抑郁症的声音:作为重度抑郁症生物标志物的语言特征。

IF 3.4 2区 医学 Q2 PSYCHIATRY
Felix Menne, Felix Dörr, Julia Schräder, Johannes Tröger, Ute Habel, Alexandra König, Lisa Wagels
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引用次数: 0

摘要

背景:精神病学由于缺乏客观的生物标志物而面临挑战,因为目前的评估都是基于主观评价。自动语音分析有望检测抑郁症患者的症状严重程度。本项目旨在通过研究与症状严重程度测量的关联,确定重度抑郁症(MDD)患者和健康对照组(HCs)之间的辨别语音特征:方法:招募了德国亚琛大学医院精神科的 44 名重度抑郁症患者和 52 名健康对照者。参与者描述了积极和消极的生活事件,并将其记录下来进行分析。贝克抑郁量表(BDI-II)和汉密尔顿抑郁评定量表可衡量抑郁的严重程度。转录的音频录音进行了特征提取,包括声学、语速和内容。机器学习模型包括语音特征和神经心理学评估,用于区分 MDD 患者和 HCs:结果:音调和响度等声学变量在 MDD 患者和 HCs 之间存在显著差异(效应大小 𝜼2 在 0.183 和 0.3 之间,p 结论:该研究发现了与 MDD 患者和 HCs 相关的强大语音特征:本研究发现了与 MDD 相关的强大语音特征。基于语音特征的机器学习模型得出了与纸笔抑郁评估相似的结果。未来,这些发现可能会形成基于语音的生物标志物,从而加强临床诊断和 MDD 监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The voice of depression: speech features as biomarkers for major depressive disorder.

Background: Psychiatry faces a challenge due to the lack of objective biomarkers, as current assessments are based on subjective evaluations. Automated speech analysis shows promise in detecting symptom severity in depressed patients. This project aimed to identify discriminating speech features between patients with major depressive disorder (MDD) and healthy controls (HCs) by examining associations with symptom severity measures.

Methods: Forty-four MDD patients from the Psychiatry Department, University Hospital Aachen, Germany and fifty-two HCs were recruited. Participants described positive and negative life events, which were recorded for analysis. The Beck Depression Inventory (BDI-II) and the Hamilton Rating Scale for Depression gauged depression severity. Transcribed audio recordings underwent feature extraction, including acoustics, speech rate, and content. Machine learning models including speech features and neuropsychological assessments, were used to differentiate between the MDD patients and HCs.

Results: Acoustic variables such as pitch and loudness differed significantly between the MDD patients and HCs (effect sizes 𝜼2 between 0.183 and 0.3, p < 0.001). Furthermore, variables pertaining to temporality, lexical richness, and speech sentiment displayed moderate to high effect sizes (𝜼2 between 0.062 and 0.143, p < 0.02). A support vector machine (SVM) model based on 10 acoustic features showed a high performance (AUC = 0.93) in differentiating between HCs and patients with MDD, comparable to an SVM based on the BDI-II (AUC = 0.99, p = 0.01).

Conclusions: This study identified robust speech features associated with MDD. A machine learning model based on speech features yielded similar results to an established pen-and-paper depression assessment. In the future, these findings may shape voice-based biomarkers, enhancing clinical diagnosis and MDD monitoring.

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来源期刊
BMC Psychiatry
BMC Psychiatry 医学-精神病学
CiteScore
5.90
自引率
4.50%
发文量
716
审稿时长
3-6 weeks
期刊介绍: BMC Psychiatry is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of psychiatric disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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