精神分裂症患者访谈的自动言语分析

Shihao Xu, Zixu Yang, Debsubhra Chakraborty, Yasir Tahir, Tomasz Maszczyk, Y. H. V. Chua, J. Dauwels, D. Thalmann, N. Magnenat-Thalmann, Bhing-Leet Tan, J. Lee
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引用次数: 8

摘要

精神分裂症是一种与语言障碍相关的长期精神疾病,影响了大约1%的人口。传统的精神分裂症患者评估是由训练有素的专业人员进行的,这需要大量的时间和精力。这项研究是一个更大的研究目标的一部分,该目标致力于创建自动化平台,以帮助临床诊断和理解精神分裂症。我们在之前的工作中分析了非语言线索和动作信号。在本研究中,我们探讨了使用访谈的自动转录来分类患者和预测精神分裂症患者阴性症状的可观察性的可行性。50名精神分裂症患者和25名年龄匹配的健康对照者的访谈录音由语音识别工具包自动转录。然后,应用自然语言处理技术自动提取词法特征和文本向量。利用这些特征,我们应用集成机器学习算法(通过留一交叉验证)来预测精神分裂症患者的阴性症状评估受试者评分,并将患者与对照组进行分类,最高准确率为78.7%。这些结果表明,精神分裂症患者在词汇使用方面与健康对照者存在显著差异,并可能利用这些词汇特征来理解和诊断精神分裂症。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Verbal Analysis of Interviews with Schizophrenic Patients
Schizophrenia is a long-term mental disease associated with language impairments that affect about one percent of the population. Traditional assessment of schizophrenic patients is conducted by trained professionals, which requires tremendous resources of time and effort. This study is part of a larger research objective committed to creating automated platforms to aid clinical diagnosis and understanding of schizophrenia. We have analyzed non-verbal cues and movement signals in our previous work. In this study, we explore the feasibility of using automatic transcriptions of interviews to classify patients and predict the observability of negative symptoms in schizophrenic patients. Interview recordings of 50 schizophrenia patients and 25 age-matched healthy controls were automatically transcribed by a speech recognition toolkit. After which, Natural Language Processing techniques were applied to automatically extract the lexical features and document vectors of transcriptions. Using these features, we applied ensemble machine learning algorithm (by leave-one-out cross-validation) to predict the Negative Symptom Assessment subject ratings of schizophrenic patients, and to classify patients from controls, achieving a maximum accuracy of 78.7%. These results indicate that schizophrenic patients exhibit significant differences in lexical usage compared with healthy controls, and the possibility of using these lexical features in the understanding and diagnosis of schizophrenia.
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