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类风湿关节炎严重放射学进展的生物学功能综合预测:巢式病例对照研究。

Biological function integrated prediction of severe radiographic progression in rheumatoid arthritis: a nested case control study.

机构信息

Department of Rheumatology, St. Vincent's Hospital, The Catholic University of Korea, Suwon, Republic of Korea.

Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology, Daejeon, Republic of Korea.

出版信息

Arthritis Res Ther. 2017 Oct 25;19(1):244. doi: 10.1186/s13075-017-1414-x.

Abstract

BACKGROUND

Radiographic progression is reported to be highly heritable in rheumatoid arthritis (RA). However, previous study using genetic loci showed an insufficient accuracy of prediction for radiographic progression. The aim of this study is to identify a biologically relevant prediction model of radiographic progression in patients with RA using a genome-wide association study (GWAS) combined with bioinformatics analysis.

METHODS

We obtained genome-wide single nucleotide polymorphism (SNP) data for 374 Korean patients with RA using Illumina HumanOmni2.5Exome-8 arrays. Radiographic progression was measured using the yearly Sharp/van der Heijde modified score rate, and categorized in no or severe progression. Significant SNPs for severe radiographic progression from GWAS were mapped on the functional genes and reprioritized by post-GWAS analysis. For robust prediction of radiographic progression, tenfold cross-validation using a support vector machine (SVM) classifier was conducted. Accuracy was used for selection of optimal SNPs set in the Hanyang Bae RA cohort. The performance of our final model was compared with that of other models based on GWAS results and SPOT (one of the post-GWAS analyses) using receiver operating characteristic (ROC) curves. The reliability of our model was confirmed using GWAS data of Caucasian patients with RA.

RESULTS

A total of 36,091 significant SNPs with a p value <0.05 from GWAS were reprioritized using post-GWAS analysis and approximately 2700 were identified as SNPs related to RA biological features. The best average accuracy of ten groups was 0.6015 with 85 SNPs, and this increased to 0.7481 when combined with clinical information. In comparisons of the performance of the model, the 0.7872 area under the curve (AUC) in our model was superior to that obtained with GWAS (AUC 0.6586, p value 8.97 × 10) or SPOT (AUC 0.7449, p value 0.0423). Our model strategy also showed superior prediction accuracy in Caucasian patients with RA compared with GWAS (p value 0.0049) and SPOT (p value 0.0151).

CONCLUSIONS

Using various biological functions of SNPs and repeated machine learning, our model could predict severe radiographic progression relevantly and robustly in patients with RA compared with models using only GWAS results or other post-GWAS tools.

摘要

背景

放射学进展在类风湿关节炎(RA)中被报道具有高度遗传性。然而,先前使用遗传位点的研究表明,对放射学进展的预测准确性不足。本研究旨在使用全基因组关联研究(GWAS)结合生物信息学分析,确定 RA 患者放射学进展的生物学相关预测模型。

方法

我们使用 Illumina HumanOmni2.5Exome-8 阵列获得了 374 名韩国 RA 患者的全基因组单核苷酸多态性(SNP)数据。使用每年的 Sharp/van der Heijde 改良评分率来测量放射学进展,并将其分为无进展或严重进展。GWAS 中严重放射学进展的显著 SNP 映射到功能基因上,并通过 GWAS 后分析重新排序。使用支持向量机(SVM)分类器进行了十折交叉验证,以稳健地预测放射学进展。使用汉洋贝 RA 队列中的最优 SNP 集选择最优 SNP 集。使用接收者操作特征(ROC)曲线比较基于 GWAS 结果和 SPOT(GWAS 后分析之一)的其他模型,比较我们最终模型的性能。使用 RA 白种人患者的 GWAS 数据确认了我们模型的可靠性。

结果

GWAS 后分析重新排序了 36091 个具有 p 值<0.05 的总共有意义的 SNP,其中约 2700 个被确定为与 RA 生物学特征相关的 SNP。十组最佳平均准确率为 0.6015,有 85 个 SNP,当与临床信息结合时,准确率提高到 0.7481。在模型性能比较中,我们模型的 0.7872 曲线下面积(AUC)优于 GWAS(AUC 0.6586,p 值 8.97×10)或 SPOT(AUC 0.7449,p 值 0.0423)。与 GWAS(p 值 0.0049)和 SPOT(p 值 0.0151)相比,我们的模型策略在 RA 白种人患者中也表现出更高的预测准确性。

结论

使用 SNP 的各种生物学功能和重复的机器学习,与仅使用 GWAS 结果或其他 GWAS 后工具的模型相比,我们的模型可以更相关和稳健地预测 RA 患者的严重放射学进展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f930/5655942/673dc282ecc6/13075_2017_1414_Fig1_HTML.jpg

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