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Advances in Musculoskeletal Imaging and Their Applications, 2nd Edition

Topic Information

Dear Colleagues,

Radiographic acquisition techniques have undergone tremendous improvements since their invention. Image resolution has greatly increased and the reduction in the dose of X-ray radiation required for its creation has been achieved. The increased amount of imaging data does not necessarily mean that more medical information is accessible to the reader. Some (but often important) information is hidden from the radiologist. This is especially true for radiographic techniques.

The purpose of advanced image-analysis systems is to extract occulted data to improve the objectivity of diagnosis for a given case. The treatment of clinical problems with information obtained using advanced image analyses has increased. In musculoskeletal radiology, proven associations exist between bone scan analyses, patient health and metabolic status. Moreover, the processes of bone maturation, bone healing, bone demineralization and deformation due to overuse can be extensively analyzed with the use of CR, CT and MRI. Advanced methods significantly improve differentiation and hence the diagnostic process of medication for different lesions including neoplasms of the bone.

Papers investigating the application of both classical image processing and artificial intelligence (AI) methods in the analysis and extraction of diagnostically useful data from medical images are welcomed in this Special Issue. Such methods assist in the investigation of the shape and geometry of, for example, bone tissue or its fragments. Other AI approaches allow for the automatic detection and segmentation of tissues or organs and the assessment of their pathologies. For this purpose, the achievements of radiomics are particularly useful, including image-texture analyses. Various machine learning methods are also useful for exploring medical imaging data and are widely used in medical diagnostic support systems. Deep learning algorithms play a particularly important role in this respect. Recently, dynamic developments have been achieved in the field of deep learning algorithms, and their effectiveness has been confirmed in numerous applications of medical image analyses of various modalities.

Prof. Dr. Rafał Obuchowicz
Dr. Monika Ostrogórska
Prof. Dr. Michał Strzelecki
Prof. Dr. Adam Piórkowski
Topic Editors

Keywords

  • bone imaging
  • musculoskeletal imaging
  • image processing
  • image analysis
  • segmentation
  • textural analysis
  • machine learning

Participating Journals

Applied Sciences
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83,288 Articles
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2.5Impact Factor
5.5CiteScore
20 DaysMedian Time to First Decision
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-Impact Factor
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3.3Impact Factor
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21 DaysMedian Time to First Decision
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Journal of Clinical Medicine
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5.2CiteScore
18 DaysMedian Time to First Decision
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Journal of Imaging
Open Access
2,177 Articles
Launched in 2015
3.3Impact Factor
6.7CiteScore
15 DaysMedian Time to First Decision
Q2Highest JCR Category Ranking

Published Papers