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EVALUATING RISK-PREDICTION MODELS USING DATA FROM ELECTRONIC HEALTH RECORDS

机译:使用电子健康记录中的数据评估风险预测模型

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The availability of data from electronic health records facilitates the development and evaluation of risk-prediction models, but estimation of prediction accuracy could be limited by outcome misclassification, which can arise if events are not captured. We evaluate the robustness of prediction accuracy summaries, obtained from receiver operating characteristic curves and risk-reclassification methods, if events are not captured (i.e., "false negatives"). We derive estimators for sensitivity and specificity if misclassification is independent of marker values. In simulation studies, we quantify the potential for bias in prediction accuracy summaries if misclassification depends on marker values. We compare the accuracy of alternative prognostic models for 30-day all-cause hospital readmission among 4548 patients discharged from the University of Pennsylvania Health System with a primary diagnosis of heart failure. Simulation studies indicate that if misclassification depends on marker values, then the estimated accuracy improvement is also biased, but the direction of the bias depends on the direction of the association between markers and the probability of misclassification. In our application, 29% of the 1143 readmitted patients were readmitted to a hospital elsewhere in Pennsylvania, which reduced prediction accuracy. Outcome misclassification can result in erroneous conclusions regarding the accuracy of risk-prediction models.
机译:电子健康记录中数据的可用性有助于风险预测模型的开发和评估,但是对预测准确性的估计可能会受到结果分类错误的限制,如果未捕获事件,可能会导致分类错误。如果未捕获到事件(即“假阴性”),我们将评估从接收者操作特征曲线和风险重新分类方法获得的预测准确性摘要的鲁棒性。如果分类错误与标记值无关,我们将得出敏感性和特异性的估计值。在模拟研究中,如果误分类取决于标记值,则我们将量化预测准确性摘要中可能出现的偏差。我们比较了宾夕法尼亚大学卫生系统出院的4548例具有心力衰竭主要诊断的30天全因医院再入院的替代预后模型的准确性。仿真研究表明,如果分类错误取决于标记值,则估计的准确性改进也会有偏差,但是偏差的方向取决于标记之间关联的方向和分类错误的可能性。在我们的应用中,1143名再次入院的患者中有29%被再次入院到宾夕法尼亚州其他地方的一家医院,这降低了预测的准确性。结果分类错误会导致有关风险预测模型准确性的错误结论。

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