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Identification of Signs of Depression Relapse using Audio-visual Cues: A Preliminary Study

机译:使用视听线索识别抑郁复发迹象:初步研究

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Depression is a serious mental disorder that affects many individuals across the globe. Depression (unipolar or bipolar) is characterized by a high rate of relapse or recurrence where a person might experience depressive episodes after non-depressive ones. The symptom patterns for recurrent depressive episodes have not been properly analyzed. Thus, there is a pressing need for systems which can monitor the mental health of individuals at risk to detect initial signs of relapse and recurrence. This points towards an automated system which identifies such signs and facilitates in timely treatment. In this paper, we introduce for the first time a deep learning based prospective monitoring system for the identification of relapse signs using audio-visual cues. The proposed model approximates relapse as the similarity between non-depression and depression samples. Experiments were performed on the DAIC-WOZ dataset and a highest accuracy of 73.21% was obtained using a Siamese network-based approach with one-shot learning regime.
机译:抑郁症是一种严重的精神障碍,影响全球许多人。抑郁症(单极或双极)的特征在于,在非抑郁症后的人可能会体验抑郁发作的情况下,其特点是高度复发或复发。尚未得到适当分析复发性抑郁发作的症状模式。因此,对可以在风险中监测个人心理健康的系统,以检测复发和复发的初始迹象。这一点朝向自动化系统识别出这样的迹象并及时促进。在本文中,我们首次介绍了基于深度学习的前瞻性监测系统,用于使用视听线索识别复发符号。所提出的模型近似于复发作为非抑郁和抑郁样本之间的相似性。在Daic-Woz DataSet上进行实验,使用基于暹罗网络的方法获得了73.21%的最高精度,并使用单次学习制度获得。

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