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评估动态预测准确性的 R 曲线。

An R -curve for evaluating the accuracy of dynamic predictions.

机构信息

INSERM UMR 1246-SPHERE, Nantes University, Tours University, Nantes, France.

ITUN Institut de Transplantation Urologie Néphrologie INSERM UMR 1064, Nantes, France.

出版信息

Stat Med. 2018 Mar 30;37(7):1125-1133. doi: 10.1002/sim.7571. Epub 2017 Dec 4.

Abstract

In the context of chronic diseases, patient's health evolution is often evaluated through the study of longitudinal markers and major clinical events such as relapses or death. Dynamic predictions of such types of events may be useful to improve patients management all along their follow-up. Dynamic predictions consist of predictions that are based on information repeatedly collected over time, such as measurements of a biomarker, and that can be updated as soon as new information becomes available. Several techniques to derive dynamic predictions have already been suggested, and computation of dynamic predictions is becoming increasingly popular. In this work, we focus on assessing predictive accuracy of dynamic predictions and suggest that using an R -curve may help. It facilitates the evaluation of the predictive accuracy gain obtained when accumulating information on a patient's health profile over time. A nonparametric inverse probability of censoring weighted estimator is suggested to deal with censoring. Large sample results are provided, and methods to compute confidence intervals and bands are derived. A simulation study assesses the finite sample size behavior of the inference procedures and illustrates the shape of some R -curves which can be expected in common settings. A detailed application to kidney transplant data is also presented.

摘要

在慢性病的背景下,通常通过研究纵向标志物和主要临床事件(如复发或死亡)来评估患者的健康进展。对这类事件的动态预测可能有助于在整个随访过程中改善患者的管理。动态预测是指基于随时间重复收集的信息(如生物标志物的测量值)进行的预测,并且可以在新信息可用时进行更新。已经提出了几种用于推导动态预测的技术,并且动态预测的计算变得越来越流行。在这项工作中,我们专注于评估动态预测的准确性,并提出使用 R 曲线可能会有所帮助。它有助于评估随着时间的推移累积患者健康状况信息时获得的预测准确性提高。建议使用逆概率删失加权估计量来处理删失。提供了大样本结果,并推导出了计算置信区间和带宽的方法。模拟研究评估了推断程序的有限样本大小行为,并说明了在常见情况下可能预期的一些 R 曲线的形状。还详细介绍了肾脏移植数据的应用。

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