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首页> 外文期刊>Heredity: An International Journal of Genetics >Integration of single nucleotide variants and whole-genome DNA methylation profiles for classification of rheumatoid arthritis cases from controls
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Integration of single nucleotide variants and whole-genome DNA methylation profiles for classification of rheumatoid arthritis cases from controls

机译:单核苷酸变体和全基因组DNA甲基化型材的整合,用于对照组类风湿性关节炎病例的分类

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摘要

This study evaluated the use of multiomics data for classification accuracy of rheumatoid arthritis (RA). Three approaches were used and compared in terms of prediction accuracy: (1) whole-genome prediction (WGP) using SNP marker information only, (2) whole-methylome prediction (WMP) using methylation profiles only, and (3) whole-genome/methylome prediction (WGMP) with combining both omics layers. The number of SNP and of methylation sites varied in each scenario, with either 1, 10, or 50% of these preselected based on four approaches: randomly, evenly spaced, lowest p value (genome-wide association or epigenome-wide association study), and estimated effect size using a Bayesian ridge regression (BRR) model. To remove effects of high levels of pairwise linkage disequilibrium (LD), SNPs were also preselected with an LD-pruning method. Five Bayesian regression models were studied for classification, including BRR, Bayes-A, Bayes-B, Bayes-C, and the Bayesian LASSO. Adjusting methylation profiles for cellular heterogeneity within whole blood samples had a detrimental effect on the classification ability of the models. Overall, WGMP using Bayes-B model has the best performance. In particular, selecting SNPs based on LD-pruning with 1% of the methylation sites selected based on BRR included in the model, and fitting the most significant SNP as a fixed effect was the best method for predicting disease risk with a classification accuracy of 0.975. Our results showed that multiomics data can be used to effectively predict the risk of RA and identify cases in early stages to prevent or alter disease progression via appropriate interventions.
机译:该研究评估了多组合数据的使用进行类风湿性关节炎(RA)的分类准确性。使用三种方法,并在预测精度方面进行比较:(1)使用SNP标记信息的全基因组预测(WGP)仅使用甲基化型材(2)全基因组(2)全基因组/甲基杂物预测(WGMP),组合om /族层。每种情况的SNP和甲基化位点的数量在每种情况下变化,其中1,10或50%基于四种方法预选:随机,均匀间隔,最低P值(基因组 - 宽或外延型协会学习)和使用贝叶斯脊回归(BRR)模型的估计效果大小。为了去除高水平的成对连杆不平衡(LD)的效果,还采用LD灌浆方法预选SNP。研究了五个贝叶斯回归模型,为分类,包括Brr,Bayes-A,Bayes-B,Bayes-C和贝叶斯套索。在整个血液样本中调节用于细胞异质性的甲基化曲线对模型的分类能力有不利影响。总体而言,使用Bayes-B型的WGMP具有最佳性能。特别地,基于LD修剪选择SNP,其基于模型中包含的BRR选择的1%甲基化位点,并将最重要的SNP作为固定效果拟合是预测疾病风险的最佳方法,其分类精度为0.975 。我们的研究结果表明,多孔数据可用于有效预测RA的风险,并通过适当干预措施预防或改变疾病进展。

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