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A semi-supervised style method for haplotype assembly problem based on MEC model

机译:基于MEC模型的单元型装配问题的半监督式方法

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Haplotype reconstruction based on aligned SNP fragments is to infer a pair of haplotypes from localized polymorphism data got through short genome fragments. For this problem, the minimum error correction (MEC) model is one of important computational models. This model constructs a pair of haplotypes by correcting minimum SNPs in genome fragments of an individual's DNA. In this paper, a semi-supervised competitive neural network on the MEC model is proposed. This algorithm aims at clustering all fragments into two sets. The fragments in each set can then be used to construct a haplotype with minimum SNPs corrected. Although the architecture of the proposed method is simple, it outperforms other two algorithms on most instances of both real data and simulation data. So, the results show that the proposed semi-supervised neutral network is effective. The results also show that semi-supervised algorithm is feasible and promising for this problem.
机译:基于对齐的SNP片段的单倍型重建是从通过短基因组片段获得的局部多态性数据推断一对单倍型。对于此问题,最小错误校正(MEC)模型是重要的计算模型之一。该模型通过校正个体DNA基因组片段中的最小SNP来构建一对单倍型。本文提出了一种基于MEC模型的半监督竞争神经网络。该算法旨在将所有片段聚类为两个集合。然后可以使用每组中的片段构建具有最小SNP校正的单倍型。尽管所提出方法的体系结构很简单,但是在大多数真实数据和模拟数据实例上,它的性能都优于其他两种算法。因此,结果表明所提出的半监督神经网络是有效的。结果还表明,半监督算法是可行的,并有望解决该问题。

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