A novel study for MDD detection through task-elicited facial cues

Jinlong Li, Zhenyu Liu, Zhijie Ding, Gangping Wang
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引用次数: 4

Abstract

Depression is a common mental disorder worldwide. Individuals with major depressive disorder (MDD) are at increased risk for suicide. Current clinical practice for assessing this psychosomatic state are mainly based on self-report and expert evaluation, which risking a range of subjective biases. We investigate a number of task-elicited facial features from Chinese subjects for MDD detection. Moreover, we collect the data from Kinect, which make us achieve a good detection result with low time and space consumption. Experiments are performed on an age, gender and education level matched clinical dataset of 36 MDD patients and 36 healthy controls (HCs). We can get three points from the experimental results: 1) We have presented a simple and objective means for MDD detection, and the average classification accuracies (female: 71.5%, male: 66.7%) are all much higher than chance level. The best classification accuracies (female: 86.8%, male: 79.4%) are achieved during video watching task. 2) Neutral emotion stimulus is a better choice for data collection than positive and negative valences. 3) Eyebrows and mouth have more contributions than other parts of a face in neutral emotion valence. These findings suggest that detecting MDD from facial indicators is feasible, and we provide effective emotion stimulus and facial features.
通过任务诱发的面部线索检测重度抑郁症的新研究
抑郁症是世界范围内常见的精神障碍。患有重度抑郁症(MDD)的人自杀的风险更高。目前的临床实践评估这种心身状态主要基于自我报告和专家评估,这可能存在一系列主观偏见。我们研究了来自中国受试者的任务诱发的面部特征来检测重度抑郁症。此外,我们从Kinect中采集数据,这使得我们在低时间和空间消耗的情况下获得了很好的检测结果。实验在36名重度抑郁症患者和36名健康对照(hc)的年龄、性别和教育水平相匹配的临床数据集上进行。实验结果表明:1)我们提出了一种简单客观的MDD检测方法,平均分类准确率(女性:71.5%,男性:66.7%)均远高于机会水平。在视频观看任务中,分类准确率最高(女性:86.8%,男性:79.4%)。2)中性情绪刺激比正、负情绪刺激更有利于数据收集。3)在中性情绪效价中,眉毛和嘴巴比面部其他部位的贡献更大。这些结果表明,从面部指标检测重度抑郁症是可行的,我们提供了有效的情绪刺激和面部特征。
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