Finding regulatory elements using joint likelihoods for sequence and expression profile data.

I Holmes, W J Bruno
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引用次数: 0

Abstract

A recent, popular method of finding promoter sequences is to look for conserved motifs upstream of genes clustered on the basis of expression data. This method presupposes that the clustering is correct. Theoretically, one should be better able to find promoter sequences and create more relevant gene clusters by taking a unified approach to these two problems. We present a likelihood function for a "sequence-expression" model giving a joint likelihood for a promoter sequence and its corresponding expression levels. An algorithm to estimate sequence-expression model parameters using Gibbs sampling and Expectation/Maximization is described. A program, called kimono, that implements this algorithm has been developed: the source code is freely available on the Internet.

利用序列和表达谱数据的联合似然来寻找调控元件。
最近一种流行的寻找启动子序列的方法是寻找基于表达数据聚类的基因上游的保守基序。这种方法的前提是聚类是正确的。从理论上讲,采用统一的方法来解决这两个问题,应该能够更好地找到启动子序列并创建更多相关的基因簇。我们提出了一个“序列-表达”模型的似然函数,给出了启动子序列及其相应表达水平的联合似然。描述了一种利用Gibbs抽样和期望/最大化估计序列表达式模型参数的算法。一个名为“和服”(kimono)的程序已经开发出来,实现了这个算法:源代码可以在互联网上免费获得。
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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