Wen Sheron, Wang Chenguang, Berg Arthur, Li Yao, Chang Myron M, Fillingim Roger B, Wallace Margaret R, Staud Roland, Kaplan Lee, Wu Rongling
Department of Statistics, University of Florida, Gainesville, Florida 32611, USA.
Algorithms Mol Biol. 2009 Aug 11;4:11. doi: 10.1186/1748-7188-4-11.
Single nucleotide polymorphisms (SNPs) represent the most widespread type of DNA sequence variation in the human genome and they have recently emerged as valuable genetic markers for revealing the genetic architecture of complex traits in terms of nucleotide combination and sequence. Here, we extend an algorithmic model for the haplotype analysis of SNPs to estimate the effects of genetic imprinting expressed at the DNA sequence level. The model provides a general procedure for identifying the number and types of optimal DNA sequence variants that are expressed differently due to their parental origin. The model is used to analyze a genetic data set collected from a pain genetics project. We find that DNA haplotype GAC from three SNPs, OPRKG36T (with two alleles G and T), OPRKA843G (with alleles A and G), and OPRKC846T (with alleles C and T), at the kappa-opioid receptor, triggers a significant effect on pain sensitivity, but with expression significantly depending on the parent from which it is inherited (p = 0.008). With a tremendous advance in SNP identification and automated screening, the model founded on haplotype discovery and statistical inference may provide a useful tool for genetic analysis of any quantitative trait with complex inheritance.
单核苷酸多态性(SNPs)是人类基因组中最普遍的DNA序列变异类型,最近已成为揭示复杂性状遗传结构的有价值的遗传标记,涉及核苷酸组合和序列。在此,我们扩展了一种用于SNP单倍型分析的算法模型,以估计在DNA序列水平上表达的基因印记效应。该模型提供了一个通用程序,用于识别由于其亲本来源而表现不同的最佳DNA序列变异的数量和类型。该模型用于分析从疼痛遗传学项目收集的遗传数据集。我们发现,κ-阿片受体上三个SNP(OPRKG36T,有两个等位基因G和T;OPRKA843G,有等位基因A和G;OPRKC846T,有等位基因C和T)组成的DNA单倍型GAC对疼痛敏感性有显著影响,但其表达显著取决于其遗传的亲本(p = 0.008)。随着SNP鉴定和自动筛选的巨大进展,基于单倍型发现和统计推断的模型可能为任何具有复杂遗传的数量性状的遗传分析提供有用工具。