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A mixture copula Bayesian network model for multimodal genomic data

机译:用于多峰基因组数据的混合copula贝叶斯网络模型

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摘要

Gaussian Bayesian networks have become a widely used framework to estimate directed associations between joint Gaussian variables, where the network structure encodes the decomposition of multivariate normal density into local terms. However, the resulting estimates can be inaccurate when the normality assumption is moderately or severely violated, making it unsuitable for dealing with recent genomic data such as the Cancer Genome Atlas data. In the present paper, we propose a mixture copula Bayesian network model which provides great flexibility in modeling non-Gaussian and multimodal data for causal inference. The parameters in mixture copula functions can be efficiently estimated by a routine expectation–maximization algorithm. A heuristic search algorithm based on Bayesian information criterion is developed to estimate the network structure, and prediction can be further improved by the best-scoring network out of multiple predictions from random initial values. Our method outperforms Gaussian Bayesian networks and regular copula Bayesian networks in terms of modeling flexibility and prediction accuracy, as demonstrated using a cell signaling data set. We apply the proposed methods to the Cancer Genome Atlas data to study the genetic and epigenetic pathways that underlie serous ovarian cancer.
机译:高斯贝叶斯网络已成为一种广泛的框架,用于估计联合高斯变量之间的有向关联,其中网络结构将多元正态密度的分解编码为局部项。但是,当适度或严重违反正常性假设时,得出的估计值可能会不准确,从而使其不适用于处理最近的基因组数据,例如Cancer Genome Atlas数据。在本文中,我们提出了一种混合copula贝叶斯网络模型,该模型为因果推理的非高斯和多峰数据建模提供了极大的灵活性。可以通过常规期望最大化算法有效地估计混合语系函数中的参数。提出了一种基于贝叶斯信息准则的启发式搜索算法来估计网络结构,并通过随机初始值的多个预测中的最佳评分网络,可以进一步改善预测。我们的方法在建模灵活性和预测准确性方面优于高斯贝叶斯网络和常规copula贝叶斯网络,如使用细胞信号数据集所证明的。我们将建议的方法应用于癌症基因组图谱数据,以研究浆液性卵巢癌的遗传和表观遗传途径。

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