Depression Severity Assessment for Adolescents at High Risk of Mental Disorders.

Michal Muszynski, Jamie Zelazny, Jeffrey M Girard, Louis-Philippe Morency
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Abstract

Recent progress in artificial intelligence has led to the development of automatic behavioral marker recognition, such as facial and vocal expressions. Those automatic tools have enormous potential to support mental health assessment, clinical decision making, and treatment planning. In this paper, we investigate nonverbal behavioral markers of depression severity assessed during semi-structured medical interviews of adolescent patients. The main goal of our research is two-fold: studying a unique population of adolescents at high risk of mental disorders and differentiating mild depression from moderate or severe depression. We aim to explore computationally inferred facial and vocal behavioral responses elicited by three segments of the semi-structured medical interviews: Distress Assessment Questions, Ubiquitous Questions, and Concept Questions. Our experimental methodology reflects best practise used for analyzing small sample size and unbalanced datasets of unique patients. Our results show a very interesting trend with strongly discriminative behavioral markers from both acoustic and visual modalities. These promising results are likely due to the unique classification task (mild depression vs. moderate and severe depression) and three types of probing questions.

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精神障碍高危青少年抑郁严重程度评估》。
人工智能领域的最新进展推动了行为标记自动识别技术的发展,例如面部和声音表情。这些自动工具在支持心理健康评估、临床决策和治疗计划方面有着巨大的潜力。在本文中,我们研究了在对青少年患者进行半结构化医学访谈时评估抑郁症严重程度的非语言行为标记。我们研究的主要目标有两个方面:研究精神障碍高风险青少年这一特殊群体,以及区分轻度抑郁与中度或重度抑郁。我们的目标是探索通过计算推断半结构化医疗访谈的三个片段所引起的面部和声音行为反应:压力评估问题、泛在问题和概念问题。我们的实验方法反映了用于分析小样本量和不平衡数据集的最佳实践。我们的结果显示了一个非常有趣的趋势,即声学和视觉模式中的行为标记都具有很强的区分性。这些令人鼓舞的结果可能得益于独特的分类任务(轻度抑郁与中度和重度抑郁)和三种类型的探究性问题。
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