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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >Recovering Genetic Regulatory Networks from Chromatin Immunoprecipitation and Steady-State Microarray Data
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Recovering Genetic Regulatory Networks from Chromatin Immunoprecipitation and Steady-State Microarray Data

机译:从染色质免疫沉淀和稳态微阵列数据中恢复遗传调控网络。

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摘要

Recent advances in high-throughput DNA microarrays and chromatin immunoprecipitation (ChIP) assays have enabled the learning of the structure and functionality of genetic regulatory networks. In light of these heterogeneous data sets, this paper proposes a novel approach for reconstruction of genetic regulatory networks based on the posterior probabilities of gene regulations. Built within the framework of Bayesian statistics and computational Monte Carlo techniques, the proposed approach prevents the dichotomy of classifying gene interactions as either being connected or disconnected, thereby it reduces significantly the inference errors. Simulation results corroborate the superior performance of the proposed approach relative to the existing state-of-the-art algorithms. A genetic regulatory network for Saccharomyces cerevisiae is inferred based on the published real data sets, and biological meaningful results are discussed.
机译:高通量DNA微阵列和染色质免疫沉淀(ChIP)分析的最新进展使人们能够学习遗传调控网络的结构和功能。鉴于这些异类数据集,本文提出了一种基于基因调控的后验概率的遗传调控网络重构的新方法。该方法建立在贝叶斯统计和蒙特卡洛计算技术的框架内,可防止将基因相互作用分为连通或不连通的二分法,从而显着减少了推理错误。仿真结果证实了该方法相对于现有的最新算法的优越性能。基于已公开的真实数据集推断出酿酒酵母的遗传调控网络,并讨论了生物学上有意义的结果。

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