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言语和嗓音特征在精神分裂症和抑郁症分类中的相对重要性。

Relative importance of speech and voice features in the classification of schizophrenia and depression.

机构信息

Department of Psychiatry and Psychotherapy, University Hospital Bonn, Bonn, Germany.

Department of Psychiatry and Psychotherapy, University of Marburg, Marburg, Germany.

出版信息

Transl Psychiatry. 2023 Sep 19;13(1):298. doi: 10.1038/s41398-023-02594-0.

Abstract

Speech is a promising biomarker for schizophrenia spectrum disorder (SSD) and major depressive disorder (MDD). This proof of principle study investigates previously studied speech acoustics in combination with a novel application of voice pathology features as objective and reproducible classifiers for depression, schizophrenia, and healthy controls (HC). Speech and voice features for classification were calculated from recordings of picture descriptions from 240 speech samples (20 participants with SSD, 20 with MDD, and 20 HC each with 4 samples). Binary classification support vector machine (SVM) models classified the disorder groups and HC. For each feature, the permutation feature importance was calculated, and the top 25% most important features were used to compare differences between the disorder groups and HC including correlations between the important features and symptom severity scores. Multiple kernels for SVM were tested and the pairwise models with the best performing kernel (3-degree polynomial) were highly accurate for each classification: 0.947 for HC vs. SSD, 0.920 for HC vs. MDD, and 0.932 for SSD vs. MDD. The relatively most important features were measures of articulation coordination, number of pauses per minute, and speech variability. There were moderate correlations between important features and positive symptoms for SSD. The important features suggest that speech characteristics relating to psychomotor slowing, alogia, and flat affect differ between HC, SSD, and MDD.

摘要

言语是精神分裂症谱系障碍(SSD)和重度抑郁症(MDD)的有前途的生物标志物。这项初步研究调查了先前研究过的语音声学,以及将语音病理学特征作为客观且可重复的抑郁、精神分裂症和健康对照(HC)分类器的新应用。从 240 个语音样本(每个组 20 名 SSD 患者、20 名 MDD 患者和 20 名 HC 患者,每个组 4 个样本)的图片描述录音中计算出语音和语音特征进行分类。支持向量机(SVM)的二进制分类模型对障碍组和 HC 进行分类。对于每个特征,计算了排列特征重要性,并使用前 25%最重要的特征来比较障碍组和 HC 之间的差异,包括重要特征与症状严重程度评分之间的相关性。对 SVM 的多个核进行了测试,并且性能最佳核(3 次多项式)的成对模型对每种分类都非常准确:HC 与 SSD 为 0.947,HC 与 MDD 为 0.920,SSD 与 MDD 为 0.932。相对重要的特征是发音协调度、每分钟停顿次数和语音变化性的测量值。在 SSD 中,重要特征与阳性症状之间存在中度相关性。重要特征表明,与精神运动迟缓、寡语症和情感平淡相关的言语特征在 HC、SSD 和 MDD 之间存在差异。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8844/10509176/d5c10e8d9b68/41398_2023_2594_Fig1_HTML.jpg

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