对精神病临床高危青少年进行自动语言分析

IF 3.6 2区 医学 Q1 PSYCHIATRY
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引用次数: 0

摘要

识别精神病临床高危人群(CHRP)对于预防精神病和改善精神分裂症的预后至关重要。CHR-P患者可能会表现出轻微的形式思维障碍(FTD),这使得使用自然语言处理(NLP)方法识别他们成为可能。在这项研究中,我们使用主题感知测试图像采集了 62 名 CHR-P 患者和 45 名健康对照者(HCs)的语音样本。评估涉及各种 NLP 测量方法,如语义相似性、通用性和语音部分(POS)特征。CHR-P 组的句子语义相似性更高,图像到文本的平均相似性更低。在通用分析方面,他们减少了口头禅,并用较短的单词写出了较短的句子。POS 分析显示,与 HC 相比,CHR-P 组的副词、连词和第一人称单数代词的使用率有所下降,而形容词的使用率有所上升。此外,我们还开发了一个基于 30 个 NLP 衍生特征的机器学习模型,用于区分 CHR-P 组和 HC 组。该模型的准确率为 79.6%,AUC-ROC 为 0.86。总之,这些研究结果表明,语音的自动语言分析可以为临床高危阶段的 FTD 特征描述提供有价值的信息,并有可能客观地应用于精神病的早期干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated linguistic analysis in youth at clinical high risk for psychosis

Identifying individuals at clinical high risk for psychosis (CHRP) is crucial for preventing psychosis and improving the prognosis for schizophrenia. Individuals at CHR-P may exhibit mild forms of formal thought disorder (FTD), making it possible to identify them using natural language processing (NLP) methods. In this study, speech samples of 62 CHR-P individuals and 45 healthy controls (HCs) were elicited using Thematic Apperception Test images. The evaluation involved various NLP measures such as semantic similarity, generic, and part-of-speech (POS) features. The CHR-P group demonstrated higher sentence-level semantic similarity and reduced mean image-to-text similarity. Regarding generic analysis, they demonstrated reduced verbosity and produced shorter sentences with shorter words. The POS analysis revealed a decrease in the utilization of adverbs, conjunctions, and first-person singular pronouns, alongside an increase in the utilization of adjectives in the CHR-P group compared to HC. In addition, we developed a machine-learning model based on 30 NLP-derived features to distinguish between the CHR-P and HC groups. The model demonstrated an accuracy of 79.6 % and an AUC-ROC of 0.86. Overall, these findings suggest that automated language analysis of speech could provide valuable information for characterizing FTD during the clinical high-risk phase and has the potential to be applied objectively for early intervention for psychosis.

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来源期刊
Schizophrenia Research
Schizophrenia Research 医学-精神病学
CiteScore
7.50
自引率
8.90%
发文量
429
审稿时长
10.2 weeks
期刊介绍: As official journal of the Schizophrenia International Research Society (SIRS) Schizophrenia Research is THE journal of choice for international researchers and clinicians to share their work with the global schizophrenia research community. More than 6000 institutes have online or print (or both) access to this journal - the largest specialist journal in the field, with the largest readership! Schizophrenia Research''s time to first decision is as fast as 6 weeks and its publishing speed is as fast as 4 weeks until online publication (corrected proof/Article in Press) after acceptance and 14 weeks from acceptance until publication in a printed issue. The journal publishes novel papers that really contribute to understanding the biology and treatment of schizophrenic disorders; Schizophrenia Research brings together biological, clinical and psychological research in order to stimulate the synthesis of findings from all disciplines involved in improving patient outcomes in schizophrenia.
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