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A comparison of risk prediction methods using repeated observations: an application to electronic health records for hemodialysis

机译:使用反复观察风险预测方法的比较:血液透析电子健康记录的应用

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摘要

An increasingly important data source for the development of clinical risk prediction models is electronic health records (EHRs). One of their key advantages is that they contain data on many individuals collected over time. This allows one to incorporate more clinical information into a risk model. However, traditional methods for developing risk models are not well suited to these irregularly collected clinical covariates. In this paper, we compare a range of approaches for using longitudinal predictors in a clinical risk model. Using data from an EHR for patients undergoing hemodialysis, we incorporate five different clinical predictors into a risk model for patient mortality. We consider different approaches for treating the repeated measurements including use of summary statistics, machine learning methods, functional data analysis, and joint models. We follow up our empirical findings with a simulation study. Overall, our results suggest that simple approaches perform just as well, if not better, than more complex analytic approaches. These results have important implication for development of risk prediction models with EHRs. Copyright (C) 2017 John Wiley & Sons, Ltd.
机译:临床风险预测模型的发展越来越重要的数据源是电子健康记录(EHRS)。其中一个主要优点是它们包含随时间收集的许多人的数据。这允许人们将更多临床信息纳入风险模型中。然而,用于发展风险模型的传统方法并不适合于这些不规则收集的临床协变量。在本文中,我们比较临床风险模型中使用纵向预测器的一系列方法。使用来自EHR的数据进行血液透析的患者,我们将五种不同的临床预测因子纳入患者死亡率的风险模型中。我们考虑了对处理重复测量的不同方法,包括使用摘要统计,机器学习方法,功能数据分析和联合模型。我们用模拟研究跟进了我们的实证发现。总的来说,我们的结果表明,简单的方法也表现不佳,如果没有更好的分析方法。这些结果对具有EHRS的风险预测模型的发展具有重要意义。版权所有(c)2017 John Wiley&Sons,Ltd。

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