首页> 外文会议>Pacific Symposium on Biocomputing 2004; Jan 6-10, 2004; Hawaii, USA >A MARKOV CHAIN APPROACH TO RECONSTRUCTION OF LONG HAPLOTYPES
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A MARKOV CHAIN APPROACH TO RECONSTRUCTION OF LONG HAPLOTYPES

机译:重构长型的马尔可夫链法

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Haplotypes are important for association based gene mapping, but there are no practical laboratory methods for obtaining them directly from DNA samples. We propose simple Markov models for reconstruction of haplotypes for a given sample of multilocus genotypes. The models are aimed specifically for long marker maps, where linkage disequilibrium between markers may vary and be relatively weak. Such maps are ultimately used in chromosome or genome-wide association studies. Haplotype reconstruction with standard Markov chains is based on linkage disequilibrium (LD) between neighboring markers. Markov chains of higher order can capture LD in a neighborhood of a given size. We introduce a more flexible and robust model, MC-VL, which is based on a Markov chain of variable order. Experimental validation of the Markov chain methods on both a wide range of simulated data and real data shows that they clearly outperform previous methods on genetically long marker maps and are highly competitive with short maps, too. MC-VL performs well across different data sets and settings while avoiding the problem of manually choosing an appropriate order for the Markov chain, and it has low computational complexity.
机译:单倍型对于基于关联的基因作图很重要,但是没有直接从DNA样品中直接获得它们的实用实验室方法。我们提出了一个简单的马尔可夫模型,用于给定多位点基因型样本的单倍型重建。该模型专门针对较长的标记图,其中标记之间的连锁不平衡可能会有所不同并且相对较弱。此类图谱最终用于染色体或全基因组关联研究。使用标准马尔可夫链的单倍型重建基于相邻标记之间的连锁不平衡(LD)。高阶马尔可夫链可以捕获给定大小附近的LD。我们介绍了一个更灵活,更健壮的模型MC-VL,该模型基于可变顺序的马尔可夫链。马尔可夫链方法在大量模拟数据和真实数据上的实验验证表明,它们在遗传长标记图上明显优于以前的方法,并且在短图上也具有很高的竞争力。 MC-VL在不同的数据集和设置中表现良好,同时避免了手动为马尔可夫链选择合适顺序的问题,并且计算复杂度低。

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