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Pathway hunting by random survival forests

机译:随机生存森林的寻路

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摘要

Motivation: Pathway or gene set analysis has been widely applied to genomic data. Many current pathway testing methods use univariate test statistics calculated from individual genomic markers, which ignores the correlations and interactions between candidate markers. Random forests-based pathway analysis is a promising approach for incorporating complex correlation and interaction patterns, but one limitation of previous approaches is that pathways have been considered separately, thus pathway cross-talk information was not considered. Results: In this article, we develop a new pathway hunting algorithm for survival outcomes using random survival forests, which prioritize important pathways by accounting for gene correlation and genomic interactions. We show that the proposed method performs favourably compared with five popular pathway testing methods using both synthetic and real data. We find that the proposed methodology provides an efficient and powerful pathway modelling framework for high-dimensional genomic data.
机译:动机:途径或基因组分析已广泛应用于基因组数据。当前许多途径测试方法都使用从单个基因组标记物计算出的单变量测试统计数据,而忽略了候选标记物之间的相关性和相互作用。基于随机森林的路径分析是一种包含复杂的关联和交互模式的有前途的方法,但是先前方法的局限性在于路径已被单独考虑,因此未考虑路径串扰信息。结果:在本文中,我们使用随机生存森林开发了一种用于生存结果的新途径狩猎算法,该算法通过考虑基因相关性和基因组相互作用来优先考虑重要途径。我们表明,与使用合成数据和真实数据的五种流行的途径测试方法相比,该方法的性能优越。我们发现,所提出的方法为高维基因组数据提供了有效而强大的途径建模框架。

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