Cherlin Svetlana, Plant Darren, Taylor John C, Colombo Marco, Spiliopoulou Athina, Tzanis Evan, Morgan Ann W, Barnes Michael R, McKeigue Paul, Barrett Jennifer H, Pitzalis Costantino, Barton Anne, Consortium Matura, Cordell Heather J
Institute of Genetic Medicine, Newcastle University, Newcastle upon Tyne, UK.
NIHR Manchester Biomedical Research Centre, Manchester University NHS Foundation Trust, Manchester Academic Health Science Centre, Manchester, UK.
Genet Epidemiol. 2018 Dec;42(8):754-771. doi: 10.1002/gepi.22159. Epub 2018 Oct 12.
Although a number of treatments are available for rheumatoid arthritis (RA), each of them shows a significant nonresponse rate in patients. Therefore, predicting a priori the likelihood of treatment response would be of great patient benefit. Here, we conducted a comparison of a variety of statistical methods for predicting three measures of treatment response, between baseline and 3 or 6 months, using genome-wide SNP data from RA patients available from the MAximising Therapeutic Utility in Rheumatoid Arthritis (MATURA) consortium. Two different treatments and 11 different statistical methods were evaluated. We used 10-fold cross validation to assess predictive performance, with nested 10-fold cross validation used to tune the model hyperparameters when required. Overall, we found that SNPs added very little prediction information to that obtained using clinical characteristics only, such as baseline trait value. This observation can be explained by the lack of strong genetic effects and the relatively small sample sizes available; in analysis of simulated and real data, with larger effects and/or larger sample sizes, prediction performance was much improved. Overall, methods that were consistent with the genetic architecture of the trait were able to achieve better predictive ability than methods that were not. For treatment response in RA, methods that assumed a complex underlying genetic architecture achieved slightly better prediction performance than methods that assumed a simplified genetic architecture.
尽管有多种治疗方法可用于类风湿性关节炎(RA),但每种方法在患者中都显示出显著的无反应率。因此,事先预测治疗反应的可能性将对患者大有裨益。在此,我们使用类风湿性关节炎治疗效用最大化(MATURA)联盟提供的RA患者全基因组SNP数据,对预测基线与3个月或6个月之间三种治疗反应指标的多种统计方法进行了比较。评估了两种不同的治疗方法和11种不同的统计方法。我们使用10折交叉验证来评估预测性能,必要时使用嵌套的10折交叉验证来调整模型超参数。总体而言,我们发现单核苷酸多态性(SNP)所增加的预测信息,相比于仅使用临床特征(如基线特征值)所获得的信息而言非常少。这一观察结果可以通过缺乏强大的遗传效应以及可用样本量相对较小来解释;在对模拟数据和真实数据的分析中,当效应更大和/或样本量更大时,预测性能有了很大提高。总体而言,与性状遗传结构一致的方法比不一致的方法能够实现更好的预测能力。对于RA的治疗反应,假设复杂潜在遗传结构的方法比假设简化遗传结构的方法实现了略好的预测性能。