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评估言语分析和机器学习在精神分裂症中的临床效用:一项初步研究。

Evaluating the clinical utility of speech analysis and machine learning in schizophrenia: A pilot study.

作者信息

Huang Jie, Zhao Yanli, Tian Zhanxiao, Qu Wei, Du Xia, Zhang Jie, Tan Yunlong, Wang Zhiren, Tan Shuping

机构信息

Beijing HuiLongGuan Hospital, Peking University HuiLongGuan Clinical Medical School, Beijing, 100096, China.

Beijing HuiLongGuan Hospital, Peking University HuiLongGuan Clinical Medical School, Beijing, 100096, China.

出版信息

Comput Biol Med. 2023 Sep;164:107359. doi: 10.1016/j.compbiomed.2023.107359. Epub 2023 Aug 13.

Abstract

BACKGROUND

Schizophrenia is a serious mental disorder that significantly impacts social functioning and quality of life. However, current diagnostic methods lack objective biomarker support. While some studies have indicated differences in audio features between patients with schizophrenia and healthy controls, these findings are influenced by demographic information and variations in experimental paradigms. Therefore, it is crucial to explore stable and reliable audio biomarkers for an auxiliary diagnosis and disease severity prediction of schizophrenia.

METHOD

A total of 130 individuals (65 patients with schizophrenia and 65 healthy controls) read three fixed texts containing positive, neutral, and negative emotions, and recorded them. All audio signals were preprocessed and acoustic features were extracted by a librosa-0.9.2 toolkit. Independent sample t-tests were performed on two sets of acoustic features, and Pearson correlation on the acoustic features and Positive and Negative Syndrome Scale (PANSS) scores of the schizophrenia group. Classification algorithms in scikit-learn were used to diagnose schizophrenia and predict the level of negative symptoms.

RESULTS

Significant differences were observed between the two groups in the mfcc_8, mfcc_11, and mfcc_33 of mel-frequency cepstral coefficient (MFCC). Furthermore, a significant correlation was found between mfcc_7 and the negative PANSS scores. Through acoustic features, we could not only differentiate patients with schizophrenia from healthy controls with an accuracy of 0.815 but also predict the grade of the negative symptoms in schizophrenia with an average accuracy of 0.691.

CONCLUSIONS

The results demonstrated the considerable potential of acoustic characteristics as reliable biomarkers for diagnosing schizophrenia and predicting clinical symptoms.

摘要

背景

精神分裂症是一种严重的精神障碍,对社会功能和生活质量有重大影响。然而,目前的诊断方法缺乏客观生物标志物支持。虽然一些研究表明精神分裂症患者与健康对照者在音频特征上存在差异,但这些发现受到人口统计学信息和实验范式差异的影响。因此,探索稳定可靠的音频生物标志物用于精神分裂症的辅助诊断和疾病严重程度预测至关重要。

方法

共有130名个体(65名精神分裂症患者和65名健康对照者)阅读了包含积极、中性和消极情绪的三篇固定文本,并进行录音。所有音频信号均进行预处理,声学特征由librosa-0.9.2工具包提取。对两组声学特征进行独立样本t检验,并对精神分裂症组的声学特征与阳性和阴性症状量表(PANSS)评分进行Pearson相关性分析。使用scikit-learn中的分类算法诊断精神分裂症并预测阴性症状水平。

结果

两组在梅尔频率倒谱系数(MFCC)的mfcc_8、mfcc_11和mfcc_33上存在显著差异。此外,发现mfcc_7与阴性PANSS评分之间存在显著相关性。通过声学特征,我们不仅能够以0.815的准确率区分精神分裂症患者与健康对照者,还能够以平均0.691的准确率预测精神分裂症患者阴性症状的等级。

结论

结果表明声学特征作为诊断精神分裂症和预测临床症状的可靠生物标志物具有巨大潜力。

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