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Dynamic prediction of Alzheimer's disease progression using features of multiple longitudinal outcomes and time‐to‐event data

机译:使用多个纵向结果的特征和事件数据的特征,Alzheimer疾病进展的动态预测

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摘要

This paper is motivated by combining serial neurocognitive assessments and other clinical variables for monitoring the progression of Alzheimer's disease (AD). We propose a novel framework for the use of multiple longitudinal neurocognitive markers to predict the progression of AD. The conventional joint modeling longitudinal and survival data approach is not applicable when there is a large number of longitudinal outcomes. We introduce various approaches based on functional principal component for dimension reduction and feature extraction from multiple longitudinal outcomes. We use these features to extrapolate the health outcome trajectories and use scores on these features as predictors in a Cox proportional hazards model to conduct predictions over time. We propose a personalized dynamic prediction framework that can be updated as new observations collected to reflect the patient's latest prognosis, and thus intervention could be initiated in a timely manner. Simulation studies and application to the Alzheimer's Disease Neuroimaging Initiative dataset demonstrate the robustness of the method for the prediction of future health outcomes and risks of target events under various scenarios.
机译:本文通过组合连续神经认知评估和其他临床变量来监测阿尔茨海默病(AD)的进展来激发。我们提出了一种用于使用多个纵向神经认知标记的新颖框架来预测广告的进展。当存在大量纵向结果时,传统的联合建模纵向和生存数据方法是不适用的。我们介绍了基于功能主成分的各种方法,用于尺寸减少和来自多个纵向结果的特征提取。我们使用这些功能来推断健康结果轨迹,并在这些特征上使用分数作为Cox比例危险模型中的预测因子,以便随着时间的推移进行预测。我们提出了一个个性化的动态预测框架,可以随着收集的新观察结果来更新,以反映患者的最新预后,因此可以及时启动干预。模拟研究和应用于阿尔茨海默病神经影像倡议数据集表明,在各种情况下预测未来健康结果和目标事件风险的方法的稳健性。

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