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Detecting Depression Using an Ensemble Logistic Regression Model Based on Multiple Speech Features

机译:使用基于多个语音特征的集成逻辑回归模型检测抑郁

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摘要

Early intervention for depression is very important to ease the disease burden, but current diagnostic methods are still limited. This study investigated automatic depressed speech classification in a sample of 170 native Chinese subjects (85 healthy controls and 85 depressed patients). The classification performances of prosodic, spectral, and glottal speech features were analyzed in recognition of depression. We proposed an ensemble logistic regression model for detecting depression (ELRDD) in speech. The logistic regression, which was superior in recognition of depression, was selected as the base classifier. This ensemble model extracted many speech features from different aspects and ensured diversity of the base classifier. ELRDD provided better classification results than the other compared classifiers. A technique for identifying depression based on ELRDD, ELRDD-E, was here suggested and tested. It offered encouraging outcomes, revealing a high accuracy level of 75.00% for females and 81.82% for males, as well as an advantageous sensitivity/specificity ratio of 79.25%/70.59% for females and 78.13%/85.29% for males.
机译:对抑郁症的早期干预对于减轻疾病负担非常重要,但是目前的诊断方法仍然有限。这项研究调查了170名中国人的样本(85名健康对照者和85名抑郁症患者)的自动抑郁言语分类。分析了韵律,频谱和声门语音特征的分类性能以识别抑郁症。我们提出了一种集成的逻辑回归模型来检测语音中的抑郁(ELRDD)。选择对抑郁症的识别能力更好的逻辑回归作为基础分类器。该集成模型从不同方面提取了许多语音特征,并确保了基础分类器的多样性。 ELRDD提供了比其他比较分类器更好的分类结果。本文提出并测试了一种基于ELRDD的抑郁症识别技术ELRDD-E。它提供了令人鼓舞的结果,揭示了女性的75.00%的高精度水平和男性的81.82%的高精度水平,以及女性和男性的78.13%/ 85.29%的有利敏感性/特异性比,分别为79.25%/ 70.59%。

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