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Multilocus Lod Scores in Large Pedigrees: Combination of Exact and Approximate Calculations

机译:大谱系中的多位点Lod分数:精确计算和近似计算的组合

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摘要

To detect the positions of disease loci, lod scores are calculated at multiple chromosomal positions given trait and marker data on members of pedigrees. Exact lod score calculations are often impossible when the size of the pedigree and the number of markers are both large. In this case, a Markov Chain Monte Carlo (MCMC) approach provides an approximation. However, to provide accurate results, mixing performance is always a key issue in these MCMC methods. In this paper, we propose two methods to improve MCMC sampling and hence obtain more accurate lod score estimates in shorter computation time. The first improvement generalizes the block-Gibbs meiosis (M) sampler to multiple meiosis (MM) sampler in which multiple meioses are updated jointly, across all loci. The second one divides the computations on a large pedigree into several parts by conditioning on the haplotypes of some ‘key’ individuals. We perform exact calculations for the descendant parts where more data are often available, and combine this information with sampling of the hidden variables in the ancestral parts. Our approaches are expected to be most useful for data on a large pedigree with a lot of missing data.
机译:为了检测疾病位点的位置,在多个谱系位置上计算出了lod得分,并给出了系谱成员的特征和标记数据。当谱系的大小和标记的数目都很大时,准确的lod分数计算通常是不可能的。在这种情况下,马尔可夫链蒙特卡罗(MCMC)方法提供了一个近似值。但是,为了提供准确的结果,混合性能始终是这些MCMC方法中的关键问题。在本文中,我们提出了两种方法来改进MCMC采样,从而在更短的计算时间内获得更准确的lod分数估计。第一项改进是将Block-Gibbs减数分裂(M)采样器推广到多减数分裂(MM)采样器,在该采样器中,跨所有基因座共同更新多个基因。第二部分通过限制某些“关键”个体的单倍型,将大谱系的计算分为几个部分。我们对经常可获得更多数据的后代部分进行精确计算,并将此信息与祖先部分中的隐藏变量采样结合起来。预期我们的方法对于具有大量缺失数据的大型谱系中的数据最有用。

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