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Distinguishing depression and suicidal risk in men using GMM based frequency contents of affective vocal tract response

机译:使用基于GMM的情感声道反应频率内容区分男性抑郁和自杀风险

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Two types of speech recording collected from three groups of male subjects clinically diagnosed with depression, remission from depression, and suicidal potential were analyzed and investigated for their acoustic features derived from sub-band energy over 0-2 KHz and GMM-based spectrum of the vocal tract response. Spontaneous and text-reading speech samples characterized by different vocal features revealed significant between-class separation power. Especially, features extracted from the reading speech seemed to provide more separability between classes than those of the spontaneous speech. Additionally, high classification accuracy confirmed that the studied features were capable of distinguishing groups of different diagnostic subjects efficiently. In classifying depressed/suicidal subjects the correct score of classification was at 88.5% for features extracted from reading speech samples, while 85.58% was found from classifying spontaneous speech features. These results were considered to be fairly high in classification performance, which is supportive of the promising ability to distinguish two diagnostic groups whose speech samples changed in their acoustic properties and correlated of serious mental states, known as vocal affects. Our findings suggested some clues in diagnosis of psychiatric disorders for psychiatrist.
机译:从临床诊断为抑郁症,抑郁症缓解和自杀潜能的三组男性受试者中收集了两种语音记录,并分析了它们的声音特征,这些声音特征来自于0-2 KHz的子带能量以及基于GMM的声道反应。具有不同人声特征的自发和阅读文本的语音样本显示出明显的阶级间分离能力。尤其是,从阅读语音中提取的特征似乎比自发语音具有更多的可分离性。另外,高分类精度证实了所研究的特征能够有效地区分不同诊断主题的组。在对抑郁/自杀对象进行分类时,从阅读语音样本中提取的特征的正确分类率为88.5%,而对自发语音特征进行分类的正确率为85.58%。这些结果在分类性能上被认为是相当高的,这支持了区分两个诊断组的有前途的能力,这两个诊断组的语音样本的声学特性发生了变化,并且与严重的精神状态相关,这被称为人声。我们的发现为精神科医生诊断精神疾病提供了一些线索。

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