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Individual dynamic predictions using landmarking and joint modelling: Validation of estimators and robustness assessment

机译:使用地标和联合建模的个人动态预测:估算器验证和鲁棒性评估

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After the diagnosis of a disease, one major objective is to predict cumulative probabilities of events such as clinical relapse or death from the individual information collected up to a prediction time, usually including biomarker repeated measurements. Several competing estimators have been proposed, mainly from two approaches: joint modelling and landmarking. These approaches differ by the information used, the model assumptions and the complexity of the computational procedures. This paper aims to review the two approaches, precisely define the derived estimators of dynamic predictions and compare their performances notably in case of misspecification. The ultimate goal is to provide key elements for the use of individual dynamic predictions in clinical practice. Prediction of two competing causes of prostate cancer progression from the history of prostate-specific antigen is used as a motivated example. We formally define the quantity to estimate and its estimators, propose techniques to assess the uncertainty around predictions and validate them. We then conduct an in-depth simulation study compare the estimators in terms of prediction error, discriminatory power, efficiency and robustness to model assumptions. We show that prediction tools should be handled with care, in particular by properly specifying models and estimators.
机译:在疾病的诊断后,一个主要目的是预测从收集到预测时间的各个信息的临床复发或死亡等事件的累积概率,通常包括生物标记重复测量。已经提出了几种竞争估算,主要来自两种方法:联合建模和地标。这些方法因使用的信息,模型假设和计算过程的复杂性而异。本文旨在审查两种方法,精确地定义了动态预测的推导估计,并在误操作情况下比较它们的性能。最终目标是提供在临床实践中使用个人动态预测的关键要素。从前列腺特异性抗原史上预测前列腺癌进展的两种竞争原因被用作动机的例子。我们正式定义估计数量及其估算量,提出了评估预测周围的不确定性并验证它们的技术。然后,我们进行深入的仿真研究,将估算值与模型假设的预测误差,歧视性,效率,稳健性进行比较。我们表明应通过适当指定模型和估算器来处理预测工具。

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