首页> 外文期刊>BMC Genomics >A bi-filtering method for processing single nucleotide polymorphism array data improves the quality of genetic map and accuracy of quantitative trait locus mapping in doubled haploid populations of polyploid Brassica napus
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A bi-filtering method for processing single nucleotide polymorphism array data improves the quality of genetic map and accuracy of quantitative trait locus mapping in doubled haploid populations of polyploid Brassica napus

机译:处理单核苷酸多态性阵列数据的双过滤方法提高了甘蓝型油菜多倍体单倍体群体的遗传图谱质量和数量性状基因座定位的准确性

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Background Single nucleotide polymorphism (SNP) markers have a wide range of applications in crop genetics and genomics. Due to their polyploidy nature, many important crops, such as wheat, cotton and rapeseed contain a large amount of repeat and homoeologous sequences in their genomes, which imposes a huge challenge in high-throughput genotyping with sequencing and/or array technologies. Allotetraploid Brassica napus (AACC, 2n?=?4x?=?38) comprises of two highly homoeologous sub-genomes derived from its progenitor species B. rapa (AA, 2n?=?2x?=?20) and B. oleracea (CC, 2n?=?2x?=?18), and is an ideal species to exploit methods for reducing the interference of extensive inter-homoeologue polymorphisms (mHemi-SNPs and Pseudo-simple SNPs) between closely related sub-genomes. Results Based on a recent B. napus 6K SNP array, we developed a bi-filtering procedure to identify unauthentic lines in a DH population, and mHemi-SNPs and Pseudo-simple SNPs in an array data matrix. The procedure utilized both monomorphic and polymorphic SNPs in the DH population and could effectively distinguish the mHemi-SNPs and Pseudo-simple SNPs that resulted from superposition of the signals from multiple SNPs. Compared with conventional procedure for array data processing, the bi-filtering method could minimize the pseudo linkage relationship caused by the mHemi-SNPs and Pseudo-simple SNPs, thus improving the quality of SNP genetic map. Furthermore, the improved genetic map could increase the accuracies of mapping of QTLs as demonstrated by the ability to eliminate non-real QTLs in the mapping population. Conclusions The bi-filtering analysis of the SNP array data represents a novel approach to effectively assigning the multi-loci SNP genotypes in polyploid B. napus and may find wide applications to SNP analyses in polyploid crops.
机译:背景技术单核苷酸多态性(SNP)标记在作物遗传学和基因组学中具有广泛的应用。由于它们具有多倍体性质,许多重要的农作物,例如小麦,棉花和油菜籽,在其基因组中都包含大量重复序列和同源序列,这给测序和/或阵列技术进行高通量基因分型带来了巨大挑战。异源四倍体甘蓝型油菜(AACC,2n?=?4x?=?38)包含两个高度同源的亚基因组,它们来自其祖先物种B. rapa(AA,2n?=?2x?=?20)和油菜芽胞杆菌(B. oleracea( CC,2n 2 = 2x 2 = 18,并且是利用方法来减少密切相关的亚基因组之间广泛的同源间多态性(mHemi-SNP和伪-简单SNP)的干扰的理想物种。结果基于最近的甘蓝型油菜(B. napus)6K SNP阵列,我们开发了一种双向过滤程序来鉴定DH群体中的真品系,以及阵列数据矩阵中的mHemi-SNP和伪简单SNP。该方法利用了DH群体中的单态和多态SNP,并且可以有效地区分由多个SNP信号叠加产生的mHemi-SNP和假简单SNP。与常规的阵列数据处理程序相比,双过滤方法可以最大程度地减少由mHemi-SNP和伪简单SNP引起的伪连锁关系,从而提高SNP遗传图谱的质量。此外,改进的遗传图谱可以提高QTL定位的准确性,这一点已被消除定位种群中非真实QTL的能力所证明。结论SNP阵列数据的双过滤分析代表了一种有效分配多倍体油菜多位点SNP基因型的新颖方法,可广泛应用于多倍体作物的SNP分析。

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