Liu Xiaoqian, Wang Xiaoyang
Institute of Psychology, Chinese Academy of Sciences, Beijing 100107, China.
Department of Psychology, University of Chinese Academy of Sciences, Beijing 101408, China.
Healthcare (Basel). 2022 Nov 22;10(12):2347. doi: 10.3390/healthcare10122347.
The Center for Epidemiologic Studies Depression Scale (CES-D) performs well in screening depression in primary care. However, people are looking for alternatives because it screens for too many items. With the popularity of social media platforms, facial movement can be recorded ecologically. Considering that there are nonverbal behaviors, including facial movement, associated with a depressive state, this study aims to establish an automatic depression recognition model to be easily used in primary healthcare. We integrated facial activities and gaze behaviors to establish a machine learning algorithm (Kernal Ridge Regression, KRR). We compared different algorithms and different features to achieve the best model. The results showed that the prediction effect of facial and gaze features was higher than that of only facial features. In all of the models we tried, the ridge model with a periodic kernel showed the best performance. The model showed a mutual fund R-squared (R2) value of 0.43 and a Pearson correlation coefficient (r) value of 0.69 (p < 0.001). Then, the most relevant variables (e.g., gaze directions and facial action units) were revealed in the present study.
流行病学研究中心抑郁量表(CES-D)在初级保健中筛查抑郁症方面表现良好。然而,由于它筛查的项目过多,人们正在寻找替代方法。随着社交媒体平台的普及,可以在自然环境中记录面部动作。考虑到存在包括面部动作在内的与抑郁状态相关的非语言行为,本研究旨在建立一种易于在初级医疗保健中使用的自动抑郁识别模型。我们整合了面部活动和注视行为来建立一种机器学习算法(核岭回归,KRR)。我们比较了不同的算法和不同的特征以获得最佳模型。结果表明,面部和注视特征的预测效果高于仅面部特征。在我们尝试的所有模型中,具有周期核的岭模型表现最佳。该模型的决定系数(R2)值为0.43,皮尔逊相关系数(r)值为0.69(p < 0.001)。然后,本研究揭示了最相关的变量(如注视方向和面部动作单元)。