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FEPI-MB: identifying SNPs-disease association using a Markov Blanket-based approach

机译:FEPI-MB:使用基于Markov Blanket的方法识别SNP与疾病的关联

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BackgroundThe interactions among genetic factors related to diseases are called epistasis. With the availability of genotyped data from genome-wide association studies, it is now possible to computationally unravel epistasis related to the susceptibility to common complex human diseases such as asthma, diabetes, and hypertension. However, the difficulties of detecting epistatic interaction arose from the large number of genetic factors and the enormous size of possible combinations of genetic factors. Most computational methods to detect epistatic interactions are predictor-based methods and can not find true causal factor elements. Moreover, they are both time-consuming and sample-consuming.ResultsWe propose a new and fast Markov Blanket-based method, FEPI-MB (Fast EPistatic Interactions detection using Markov Blanket), for epistatic interactions detection. The Markov Blanket is a minimal set of variables that can completely shield the target variable from all other variables. Learning of Markov blankets can be used to detect epistatic interactions by a heuristic search for a minimal set of SNPs, which may cause the disease. Experimental results on both simulated data sets and a real data set demonstrate that FEPI-MB significantly outperforms other existing methods and is capable of finding SNPs that have a strong association with common diseases.ConclusionsFEPI-MB algorithm outperforms other computational methods for detection of epistatic interactions in terms of both the power and sample-efficiency. Moreover, compared to other Markov Blanket learning methods, FEPI-MB is more time-efficient and achieves a better performance.
机译:背景与疾病有关的遗传因素之间的相互作用称为上位性。利用来自全基因组关联研究的基因分型数据,现在可以计算出与常见的复杂人类疾病(如哮喘,糖尿病和高血压)易感性有关的上位性。然而,检测上位相互作用的困难是由于大量的遗传因素和遗传因素可能组合的巨大规模而引起的。检测上位相互作用的大多数计算方法都是基于预测变量的方法,无法找到真正的因果元素。结果,我们提出了一种新的,快速的基于马尔可夫毯子的方法,即用于上位相互作用检测的FEPI-MB(使用马尔可夫毯子的快速表位相互作用检测)方法。马尔可夫毯子是一组最小的变量,可以将目标变量与所有其他变量完全屏蔽。马尔可夫毯子的学习可用于通过启发式搜索寻找可能导致疾病的最小SNP集来检测上位性相互作用。在模拟数据集和真实数据集上的实验结果表明,FEPI-MB明显优于其他现有方法,并且能够发现与常见疾病密切相关的SNP。在功效和样品效率方面。而且,与其他Markov Blanket学习方法相比,FEPI-MB更加省时,并且性能更高。

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