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Identifying subgroups of enhanced predictive accuracy from longitudinal biomarker data by using tree-based approaches: applications to fetal growth

机译:通过使用基于树的方法,从纵向生物标记数据中识别出提高预测准确性的亚组:在胎儿生长中的应用

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摘要

Longitudinal monitoring of biomarkers is often helpful for predicting disease or a poor clinical outcome. We consider the prediction of both large and small for gestational age births by using longitudinal ultrasound measurements, and we attempt to identify subgroups of women for whom prediction is more (or less) accurate, should they exist. We propose a tree-based approach to identifying such subgroups, and a pruning algorithm which explicitly incorporates a desired type I error rate, allowing us to control the risk of false discovery of subgroups. The methods proposed are applied to data from the Scandinavian Fetal Growth Study and are evaluated via simulations.
机译:纵向监测生物标志物通常有助于预测疾病或不良的临床结果。我们考虑使用纵向超声测量对胎龄婴儿的大小预测,并且我们尝试识别预测准确度更高(或更低)的女性亚组。我们提出了一种基于树的方法来识别此类子组,并提出了一种修剪算法,该算法明确纳入了所需的I型错误率,从而使我们能够控制子组的错误发现风险。所提出的方法应用于来自斯堪的纳维亚胎儿生长研究的数据,并通过模拟进行评估。

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