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BnBeeEpi: An Approach of Epistasis Mining Based on Artificial Bee Colony Algorithm Optimizing Bayesian Network

机译:BnBeeEpi:基于人工蜂群算法优化贝叶斯网络的上位挖掘方法

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Mining epistatic gene locus which influence complex disease has great research significance. Bayesian network (BN) has been widely used in many researches of epistasis mining. However, Bayesian network methods have disadvantages of being easily trapped into local optimum, low learning efficiency and not being able to handle large-scale network. In this work, we propose an epistasis mining approach based on artificial bee colony algorithm optimizing Bayesian network (BnBeeEpi). We apply artificial bee colony algorithm into the heuristic search strategy of Bayesian network, and then use two kinds of BN scoring functions (BIC and MIT) to calculate the network fitness value to avoid overfitting and reduce false positive rate. Moreover, we introduce decomposable BIC scoring to solve the large-scale network learning problem. Finally, we compare BnBeeEpi with current popular epistasis mining algorithms by using both simulated and real datasets. Experiment results show that omb-Fast has very short running time with its accuracy is as good as other methods, and BnBeeEpi has better F1-score and lower false positive rate compared to others. Availability and implementation: codes and visualization platform are available at: http://106.14.132.202/.
机译:影响复杂疾病的挖掘基因基因座具有很大的研究意义。贝叶斯网络(BN)已被广泛应用于外观矿业的许多研究。然而,贝叶斯网络方法具有容易被困为局部最佳,低学习效率并且无法处理大型网络的缺点。在这项工作中,我们提出了一种基于人工蜂殖民地算法优化贝叶斯网络(BNBeeepi)的超越挖掘方法。我们将人造蜂殖民地算法应用于贝叶斯网络的启发式搜索策略,然后使用两种BN评分功能(BIC和MIT)来计算网络健身值,以避免过度拟合并降低假阳性率。此外,我们引入了可分解的BIC评分来解决大规模网络学习问题。最后,通过使用模拟和实际数据集,将BNBeeepi与当前流行的外置挖掘算法进行比较。实验结果表明,与其他方法的准确性具有非常短的运行时间,并且BNBeepi与其他方法具有更好的F1分数和更低的假阳性率。可用性和实现:代码和可视化平台可用于:http://106.14.132.202/。

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