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首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >Bayesian Network Reconstruction Using Systems Genetics Data: Comparison of MCMC Methods
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Bayesian Network Reconstruction Using Systems Genetics Data: Comparison of MCMC Methods

机译:系统遗传数据的贝叶斯网络重构:MCMC方法的比较

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Reconstructing biological networks using high-throughput technologies has the potential to produce condition-specific interactomes. But are these reconstructed networks a reliable source of biological interactions? Do some network inference methods offer dramatically improved performance on certain types of networks? To facilitate the use of network inference methods in systems biology, we report a large-scale simulation study comparing the ability of Markov chain Monte Carlo (MCMC) samplers to reverse engineer Bayesian networks. The MCMC samplers we investigated included foundational and state-of-the-art Metropolis–Hastings and Gibbs sampling approaches, as well as novel samplers we have designed. To enable a comprehensive comparison, we simulated gene expression and genetics data from known network structures under a range of biologically plausible scenarios. We examine the overall quality of network inference via different methods, as well as how their performance is affected by network characteristics. Our simulations reveal that network size, edge density, and strength of gene-to-gene signaling are major parameters that differentiate the performance of various samplers. Specifically, more recent samplers including our novel methods outperform traditional samplers for highly interconnected large networks with strong gene-to-gene signaling. Our newly developed samplers show comparable or superior performance to the top existing methods. Moreover, this performance gain is strongest in networks with biologically oriented topology, which indicates that our novel samplers are suitable for inferring biological networks. The performance of MCMC samplers in this simulation framework can guide the choice of methods for network reconstruction using systems genetics data.
机译:使用高通量技术重建生物网络具有产生条件特异性相互作用组的潜力。但是这些重建的网络是否是生物相互作用的可靠来源?某些网络推理方法是否可以在某些类型的网络上显着提高性能?为了促进在系统生物学中使用网络推理方法,我们报告了一项大型仿真研究,比较了马尔可夫链蒙特卡洛(MCMC)采样器对贝叶斯网络进行反向工程的能力。我们调查的MCMC采样器包括基础和最新的Metropolis-Hastings和Gibbs采样方法,以及我们设计的新型采样器。为了进行全面的比较,我们在一系列生物学上可行的情况下,模拟了来自已知网络结构的基因表达和遗传数据。我们通过不同的方法检查网络推断的总体质量,以及它们的性能如何受到网络特征的影响。我们的模拟表明,网络大小,边缘密度和基因间信号强度是区分各种采样器性能的主要参数。具体而言,包括我们的新方法在内的最新采样器在具有强大的基因间信号传递的高度互连的大型网络方面要优于传统采样器。我们新开发的采样器表现出与现有最佳方法相当或更高的性能。此外,这种性能提升在具有生物定向拓扑结构的网络中最强,这表明我们的新型采样器适用于推断生物网络。 MCMC采样器在此仿真框架中的性能可以指导使用系统遗传数据进行网络重建的方法的选择。

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