利用计算机化声音表达的机器学习来测量钝性声音影响和哀痛。

IF 5.7 2区 医学 Q1 PSYCHIATRY
Alex S Cohen, Christopher R Cox, Thanh P Le, Tovah Cowan, Michael D Masucci, Gregory P Strauss, Brian Kirkpatrick
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引用次数: 16

摘要

阴性症状是严重精神疾病(SMI)的一种跨诊断特征,可以使用客观的声音分析进行潜在的“数字表型”。在先前的研究中,声乐测量显示与临床评分的收敛性较低,可能是因为分析使用了小的、受限的声学特征集。我们试图评估(1)是否可以使用机器学习(ML)使用来自两个独立任务(即20-s的“图片”和60-s的“自由回忆”任务)的大型特征集准确地建模临床评定的钝声情感(BvA)/痛症,(2)“预测”的BvA/痛症(从ML模型计算)是否与人口统计学,诊断,精神症状和认知/社会功能相关,以及(3)哪些关键的声音特征是BvA/痛症评分的核心。准确率很高(>90%),并且在通过说话任务单独计算时得到了提高。ML评分与较差的认知表现和社会功能有关,精神分裂症患者的ML评分高于抑郁症或躁狂症患者。然而,被确定为BvA/Alogia最具预测性的特征通常不被认为是其操作定义的关键。讨论了验证和实施数字表型以减轻重度精神障碍负担的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Using machine learning of computerized vocal expression to measure blunted vocal affect and alogia.

Using machine learning of computerized vocal expression to measure blunted vocal affect and alogia.

Negative symptoms are a transdiagnostic feature of serious mental illness (SMI) that can be potentially "digitally phenotyped" using objective vocal analysis. In prior studies, vocal measures show low convergence with clinical ratings, potentially because analysis has used small, constrained acoustic feature sets. We sought to evaluate (1) whether clinically rated blunted vocal affect (BvA)/alogia could be accurately modelled using machine learning (ML) with a large feature set from two separate tasks (i.e., a 20-s "picture" and a 60-s "free-recall" task), (2) whether "Predicted" BvA/alogia (computed from the ML model) are associated with demographics, diagnosis, psychiatric symptoms, and cognitive/social functioning, and (3) which key vocal features are central to BvA/Alogia ratings. Accuracy was high (>90%) and was improved when computed separately by speaking task. ML scores were associated with poor cognitive performance and social functioning and were higher in patients with schizophrenia versus depression or mania diagnoses. However, the features identified as most predictive of BvA/Alogia were generally not considered critical to their operational definitions. Implications for validating and implementing digital phenotyping to reduce SMI burden are discussed.

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来源期刊
NPJ Schizophrenia
NPJ Schizophrenia Medicine-Psychiatry and Mental Health
CiteScore
6.30
自引率
0.00%
发文量
44
审稿时长
15 weeks
期刊介绍: npj Schizophrenia is an international, peer-reviewed journal that aims to publish high-quality original papers and review articles relevant to all aspects of schizophrenia and psychosis, from molecular and basic research through environmental or social research, to translational and treatment-related topics. npj Schizophrenia publishes papers on the broad psychosis spectrum including affective psychosis, bipolar disorder, the at-risk mental state, psychotic symptoms, and overlap between psychotic and other disorders.
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