Analyzing important statistical features from facial behavior in human depression using XGBoost

IF 0.5 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Communications in Mathematical Biology and Neuroscience Pub Date : 2023-01-01 DOI:10.28919/cmbn/7916
Brilyan Nathanael, Rumahorbo, Kenjovan Nanggala, G. N. Elwirehardja, B. Pardamean
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引用次数: 3

Abstract

. Major Depressive Disorder (MDD) has been known as one of the most prevalent mental disorders whose symptoms can be observed from changes in facial behaviors. Previous studies had attempted to build Machine Learning (ML) models to assess depression severity using such features but few have utilized these models to determine key facial behaviors for MDD. In this study, we used video data to assess the severity of MDD and determine important features based on three approaches (XGBoost, Spearman’s correlation, and t-test). In addition, there is the Facial Action Coding System (FACS) framework that allows visual data such as changes in facial behavior to be modeled as time series data. The results show that the XGBoost model obtained the best results when trained using features selected through the t-test statistical method with 5.387 MAE, 6.266 RMSE, and 0.042 R 2 . The majority of the important features consist of Action Unit (AU) and Features 3D around the regions of the left eye, right cheek, and lip area. However, the majority of the important features discovered from the three approaches, are the first derivatives of the 3D facial landmark coordinates of the cheeks, eyes, and ∗ Corresponding
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使用XGBoost分析抑郁症患者面部行为的重要统计特征
。重度抑郁症(MDD)是一种最常见的精神障碍,其症状可以从面部行为的变化中观察到。之前的研究试图建立机器学习(ML)模型,利用这些特征来评估抑郁症的严重程度,但很少有人利用这些模型来确定重度抑郁症的关键面部行为。在本研究中,我们使用视频数据来评估重度抑郁症的严重程度,并根据三种方法(XGBoost、Spearman’s correlation和t检验)确定重要特征。此外,还有面部动作编码系统(FACS)框架,该框架允许将面部行为变化等视觉数据建模为时间序列数据。结果表明,使用t检验统计方法选择的特征进行训练时,XGBoost模型的MAE为5.387,RMSE为6.266,r2为0.042,得到了最好的训练结果。大多数重要的特征由动作单元(AU)和3D特征组成,这些特征围绕着左眼、右脸颊和嘴唇区域。然而,从这三种方法中发现的大多数重要特征都是脸颊、眼睛和*对应的3D面部地标坐标的一阶导数
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来源期刊
Communications in Mathematical Biology and Neuroscience
Communications in Mathematical Biology and Neuroscience COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
2.10
自引率
15.40%
发文量
80
期刊介绍: Communications in Mathematical Biology and Neuroscience (CMBN) is a peer-reviewed open access international journal, which is aimed to provide a publication forum for important research in all aspects of mathematical biology and neuroscience. This journal will accept high quality articles containing original research results and survey articles of exceptional merit.
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