基于视听数据的精神障碍共病自动检测研究

Rohan kumar Gupta, R. Sinha
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摘要

据报道,患有一种精神障碍的患者可能随着时间的推移发展成其他精神障碍。多种疾病同时存在的情况称为共病。对精神障碍的治疗需要在合并症的情况下进行调整。因此,检测合并症是必要的。重度抑郁症(MDD)和创伤后应激障碍(PTSD)之间的共病通过几种方式进行了很好的研究,这些方式要么是侵入性的,要么是昂贵的。近年来,音频-视频模式已被探索用于检测几种非侵入性和成本效益高的精神障碍。音频-视频法检测重度抑郁症与创伤后应激障碍的合并症尚未见报道。在这项研究中,我们介绍了在公开可用的音频-视频数据集上检测重度抑郁症和创伤后应激障碍共病的初步工作。为了分别检测MDD/PTSD共病,我们创建了两个重叠的数据集子集,其中包括被诊断为MDD/PTSD的参与者。两个子集中的重叠部分包括被诊断为重度抑郁症和PTSD的参与者的数据。MDD共病检测的最佳表现为宏观平均F1score为0.789。而PTSD合并症的检测结果为0.647。
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On the Automatic Detection of Comorbidity of Mental Disorders Using Audio-Visual Data
It is reported that a patient with a mental disorder may develop other mental disorders over time. The condition of the simultaneous existence of multiple disorders is referred to as comorbidity. The treatment for a mental disorder is required to be modulated in the case of comorbidity. Thus, the detection of comorbidity is necessary. The comorbidity between major depressive disorder (MDD) and post-traumatic stress disorder (PTSD) is well investigated through several modalities, which are either intrusive or costly. Recently, the audio-video modality has been explored to detect several mental disorders for being non-intrusive and cost-effective. The comorbidity detection between MDD and PTSD on audio-video modality is yet to be reported. In this study, we present initial work on the detection of comorbidity between MDD and PTSD on a publicly available audio-video dataset. To detect MDD/PTSD comorbidity separately, we created two overlapping subsets of the dataset comprising participants diagnosed with MDD/PTSD. The overlapping part in the two subsets comprises data of participants diagnosed with both MDD and PTSD. The best performance for MDD comorbidity detection is found to be 0.789 in terms of macro-averaging F1score. In contrast, it is found to be 0.647 for PTSD comorbidity detection.
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