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Prediction of Hypertension Based on Facial Complexion

机译:基于面部肤色的高血压预测

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摘要

This study aims to investigate the association between hypertension and facial complexion and determine whether facial complexion is a predictor for hypertension. Using the Commission internationale de l’éclairage L*a*b* (CIELAB) color space, the facial complexion variables of 1099 subjects were extracted in three regions (forehead, cheek, and nose) and the total face. Logistic regression was performed to analyze the association between hypertension and individual color variables. Four variable selection methods were also used to assess the association between hypertension and combined complexion variables and to compare the predictive powers of the models. The a* (green-red) complexion variables were identified as strong predictors in all facial regions in the crude analysis for both genders. However, this association in men disappeared, and L* (lightness) variables in women became the strongest predictors after adjusting for age and body mass index. Among the four prediction models based on combined complexion variables, the Bayesian approach obtained the best predictive in men. In women, models using three different methods but not the stepwise Akaike information criterion (AIC) obtained similar AUC values between 0.82 and 0.83. The use of combined facial complexion variables slightly improved the predictive power of hypertension in all four of the models compared with the use of individual variables.
机译:本研究旨在探讨高血压和面部肤色之间的关联,并确定面部肤色是否是高血压的预测因子。使用委员会Internationale de l'clairage L * a * b *(cielab)颜色空间,1099个受试者的面部络合变量在三个区域(前额,脸颊和鼻子)和总面部提取。进行逻辑回归以分析高血压和单个颜色变量之间的关联。还用于评估高血压和组合肤色变量之间的关联并比较模型的预测力。 A *(绿色)络合变量被识别为两种性别分析中所有面部区域的强预测因子。然而,这种在男性中的关联消失了,并且在调整年龄和体重指数后,女性中的L *(Lightness)变量成为最强的预测因子。在基于组合梳理变量的四种预测模型中,贝叶斯方法获得了最佳预测性。在女性中,使用三种不同方法的模型,但不是逐步Akaike信息标准(AIC)获得了0.82和0.83之间的类似AUC值。与使用单个变量相比,使用组合的面部梳理变量的使用略微改善了所有四种模型中的高血压的预测力。

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