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Reliable Single Chip Genotyping with Semi-Parametric Log-Concave Mixtures

机译:可靠的单芯片分型与半参数登录凹透镜混合物

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摘要

The common approach to SNP genotyping is to use (model-based) clustering per individual SNP, on a set of arrays. Genotyping all SNPs on a single array is much more attractive, in terms of flexibility, stability and applicability, when developing new chips. A new semi-parametric method, named SCALA, is proposed. It is based on a mixture model using semi-parametric log-concave densities. Instead of using the raw data, the mixture is fitted on a two-dimensional histogram, thereby making computation time almost independent of the number of SNPs. Furthermore, the algorithm is effective in low-MAF situations.Comparisons between SCALA and CRLMM on HapMap genotypes show very reliable calling of single arrays. Some heterozygous genotypes from HapMap are called homozygous by SCALA and to lesser extent by CRLMM too. Furthermore, HapMap's NoCalls (NN) could be genotyped by SCALA, mostly with high probability. The software is available as R scripts from the website .
机译:SNP基因分型的常用方法是在一组阵列上对每个单独的SNP使用(基于模型的)聚类。在开发新芯片时,就灵活性,稳定性和适用性而言,对单个阵列上的所有SNP进行基因分型更具吸引力。提出了一种新的半参数方法SCALA。它基于使用半参数对数-凹面密度的混合模型。代替使用原始数据,将混合物拟合到二维直方图上,从而使计算时间几乎与SNP的数量无关。此外,该算法在低MAF情况下是有效的。HapMap基因型上SCALA和CRLMM的比较表明,单个数组的调用非常可靠。 HapMap的一些杂合基因型在SCALA中被称为纯合子,在CRLMM中也被称为较小的纯合子。此外,SCALA可以对HapMap的NoCalls(NN)进行基因分型,多数可能性很高。该软件可以从网站上以R脚本的形式获得。

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