Department of Genetic Identification, Erasmus MC University Medical Center Rotterdam, Rotterdam, The Netherlands.
Department of Medical Statistics and Bioinformatics, Leiden University Medical Center, Leiden, The Netherlands.
Sci Rep. 2017 Feb 27;7:43359. doi: 10.1038/srep43359.
Success of genetic association and the prediction of phenotypic traits from DNA are known to depend on the accuracy of phenotype characterization, amongst other parameters. To overcome limitations in the characterization of human iris pigmentation, we introduce a fully automated approach that specifies the areal proportions proposed to represent differing pigmentation types, such as pheomelanin, eumelanin, and non-pigmented areas within the iris. We demonstrate the utility of this approach using high-resolution digital eye imagery and genotype data from 12 selected SNPs from over 3000 European samples of seven populations that are part of the EUREYE study. In comparison to previous quantification approaches, (1) we achieved an overall improvement in eye colour phenotyping, which provides a better separation of manually defined eye colour categories. (2) Single nucleotide polymorphisms (SNPs) known to be involved in human eye colour variation showed stronger associations with our approach. (3) We found new and confirmed previously noted SNP-SNP interactions. (4) We increased SNP-based prediction accuracy of quantitative eye colour. Our findings exemplify that precise quantification using the perceived biological basis of pigmentation leads to enhanced genetic association and prediction of eye colour. We expect our approach to deliver new pigmentation genes when applied to genome-wide association testing.
遗传关联的成功以及从 DNA 预测表型特征,已知取决于表型特征描述的准确性,以及其他参数。为了克服人类虹膜色素沉着特征描述的局限性,我们引入了一种完全自动化的方法,该方法指定了所提出的代表不同色素沉着类型的面积比例,例如真黑素、褐黑素和虹膜内的非色素区域。我们使用来自 EUREYE 研究的七个群体的 3000 多个欧洲样本中 12 个选定 SNP 的高分辨率数字眼部图像和基因型数据来证明这种方法的实用性。与以前的定量方法相比,(1)我们实现了眼部颜色表型的整体改善,这提供了手动定义的眼部颜色类别的更好分离。(2) 已知参与人类眼睛颜色变化的单核苷酸多态性 (SNP) 与我们的方法显示出更强的关联。(3) 我们发现了新的和以前注意到的 SNP-SNP 相互作用。(4) 我们提高了基于 SNP 的定量眼睛颜色的预测准确性。我们的发现例证了使用色素沉着的感知生物学基础进行精确定量可增强遗传关联和眼睛颜色的预测。我们期望我们的方法在应用于全基因组关联测试时能够发现新的色素沉着基因。