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Functional principal components analysis on moving time windows of longitudinal data: dynamic prediction of times to event

机译:纵向数据移动时间窗口的功能主成分分析:事件发生时间的动态预测

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摘要

Functional principal component analysis (FPCA) is a powerful approach for modelling noisy and irregularly measured longitudinal data. Similarly to principal component analysis that extracts features from multivariate random vectors, FPCA can extract features from longitudinal biomarker data. We propose to use these features to update predictions for patients' prognoses frequently. Traditional FPCA applies only to data observed in a common time window. In the setting of time-to-event analysis, the patterns of the biomarker trajectories may change over time, which poses a challenge for the application of FPCA to dynamic prediction. We propose to use a series of moving time windows to apply FPCA techniques, and we impose smoothness constraints between parameters for these moving windows. Simulation studies show that the approach proposed can provide more robust performance than predictions based on parametric models for longitudinal biomarker data, by prediction judged by performance measures such as the root-mean-square errors and area under the curve of receiver operating characteristics. We apply the method to a longitudinal study for chronic myeloid leukaemia patients, predicting their time to disease progression by using the transcript levels of an oncogene, BCR-ABL, which is repeatedly measured during their follow-up visits.
机译:功能主成分分析(FPCA)是用于建模嘈杂和不规则测量的纵向数据的强大方法。类似于从多元随机向量中提取特征的主成分分析,FPCA可以从纵向生物标记数据中提取特征。我们建议使用这些功能来经常更新患者预后的预测。传统的FPCA仅适用于在公共时间窗口中观察到的数据。在事件时间分析的设置中,生物标志物轨迹的模式可能会随时间变化,这对于将FPCA应用于动态预测提出了挑战。我们建议使用一系列移动时间窗口来应用FPCA技术,并且在这些移动窗口的参数之间施加平滑约束。仿真研究表明,通过性能指标(如均方根误差和接收器工作特性曲线下的面积)来判断预测结果,所提出的方法比基于纵向生物标记数据参数模型的预测方法能够提供更强大的性能。我们将该方法应用于针对慢性粒细胞白血病患者的纵向研究,通过使用癌基因BCR-ABL的转录水平来预测他们的疾病进展时间,该基因在随访期间会反复测量。

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