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Nonparametric Adjustment for Measurement Error in Time-to-Event Data: Application to Risk Prediction Models

机译:事件数据中测量误差的非参数调整:在风险预测模型中的应用

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摘要

Mismeasured time to event data used as a predictor in risk prediction models will lead to inaccurate predictions. This arises in the context of self-reported family history, a time to event predictor often measured with error, used in Mendelian risk prediction models. Using validation data, we propose a method to adjust for this type of error. We estimate the measurement error process using a nonparametric smoothed Kaplan-Meier estimator, and use Monte Carlo integration to implement the adjustment. We apply our method to simulated data in the context of both Mendelian and multivariate survival prediction models. Simulations are evaluated using measures of mean squared error of prediction (MSEP), area under the response operating characteristics curve (ROC-AUC), and the ratio of observed to expected number of events. These results show that our method mitigates the effects of measurement error mainly by improving calibration and total accuracy. We illustrate our method in the context of Mendelian risk prediction models focusing on misreporting of breast cancer, fitting the measurement error model on data from the University of California at Irvine, and applying our method to counselees from the Cancer Genetics Network. We show that our method improves overall calibration,especially in low risk deciles.
机译:错误地估计事件数据的时间,这些数据在风险预测模型中被用作预测因子,将导致错误的预测。这是在孟德尔风险预测模型中使用的自我报告的家族史的背景下发生的,自我报告的家族史通常是错误测量的事件发生时间。使用验证数据,我们提出了一种针对此类错误进行调整的方法。我们使用非参数平滑的Kaplan-Meier估计量来估计测量误差过程,并使用Monte Carlo积分来实现调整。我们在孟德尔和多元生存预测模型的背景下将我们的方法应用于模拟数据。使用预测均方误差(MSEP),响应操作特征曲线下的面积(ROC-AUC)以及观察到的事件数与预期事件数之比的度量来评估模拟。这些结果表明,我们的方法主要通过改善校准和总体精度来减轻测量误差的影响。我们在孟德尔风险预测模型的背景下说明了我们的方法,该模型侧重于乳腺癌的误报,将测量误差模型与来自加州大学尔湾分校的数据进行拟合,并将我们的方法应用于癌症遗传网络的咨询人员。我们证明了我们的方法可以改善整体校准,尤其是在低风险中。

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