首页> 外文期刊>Biometrics: Journal of the Biometric Society : An International Society Devoted to the Mathematical and Statistical Aspects of Biology >Quantifying and Comparing Dynamic Predictive Accuracy of Joint Models for Longitudinal Marker and Time-to-Event in Presence of Censoring and Competing Risks
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Quantifying and Comparing Dynamic Predictive Accuracy of Joint Models for Longitudinal Marker and Time-to-Event in Presence of Censoring and Competing Risks

机译:在存在审查和竞争风险的情况下,对纵向标记和事件发生时间联合模型的动态预测精度进行量化和比较

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摘要

Thanks to the growing interest in personalized medicine, joint modeling of longitudinal marker and time-to-event data has recently started to be used to derive dynamic individual risk predictions. Individual predictions are called dynamic because they are updated when information on the subject's health profile grows with time. We focus in this work on statistical methods for quantifying and comparing dynamic predictive accuracy of this kind of prognostic models, accounting for right censoring and possibly competing events. Dynamic area under the ROC curve (AUC) and Brier Score (BS) are used to quantify predictive accuracy. Nonparametric inverse probability of censoring weighting is used to estimate dynamic curves of AUC and BS as functions of the time at which predictions are made. Asymptotic results are established and both pointwise confidence intervals and simultaneous confidence bands are derived. Tests are also proposed to compare the dynamic prediction accuracy curves of two prognostic models. The finite sample behavior of the inference procedures is assessed via simulations. We apply the proposed methodology to compare various prediction models using repeated measures of two psychometric tests to predict dementia in the elderly, accounting for the competing risk of death. Models are estimated on the French Paquid cohort and predictive accuracies are evaluated and compared on the French Three-City cohort.
机译:由于对个性化医疗的兴趣日益浓厚,纵向标记和事件发生时间数据的联合建模最近已开始用于得出动态的个体风险预测。个体预测之所以称为动态预测,是因为当有关对象的健康状况的信息随时间增长时,它们会被更新。在这项工作中,我们将重点放在统计方法上,以量化和比较这种预测模型的动态预测准确性,并考虑到正确的审查和可能的竞争事件。 ROC曲线(AUC)和Brier分数(BS)下的动态区域用于量化预测准确性。审查加权的非参数逆概率用于估计AUC和BS的动态曲线,该曲线是进行预测的时间的函数。建立渐近结果,并导出逐点置信区间和同时置信带。还提出了测试以比较两个预后模型的动态预测准确性曲线。通过模拟评估推理程序的有限样本行为。我们应用所提出的方法,通过两次心理测验的重复测量来比较各种预测模型,以预测老年人的痴呆,从而解决了竞争性死亡风险。在法国的Paquid队列中对模型进行估计,并在法国的三城市队列中对预测的准确性进行评估和比较。

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