the living brain, in this example, in dorso-striatal neuroanatomic substrates via a laser sensor with low power laser light containing optical fiber light guides. NMI biotechnology with BRODERICK PROBE® biosensors has a distinct advantage over conventional electrochemical methodologies both in novelty of biosensor formulations and on-line imaging capabilities in the biosensor field. NMI with unique biocompatible biosensors precisely images NT in the body, blood and brain of animals and humans using characteristic experimentally derived half-wave potentials driven by oxidative electron transfer. Enoxaparin is a first line clinical treatment prescribed to halt the progression of acute ischemic stroke (AIS). In the present studies, BRODERICK PROBE® laurate biosensors and LDF laser sensors are placed in dorsal striatum (DStr) dopaminergic motor neurons in basal ganglia of brain in living animals; basal ganglia influence movement disorders such as those correlated with AIS. The purpose of these studies is to understand what is happening in brain neurochemistry and cerebral blood perfusion after causal AIS by middle cerebral artery occlusion in vivo as well as to understand consequent enoxaparin and reperfusion effects actually while enoxaparin is inhibiting blood clots to alleviate AIS symptomatology. This research is directly correlated with the medical and clinical needs of stroke victims. The data are clinically relevant, not only to movement dysfunction but also to the depressive mood that stroke patients often endure. These are the first studies to image brain neurotransmitters while any stroke medications, such as anti-platelet/ anti-thrombotic and/or anti-glycoprotein are working in organ systems to alleviate the debilitating consequences of brain trauma and stroke/brain attacks.</description>
	
	<guid>http://www.mdpi.com/1424-8220/11/1/138/</guid>
	<pubDate>Fri, 24 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-24</prism:publicationDate>
	<prism:volume>11</prism:volume>
	<prism:number>1</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>138</prism:startingPage>
		<prism:endingPage>161</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Biosensors for Brain Trauma and Dual Laser Doppler Flowmetry: Enoxaparin Simultaneously Reduces Stroke-Induced Dopamine and Blood Flow while Enhancing Serotonin and Blood Flow in Motor Neurons of Brain, In Vivo</dc:title>
	<dc:date>2010-12-24</dc:date>
	<dc:identifier>doi: 10.3390/s11010013</dc:identifier>
		<dc:creator>Patricia A. Broderick</dc:creator>
		<dc:creator>Edwin H. Kolodny</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/11556/">
	<title>Sensors, Vol. 10, Pages 11556-11565: The Use of Wearable Inertial Motion Sensors in Human Lower Limb Biomechanics Studies: A Systematic Review</title>
	<link>http://www.mdpi.com/1424-8220/10/12/11556/</link>
	<description>Wearable motion sensors consisting of accelerometers, gyroscopes and magnetic sensors are readily available nowadays. The small size and low production costs of motion sensors make them a very good tool for human motions analysis. However, data processing and accuracy of the collected data are important issues for research purposes. In this paper, we aim to review the literature related to usage of inertial sensors in human lower limb biomechanics studies. A systematic search was done in the following search engines: ISI Web of Knowledge, Medline, SportDiscus and IEEE Xplore. Thirty nine full papers and conference abstracts with related topics were included in this review. The type of sensor involved, data collection methods, study design, validation methods and its applications were reviewed.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/11556/</guid>
	<pubDate>Thu, 16 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-16</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>11556</prism:startingPage>
		<prism:endingPage>11565</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>The Use of Wearable Inertial Motion Sensors in Human Lower Limb Biomechanics Studies: A Systematic Review</dc:title>
	<dc:date>2010-12-16</dc:date>
	<dc:identifier>doi: 10.3390/s101211556</dc:identifier>
		<dc:creator>Daniel Tik-Pui Fong</dc:creator>
		<dc:creator>Yue-Yan Chan</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/11428/">
	<title>Sensors, Vol. 10, Pages 11428-11439: Myocardial Motion Analysis for Determination of Tei-Index of Human Heart</title>
	<link>http://www.mdpi.com/1424-8220/10/12/11428/</link>
	<description>The Tei index, an important indicator of heart function, lacks a direct method to compute because it is difficult to directly evaluate the isovolumic contraction time (ICT) and isovolumic relaxation time (IRT) from which the Tei index can be obtained. In this paper, based on the proposed method of accurately measuring the cardiac cycle physical phase, a direct method of calculating the Tei index is presented. The experiments based on real heart medical images show the effectiveness of this method. Moreover, a new method of calculating left ventricular wall motion amplitude is proposed and the experiments show its satisfactory performance.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/11428/</guid>
	<pubDate>Mon, 13 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-13</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>11428</prism:startingPage>
		<prism:endingPage>11439</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Myocardial Motion Analysis for Determination of Tei-Index of Human Heart</dc:title>
	<dc:date>2010-12-13</dc:date>
	<dc:identifier>doi: 10.3390/s101211428</dc:identifier>
		<dc:creator>Shengyong Chen</dc:creator>
		<dc:creator>Jianhua Zhang</dc:creator>
		<dc:creator>Houxiang Zhang</dc:creator>
		<dc:creator>Qiu Guan</dc:creator>
		<dc:creator>Yahui Du</dc:creator>
		<dc:creator>Chunyan Yao</dc:creator>
		<dc:creator>Jianwei Zhang</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/11100/">
	<title>Sensors, Vol. 10, Pages 11100-11125: Man-Machine Interface System for Neuromuscular Training and Evaluation Based on EMG and MMG Signals</title>
	<link>http://www.mdpi.com/1424-8220/10/12/11100/</link>
	<description>This paper presents the UVa-NTS (University of Valladolid Neuromuscular Training System), a multifunction and portable Neuromuscular Training System. The UVa-NTS is designed to analyze the voluntary control of severe neuromotor handicapped patients, their interactive response, and their adaptation to neuromuscular interface systems, such as neural prostheses or domotic applications. Thus, it is an excellent tool to evaluate the residual muscle capabilities in the handicapped. The UVa-NTS is composed of a custom signal conditioning front-end and a computer. The front-end electronics is described thoroughly as well as the overall features of the custom software implementation. The software system is composed of a set of graphical training tools and a processing core. The UVa-NTS works with two classes of neuromuscular signals: the classic myoelectric signals (MES) and, as a novelty, the myomechanic signals (MMS). In order to evaluate the performance of the processing core, a complete analysis has been done to classify its efficiency and to check that it fulfils with the real-time constraints. Tests were performed both with healthy and selected impaired subjects. The adaptation was achieved rapidly, applying a predefined protocol for the UVa-NTS set of training tools. Fine voluntary control was demonstrated to be reached with the myoelectric signals. And the UVa-NTS demonstrated to provide a satisfactory voluntary control when applying the myomechanic signals.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/11100/</guid>
	<pubDate>Tue, 07 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-07</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>11100</prism:startingPage>
		<prism:endingPage>11125</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Man-Machine Interface System for Neuromuscular Training and Evaluation Based on EMG and MMG Signals</dc:title>
	<dc:date>2010-12-07</dc:date>
	<dc:identifier>doi: 10.3390/s101211100</dc:identifier>
		<dc:creator>Ramon De la Rosa</dc:creator>
		<dc:creator>Alonso Alonso</dc:creator>
		<dc:creator>Albano Carrera</dc:creator>
		<dc:creator>Ramon Durán</dc:creator>
		<dc:creator>Patricia Fernández</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10967/">
	<title>Sensors, Vol. 10, Pages 10967-10985: A Review of Direct Neck Measurement in Occupational Settings</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10967/</link>
	<description>No guidelines are available to orient researchers on the availability and applications of equipment and sensors for recording precise neck movements in occupational settings. In this study reports on direct measurements of neck movements in the workplace were reviewed. Using relevant keywords two independent reviewers searched for eligible studies in the following databases: Cinahal, Cochrane, Embase, Lilacs, PubMed, MEDLINE, PEDro, Scopus and Web of Science. After applying the inclusion criteria, 13 articles on direct neck measurements in occupational settings were retrieved from among 33,666 initial titles. These studies were then methodologically evaluated according to their design characteristics, exposure and outcome assessment, and statistical analysis. The results showed that in most of the studies the three axes of neck movement (flexion-extension, lateral flexion and rotation) were not simultaneously recorded. Deficiencies in available equipment explain this flaw, demonstrating that sensors and systems need to be improved so that a true understanding of real occupational exposure can be achieved. Further studies are also needed to assess neck movement in those who perform heavy-duty work, such as nurses and electricians, since no report about such jobs was identified.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10967/</guid>
	<pubDate>Fri, 03 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-03</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>10967</prism:startingPage>
		<prism:endingPage>10985</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Review of Direct Neck Measurement in Occupational Settings</dc:title>
	<dc:date>2010-12-03</dc:date>
	<dc:identifier>doi: 10.3390/s101210967</dc:identifier>
		<dc:creator>Letícia Carnaz</dc:creator>
		<dc:creator>Mariana V. Batistao</dc:creator>
		<dc:creator>Helenice J. C. Gil Coury</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10896/">
	<title>Sensors, Vol. 10, Pages 10896-10935: Monitoring the Depth of Anaesthesia</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10896/</link>
	<description>One of the current challenges in medicine is monitoring the patients’ depth of general anaesthesia (DGA). Accurate assessment of the depth of anaesthesia contributes to tailoring drug administration to the individual patient, thus preventing awareness or excessive anaesthetic depth and improving patients’ outcomes. In the past decade, there has been a significant increase in the number of studies on the development, comparison and validation of commercial devices that estimate the DGA by analyzing electrical activity of the brain (i.e., evoked potentials or brain waves). In this paper we review the most frequently used sensors and mathematical methods for monitoring the DGA, their validation in clinical practice and discuss the central question of whether these approaches can, compared to other conventional methods, reduce the risk of patient awareness during surgical procedures.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10896/</guid>
	<pubDate>Fri, 03 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-03</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>10896</prism:startingPage>
		<prism:endingPage>10935</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Monitoring the Depth of Anaesthesia</dc:title>
	<dc:date>2010-12-03</dc:date>
	<dc:identifier>doi: 10.3390/s101210896</dc:identifier>
		<dc:creator>Bojan Musizza</dc:creator>
		<dc:creator>Samo Ribaric</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10837/">
	<title>Sensors, Vol. 10, Pages 10837-10862: Detecting Vital Signs with Wearable Wireless Sensors</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10837/</link>
	<description>The emergence of wireless technologies and advancements in on-body sensor design can enable change in the conventional health-care system, replacing it with wearable health-care systems, centred on the individual. Wearable monitoring systems can provide continuous physiological data, as well as better information regarding the general health of individuals. Thus, such vital-sign monitoring systems will reduce health-care costs by disease prevention and enhance the quality of life with disease management. In this paper, recent progress in non-invasive monitoring technologies for chronic disease management is reviewed. In particular, devices and techniques for monitoring blood pressure, blood glucose levels, cardiac activity and respiratory activity are discussed; in addition, on-body propagation issues for multiple sensors are presented.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10837/</guid>
	<pubDate>Thu, 02 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-02</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>10837</prism:startingPage>
		<prism:endingPage>10862</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Detecting Vital Signs with Wearable Wireless Sensors</dc:title>
	<dc:date>2010-12-02</dc:date>
	<dc:identifier>doi: 10.3390/s101210837</dc:identifier>
		<dc:creator>Tuba Yilmaz</dc:creator>
		<dc:creator>Robert Foster</dc:creator>
		<dc:creator>Yang Hao</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10778/">
	<title>Sensors, Vol. 10, Pages 10778-10802: Ultra-Wideband Sensors for Improved Magnetic Resonance Imaging, Cardiovascular Monitoring and Tumour Diagnostics</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10778/</link>
	<description>The specific advantages of ultra-wideband electromagnetic remote sensing (UWB radar) make it a particularly attractive technique for biomedical applications. We partially review our activities in utilizing this novel approach for the benefit of high and ultra-high field magnetic resonance imaging (MRI) and other applications, e.g., for intensive care medicine and biomedical research. We could show that our approach is beneficial for applications like motion tracking for high resolution brain imaging due to the non-contact acquisition of involuntary head motions with high spatial resolution, navigation for cardiac MRI due to our interpretation of the detected physiological mechanical contraction of the heart muscle and for MR safety, since we have investigated the influence of high static magnetic fields on myocardial mechanics. From our findings we could conclude, that UWB radar can serve as a navigator technique for high and ultra-high field magnetic resonance imaging and can be beneficial preserving the high resolution capability of this imaging modality. Furthermore it can potentially be used to support standard ECG analysis by complementary information where sole ECG analysis fails. Further analytical investigations have proven the feasibility of this method for intracranial displacements detection and the rendition of a tumour’s contrast agent based perfusion dynamic. Beside these analytical approaches we have carried out FDTD simulations of a complex arrangement mimicking the illumination of a human torso model incorporating the geometry of the antennas applied.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10778/</guid>
	<pubDate>Thu, 02 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-02</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10778</prism:startingPage>
		<prism:endingPage>10802</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Ultra-Wideband Sensors for Improved Magnetic Resonance Imaging, Cardiovascular Monitoring and Tumour Diagnostics</dc:title>
	<dc:date>2010-12-02</dc:date>
	<dc:identifier>doi: 10.3390/s101210778</dc:identifier>
		<dc:creator>Florian Thiel</dc:creator>
		<dc:creator>Olaf Kosch</dc:creator>
		<dc:creator>Frank Seifert</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10733/">
	<title>Sensors, Vol. 10, Pages 10733-10751: Upper Limb Portable Motion Analysis System Based on Inertial Technology for Neurorehabilitation Purposes</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10733/</link>
	<description>Here an inertial sensor-based monitoring system for measuring and analyzing upper limb movements is presented. The final goal is the integration of this motion-tracking device within a portable rehabilitation system for brain injury patients. A set of four inertial sensors mounted on a special garment worn by the patient provides the quaternions representing the patient upper limb’s orientation in space. A kinematic model is built to estimate 3D upper limb motion for accurate therapeutic evaluation. The human upper limb is represented as a kinematic chain of rigid bodies with three joints and six degrees of freedom. Validation of the system has been performed by co-registration of movements with a commercial optoelectronic tracking system. Successful results are shown that exhibit a high correlation among signals provided by both devices and obtained at the Institut Guttmann Neurorehabilitation Hospital.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10733/</guid>
	<pubDate>Thu, 02 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-02</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10733</prism:startingPage>
		<prism:endingPage>10751</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Upper Limb Portable Motion Analysis System Based on Inertial Technology for Neurorehabilitation Purposes</dc:title>
	<dc:date>2010-12-02</dc:date>
	<dc:identifier>doi: 10.3390/s101210733</dc:identifier>
		<dc:creator>Rodrigo Pérez</dc:creator>
		<dc:creator>Úrsula Costa</dc:creator>
		<dc:creator>Marc Torrent</dc:creator>
		<dc:creator>Javier Solana</dc:creator>
		<dc:creator>Eloy Opisso</dc:creator>
		<dc:creator>César Cáceres</dc:creator>
		<dc:creator>Josep M. Tormos</dc:creator>
		<dc:creator>Josep Medina</dc:creator>
		<dc:creator>Enrique J. Gómez</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10714/">
	<title>Sensors, Vol. 10, Pages 10714-10732: A Low Cost Device for Monitoring the Urine Output of Critical Care Patients</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10714/</link>
	<description>In critical care units most of the patients’ physiological parameters are sensed by commercial monitoring devices. These devices can also supervise whether the values of the parameters lie within a pre-established range set by the clinician. The automation of the sensing and supervision tasks has discharged the healthcare staff of a considerable workload and avoids human errors, which are common in repetitive and monotonous tasks. Urine output is very likely the most relevant physiological parameter that has yet to be sensed or supervised automatically. This paper presents a low cost patent-pending device capable of sensing and supervising urine output. The device uses reed switches activated by a magnetic float in order to measure the amount of urine collected in two containers which are arranged in cascade. When either of the containers fills, it is emptied automatically using a siphon mechanism and urine begins to collect again. An electronic unit sends the state of the reed switches via Bluetooth to a PC that calculates the urine output from this information and supervises the achievement of therapeutic goals.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10714/</guid>
	<pubDate>Thu, 02 Dec 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-12-02</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10714</prism:startingPage>
		<prism:endingPage>10732</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Low Cost Device for Monitoring the Urine Output of Critical Care Patients</dc:title>
	<dc:date>2010-12-02</dc:date>
	<dc:identifier>doi: 10.3390/s101210714</dc:identifier>
		<dc:creator>Abraham Otero</dc:creator>
		<dc:creator>Francisco Palacios</dc:creator>
		<dc:creator>Teodor Akinfiev</dc:creator>
		<dc:creator>Andrey Apalkov</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10640/">
	<title>Sensors, Vol. 10, Pages 10640-10662: A Server-Based Mobile Coaching System</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10640/</link>
	<description>A prototype system for monitoring, transmitting and processing performance data in sports for the purpose of providing feedback has been developed. During training, athletes are equipped with a mobile device and wireless sensors using the ANT protocol in order to acquire biomechanical, physiological and other sports specific parameters. The measured data is buffered locally and forwarded via the Internet to a server. The server provides experts (coaches, biomechanists, sports medicine specialists etc.) with remote data access, analysis and (partly automated) feedback routines. In this way, experts are able to analyze the athlete’s performance and return individual feedback messages from remote locations.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10640/</guid>
	<pubDate>Tue, 30 Nov 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-11-30</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10640</prism:startingPage>
		<prism:endingPage>10662</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Server-Based Mobile Coaching System</dc:title>
	<dc:date>2010-11-30</dc:date>
	<dc:identifier>doi: 10.3390/s101210640</dc:identifier>
		<dc:creator>Arnold Baca</dc:creator>
		<dc:creator>Philipp Kornfeind</dc:creator>
		<dc:creator>Emanuel Preuschl</dc:creator>
		<dc:creator>Sebastian Bichler</dc:creator>
		<dc:creator>Martin Tampier</dc:creator>
		<dc:creator>Hristo Novatchkov</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/12/10601/">
	<title>Sensors, Vol. 10, Pages 10601-10619: Automated Detection of the Arterial Inner Walls of the Common Carotid Artery Based on Dynamic B-Mode Signals</title>
	<link>http://www.mdpi.com/1424-8220/10/12/10601/</link>
	<description>In this paper we propose a novel scheme able to automatically detect the intima and adventitia of both near and far walls of the common carotid artery in dynamic B-mode RF (radiofrequency) image sequences, with and without plaques. Via this automated system the lumen diameter changes along the heart cycle can be detected. Three image sequences have been tested and all results are compared to manual tracings made by two professional experts. The average errors for near and far wall detection are 0.058 mm and 0.067 mm, respectively. This system is able to analyze arterial plaques dynamically which is impossible to do manually due to the tremendous human workload involved.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/12/10601/</guid>
	<pubDate>Mon, 29 Nov 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-11-29</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>12</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10601</prism:startingPage>
		<prism:endingPage>10619</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Automated Detection of the Arterial Inner Walls of the Common Carotid Artery Based on Dynamic B-Mode Signals</dc:title>
	<dc:date>2010-11-29</dc:date>
	<dc:identifier>doi: 10.3390/s101210601</dc:identifier>
		<dc:creator>Da-Chuan Cheng</dc:creator>
		<dc:creator>Arno Schmidt-Trucksäss</dc:creator>
		<dc:creator>Chung-Hsiang Liu</dc:creator>
		<dc:creator>Shing-Hong Liu</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/11/10240/">
	<title>Sensors, Vol. 10, Pages 10240-10255: A Wearable Ground Reaction Force Sensor System and Its Application to the Measurement of Extrinsic Gait Variability</title>
	<link>http://www.mdpi.com/1424-8220/10/11/10240/</link>
	<description>Wearable sensors for gait analysis are attracting wide interest. In this paper, a wearable ground reaction force (GRF) sensor system and its application to measure extrinsic gait variability are presented. To validate the GRF and centre of pressure (CoP) measurements of the sensor system and examine the effectiveness of the proposed method for gait analysis, we conducted an experimental study on seven volunteer subjects. Based on the assessment of the influence of the sensor system on natural gait, we found that no significant differences were found for almost all measured gait parameters (p-values &lt; 0.05). As for measurement accuracy, the root mean square (RMS) differences for the two transverse components and the vertical component of the GRF were 7.2% ± 0.8% and 9.0% ± 1% of the maximum of each transverse component and 1.5% ± 0.9% of the maximum vertical component of GRF, respectively. The RMS distance between both CoP measurements was 1.4% ± 0.2% of the length of the shoe. The area of CoP distribution on the foot-plate and the average coefficient of variation of the triaxial GRF, are the introduced parameters for analysing extrinsic gait variability. Based on a statistical analysis of the results of the tests with subjects wearing the sensor system, we found that the proposed parameters changed according to walking speed and turning (p-values &lt; 0.05).</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/11/10240/</guid>
	<pubDate>Tue, 16 Nov 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-11-16</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>11</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10240</prism:startingPage>
		<prism:endingPage>10255</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Wearable Ground Reaction Force Sensor System and Its Application to the Measurement of Extrinsic Gait Variability</dc:title>
	<dc:date>2010-11-16</dc:date>
	<dc:identifier>doi: 10.3390/s101110240</dc:identifier>
		<dc:creator>Tao Liu</dc:creator>
		<dc:creator>Yoshio Inoue</dc:creator>
		<dc:creator>Kyoko Shibata</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/11/10014/">
	<title>Sensors, Vol. 10, Pages 10014-10026: Effects of the Intermittent Pneumatic Circulator on Blood Pressure during Hemodialysis</title>
	<link>http://www.mdpi.com/1424-8220/10/11/10014/</link>
	<description>Hypotension is frequently reported during hemodialysis. This study aimed to examine the effect of the intermittent pneumatic circulator on blood pressure during hemodialysis. Sixteen subjects with chronic hemodialysis were recruited. Each subject randomly received two test conditions on separate days, hemodialysis with and without the circulator. The circulator was applied to the subject on lower extremities during 0.5–1 hr, 1.5–2 hr, 2.5–3 hr, and 3.5–4 hr of hemodialysis. Systolic and diastolic blood pressures (SBP and DBP) and heart rate (HR) were analyzed at pre-dialysis, 1 hr, 2 hr, and 3 hr of hemodialysis. Stroke volume (SV) and cardiac output (CO) were evaluated between 2.5 and 3.0 hr of hemodialysis. Blood chemicals (sodium, calcium, potassium, and phosphorous) and Kt/V before and after each hemodialysis session were analyzed. The number of episodes of hypotension was also recorded. The circulator intervention significantly improved SBP and DBP across all time points (P = 0.002 for SBP; P = 0.002 for DBP). The frequency of hypotension was significantly decreased (P = 0.028). SV and CO were significantly improved with the circulator intervention (P = 0.017 for SV; P = 0.026 for CO) and no statistical significances were found on blood chemicals or Kt/V analyses. The results suggested that the circulator intervention helps stabilize blood pressure and appears to be a practical treatment. Future studies are suggested to develop new circulator innovations with sensor feedback systems to enhance safety and maximize treatment efficiency.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/11/10014/</guid>
	<pubDate>Tue, 09 Nov 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-11-09</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>11</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>10014</prism:startingPage>
		<prism:endingPage>10026</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Effects of the Intermittent Pneumatic Circulator on Blood Pressure during Hemodialysis</dc:title>
	<dc:date>2010-11-09</dc:date>
	<dc:identifier>doi: 10.3390/s101110014</dc:identifier>
		<dc:creator>Tzu-Chao Hsu</dc:creator>
		<dc:creator>Ya-Ju Chang</dc:creator>
		<dc:creator>Yu-Yao Huang</dc:creator>
		<dc:creator>Miao-Ju Hsu</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/11/9994/">
	<title>Sensors, Vol. 10, Pages 9994-10005: Goniometer Crosstalk Compensation for Knee Joint Applications</title>
	<link>http://www.mdpi.com/1424-8220/10/11/9994/</link>
	<description>Electrogoniometers are prone to crosstalk errors related to endblocks rotation (general crosstalk) and to the characteristics of each sensor (individual crosstalk). The aim of this study was to assess the crosstalk errors due to endblock misalignments and to propose a procedure to compensate for these errors in knee applications. A precision jig was used to simulate pure ±100° flexion/extension movements. A goniometer was mounted with various degrees of valgus/varus (±20°) and rotation (±30°) misalignments. For valgus/varus misalignments, although offset compensation eliminated the error in the valgus/varus recordings for 0° of flexion/extension and reduced it to a few degrees for small (±30°) flexion/extension angles (root mean square error = 1.1°), the individual crosstalk caused pronounced errors for large (±100°) angles (18.8°). Subsequent compensation for this crosstalk reduced these errors to 0.8° and 4.5°, respectively. For rotational misalignment, compensation for the general crosstalk by means of coordinate system rotation, in combination with compensation for the individual crosstalk, reduced the errors for small (±30°) and large (±100°) flexion/extension angles from 3.6° to 0.5° and from 15.5° to 2.4°, respectively. Crosstalk errors were efficiently compensated by the procedures applied, which might be useful in preprocessing of knee functional data, thereby substantially improving goniometer accuracy.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/11/9994/</guid>
	<pubDate>Tue, 09 Nov 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-11-09</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>11</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>9994</prism:startingPage>
		<prism:endingPage>10005</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Goniometer Crosstalk Compensation for Knee Joint Applications</dc:title>
	<dc:date>2010-11-09</dc:date>
	<dc:identifier>doi: 10.3390/s101109994</dc:identifier>
		<dc:creator>Tatiana de Oliveira Sato</dc:creator>
		<dc:creator>Gert-Åke Hansson</dc:creator>
		<dc:creator>Helenice Jane Cote Gil Coury</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/11/9948/">
	<title>Sensors, Vol. 10, Pages 9948-9962: Application of Sensing Techniques to Cellular Force Measurement</title>
	<link>http://www.mdpi.com/1424-8220/10/11/9948/</link>
	<description>Cell traction forces (CTFs) are the forces produced by cells and exerted on extracellular matrix or an underlying substrate. CTFs function to maintain cell shape, enable cell migration, and generate and detect mechanical signals. As such, they play a vital role in many fundamental biological processes, including angiogenesis, inflammation, and wound healing. Therefore, a close examination of CTFs can enable better understanding of the cellular and molecular mechanisms of such processes. To this end, various force-sensing techniques for CTF measurement have been developed over the years. This article will provide a concise review of these sensing techniques and comment on the needs for improved force-sensing technologies for cell mechanics and biology research.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/11/9948/</guid>
	<pubDate>Fri, 05 Nov 2010 00:00:00 CET</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-11-05</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>11</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>9948</prism:startingPage>
		<prism:endingPage>9962</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Application of Sensing Techniques to Cellular Force Measurement</dc:title>
	<dc:date>2010-11-05</dc:date>
	<dc:identifier>doi: 10.3390/s101109948</dc:identifier>
		<dc:creator>Bin Li</dc:creator>
		<dc:creator>James H.-C. Wang</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/10/9369/">
	<title>Sensors, Vol. 10, Pages 9369-9383: Biomedical Use of Isothermal Microcalorimeters</title>
	<link>http://www.mdpi.com/1424-8220/10/10/9369/</link>
	<description>Isothermal microcalorimetry is becoming widely used for monitoring biological activities in vitro. Microcalorimeters are now able to measure heat production rates of less than a microwatt. As a result, metabolism and growth of relatively small numbers of cultured bacteria, protozoans, human cells and even small animals can be monitored continuously and extremely accurately at any chosen temperature. Dynamic effects on these organisms of changes in the culture environment—or of additions to it—are easily assessed over periods from hours to days. In addition microcalorimetry is a non-destructive method that does not require much sample preparation. It is also completely passive and thus allows subsequent evaluations of any kind on the undisturbed sample. In this review, we present a basic description of current microcalorimetry instruments and an overview of their use for various biomedical applications. These include detecting infections, evaluating effects of pharmaceutical or antimicrobial agents on cells, monitoring growth of cells harvested for tissue eingineering, and assessing medical and surgical device material physico-chemical stability and cellular biocompatibility.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/10/9369/</guid>
	<pubDate>Mon, 18 Oct 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-10-18</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>10</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>9369</prism:startingPage>
		<prism:endingPage>9383</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Biomedical Use of Isothermal Microcalorimeters</dc:title>
	<dc:date>2010-10-18</dc:date>
	<dc:identifier>doi: 10.3390/s101009369</dc:identifier>
		<dc:creator>Olivier Braissant</dc:creator>
		<dc:creator>Dieter Wirz</dc:creator>
		<dc:creator>Beat Göpfert</dc:creator>
		<dc:creator>A.U. Daniels</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/10/9155/">
	<title>Sensors, Vol. 10, Pages 9155-9162: A Method for Direct Measurement of the First-Order Mass Moments of Human Body Segments</title>
	<link>http://www.mdpi.com/1424-8220/10/10/9155/</link>
	<description>We propose a simple and direct method for measuring the first-order mass moment of a human body segment. With the proposed method, the first-order mass moment of the body segment can be directly measured by using only one precision scale and one digital camera. In the dummy mass experiment, the relative standard uncertainty of a single set of measurements of the first-order mass moment is estimated to be 1.7%. The measured value will be useful as a reference for evaluating the uncertainty of the body segment inertial parameters (BSPs) estimated using an indirect method.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/10/9155/</guid>
	<pubDate>Tue, 12 Oct 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-10-12</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>10</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>9155</prism:startingPage>
		<prism:endingPage>9162</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Method for Direct Measurement of the First-Order Mass Moments of Human Body Segments</dc:title>
	<dc:date>2010-10-12</dc:date>
	<dc:identifier>doi: 10.3390/s101009155</dc:identifier>
		<dc:creator>Yusaku Fujii</dc:creator>
		<dc:creator>Kazuhito Shimada</dc:creator>
		<dc:creator>Koichi Maru</dc:creator>
		<dc:creator>Junichi Ozawa</dc:creator>
		<dc:creator>Rong-Sheng Lu</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/10/9026/">
	<title>Sensors, Vol. 10, Pages 9026-9052: Wearable Systems for Monitoring Mobility-Related Activities in Chronic Disease: A Systematic Review</title>
	<link>http://www.mdpi.com/1424-8220/10/10/9026/</link>
	<description>The use of wearable motion sensing technology offers important advantages over conventional methods for obtaining measures of physical activity and/or physical functioning in individuals with chronic diseases. This review aims to identify the actual state of applying wearable systems for monitoring mobility-related activity in individuals with chronic disease conditions. In this review we focus on technologies and applications, feasibility and adherence aspects, and clinical relevance of wearable motion sensing technology. PubMed (Medline since 1990), PEdro, and reference lists of all relevant articles were searched. Two authors independently reviewed randomised trials systematically. The quality of selected articles was scored and study results were summarised and discussed. 163 abstracts were considered. After application of inclusion criteria and full text reading, 25 articles were taken into account in a full text review. Twelve of these papers evaluated walking with pedometers, seven used uniaxial accelerometers to assess physical activity, six used multiaxial accelerometers, and two papers used a combination approach of a pedometer and a multiaxial accelerometer for obtaining overall activity and energy expenditure measures. Seven studies mentioned feasibility and/or adherence aspects. The number of studies that use movement sensors for monitoring of activity patterns in chronic disease (postural transitions, time spent in certain positions or activities) is nonexistent on the RCT level of study design. Although feasible methods for monitoring human mobility are available, evidence-based clinical applications of these methods in individuals with chronic diseases are in need of further development.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/10/9026/</guid>
	<pubDate>Fri, 08 Oct 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-10-08</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>10</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>9026</prism:startingPage>
		<prism:endingPage>9052</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Wearable Systems for Monitoring Mobility-Related Activities in Chronic Disease: A Systematic Review</dc:title>
	<dc:date>2010-10-08</dc:date>
	<dc:identifier>doi: 10.3390/s101009026</dc:identifier>
		<dc:creator>Lara Allet</dc:creator>
		<dc:creator>Ruud H. Knols</dc:creator>
		<dc:creator>Kei Shirato</dc:creator>
		<dc:creator>Eling D. de Bruin</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/9/8437/">
	<title>Sensors, Vol. 10, Pages 8437-8451: Automated Three-Dimensional Microbial Sensing and Recognition Using Digital Holography and Statistical Sampling</title>
	<link>http://www.mdpi.com/1424-8220/10/9/8437/</link>
	<description>We overview an approach to providing automated three-dimensional (3D) sensing and recognition of biological micro/nanoorganisms integrating Gabor digital holographic microscopy and statistical sampling methods. For 3D data acquisition of biological specimens, a coherent beam propagates through the specimen and its transversely and longitudinally magnified diffraction pattern observed by the microscope objective is optically recorded with an image sensor array interfaced with a computer. 3D visualization of the biological specimen from the magnified diffraction pattern is accomplished by using the computational Fresnel propagation algorithm. For 3D recognition of the biological specimen, a watershed image segmentation algorithm is applied to automatically remove the unnecessary background parts in the reconstructed holographic image. Statistical estimation and inference algorithms are developed to the automatically segmented holographic image. Overviews of preliminary experimental results illustrate how the holographic image reconstructed from the Gabor digital hologram of biological specimen contains important information for microbial recognition.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/9/8437/</guid>
	<pubDate>Thu, 09 Sep 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-09-09</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>9</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>8437</prism:startingPage>
		<prism:endingPage>8451</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Automated Three-Dimensional Microbial Sensing and Recognition Using Digital Holography and Statistical Sampling</dc:title>
	<dc:date>2010-09-09</dc:date>
	<dc:identifier>doi: 10.3390/s100908437</dc:identifier>
		<dc:creator>Inkyu Moon</dc:creator>
		<dc:creator>Faliu Yi</dc:creator>
		<dc:creator>Bahram Javidi</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/8/7772/">
	<title>Sensors, Vol. 10, Pages 7772-7788: A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring</title>
	<link>http://www.mdpi.com/1424-8220/10/8/7772/</link>
	<description>Characteristics of physical activity are indicative of one’s mobility level, latent chronic diseases and aging process. Accelerometers have been widely accepted as useful and practical sensors for wearable devices to measure and assess physical activity. This paper reviews the development of wearable accelerometry-based motion detectors. The principle of accelerometry measurement, sensor properties and sensor placements are first introduced. Various research using accelerometry-based wearable motion detectors for physical activity monitoring and assessment, including posture and movement classification, estimation of energy expenditure, fall detection and balance control evaluation, are also reviewed. Finally this paper reviews and compares existing commercial products to provide a comprehensive outlook of current development status and possible emerging technologies.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/8/7772/</guid>
	<pubDate>Fri, 20 Aug 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-08-20</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>8</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>7772</prism:startingPage>
		<prism:endingPage>7788</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Review of Accelerometry-Based Wearable Motion Detectors for Physical Activity Monitoring</dc:title>
	<dc:date>2010-08-20</dc:date>
	<dc:identifier>doi: 10.3390/s100807772</dc:identifier>
		<dc:creator>Che-Chang Yang</dc:creator>
		<dc:creator>Yeh-Liang Hsu</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/8/7602/">
	<title>Sensors, Vol. 10, Pages 7602-7620: Efficacy of a Computerized Sensor System for Evaluation and Training of Dizzy Patients</title>
	<link>http://www.mdpi.com/1424-8220/10/8/7602/</link>
	<description>Patients with vestibular hypofunction often experience dizziness and unsteadiness while moving their heads. Appropriate sensors can effectively detect a patient’s dynamic visual acuity and associated body balance control. Forty-one vestibular-deficit patients and 10 normal individuals were invited to participate in this study. Questionnaires, clinical assessment scales and objective measures were evaluated on participants’ first visits. After 12 sessions of training, all scales were evaluated again on vestibular-deficit patients. The computerized system was composed of sensors, including a gyro and strain gauges, data acquisition accessories and LabVIEW software. Results revealed that the system could effectively distinguish normal subjects from subjects with vestibular deficits. In addition, after a rehabilitation program, subjects’ subjective and objective performances were significantly improved. Based on our results, we concluded that the present system, which uses a gyro and strain gauges, may provide an effective method for assessing and treating vestibular-deficit patients.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/8/7602/</guid>
	<pubDate>Thu, 12 Aug 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-08-12</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>8</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>7602</prism:startingPage>
		<prism:endingPage>7620</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Efficacy of a Computerized Sensor System for Evaluation and Training of Dizzy Patients</dc:title>
	<dc:date>2010-08-12</dc:date>
	<dc:identifier>doi: 10.3390/s100807602</dc:identifier>
		<dc:creator>Chung-Lan Kao</dc:creator>
		<dc:creator>Wan-Ling Hsieh</dc:creator>
		<dc:creator>Shuu-Jiun Wang</dc:creator>
		<dc:creator>Shih-Jen Chen</dc:creator>
		<dc:creator>Shun-Hwa Wei</dc:creator>
		<dc:creator>Rai-Chi Chan</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/8/7146/">
	<title>Sensors, Vol. 10, Pages 7146-7156: A Piezoelectric Plethysmograph Sensor Based on a Pt Wire Implanted Lead Lanthanum Zirconate Titanate Bulk Ceramic</title>
	<link>http://www.mdpi.com/1424-8220/10/8/7146/</link>
	<description>This work reports on the development of a Lead Lanthanum Zirconate Titanate (PLZT) bulk ferroelectric poled ceramic structure as a Piezoelectric Plethysmograph (PZPG) sensor. The ceramic was implanted during its fabrication with a platinum (Pt) wire which works as an internal electrode. The ceramic was then submitted to an experimental setup in order to validate and determine the Pt-wire mechanical effects. This PZPG sensor was also mounted on a finger splint in order to measure the blood flow that results from the pulsations of blood occurring with each heartbeat. Fingertip pulses were recorded jointly with an ECG signal from a 25 year old male to compare the time shift; the PZPG sensor guarantees the electrical isolation of the patient. The proposed PZPG has several advantages: it can be adjusted for fingertip measurements, but it can easily be extended by means of spare bands, therefore making possible PZPG measurements from different body locations, e.g., forehead, forearm, knee, neck, etc.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/8/7146/</guid>
	<pubDate>Thu, 29 Jul 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-07-29</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>8</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>7146</prism:startingPage>
		<prism:endingPage>7156</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>A Piezoelectric Plethysmograph Sensor Based on a Pt Wire Implanted Lead Lanthanum Zirconate Titanate Bulk Ceramic</dc:title>
	<dc:date>2010-07-29</dc:date>
	<dc:identifier>doi: 10.3390/s100807146</dc:identifier>
		<dc:creator>Carlos O. González-Morán</dc:creator>
		<dc:creator>J.J. Agustín Flores-Cuautle</dc:creator>
		<dc:creator>Ernesto Suaste-Gómez</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/8/7099/">
	<title>Sensors, Vol. 10, Pages 7099-7121: Molecular Biosensing Mechanisms in the Spleen for the Removal of Aged and Damaged Red Cells from the Blood Circulation</title>
	<link>http://www.mdpi.com/1424-8220/10/8/7099/</link>
	<description>Heinz bodies are intraerythrocytic inclusions of hemichrome formed as a result of hemoglobin (Hb) oxidation. They typically develop in aged red cells. Based on the hypothesis that hemichrome formation is an innate characteristic of physiologically normal Hb molecules, we present an overview of our previous findings regarding the molecular instability of Hb and the formation of hemichrome, as well as recent findings on Heinz body formation within normal human erythrocytes. Human adult Hb (HbO2 A) prepared from healthy donors showed a tendency to produce hemichrome, even at close to physiological temperature and pH. Recent studies found that the number of Heinz bodies formed in red cells increased with increasing temperature when freshly drawn venous blood from healthy donors was subjected to mild heating above 37 °C. These findings suggest that Hb molecules control the removal of non-functional erythrocytes from the circulation via hemichrome formation and subsequent Heinz body clustering. In this review, we discuss the molecular biosensing mechanisms in the spleen, where hemichrome formation and subsequent Heinz body clustering within erythrocytes play a key role in the removal of aged and damaged red cells from the blood circulation.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/8/7099/</guid>
	<pubDate>Tue, 27 Jul 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-07-27</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>8</prism:number>
	<prism:section>Review</prism:section>
	<prism:startingPage>7099</prism:startingPage>
		<prism:endingPage>7121</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Molecular Biosensing Mechanisms in the Spleen for the Removal of Aged and Damaged Red Cells from the Blood Circulation</dc:title>
	<dc:date>2010-07-27</dc:date>
	<dc:identifier>doi: 10.3390/s100807099</dc:identifier>
		<dc:creator>Yoshiaki Sugawara</dc:creator>
		<dc:creator>Yuko Hayashi</dc:creator>
		<dc:creator>Yuki Shigemasa</dc:creator>
		<dc:creator>Yoko Abe</dc:creator>
		<dc:creator>Ikumi Ohgushi</dc:creator>
		<dc:creator>Eriko Ueno</dc:creator>
		<dc:creator>Fumio Shimamoto</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>
	<item rdf:about="http://www.mdpi.com/1424-8220/10/6/6063/">
	<title>Sensors, Vol. 10, Pages 6063-6080: Arrhythmia ECG Noise Reduction by Ensemble Empirical Mode Decomposition</title>
	<link>http://www.mdpi.com/1424-8220/10/6/6063/</link>
	<description>A novel noise filtering algorithm based on ensemble empirical mode decomposition (EEMD) is proposed to remove artifacts in electrocardiogram (ECG) traces. Three noise patterns with different power—50 Hz, EMG, and base line wander – were embedded into simulated and real ECG signals. Traditional IIR filter, Wiener filter, empirical mode decomposition (EMD) and EEMD were used to compare filtering performance. Mean square error between clean and filtered ECGs was used as filtering performance indexes. Results showed that high noise reduction is the major advantage of the EEMD based filter, especially on arrhythmia ECGs.</description>
	
	<guid>http://www.mdpi.com/1424-8220/10/6/6063/</guid>
	<pubDate>Thu, 17 Jun 2010 00:00:00 CEST</pubDate>
	
	<prism:publicationName>Sensors</prism:publicationName>
	<prism:publicationDate>2010-06-17</prism:publicationDate>
	<prism:volume>10</prism:volume>
	<prism:number>6</prism:number>
	<prism:section>Article</prism:section>
	<prism:startingPage>6063</prism:startingPage>
		<prism:endingPage>6080</prism:endingPage>
		<prism:issn>1424-8220</prism:issn>
	
	<dc:title>Arrhythmia ECG Noise Reduction by Ensemble Empirical Mode Decomposition</dc:title>
	<dc:date>2010-06-17</dc:date>
	<dc:identifier>doi: 10.3390/s100606063</dc:identifier>
		<dc:creator> Chang</dc:creator>
	
	<cc:license rdf:resource="http://creativecommons.org/licenses/by/3.0/" />
</item>


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	<cc:permits rdf:resource="http://creativecommons.org/ns#Reproduction" />
	<cc:permits rdf:resource="http://creativecommons.org/ns#Distribution" />
	<cc:permits rdf:resource="http://creativecommons.org/ns#DerivativeWorks" />
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