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Classification of repeated measurements data using tree-based ensemble methods

机译:使用基于树的集成方法对重复测量数据进行分类

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摘要

In many medical applications, longitudinal data sets are available. Longitudinal data, as well as observations from paired organs, show a dependency structure which should be respected in the evaluation. Adler et al. (Comput Stat Data Anal 53(3):718-729, 2009) proposed various bootstrapping strategies for ensemble methods based on classification trees for two measurements of paired organs. These strategies have shown to improve the classification performance compared to the traditional approach, where only one observation per subject is used. We extend the methodology to the situation, where an arbitrary number of observations per individual are available and investigate the performance of the proposed methods with bagged classification trees (bagging) and random forests in the situation of longitudinal data. Moreover, we adapt the estimation of classification performance criteria to repeated measurements data. The clinical data set consists of morphological examinations of both eyes of glaucoma patients and healthy controls over a time period of up to 7 years. The performance of our modified classifiers is evaluated by a subject-based leave-one-out bootstrap ROC analysis. Simulation results and results for the glaucoma data set demonstrate that our proposal is an improvement of adhoc strategies and of the use all measurements of each subject or block strategy.
机译:在许多医疗应用中,可以使用纵向数据集。纵向数据以及成对器官的观察结果表明,依存关系结构应在评估中予以重视。阿德勒等。 (Comput Stat Data Anal 53(3):718-729,2009)提出了多种基于分类树的整体方法的自举策略,用于两个配对器官的测量。与传统方法相比,这些策略已显示出改善的分类性能,而传统方法每个主题仅使用一个观察值。我们将方法扩展到每个人都有任意数量的观测值的情况,并在纵向数据的情况下调查采用袋装分类树(装袋)和随机森林的建议方法的性能。此外,我们使分类性能标准的估计适用于重复的测量数据。临床数据集包括长达7年的青光眼患者和健康对照者的双眼形态检查。我们修改过的分类器的性能是通过基于主题的留一法引导的ROC分析来评估的。仿真结果和青光眼数据集的结果表明,我们的建议是对即席策略的改进,并且是对每个受试者或障碍策略的所有测量方法的使用。

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