Anastassiou Dimitris
Department of Electrical Engineering, Center for Computational Biology and Bioinformatics, Columbia University, New York, NY 10027, USA.
Mol Syst Biol. 2007;3:83. doi: 10.1038/msb4100124. Epub 2007 Feb 13.
Diseases such as cancer are often related to collaborative effects involving interactions of multiple genes within complex pathways, or to combinations of multiple SNPs. To understand the structure of such mechanisms, it is helpful to analyze genes in terms of the purely cooperative, as opposed to independent, nature of their contributions towards a phenotype. Here, we present an information-theoretic analysis that provides a quantitative measure of the multivariate synergy and decomposes sets of genes into submodules each of which contains synergistically interacting genes. When the resulting computational tools are used for the analysis of gene expression or SNP data, this systems-based methodology provides insight into the biological mechanisms responsible for disease.
诸如癌症之类的疾病通常与复杂通路中多个基因相互作用所产生的协同效应有关,或者与多个单核苷酸多态性(SNP)的组合有关。为了理解此类机制的结构,从基因对表型的贡献具有纯粹协同性(而非独立性)的角度来分析基因是很有帮助的。在此,我们提出一种信息论分析方法,该方法提供了一种多变量协同作用的定量度量,并将基因集分解为子模块,每个子模块都包含协同相互作用的基因。当将由此产生的计算工具用于基因表达或SNP数据分析时,这种基于系统的方法能够深入了解导致疾病的生物学机制。