Suppr超能文献

基于机器学习从初发未用药的精神分裂症患者脑灰质结构预测抗精神病药物疗效

Machine learning-based prediction of antipsychotic efficacy from brain gray matter structure in drug-naive first-episode schizophrenia.

作者信息

Guo Xiaodong, Zhou Enpeng, Wang Xianghe, Huang Bingjie, Gao Tianqi, Pu Chengcheng, Yu Xin

机构信息

Peking University Sixth Hospital, Beijing, China.

Peking University Institute of Mental Health, Beijing, China.

出版信息

Schizophrenia (Heidelb). 2025 Feb 1;11(1):11. doi: 10.1038/s41537-025-00557-6.

Abstract

Predicting patient response to antipsychotic medication is a major challenge in schizophrenia treatment. This study investigates the predictive role of gray matter (GM) in short- and long-term treatment outcomes in drug-naive patients with first-episode schizophrenia (FES). A cohort of 104 drug-naive FES was recruited. Before initiating treatment, T1-weighted anatomical images were captured. The Positive and Negative Syndrome Scale and the Personal and Social Performance Scale were adopted to assess clinical symptoms and social function. At the 3-month follow-up, patients were categorized into remission and non-remission groups. At 1-year follow-up, patients were categorized into the rehabilitation and non-rehabilitation groups. Machine learning algorithms were applied to predict treatment outcomes based on GM volume, cortical thickness, and gyrification index, and the model performance was evaluated. Widespread regions, such as the superior temporal gyrus, middle frontal gyrus, supramarginal gyrus, the posterior central gyrus, anterior cingulate gyrus, and parahippocampal gyrus showed substantial predictive value for 3-month treatment efficacy (74.32% accuracy). The inferior frontal gyrus, anterior cingulate gyrus, and inferior occipital gyrus demonstrated significant predictive power for treatment outcome at 1-year follow-up (70.31% accuracy). We developed a machine learning model to predict individual responses to antipsychotic treatments, which could positively impact clinical treatment protocols for schizophrenia.

摘要

预测患者对抗精神病药物的反应是精神分裂症治疗中的一项重大挑战。本研究调查了灰质(GM)在首发精神分裂症(FES)未用药患者短期和长期治疗结果中的预测作用。招募了104名未用药的FES患者队列。在开始治疗前,采集了T1加权解剖图像。采用阳性和阴性症状量表以及个人和社会表现量表来评估临床症状和社会功能。在3个月随访时,将患者分为缓解组和未缓解组。在1年随访时,将患者分为康复组和未康复组。应用机器学习算法基于GM体积、皮质厚度和脑回化指数预测治疗结果,并评估模型性能。广泛的区域,如上颞回、额中回、缘上回、中央后回、前扣带回和海马旁回对3个月治疗疗效显示出显著的预测价值(准确率74.32%)。额下回、前扣带回和枕下回在1年随访时对治疗结果显示出显著的预测能力(准确率70.31%)。我们开发了一种机器学习模型来预测个体对抗精神病治疗的反应,这可能会对精神分裂症的临床治疗方案产生积极影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/85dd/11787389/1036a632a220/41537_2025_557_Fig1_HTML.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验