Kim Eun Young, Kim Jayoun, Jeong Jae Hoon, Jang Jinhyeok, Kang Nuree, Seo Jieun, Park Young Eun, Park Jiae, Jeong Hyunsu, Ahn Yong Min, Kim Yong Sik, Lee Donghwan, Kim Se Hyun
Department of Psychiatry, Seoul National University Health Service Center, Seoul, Republic of Korea; Department of Human Systems Medicine, Seoul National University College of Medicine, Seoul, Republic of Korea.
Medical Research Collaborating Center, Seoul National University Hospital, Seoul, Seoul National University College of Medicine, Seoul, Republic of Korea.
Schizophr Res. 2025 Jan;275:146-155. doi: 10.1016/j.schres.2024.12.018. Epub 2024 Dec 27.
Predicting early treatment response in schizophrenia is pivotal for selecting the best therapeutic approach. Utilizing machine learning (ML) technique, we aimed to formulate a model predicting antipsychotic treatment outcomes. Data were obtained from 299 patients with schizophrenia from three multicenter, open-label, non-comparative clinical trials. For prediction of treatment response at weeks 4, 8, and 24, psychopathology (both objective and subjective symptoms), sociodemographic and clinical factors, functional outcomes, attitude toward medication, and metabolic characteristics were evaluated. Various ML techniques were applied. The highest area under the curve (AUC) at weeks 4, 8 and 24 was 0.711, 0.664 and 0.678 with extreme gradient boosting, respectively. Notably, our findings indicate that BMI and attitude toward medication play a pivotal role in predicting treatment responses at all-time points. Other salient features for weeks 4 and 8 included psychosocial functioning, negative symptoms, subjective symptoms like psychoticism and hostility, and the level of prolactin. For week 24, positive symptoms, depression, education level and duration of illness were also important. This study introduced a precise clinical model for predicting schizophrenia treatment outcomes using multiple readily accessible predictors. The findings underscore the significance of metabolic parameters and subjective traits.
预测精神分裂症的早期治疗反应对于选择最佳治疗方法至关重要。利用机器学习(ML)技术,我们旨在构建一个预测抗精神病药物治疗结果的模型。数据来自三项多中心、开放标签、非对照临床试验中的299例精神分裂症患者。为了预测第4周、第8周和第24周的治疗反应,我们评估了精神病理学(客观和主观症状)、社会人口统计学和临床因素、功能结局、对药物的态度以及代谢特征。应用了各种ML技术。在第4周、第8周和第24周,极端梯度提升法得到的曲线下面积(AUC)最高,分别为0.711、0.664和0.678。值得注意的是,我们的研究结果表明,体重指数(BMI)和对药物的态度在预测所有时间点的治疗反应中起着关键作用。第4周和第8周的其他显著特征包括心理社会功能、阴性症状、如精神病性和敌意等主观症状以及催乳素水平。对于第24周,阳性症状、抑郁、教育水平和病程也很重要。本研究引入了一个精确的临床模型,使用多个易于获取的预测指标来预测精神分裂症的治疗结果。研究结果强调了代谢参数和主观特征的重要性。