Chen Yu-Ming, Chen Po-Cheng, Lin Wei-Che, Hung Kuo-Chuan, Chen Yang-Chieh Brian, Hung Chi-Fa, Wang Liang-Jen, Wu Ching-Nung, Hsu Chih-Wei, Kao Hung-Yu
Department of Psychiatry, Kaohsiung Chang Gung Memorial Hospital, Chang Gung University College of Medicine, Kaohsiung, Taiwan.
Department of Physical Medicine and Rehabilitation, Kaohsiung Chang Gung Memorial Hospital, Chang Gung University College of Medicine, Kaohsiung, Taiwan.
Front Psychiatry. 2023 Jun 19;14:1195586. doi: 10.3389/fpsyt.2023.1195586. eCollection 2023.
Post-stroke depression (PSD) is a serious mental disorder after ischemic stroke. Early detection is important for clinical practice. This research aims to develop machine learning models to predict new-onset PSD using real-world data.
We collected data for ischemic stroke patients from multiple medical institutions in Taiwan between 2001 and 2019. We developed models from 61,460 patients and used 15,366 independent patients to test the models' performance by evaluating their specificities and sensitivities. The predicted targets were whether PSD occurred at 30, 90, 180, and 365 days post-stroke. We ranked the important clinical features in these models.
In the study's database sample, 1.3% of patients were diagnosed with PSD. The average specificity and sensitivity of these four models were 0.83-0.91 and 0.30-0.48, respectively. Ten features were listed as important features related to PSD at different time points, namely old age, high height, low weight post-stroke, higher diastolic blood pressure after stroke, no pre-stroke hypertension but post-stroke hypertension (new-onset hypertension), post-stroke sleep-wake disorders, post-stroke anxiety disorders, post-stroke hemiplegia, and lower blood urea nitrogen during stroke.
Machine learning models can provide as potential predictive tools for PSD and important factors are identified to alert clinicians for early detection of depression in high-risk stroke patients.
中风后抑郁症(PSD)是缺血性中风后的一种严重精神障碍。早期检测对临床实践很重要。本研究旨在开发机器学习模型,以使用真实世界数据预测新发PSD。
我们收集了2001年至2019年台湾多家医疗机构缺血性中风患者的数据。我们从61460名患者中开发模型,并使用15366名独立患者通过评估其特异性和敏感性来测试模型性能。预测目标是中风后30、90、180和365天是否发生PSD。我们对这些模型中的重要临床特征进行了排名。
在该研究的数据库样本中,1.3%的患者被诊断为PSD。这四个模型的平均特异性和敏感性分别为0.83 - 0.91和0.30 - 0.48。有十个特征被列为与不同时间点PSD相关的重要特征,即老年、身高较高、中风后体重较低、中风后舒张压较高、中风前无高血压但中风后有高血压(新发高血压)、中风后睡眠 - 觉醒障碍、中风后焦虑症、中风后偏瘫以及中风期间血尿素氮较低。
机器学习模型可为PSD提供潜在的预测工具,并确定重要因素以提醒临床医生早期检测高危中风患者的抑郁症。