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Detection of mood disorder using speech emotion profiles and LSTM

机译:使用语音情感概况和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,双相障碍(BD)患者通常在初始介绍时被误诊为单极性抑郁(UD)。重要的是在BD和UD之间建立准确的区别,以进行正确和早期的诊断,导致治疗和疾病过程中的改善。在这项研究中处理这种误诊问题,我们通过观看六个引发情绪视频剪辑来试图引发主题的情感。在观看每个视频剪辑后,他们在与临床医生面试时收集他们的语音响应。在情绪障碍检测中,语音情绪发挥了进口作用以检测躁狂症或抑郁症状。因此,通过使用通过使用基于DeAniSEncoder的方法的由所选数据库适应的语音特征构建的支持向量机(SVM)来获得语音情绪简档(EP)。最后,采用长期短期记忆(LSTM)复发性神经网络来表征EPS关于六个情绪视频的时间信息。比较实验清楚地展示了基于LSTM的情绪障碍检测方法的有希望的优势和功效。

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