语音分析在精神病学中的应用。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Katerina Dikaios, Sheri Rempel, Sri Harsha Dumpala, Sageev Oore, Michael Kiefte, Rudolf Uher
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引用次数: 0

摘要

摘要:精神病学对客观测量的需求激发了人们对疾病存在和严重程度的替代指标的兴趣。在评估精神障碍时,言语可能是连接主观和客观的信息来源。我们对文献进行了系统性的梳理,以查找探讨语音分析在精神科应用的文章。言语分析的实用性取决于言语特征在疾病内部和疾病之间如何准确地反映临床症状。我们在文献中确定了语音分析应用的四个领域:诊断分类、疾病严重程度评估、发病预测以及预后和治疗结果。我们讨论了每个领域的研究结果,重点是语音特征类型如何描述精神病理学的不同方面。汇集多种语音特征的模型可以高精度地区分患有精神障碍的说话者和健康对照者。区分精神障碍类型和症状维度是更为复杂的问题,暴露了语音特征的跨诊断性质。语音研究和计算机科学的共同进步为在临床实践中实施语音分析以提高评估的客观性开辟了道路。语音分析的应用需要解决伦理和公平问题,包括通过从临床评估数据中学习的模型可能造成的歧视性偏见。减轻偏见的方法是可用的,并应在语音分析的实施中发挥关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Speech Analysis in Psychiatry.

Abstract: The need for objective measurement in psychiatry has stimulated interest in alternative indicators of the presence and severity of illness. Speech may offer a source of information that bridges the subjective and objective in the assessment of mental disorders. We systematically reviewed the literature for articles exploring speech analysis for psychiatric applications. The utility of speech analysis depends on how accurately speech features represent clinical symptoms within and across disorders. We identified four domains of the application of speech analysis in the literature: diagnostic classification, assessment of illness severity, prediction of onset of illness, and prognosis and treatment outcomes. We discuss the findings in each of these domains, with a focus on how types of speech features characterize different aspects of psychopathology. Models that bring together multiple speech features can distinguish speakers with psychiatric disorders from healthy controls with high accuracy. Differentiating between types of mental disorders and symptom dimensions are more complex problems that expose the transdiagnostic nature of speech features. Convergent progress in speech research and computer sciences opens avenues for implementing speech analysis to enhance objectivity of assessment in clinical practice. Application of speech analysis will need to address issues of ethics and equity, including the potential to perpetuate discriminatory bias through models that learn from clinical assessment data. Methods that mitigate bias are available and should play a key role in the implementation of speech analysis.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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