Calhoun Peter, Levine Richard A, Fan Juanjuan
Jaeb Center for Health Research, Tampa, Florida.
Department of Mathematics and Statistics, Analytic Studies and Institutional Research, San Diego State University, San Diego, California.
Biometrics. 2021 Mar;77(1):343-351. doi: 10.1111/biom.13284. Epub 2020 May 6.
Nocturnal hypoglycemia is a common phenomenon among patients with diabetes and can lead to a broad range of adverse events and complications. Identifying factors associated with hypoglycemia can improve glucose control and patient care. We propose a repeated measures random forest (RMRF) algorithm that can handle nonlinear relationships and interactions and the correlated responses from patients evaluated over several nights. Simulation results show that our proposed algorithm captures the informative variable more often than naïvely assuming independence. RMRF also outperforms standard random forest and extremely randomized trees algorithms. We demonstrate scenarios where RMRF attains greater prediction accuracy than generalized linear models. We apply the RMRF algorithm to analyze a diabetes study with 2524 nights from 127 patients with type 1 diabetes. We find that nocturnal hypoglycemia is associated with HbA1c, bedtime blood glucose (BG), insulin on board, time system activated, exercise intensity, and daytime hypoglycemia. The RMRF can accurately classify nights at high risk of nocturnal hypoglycemia.
夜间低血糖是糖尿病患者中的常见现象,可导致一系列不良事件和并发症。识别与低血糖相关的因素可改善血糖控制和患者护理。我们提出了一种重复测量随机森林(RMRF)算法,该算法可以处理非线性关系和相互作用以及患者在多个夜晚评估的相关反应。模拟结果表明,我们提出的算法比单纯假设独立性更频繁地捕捉到信息变量。RMRF也优于标准随机森林和极端随机树算法。我们展示了RMRF比广义线性模型具有更高预测准确性的场景。我们应用RMRF算法分析了一项来自127名1型糖尿病患者的2524个夜晚的糖尿病研究。我们发现夜间低血糖与糖化血红蛋白(HbA1c)、睡前血糖(BG)、体内胰岛素、时间系统激活、运动强度和白天低血糖有关。RMRF可以准确地对夜间低血糖高风险的夜晚进行分类。