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ANALYSIS OF SNP-EXPRESSION ASSOCIATION MATRICES

机译:SNP表达关联矩阵的分析

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High throughput expression profiling and genotyping technologies provide the means to study the genetic determinants of population variation in gene expression variation. In this paper we present a general statistical framework for the simultaneous analysis of gene expression data and SNP genotype data measured for the same cohort. The framework consists of methods to associate transcripts with SNPs affecting their expression, algorithms to detect subsets of transcripts that share significantly many associations with a subset of SNPs, and methods to visualize the identified relations. We apply our framework to SNP-expression data collected from 50 breast cancer patients. Our results demonstrate an overabundance of transcript-SNP associations in this data, and pinpoint SNPs that are potential master regulators of transcription. We also identify several statistically significant transcript-subsets with common putative regulators that fall into well-defined functional categories.
机译:高通量表达谱分析和基因分型技术为研究基因表达变异中种群变异的遗传决定因素提供了手段。在本文中,我们提供了一个通用的统计框架,用于同时分析针对同一队列测量的基因表达数据和SNP基因型数据。该框架包括将转录本与影响其表达的SNP相关联的方法,检测与SNP的一个子集显着共享许多关联的转录本子集的算法以及可视化已识别关系的方法。我们将我们的框架应用于从50例乳腺癌患者中收集的SNP表达数据。我们的结果证明了该数据中转录本-SNP的关联过多,并指出了潜在的转录主调节子SNP。我们还确定了具有常见推定调节剂的几个具有统计意义的转录子集,这些子集属于明确定义的功能类别。

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