解读精神分裂症的语言障碍:使用微调语言模型的研究

IF 3.6 2区 医学 Q1 PSYCHIATRY Schizophrenia Research Pub Date : 2024-07-17 DOI:10.1016/j.schres.2024.07.016
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引用次数: 0

摘要

这项研究提出了两个稳定的语言指标,即成功预测率(SPR)和语流不顺(DF),用于客观量化与精神分裂症相关的语言障碍。这些新颖的语言指标可通过语音信息建模和微调技术捕捉患者言语中的离题反应和不连贯现象。此外,这些指标还具有文化敏感性,能更全面地评估精神分裂症患者的语言异常。这项研究在从中国主要精神健康论坛获得的 750 MB 文本语料库上对 ELECTRA 预训练语言模型进行了微调。微调后的语言模型的有效性在由 38 名被诊断为精神分裂症的患者和 25 名经过细致匹配的健康对照者组成的群体中得到了验证。研究探讨了微调语言模型与积极与消极综合征量表(PANSS)项目之间的关联。结果表明,健康对照组的 SPR 更高,表明预训练语言模型的语言理解能力更强。相反,精神分裂症患者的 DF 值更高,这表明他们的语言结构更不一致。语言特征与 P2(概念混乱)之间的关系显示,P2 呈阳性的患者表现出较低的 SPR 和较高的 DF。使用综合 SPR 和 DF 特征的二元逻辑回归对 P2 进行分类的准确率达到 84.5%,比传统特征的准确率高出 20.5%。此外,多元线性回归分析表明,所提出的语言特征在判别 FTD(形式思维障碍)方面优于传统语言特征。
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Deciphering language disturbances in schizophrenia: A study using fine-tuned language models

This research presents two stable language metrics, namely Successful Prediction Rate (SPR) and Disfluency (DF), to objectively quantify the linguistic disturbances associated with schizophrenia. These novel language metrics can capture both off-topic responses and incoherence in patients' speech by modeling speech information and fine-tuning techniques. Additionally, these metrics exhibit cultural sensitivity while providing a more comprehensive evaluation of linguistic abnormalities in schizophrenia.

This research fine-tuned the ELECTRA Pretrained Language Model on a 750 MB text corpus obtained from major Chinese mental health forums. The effectiveness of the fine-tuned language model is verified on a group comprising 38 individuals diagnosed with schizophrenia and 25 meticulously matched healthy controls. The study explores the association between the fine-tuned language model and the Positive and Negative Syndrome Scale (PANSS) items.

The results demonstrate that SPR is higher in healthy controls, indicating better language understanding by the pre-trained language model. Conversely, DF is higher in individuals with schizophrenia, indicating more inconsistent language structure. The relationship between linguistic features and P2 (conceptual disorganization) reveals that patients with positive P2 exhibit lower SPR and higher DF. Binary logistic regression using the combined SPR and DF features achieves 84.5 % accuracy in classifying P2, exceeding the performance of traditional features by 20.5 %. Moreover, the proposed linguistic features outperform traditional linguistic features in discriminating FTD (formal thought disorder), as demonstrated by multivariate linear regression analysis.

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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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