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Integrated analysis of pharmacologic, clinical and SNP microarray data using Projection onto the Most Interesting Statistical Evidence with adaptive permutation testing

机译:使用投影到最有趣的统计证据并进行自适应排列测试,对药理学,临床和SNP微阵列数据进行综合分析

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摘要

We recently developed the Projection Onto the Most Interesting Statistical Evidence (PROMISE) procedure that uses prior biological knowledge to guide an integrated analysis of gene expression data with multiple biological and clinical endpoints. Here, PROMISE is adapted to the integrated analysis of pharmacologic, clinical and genome-wide genotype data. An efficient permutation-testing algorithm is introduced so that PROMISE is computationally feasible in this higher-dimension setting. In the analysis of a paediatric leukaemia data set, PROMISE effectively identifies genomic features that exhibit a biologically meaningful pattern of association with multiple endpoint variables.
机译:我们最近开发了“最有趣的统计证据投影(PROMISE)”程序,该程序使用先前的生物学知识来指导具有多个生物学和临床终点的基因表达数据的综合分析。在这里,PROMISE适用于药理学,临床和全基因组基因型数据的综合分析。引入了一种有效的置换测试算法,以便PROMISE在此较高维设置中在计算上是可行的。在对小儿白血病数据集的分析中,PROMISE有效地鉴定了具有生物学意义的与多个终点变量关联的模式特征的基因组特征。

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