...
首页> 外文期刊>BMC Bioinformatics >SurvivalGWAS_SV: software for the analysis of genome-wide association studies of imputed genotypes with “time-to-event” outcomes
【24h】

SurvivalGWAS_SV: software for the analysis of genome-wide association studies of imputed genotypes with “time-to-event” outcomes

机译:SurvivalGWAS_SV:用于分析具有“时间到事件”结果的估算基因型的全基因组关联研究的软件

获取原文
           

摘要

Background Analysis of genome-wide association studies (GWAS) with “time to event” outcomes have become increasingly popular, predominantly in the context of pharmacogenetics, where the survival endpoint could be death, disease remission or the occurrence of an adverse drug reaction. However, methodology and software that can efficiently handle the scale and complexity of genetic data from GWAS with time to event outcomes has not been extensively developed. Results SurvivalGWAS_SV is an easy to use software implemented using C# and run on Linux, Mac OS X & Windows operating systems. SurvivalGWAS_SV is able to handle large scale genome-wide data, allowing for imputed genotypes by modelling time to event outcomes under a dosage model. Either a Cox proportional hazards or Weibull regression model is used for analysis. The software can adjust for multiple covariates and incorporate SNP-covariate interaction effects. Conclusions We introduce a new console application analysis tool for the analysis of GWAS with time to event outcomes. SurvivalGWAS_SV is compatible with high performance parallel computing clusters, thereby allowing efficient and effective analysis of large scale GWAS datasets, without incurring memory issues. With its particular relevance to pharmacogenetic GWAS, SurvivalGWAS_SV will aid in the identification of genetic biomarkers of patient response to treatment, with the ultimate goal of personalising therapeutic intervention for an array of diseases.
机译:具有“事件发生时间”结果的全基因组关联研究(GWAS)的背景分析已变得越来越流行,主要是在药物遗传学方面,其生存终点可能是死亡,疾病缓解或药物不良反应的发生。但是,尚未有效地开发出能够有效地处理来自GWAS的遗传数据的规模和复杂性并及时得出事件结果的方法和软件。结果SurvivalGWAS_SV是使用C#实现的易于使用的软件,可在Linux,Mac OS X和Windows操作系统上运行。 SurvivalGWAS_SV能够处理大规模的全基因组数据,通过在剂量模型下对事件结果的时间进行建模,可以估算基因型。使用Cox比例风险或Weibull回归模型进行分析。该软件可以调整多个协变量,并纳入SNP-协变量的交互作用。结论我们引入了一种新的控制台应用程序分析工具,用于分析GWAS及其事件发生时间。 SurvivalGWAS_SV与高性能并行计算群集兼容,从而可以高效,有效地分析大规模GWAS数据集,而不会引起内存问题。由于SurvivalGWAS_SV与药物遗传学GWAS特别相关,因此将有助于鉴定患者对治疗反应的遗传生物标记,最终目的是针对多种疾病进行个性化治疗干预。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号