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A Classification Method of Normal and Overweight Females Based on Facial Features for Automated Medical Applications

机译:基于面部特征的正常和超重女性自动医疗分类方法

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摘要

Obesity and overweight have become serious public health problems worldwide. Obesity and abdominal obesity are associated with type 2 diabetes, cardiovascular diseases, and metabolic syndrome. In this paper, we first suggest a method of predicting normal and overweight females according to body mass index (BMI) based on facial features. A total of 688 subjects participated in this study. We obtained the area under the ROC curve (AUC) value of 0.861 and kappa value of 0.521 in Female: 21–40 (females aged 21–40 years) group, and AUC value of 0.76 and kappa value of 0.401 in Female: 41–60 (females aged 41–60 years) group. In two groups, we found many features showing statistical differences between normal and overweight subjects by using an independent two-sample t-test. We demonstrated that it is possible to predict BMI status using facial characteristics. Our results provide useful information for studies of obesity and facial characteristics, and may provide useful clues in the development of applications for alternative diagnosis of obesity in remote healthcare.
机译:肥胖和超重已成为全球范围内严重的公共卫生问题。肥胖和腹型肥胖与2型糖尿病,心血管疾病和代谢综合征相关。在本文中,我们首先提出一种根据面部特征根据体重指数(BMI)预测正常和超重女性的方法。共有688名受试者参加了这项研究。我们在女性:21–40(21–40岁的女性)组中,ROC曲线(AUC)值下的面积为0.861,kappa值为0.521,女性:41–21岁时的AUC值为0.76,kappa值为0.401。 60名(41-60岁的女性)组。在两组中,我们发现了许多通过使用独立的两样本t检验显示正常和超重受试者之间统计学差异的特征。我们证明了可以使用面部特征预测BMI状态。我们的结果为肥胖和面部特征的研究提供了有用的信息,并可能为远程医疗保健中肥胖的替代诊断应用开发提供有用的线索。

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