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首页> 外文期刊>Genetic epidemiology. >Prediction of treatment response in rheumatoid arthritis patients using genome‐wide SNP data
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Prediction of treatment response in rheumatoid arthritis patients using genome‐wide SNP data

机译:基因组SNP数据预测类风湿性关节炎患者治疗响应

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摘要

Abstract 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.
机译:摘要虽然多种治疗方法可用于类风湿性关节炎(RA),但它们中的每一个都显示出患者的显着的非响应率。因此,预测治疗响应的可能性是大患者的益处。在这里,我们进行了各种统计方法,用于预测基线和3或6个月之间的三种治疗响应措施的统计方法,使用从最大化的治疗性效用于类风湿性关节炎(Matura)联盟可获得的Ra患者的基因组SNP数据。评估了两种不同的治疗和11种不同的统计方法。我们使用了10倍的交叉验证来评估预测性能,嵌套10倍的交叉验证用于在需要时调整模型超级参数。总的来说,我们发现SNP为仅使用临床特征获得的预测信息很少,例如基线特征。这种观察可以通过缺乏强大的遗传效果和可用的相对较小的样本尺寸来解释。在分析模拟和实际数据的情况下,具有较大的效果和/或更大的样本尺寸,预测性能很大。总体而言,与特征的遗传架构一致的方法能够实现比没有的方法更好的预测能力。对于RA的治疗响应,假设复杂的基本遗传架构的方法比假设简化遗传架构的方法实现了稍好的预测性能。

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  • 来源
    《Genetic epidemiology.》 |2018年第8期|共18页
  • 作者单位

    Institute of Genetic MedicineNewcastle UniversityNewcastle upon Tyne UK;

    NIHR Manchester Biomedical Research Centre Manchester University NHS Foundation TrustManchester;

    Leeds Institute of Cancer and PathologyUniversity of LeedsLeeds UK;

    Centre for Population Health Sciences Usher Institute of Population Health Sciences and;

    Centre for Population Health Sciences Usher Institute of Population Health Sciences and;

    Centre for Experimental Medicine and Rheumatology William Harvey Research Institute Barts and the;

    NIHR Leeds Biomedical Research CentreLeeds Teaching Hospitals NHS TrustLeeds UK;

    Centre for Experimental Medicine and Rheumatology William Harvey Research Institute Barts and the;

    Centre for Population Health Sciences Usher Institute of Population Health Sciences and;

    Leeds Institute of Cancer and PathologyUniversity of LeedsLeeds UK;

    Centre for Experimental Medicine and Rheumatology William Harvey Research Institute Barts and the;

    NIHR Manchester Biomedical Research Centre Manchester University NHS Foundation TrustManchester;

    Institute of Genetic MedicineNewcastle UniversityNewcastle upon Tyne UK;

    NIHR Manchester Biomedical Research Centre Manchester University NHS Foundation TrustManchester;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 流行病学与防疫;
  • 关键词

    cross validation; prediction; snp data; treatment response;

    机译:交叉验证;预测;SNP数据;治疗反应;

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