CNV/SNP基因型数据单倍型推断的序列蒙特卡罗框架。

Alexandros Iliadis, Dimitris Anastassiou, Xiaodong Wang
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引用次数: 2

摘要

拷贝数变异(CNVs)在人类基因组中非常丰富。在全基因组关联研究(GWAS)中,它们与复杂性状相关,并有望在确定疾病表型的病因学方面继续发挥重要作用。由于目前的高通量全基因组单核苷酸多态性(SNP)阵列,我们目前拥有在CNV区域同时具有整数拷贝数和SNP基因型的数据集。与此同时,单倍型在识别疾病特征方面比基因型更有优势,即使SNP基因型可用,但由于计算工具不足,在很大程度上无法用于CNV/SNP数据。我们引入了一种新的框架,用于推断CNV/SNP数据中的单倍型,使用顺序蒙特卡罗采样方案“基于树的确定性采样CNV”(TDSCNV)。我们将我们的方法与polyHap(v2.0)进行了比较,polyHap是目前唯一能够对不同数量标记的数据集进行CNV/SNP基因型推断的软件。我们发现,这两种算法都显示出相似的准确性,但TDSCNV在随标记数量和个体数量线性缩放时要快一个数量级,因此可以在此类数据集中选择单倍型推断方法。我们的方法是在TDSCNV包中实现的,该包可从http://www.ee.columbia.edu/~anastas/tdscnv下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A sequential Monte Carlo framework for haplotype inference in CNV/SNP genotype data.

A sequential Monte Carlo framework for haplotype inference in CNV/SNP genotype data.

A sequential Monte Carlo framework for haplotype inference in CNV/SNP genotype data.

Copy number variations (CNVs) are abundant in the human genome. They have been associated with complex traits in genome-wide association studies (GWAS) and expected to continue playing an important role in identifying the etiology of disease phenotypes. As a result of current high throughput whole-genome single-nucleotide polymorphism (SNP) arrays, we currently have datasets that simultaneously have integer copy numbers in CNV regions as well as SNP genotypes. At the same time, haplotypes that have been shown to offer advantages over genotypes in identifying disease traits even though available for SNP genotypes are largely not available for CNV/SNP data due to insufficient computational tools. We introduce a new framework for inferring haplotypes in CNV/SNP data using a sequential Monte Carlo sampling scheme 'Tree-Based Deterministic Sampling CNV' (TDSCNV). We compare our method with polyHap(v2.0), the only currently available software able to perform inference in CNV/SNP genotypes, on datasets of varying number of markers. We have found that both algorithms show similar accuracy but TDSCNV is an order of magnitude faster while scaling linearly with the number of markers and number of individuals and thus could be the method of choice for haplotype inference in such datasets. Our method is implemented in the TDSCNV package which is available for download at http://www.ee.columbia.edu/~anastas/tdscnv.

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