Multimodal Detection of Depression in Clinical Interviews.

Hamdi Dibeklioğlu, Zakia Hammal, Ying Yang, Jeffrey F Cohn
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引用次数: 72

Abstract

Current methods for depression assessment depend almost entirely on clinical interview or self-report ratings. Such measures lack systematic and efficient ways of incorporating behavioral observations that are strong indicators of psychological disorder. We compared a clinical interview of depression severity with automatic measurement in 48 participants undergoing treatment for depression. Interviews were obtained at 7-week intervals on up to four occasions. Following standard cut-offs, participants at each session were classified as remitted, intermediate, or depressed. Logistic regression classifiers using leave-one-out validation were compared for facial movement dynamics, head movement dynamics, and vocal prosody individually and in combination. Accuracy (remitted versus depressed) for facial movement dynamics was higher than that for head movement dynamics; and each was substantially higher than that for vocal prosody. Accuracy for all three modalities together reached 88.93%, exceeding that for any single modality or pair of modalities. These findings suggest that automatic detection of depression from behavioral indicators is feasible and that multimodal measures afford most powerful detection.

临床访谈中抑郁症的多模态检测。
目前的抑郁症评估方法几乎完全依赖于临床访谈或自我报告评分。这些措施缺乏系统和有效的方法来纳入行为观察,而行为观察是心理障碍的有力指标。我们比较了48名接受抑郁症治疗的参与者的抑郁严重程度的临床访谈和自动测量。每隔7周进行4次访谈。按照标准的临界值,每次会议的参与者被分为轻度、中度和抑郁。使用留一验证的逻辑回归分类器对面部运动动态、头部运动动态和声乐韵律单独和组合进行了比较。面部运动动态的准确性(缓解与压抑)高于头部运动动态;每一项都明显高于声乐韵律。这三种模式的准确率达到了88.93%,超过了任何单一模式或对模式的准确率。这些发现表明,从行为指标自动检测抑郁症是可行的,多模式的措施提供了最有效的检测。
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