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Biological pathway prediction from multiple data sources using iterative Bayesian updating

机译:使用迭代贝叶斯更新从多个数据源进行生物途径预测

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There is a diversity of functional genomics data, such as gene expression data from microarray experiments, phenotypic data from gene deletion experiments, protein-protein interaction data, and data from manually curated databases of gene function. Each data source finds certain types of relationships between genes and misses other types of relationships. A method that can combine multiple data sources might then be able to uncover more relationships than a method that depends on a single data source. This paper presents a method that uses an iterative Bayesian updating technique to combine data from multiple sources, represented as undirected weighted graphs, in order to estimate the probability that a gene is part of a given biological pathway. This method improves performance over a simple neighbor based approach for several well characterized biological pathways.
机译:功能基因组学数据多种多样,例如来自微阵列实验的基因表达数据,来自基因缺失实验的表型数据,蛋白质-蛋白质相互作用数据以及来自人工整理的基因功能数据库的数据。每个数据源都会找到基因之间的某些类型的关系,而会错过其他类型的关系。与依赖单个数据源的方法相比,可以组合多个数据源的方法可能能够发现更多的关系。本文提出一种使用迭代贝叶斯更新技术来组合来自多个源(表示为无向加权图)的数据的方法,以估计基因是给定生物途径的一部分的可能性。该方法相对于简单的基于邻居的方法改善了几种具有良好特征的生物学途径的性能。

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