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Detection of mood disorder using speech emotion profiles and LSTM

机译:使用语音情感配置文件和LSTM检测情绪障碍

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In mood disorder diagnosis, bipolar disorder (BD) patients are often misdiagnosed as unipolar depression (UD) on initial presentation. It is crucial to establish an accurate distinction between BD and UD to make a correct and early diagnosis, leading to improvements in treatment and course of illness. To deal with this misdiagnosis problem, in this study, we experimented on eliciting subjects' emotions by watching six eliciting emotional video clips. After watching each video clips, their speech responses were collected when they were interviewing with a clinician. In mood disorder detection, speech emotions play an import role to detect manic or depressive symptoms. Therefore, speech emotion profiles (EP) are obtained by using the support vector machine (SVM) which are built via speech features adapted from selected databases using a denoising autoencoder-based method. Finally, a Long Short-Term Memory (LSTM) recurrent neural network is employed to characterize the temporal information of the EPs with respect to six emotional videos. Comparative experiments clearly show the promising advantage and efficacy of the LSTM-based approach for mood disorder detection.
机译:在情绪障碍诊断中,双相情感障碍(BD)患者在初次出现时常被误诊为单相抑郁(UD)。在BD和UD之间建立准确的区分是至关重要的,以便做出正确的早期诊断,从而改善治疗和病程。为了解决这个误诊问题,在本研究中,我们通过观看六个诱发情感的视频剪辑来尝试激发受试者的情绪。观看了每个视频片段后,他们在与临床医生面谈时收集了他们的语音回复。在情绪障碍检测中,言语情绪在检测躁狂或抑郁症状中起重要作用。因此,通过使用支持向量机(SVM)获得语音情感配置文件(EP),该支持向量机是通过使用基于降噪自动编码器的方法从选定数据库中改编的语音特征构建而成的。最后,采用长期短期记忆(LSTM)递归神经网络来表征关于六个情感视频的EP的时间信息。对比实验清楚地表明了基于LSTM的方法在情绪障碍检测方面的有前途的优势和功效。

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