Bayesian Inference of Gene Regulatory Network

Xi Chen, J. Xuan
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引用次数: 1

Abstract

Gene regulatory networks (GRN) have been studied by computational scientists and biologists over 20 years to gain a fine map of gene functions. With large-scale genomic and epigenetic data generated under diverse cells, tissues, and diseases, the integrative analysis of multi-omics data plays a key role in identifying casual genes in human disease development. Bayesian inference (or integration) has been successfully applied to inferring GRNs. Learning a posterior distribution than making a single-value prediction of model parameter makes Bayesian inference a more robust approach to identify GRN from noisy biomedical observations. Moreover, given multi-omics data as input and a large number of model parameters to estimate, the automatic preference of Bayesian inference for simple models that sufficiently explain data without unnecessary complexity ensures fast convergence to reliable results. In this chapter, we introduced GRN modeling using hierarchical Bayesian network and then used Gibbs sampling to identify network variables. We applied this model to breast cancer data and identified genes relevant to breast cancer recurrence. In the end, we discussed the potential of Bayesian inference as well as Bayesian deep learning for large-scale and complex GRN inference.
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基因调控网络的贝叶斯推断
基因调控网络(GRN)已经被计算科学家和生物学家研究了20多年,以获得基因功能的精细图谱。随着在不同细胞、组织和疾病下产生的大规模基因组和表观遗传学数据,多组学数据的综合分析在识别人类疾病发展中的偶然基因方面起着关键作用。贝叶斯推理(或积分)已经成功地应用于grn的推理。学习后验分布比单值预测模型参数使贝叶斯推理成为从嘈杂的生物医学观测中识别GRN的更稳健的方法。此外,在给定多组学数据作为输入和大量模型参数需要估计的情况下,贝叶斯推理对简单模型的自动偏好能够充分解释数据而没有不必要的复杂性,从而确保快速收敛到可靠的结果。在本章中,我们介绍了使用分层贝叶斯网络进行GRN建模,然后使用Gibbs抽样来识别网络变量。我们将该模型应用于乳腺癌数据,并确定了与乳腺癌复发相关的基因。最后,我们讨论了贝叶斯推理以及贝叶斯深度学习在大规模和复杂GRN推理中的潜力。
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