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首页> 外文期刊>BMC Genomics >bNEAT: a Bayesian network method for detecting epistatic interactions in genome-wide association studies
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bNEAT: a Bayesian network method for detecting epistatic interactions in genome-wide association studies

机译:bNEAT:一种在全基因组关联研究中检测上位相互作用的贝叶斯网络方法

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BackgroundDetecting epistatic interactions plays a significant role in improving pathogenesis, prevention, diagnosis and treatment of complex human diseases. A recent study in automatic detection of epistatic interactions shows that Markov Blanket-based methods are capable of finding genetic variants strongly associated with common diseases and reducing false positives when the number of instances is large. Unfortunately, a typical dataset from genome-wide association studies consists of very limited number of examples, where current methods including Markov Blanket-based method may perform poorly.ResultsTo address small sample problems, we propose a Bayesian network-based approach (bNEAT) to detect epistatic interactions. The proposed method also employs a Branch-and-Bound technique for learning. We apply the proposed method to simulated datasets based on four disease models and a real dataset. Experimental results show that our method outperforms Markov Blanket-based methods and other commonly-used methods, especially when the number of samples is small.ConclusionsOur results show bNEAT can obtain a strong power regardless of the number of samples and is especially suitable for detecting epistatic interactions with slight or no marginal effects. The merits of the proposed approach lie in two aspects: a suitable score for Bayesian network structure learning that can reflect higher-order epistatic interactions and a heuristic Bayesian network structure learning method.
机译:背景检测上位性相互作用在改善复杂人类疾病的发病机理,预防,诊断和治疗中起着重要作用。一项关于自动检测上位相互作用的最新研究表明,基于马尔可夫毯子的方法能够发现与常见疾病密切相关的遗传变异,并在发生大量病例时减少假阳性。不幸的是,来自全基因组关联研究的典型数据集包含非常有限的示例,其中包括基于Markov Blanket的方法在内的当前方法可能效果不佳。结果为了解决小样本问题,我们提出了一种基于贝叶斯网络的方法(bNEAT)检测上位相互作用。所提出的方法还采用了分枝定界技术进行学习。我们将提出的方法应用于基于四个疾病模型和真实数据集的模拟数据集。实验结果表明,我们的方法优于基于Markov Blanket的方法和其他常用方法,特别是在样本数量较少的情况下。结论我们的结果表明,无论样本数量如何,bNEAT都能获得强大的功效,尤其适合于检测上位性相互作用,没有或几乎没有边际影响。所提出的方法的优点在于两个方面:可以反映高阶上位相互作用的贝叶斯网络结构学习的合适分数和启发式贝叶斯网络结构学习方法。

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