Parameterized algorithms for identifying gene co-expression modules via weighted clique decomposition

Madison Cooley, C. Greene, Davis Issac, M. Pividori, Blair D. Sullivan
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引用次数: 4

Abstract

We present a new combinatorial model for identifying regulatory modules in gene co-expression data using a decomposition into weighted cliques. To capture complex interaction effects, we generalize the previously-studied weighted edge clique partition problem. As a first step, we restrict ourselves to the noise-free setting, and show that the problem is fixed parameter tractable when parameterized by the number of modules (cliques). We present two new algorithms for finding these decompositions, using linear programming and integer partitioning to determine the clique weights. Further, we implement these algorithms in Python and test them on a biologically-inspired synthetic corpus generated using real-world data from transcription factors and a latent variable analysis of co-expression in varying cell types.
基于加权团块分解的参数化基因共表达模块识别算法
我们提出了一种新的组合模型,用于识别基因共表达数据中的调节模块,使用分解成加权团。为了捕获复杂的相互作用效应,我们推广了先前研究的加权边团划分问题。作为第一步,我们限制了自己的无噪声设置,并表明了当用模块(团)的数量参数化时,问题是固定参数可处理的。我们提出了两种寻找这些分解的新算法,使用线性规划和整数划分来确定团的权重。此外,我们在Python中实现了这些算法,并在一个生物学启发的合成语料库上进行了测试,该语料库使用来自转录因子的真实世界数据和不同细胞类型共表达的潜在变量分析生成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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