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A scalable method for integration and functional analysis of multiple microarray datasets

机译:多种微阵列数据集的整合和功能分析的可扩展方法

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Motivation: The diverse microarray datasets that have become available over the past several years represent a rich opportunity and challenge for biological data mining. Many supervised and unsupervised methods have been developed for the analysis of individual microarray datasets. However, integrated analysis of multiple datasets can provide a broader insight into genetic regulation of specific biological pathways under a variety of conditions. Results: To aid in the analysis of such large compendia of microarray experiments, we present Microarray Experiment Functional Integration Technology (MEFIT), a scalable Bayesian framework for predicting functional relationships from integrated microarray datasets. Furthermore, MEFIT predicts these functional relationships within the context of specific biological processes. All results are provided in the context of one or more specific biological functions, which can be provided by a biologist or drawn automatically from catalogs such as the Gene Ontology (GO). Using MEFIT, we integrated 40 Saccharomyces cerevisiae microarray datasets spanning 712 unique conditions. In tests based on 110 biological functions drawn from the GO biological process ontology, MEFIT provided a 5% or greater performance increase for 54 functions, with a 5% or more decrease in performance in only two functions.
机译:动机:过去几年中可用的各种微阵列数据集为生物数据挖掘提供了巨大的机遇和挑战。已经开发了许多有监督和无监督的方法来分析单个微阵列数据集。但是,对多个数据集进行综合分析可以在各种条件下提供对特定生物途径的遗传调控的更广泛见解。结果:为了帮助分析如此庞大的微阵列实验汇编,我们提出了微阵列实验功能集成技术(MEFIT),这是一种可扩展的贝叶斯框架,用于从集成微阵列数据集中预测功能关系。此外,MEFIT会在特定的生物学过程中预测这些功能关系。所有结果均在一种或多种特定生物学功能的背景下提供,可以由生物学家提供或从诸如基因本体论(GO)之类的目录中自动提取。使用MEFIT,我们整合了40个啤酒酵母微阵列数据集,涵盖712个独特条件。在基于GO生物过程本体论得出的110种生物学功能的测试中,MEFIT对54种功能的性能提高了5%或更高,而在仅有两种功能中性能的降低了5%以上。

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