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Landmark Models for Optimizing the Use of Repeated Measurements of Risk Factors in Electronic Health Records to Predict Future Disease Risk

机译:地标模型用于优化电子健康记录中反复测量的危险因素的使用,以预测未来的疾病风险

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摘要

The benefits of using electronic health records (EHRs) for disease risk screening and personalized health-care decisions are being increasingly recognized. Here we present a computationally feasible statistical approach with which to address the methodological challenges involved in utilizing historical repeat measures of multiple risk factors recorded in EHRs to systematically identify patients at high risk of future disease. The approach is principally based on a 2-stage dynamic landmark model. The first stage estimates current risk factor values from all available historical repeat risk factor measurements via landmark-age-specific multivariate linear mixed-effects models with correlated random intercepts, which account for sporadically recorded repeat measures, unobserved data, and measurement errors. The second stage predicts future disease risk from a sex-stratified Cox proportional hazards model, with estimated current risk factor values from the first stage. We exemplify these methods by developing and validating a dynamic 10-year cardiovascular disease risk prediction model using primary-care EHRs for age, diabetes status, hypertension treatment, smoking status, systolic blood pressure, total cholesterol, and high-density lipoprotein cholesterol in 41,373 persons from 10 primary-care practices in England and Wales contributing to The Health Improvement Network (1997-2016). Using cross-validation, the model was well-calibrated (Brier score = 0.041, 95% confidence interval: 0.039, 0.042) and had good discrimination (C-index = 0.768, 95% confidence interval: 0.759, 0.777).
机译:利用电子健康记录(EHRS)对疾病风险筛查和个性化的保健决策的好处正在越来越担保。在这里,我们提出了一种计算可行的统计方法,可以解决利用EHR中记录的多种风险因素的历史重复措施所涉及的方法论挑战,以系统地识别未来疾病的高风险的患者。该方法主要基于2级动态地标模型。第一阶段通过具有相关随机截距的地标时代多变量线性混合效应模型来估计来自所有可用的历史重复风险因子测量的当前风险因子值,其中包括随机截距,这考虑了偶数记录的重复措施,未观察的数据和测量误差。第二阶段预测来自性分层的Cox比例危害模型的未来疾病风险,估计来自第一阶段的当前风险因子值。我们通过使用初级保健EHRS,糖尿病状态,高血压治疗,吸烟状态,收缩压,总胆固醇和高密度脂蛋白胆固醇,通过开发和验证动态10年心血管疾病风险预测模型来示例和验证这些方法。41,373英格兰和威尔士的10个初级保健实践的人员为健康改进网络(1997-2016)为贡献。使用交叉验证,模型均匀校准(BRIER得分= 0.041,95%置信区间:0.039,0.22)并且具有良好的歧视(C-INDEX = 0.768,95%置信区间:0.759,0.777)。

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