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首页> 外文期刊>Nucleic Acids Research >GOing Bayesian: model-based gene set analysis of genome-scale data
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GOing Bayesian: model-based gene set analysis of genome-scale data

机译:迈向贝叶斯:基于模型的基因组规模数据集分析

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摘要

Here we present model-based gene set analysis (MGSA) that analyzes all categories at once by embedding them in a Bayesian network, in which gene response is modeled as a function of the activation of biological categories. Probabilistic inference is used to identify the active categories. The Bayesian modeling approach naturally takes category overlap into account and avoids the need for multiple testing corrections met in single-category enrichment analysis. On simulated data, MGSA identifies active categories with up to 95% precision at a recall of 20% for moderate settings of noise, leading to a 10-fold precision improvement over single-category statistical enrichment analysis. Application to a gene expression data set in yeast demonstrates that the method provides high-level, summarized views of core biological processes and correctly eliminates confounding associations.
机译:在这里,我们介绍基于模型的基因集分析(MGSA),该模型通过将所有类别嵌入到贝叶斯网络中来一次分析所有类别,在该网络中,将基因响应建模为生物类别激活的函数。概率推断用于识别活动类别。贝叶斯建模方法自然会考虑类别重叠,并且避免了在单类别富集分析中满足多个测试更正的需求。在模拟数据上,MGSA识别活动类别的准确度高达95%,召回率为20%(适度设置噪声),与单类别统计丰富度分析相比,其精确度提高了10倍。应用于酵母中的基因表达数据集表明,该方法提供了核心生物学过程的高级摘要视图,并正确消除了混淆的关联。

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