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Keywords = metrics of growth habit

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24 pages, 5980 KiB  
Article
Performance Evaluation and Simulation Optimization of Outdoor Environmental Space in Communities Based on Subjective Comfort: A Case Study of Minhe Community in Qian’an City
by Yuefang Rong, Jian Song, Zhuofan Xu, Haoxi Lin, Jiakun Liu, Baiyi Yang and Shuhan Guo
Buildings 2025, 15(12), 2078; https://doi.org/10.3390/buildings15122078 - 17 Jun 2025
Viewed by 383
Abstract
With the continual expansion of global urbanization and population growth, urban energy demands have intensified, and anthropogenic activities have precipitated profound shifts in the global climate. These climatic changes directly alter urban environmental conditions, which in turn exert indirect effects on human physiological [...] Read more.
With the continual expansion of global urbanization and population growth, urban energy demands have intensified, and anthropogenic activities have precipitated profound shifts in the global climate. These climatic changes directly alter urban environmental conditions, which in turn exert indirect effects on human physiological function. Consequently, the comfort of outdoor community environments has emerged as a critical metric for assessing the quality of human habitation. Although existing studies have focused on improving singular environmental factors—such as wind or thermal comfort—they often lack an integrated, multi-factor coupling mechanism, and adaptive strategy systems tailored to hot-summer, cold-winter regions remain underdeveloped. This study examines the Minhe Community in Qian’an City to develop a performance evaluation framework for outdoor spaces grounded in subjective comfort and to close the loop from theoretical formulation to empirical validation via an interdisciplinary approach. We first synthesized 25 environmental factors across eight categories—including wind, thermal, and lighting parameters—and applied the Analytic Hierarchy Process (AHP) to establish factor weights, thereby constructing a comprehensive model that encompasses both physiological and psychological requirements. Field surveys, meteorological data collection, and ENVI-met (V5.1.1) microclimate simulations revealed pronounced issues in the community’s wind distribution, thermal comfort, and acoustic environment. In response, we proposed adaptive interventions—such as stratified vegetation design and permeable pavement installations—and validated their efficacy through further simulation. Post-optimization, the community’s overall comfort score increased from 4.64 to 5.62, corresponding to an efficiency improvement of 21.3%. The innovative contributions of this research are threefold: (1) transcending the limitations of single-factor analyses by establishing a multi-dimensional, coupled evaluation framework; (2) integrating AHP with ENVI-met simulation to realize a fully quantified “evaluation–simulation–optimization” workflow; and (3) proposing adaptive strategies with broad applicability for the retrofit of communities in hot-summer, cold-winter climates, thereby offering a practical technical pathway for urban microclimate enhancement. Full article
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16 pages, 876 KiB  
Article
Associations Between Birth Characteristics, Weaning Practices, and the Metabolic Syndrome in Children: A Descriptive Study
by Teofana Otilia Bizerea-Moga, Tudor Voicu Moga, Ramona Stroescu, Lazar Chisavu, Otilia Mărginean and Flavia Chisavu
Metabolites 2025, 15(3), 148; https://doi.org/10.3390/metabo15030148 - 22 Feb 2025
Viewed by 734
Abstract
Background: Childhood obesity has seen an important rise in recent decades, in both the pediatric and adult populations. Excess weight can cause various health complications, such as the metabolic syndrome (MetS), a cluster of medical conditions linked to adverse cardiometabolic outcomes. Although MetS [...] Read more.
Background: Childhood obesity has seen an important rise in recent decades, in both the pediatric and adult populations. Excess weight can cause various health complications, such as the metabolic syndrome (MetS), a cluster of medical conditions linked to adverse cardiometabolic outcomes. Although MetS may be attributed mainly to adults, early life factors, such as birth characteristics and feeding practices, may influence its development in obese children. Aim: This study aims to investigate the relationships between birth metrics, early feeding practices, and the prevalence of MetS and its components among obese children. Methods: A retrospective observational study was conducted on 800 obese patients aged 0–18 years, admitted to the “Louis Țurcanu” Children’s Clinical and Emergency Hospital in Timișoara, Romania, from 1 January 2013 to 31 December 2023. Patients were divided according to gestational age: small for gestational age (SGA), appropriate for gestational age (AGA), and large for gestational age (LGA). Results: Type 2 diabetes (18.2%), hypercholesterolemia (24.6%), IR (41.3%), and MetS (39.2%) were more prevalent among oSGA patients included in the study. These patients were breastfed for longer periods but weaned at a younger age. oLGA patients had the highest BMI values (28.4 ± 4.2) and, in this study group, hypertriglyceridemia (29.4%), arterial hypertension (26.8%), and lower HDL-C (41.7 ± 6.3 mg/dL) were more prevalent. The incidence of MetS increased with age (12.6 ± 3.1 years). Among these patients, IR (52.3%) was more prevalent. The introduction of flour-based energy-dense foods before six months was more frequent in MetS patients, but not statistically significant. Logistic regression showed oSGA patients had a 4.49-fold higher MetS risk (p < 0.001). Older age at diagnosis increased the risk of developing MetS by 37%, a diagnosis of impaired glucose tolerance by 19-fold, and a family history of diabetes by 2.7-fold. ROC analysis showed strong predictability (AUC = 0.905, sensitivity = 82%, specificity = 88%). Conclusions: Obese children born SGA had a higher risk for developing MetS. The incidence of MetS and its components increases with age among obese patients. Monitoring growth patterns and dietary habits in early life is paramount to mitigate future metabolic complications Full article
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18 pages, 3450 KiB  
Article
Comparative Performance Analysis of Deep Learning, Classical, and Hybrid Time Series Models in Ecological Footprint Forecasting
by Pınar Cihan
Appl. Sci. 2024, 14(4), 1479; https://doi.org/10.3390/app14041479 - 11 Feb 2024
Cited by 5 | Viewed by 2481
Abstract
In a globalized world, factors such as increasing population, rising production rates, changing consumption habits, and continuous economic growth contribute significantly to climate change. Therefore, successfully forecasting the Ecological Footprint (EF) effectively indicates global sustainable development. Despite the significant role of the EF [...] Read more.
In a globalized world, factors such as increasing population, rising production rates, changing consumption habits, and continuous economic growth contribute significantly to climate change. Therefore, successfully forecasting the Ecological Footprint (EF) effectively indicates global sustainable development. Despite the significant role of the EF as one of the indicators of sustainable development, there is a gap in the literature regarding time series methods and forward-looking predictions. To address this gap, Ecological Footprint (EF) forecasting was performed using deep learning methods such as LSTMs, classical time series methods like ARIMA and Holt–Winters, and the developed hybrid ARIMA-SVR model. In the scope of the study, first, a spreadsheet was created using the total Ecological Footprint (EF) worldwide between 1961 and 2022, obtained from the Global Footprint Network database. Second, the forecasting performances of the ARIMA, Holt–Winters, LSTM, and the hybrid ARIMA-SVR models were compared using MAPE and RMSE metrics. Finally, the forecasting performances of the time series models were statistically validated through Wilcoxon Signed-Rank and Friedman tests. The study findings indicate that the proposed ARIMA (1,1,0) model demonstrated better performance with an average MAPE of 2.12%, compared to Holt–Winters (MAPE of 2.27%), LSTM (MAPE of 3.19%), and ARIMA-SVR (MAPE of 2.68%) methods in the test dataset. Additionally, it was observed that the ARIMA model forecasted the EF, which experienced a sudden decrease due to the COVID-19 lockdown, with a lower error compared to other models. These findings highlight the adaptability of the ARIMA model to variable and uncertain conditions. Full article
(This article belongs to the Section Environmental Sciences)
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30 pages, 4684 KiB  
Article
Identification of Risk Factors Associated with Obesity and Overweight—A Machine Learning Overview
by Ayan Chatterjee, Martin W. Gerdes and Santiago G. Martinez
Sensors 2020, 20(9), 2734; https://doi.org/10.3390/s20092734 - 11 May 2020
Cited by 154 | Viewed by 27158
Abstract
Social determining factors such as the adverse influence of globalization, supermarket growth, fast unplanned urbanization, sedentary lifestyle, economy, and social position slowly develop behavioral risk factors in humans. Behavioral risk factors such as unhealthy habits, improper diet, and physical inactivity lead to physiological [...] Read more.
Social determining factors such as the adverse influence of globalization, supermarket growth, fast unplanned urbanization, sedentary lifestyle, economy, and social position slowly develop behavioral risk factors in humans. Behavioral risk factors such as unhealthy habits, improper diet, and physical inactivity lead to physiological risks, and “obesity/overweight” is one of the consequences. “Obesity and overweight” are one of the major lifestyle diseases that leads to other health conditions, such as cardiovascular diseases (CVDs), chronic obstructive pulmonary disease (COPD), cancer, diabetes type II, hypertension, and depression. It is not restricted within the age and socio-economic background of human beings. The “World Health Organization” (WHO) has anticipated that 30% of global death will be caused by lifestyle diseases by 2030 and it can be prevented with the appropriate identification of associated risk factors and behavioral intervention plans. Health behavior change should be given priority to avoid life-threatening damages. The primary purpose of this study is not to present a risk prediction model but to provide a review of various machine learning (ML) methods and their execution using available sample health data in a public repository related to lifestyle diseases, such as obesity, CVDs, and diabetes type II. In this study, we targeted people, both male and female, in the age group of >20 and <60, excluding pregnancy and genetic factors. This paper qualifies as a tutorial article on how to use different ML methods to identify potential risk factors of obesity/overweight. Although institutions such as “Center for Disease Control and Prevention (CDC)” and “National Institute for Clinical Excellence (NICE)” guidelines work to understand the cause and consequences of overweight/obesity, we aimed to utilize the potential of data science to assess the correlated risk factors of obesity/overweight after analyzing the existing datasets available in “Kaggle” and “University of California, Irvine (UCI) database”, and to check how the potential risk factors are changing with the change in body-energy imbalance with data-visualization techniques and regression analysis. Analyzing existing obesity/overweight related data using machine learning algorithms did not produce any brand-new risk factors, but it helped us to understand: (a) how are identified risk factors related to weight change and how do we visualize it? (b) what will be the nature of the data (potential monitorable risk factors) to be collected over time to develop our intended eCoach system for the promotion of a healthy lifestyle targeting “obesity and overweight” as a study case in the future? (c) why have we used the existing “Kaggle” and “UCI” datasets for our preliminary study? (d) which classification and regression models are performing better with a corresponding limited volume of the dataset following performance metrics? Full article
(This article belongs to the Section Intelligent Sensors)
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14 pages, 7108 KiB  
Review
Metrics of Growth Habit Derived from the 3D Tree Point Cloud Used for Species Determination—A New Approach in Botanical Taxonomy Tested on Dragon Tree Group Example
by Petr Vahalík, Karel Drápela, Andrea Procházková, Zdeněk Patočka, Marie Balková, Martin Šenfeldr, Klára Lengálová, Hana Kalivodová, Lucie Vaníčková, Lenka Ehrenbergerová, Samuel Lvončík and Petr Maděra
Forests 2020, 11(3), 272; https://doi.org/10.3390/f11030272 - 28 Feb 2020
Cited by 6 | Viewed by 3018
Abstract
Detailed, three-dimensional modeling of trees is a new approach in botanical taxonomy. Representations of individual trees are a prerequisite for accurate assessments of tree growth and morphological metronomy. This study tests the abilities of 3D modeling of trees to determine the various metrics [...] Read more.
Detailed, three-dimensional modeling of trees is a new approach in botanical taxonomy. Representations of individual trees are a prerequisite for accurate assessments of tree growth and morphological metronomy. This study tests the abilities of 3D modeling of trees to determine the various metrics of growth habit and compare morphological differences. The study included four species of the genus Dracaena: D. draco, D. cinnabari, D. ombet, and D. serrulata. Forty-nine 3D tree point clouds were created, and their morphological metrics were derived and compared. Our results indicate the possible application of 3D tree point clouds to dendrological taxonomy. Basic metrics of growth habit and coefficients derived from the 3D point clouds developed in the present study enable the statistical evaluation of differences among dragon tree species. Full article
(This article belongs to the Special Issue Dragon Trees - Tertiary Relicts in Current Reality)
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