Analysis of Tongue and Face Image Features of Anemic Women and Construction of Risk-Screening Model.

IF 4.1
Hong Yuan Fu, Yi Chun, Ya Han Zhang, Yu Wang, Yu Lin Shi, Tao Jiang, Xiao Juan Hu, Li Ping Tu, Yong Zhi Li, Jia Tuo Xu
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Abstract

Objective: To identify the key features of facial and tongue images associated with anemia in female populations, establish anemia risk-screening models, and evaluate their performance.

Methods: A total of 533 female participants (anemic and healthy) were recruited from Shuguang Hospital. Facial and tongue images were collected using the TFDA-1 tongue and face diagnosis instrument. Color and texture features from various parts of facial and tongue images were extracted using Face Diagnosis Analysis System (FDAS) and Tongue Diagnosis Analysis System version 2.0 (TDAS v2.0). Least Absolute Shrinkage and Selection Operator (LASSO) regression was used for feature selection. Ten machine learning models and one deep learning model (ResNet50V2 + Conv1D) were developed and evaluated.

Results: Anemic women showed lower a-values, higher L- and b-values across all age groups. Texture features analysis showed that women aged 30-39 with anemia had higher angular second moment (ASM)and lower entropy (ENT) values in facial images, while those aged 40-49 had lower contrast (CON), ENT, and MEAN values in tongue images but higher ASM. Anemic women exhibited age-related trends similar to healthy women, with decreasing L-values and increasing a-, b-, and ASM-values. LASSO identified 19 key features from 62. Among classifiers, the Artificial Neural Network (ANN) model achieved the best performance [area under the curve (AUC): 0.849, accuracy: 0.781]. The ResNet50V2 model achieved comparable results [AUC: 0.846, accuracy: 0.818].

Conclusion: Differences in facial and tongue images suggest that color and texture features can serve as potential TCM phenotype and auxiliary diagnostic indicators for female anemia.

贫血妇女舌脸图像特征分析及风险筛查模型构建。
目的:识别与女性贫血相关的面部和舌头图像的关键特征,建立贫血风险筛查模型,并对其性能进行评价。方法:从曙光医院招募533名女性受试者(贫血和健康)。采用TFDA-1型舌面诊断仪采集面部及舌面图像。使用人脸诊断分析系统(FDAS)和舌头诊断分析系统2.0版本(TDAS v2.0)提取面部和舌头各部位的颜色和纹理特征。最小绝对收缩和选择算子(LASSO)回归用于特征选择。开发并评估了10个机器学习模型和1个深度学习模型(ResNet50V2 + Conv1D)。结果:在所有年龄组中,贫血妇女的a值较低,L值和b值较高。纹理特征分析表明,30 ~ 39岁贫血女性面部图像的角秒矩(ASM)值较高,熵值(ENT)值较低;40 ~ 49岁贫血女性舌部图像的对比度(CON)、熵值(ENT)和MEAN值较低,但熵值较高。贫血妇女表现出与健康妇女相似的年龄相关趋势,l值降低,a-、b-和asm值升高。LASSO从62个关键特征中识别出19个。在分类器中,人工神经网络(ANN)模型取得了最好的性能[曲线下面积(AUC): 0.849,准确率:0.781]。ResNet50V2模型取得了相当的结果[AUC: 0.846,准确率:0.818]。结论:面部和舌部图像的差异提示颜色和纹理特征可作为女性贫血的潜在中医表型和辅助诊断指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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