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首页> 外文期刊>BMC Bioinformatics >Prediction of tissue-specific cis-regulatory modules using Bayesian networks and regression trees
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Prediction of tissue-specific cis-regulatory modules using Bayesian networks and regression trees

机译:使用贝叶斯网络和回归树的组织特异性顺式调节模块预测

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Background In vertebrates, a large part of gene transcriptional regulation is operated by cis-regulatory modules. These modules are believed to be regulating much of the tissue-specificity of gene expression. Results We develop a Bayesian network approach for identifying cis-regulatory modules likely to regulate tissue-specific expression. The network integrates predicted transcription factor binding site information, transcription factor expression data, and target gene expression data. At its core is a regression tree modeling the effect of combinations of transcription factors bound to a module. A new unsupervised EM-like algorithm is developed to learn the parameters of the network, including the regression tree structure. Conclusion Our approach is shown to accurately identify known human liver and erythroid-specific modules. When applied to the prediction of tissue-specific modules in 10 different tissues, the network predicts a number of important transcription factor combinations whose concerted binding is associated to specific expression.
机译:背景技术在脊椎动物中,通过顺式调节模块操作大部分基因转录调节。这些模块被认为是调节基因表达的大部分组织特异性。结果我们开发了贝叶斯网络方法,用于识别可能调节组织特异性表达的顺式调节模块。网络集成了预测的转录因子结合位点信息,转录因子表达数据和靶基因表达数据。在其核心是一种回归树,建模转录因子组合与模块结合的效果。开发了一种新的无监督的EM样算法来学习网络的参数,包括回归树结构。结论我们的方法被证明可以准确识别已知的人肝和红细胞特异性模块。当在10种不同的组织中施加到组织特异性模块的预测时,网络预测了许多重要的转录因子组合,其齐齐齐全的结合与特定表达相关。

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