Division of Cardiology, Department of Internal Medicine, Taipei Medical University Hospital, Taipei, Taiwan; Cardiovascular Research Center, Taipei Medical University Hospital, Taipei, Taiwan; Taipei Heart Institute, Taipei Medical University, Taipei, Taiwan; Division of Cardiology, Department of Internal Medicine, School of Medicine, College of Medicine, Taipei Medical University, Taipei, Taiwan; Professional Master Program in Artificial Intelligence in Medicine, College of Medicine, Taipei Medical University, Taipei, Taiwan.
Division of Cardiology, Department of Internal Medicine, Taipei Medical University Hospital, Taipei, Taiwan; Cardiovascular Research Center, Taipei Medical University Hospital, Taipei, Taiwan; Taipei Heart Institute, Taipei Medical University, Taipei, Taiwan; Division of Cardiology, Department of Internal Medicine, School of Medicine, College of Medicine, Taipei Medical University, Taipei, Taiwan.
Am J Cardiol. 2023 Jul 1;198:56-63. doi: 10.1016/j.amjcard.2023.03.035. Epub 2023 May 18.
Atrial fibrillation (AF) is an independent risk factor that increases the risk of stroke 5-fold. The purpose of our study was to develop a 1-year new-onset AF predictive model by machine learning based on 3-year medical information without electrocardiograms in our database to identify AF risk in older aged patients. We developed the predictive model according to the Taipei Medical University clinical research database electronic medical records, including diagnostic codes, medications, and laboratory data. Decision tree, support vector machine, logistic regression, and random forest algorithms were chosen for the analysis. A total of 2,138 participants (1,028 women [48.1%]; mean [standard deviation] age 78.8 [6.8] years) with AF and 8,552 random controls (after the matching process) without AF (4,112 women [48.1%]; mean [standard deviation] age 78.8 [6.8] years) were included in the model. The 1-year new-onset AF risk prediction model based on the random forest algorithm using medication and diagnostic information, along with specific laboratory data, attained an area under the receiver operating characteristic of 0.74, whereas the specificity was 98.7%. Machine learning-based model focusing on the older aged patients could offer acceptable discrimination in differentiating the risk of incident AF in the next year. In conclusion, a targeted screening approach using multidimensional informatics in the electronic medical records could result in a clinical choice with efficacy for prediction of the incident AF risk in older aged patients.
心房颤动(AF)是一个独立的风险因素,可使中风的风险增加 5 倍。我们的研究目的是通过机器学习,利用数据库中 3 年内没有心电图的医疗信息,为年龄较大的患者开发一个预测新发生的心房颤动的 1 年模型,以识别 AF 风险。我们根据台北医学大学临床研究数据库中的电子病历,包括诊断代码、药物和实验室数据来开发预测模型。选择决策树、支持向量机、逻辑回归和随机森林算法进行分析。共纳入 2138 名 AF 患者(1028 名女性[48.1%];平均[标准差]年龄 78.8[6.8]岁)和 8552 名随机对照患者(经过匹配过程)无 AF(4112 名女性[48.1%];平均[标准差]年龄 78.8[6.8]岁)被纳入模型。基于随机森林算法,使用药物和诊断信息以及特定的实验室数据,建立的 1 年新发 AF 风险预测模型的受试者工作特征曲线下面积为 0.74,特异性为 98.7%。基于机器学习的模型专注于年龄较大的患者,可在区分下一年发生 AF 的风险方面提供可接受的区分能力。总之,电子病历中使用多维信息的针对性筛选方法可能会产生一种临床选择,从而有效地预测年龄较大患者的新发 AF 风险。