Deneault Antoine, Dumais Alexandre, Désilets Marie, Hudon Alexandre
Department of Psychiatry and Addictology, Faculty of Medicine, Université de Montréal, Montreal, QC H3T 1J4, Canada.
Department of Psychiatry, Institut Universitaire en santé Mentale de Montréal, Montreal, QC H1N 3M5, Canada.
J Pers Med. 2024 Jul 12;14(7):744. doi: 10.3390/jpm14070744.
(1) Background: Approximately 1% of the global population is affected by schizophrenia, a disorder marked by cognitive deficits, delusions, hallucinations, and language issues. It is associated with genetic, neurological, and environmental factors, and linked to dopaminergic hyperactivity and neurotransmitter imbalances. Recent research reveals that patients exhibit significant language impairments, such as reduced verbal output and fluency. Advances in machine learning and natural language processing show potential for early diagnosis and personalized treatments, but additional research is required for the practical application and interpretation of such technology. The objective of this study is to explore the applications of natural language processing in patients diagnosed with schizophrenia. (2) Methods: A scoping review was conducted across multiple electronic databases, including Medline, PubMed, Embase, and PsycInfo. The search strategy utilized a combination of text words and subject headings, focusing on schizophrenia and natural language processing. Systematically extracted information included authors, population, primary uses of the natural language processing algorithms, main outcomes, and limitations. The quality of the identified studies was assessed. (3) Results: A total of 516 eligible articles were identified, from which 478 studies were excluded based on the first analysis of titles and abstracts. Of the remaining 38 studies, 18 were selected as part of this scoping review. The following six main uses of natural language processing were identified: diagnostic and predictive modeling, followed by specific linguistic phenomena, speech and communication analysis, social media and online content analysis, clinical and cognitive assessment, and linguistic feature analysis. (4) Conclusions: This review highlights the main uses of natural language processing in the field of schizophrenia and the need for more studies to validate the effectiveness of natural language processing in diagnosing and treating schizophrenia.
(1)背景:全球约1%的人口受精神分裂症影响,这是一种以认知缺陷、妄想、幻觉和语言问题为特征的疾病。它与遗传、神经和环境因素相关,且与多巴胺能亢进和神经递质失衡有关。近期研究表明,患者存在显著的语言障碍,如言语输出和流畅性降低。机器学习和自然语言处理的进展显示出早期诊断和个性化治疗的潜力,但此类技术的实际应用和解读还需要更多研究。本研究的目的是探索自然语言处理在精神分裂症诊断患者中的应用。(2)方法:对多个电子数据库进行了范围综述,包括Medline、PubMed、Embase和PsycInfo。搜索策略结合了文本词和主题词,重点关注精神分裂症和自然语言处理。系统提取的信息包括作者、研究人群、自然语言处理算法的主要用途、主要结果和局限性。对纳入研究的质量进行了评估。(3)结果:共识别出516篇符合条件的文章,基于对标题和摘要的初步分析,排除了478项研究。在其余38项研究中,18项被选入本范围综述。确定了自然语言处理的以下六种主要用途:诊断和预测建模,其次是特定语言现象、语音和通信分析、社交媒体和在线内容分析、临床和认知评估以及语言特征分析。(4)结论:本综述强调了自然语言处理在精神分裂症领域的主要用途,以及需要更多研究来验证自然语言处理在精神分裂症诊断和治疗中的有效性。