首页> 外文OA文献 >Topics in Statistical Methods for Human Gene Mapping
【2h】

Topics in Statistical Methods for Human Gene Mapping

机译:人类基因作图统计方法中的主题

摘要

Statistical approaches used for gene mapping can be divided into two types: linkage and association analysis. This dissertation work addresses statistical methods in both areas.In the area of linkage analysis, I consider the problem of QTL (Quantitative Trait Locus) linkage analysis. Linkage analysis requires family data, and if the families are selected according to phenotype or if the trait of interest has a non-Gaussian distribution, standard analysis methods may be inappropriate. The score statistic, derived by taking the first derivative of the likelihood with respect to the linkage parameter, maintains the power of likelihood-based methods and with the use of an empirical variance estimator is robust against non-normal traits and selected samples. I investigate a number of empirical variance estimators that can be used for general pedigrees and evaluate the effects of different variance estimators and trait parameter estimates on the power of the score statistic.In the area of association analysis, I consider the question of what is the best model for a simple genome-scan analysis of a case-control study. In a case-control genome-wide association study, hundreds of thousands of SNPs are genotyped and statistical analysis usually starts with 1 or 2 df chi-squared test or logistic regression model. Power comparisons among subsets of these methods have been done but none of these papers have comprehensively tackled the question of which method is best for univariate scanning in a genome scan. I compare different test procedures and regression models for case-control studies starting from single-locus analysis followed by scanning with covariates and then genome-wide analysis. Based on the simulation results, I offer guidelines for choosing robust test procedures or regression models for testing the genetic effect.The methods proposed here can be used to improve the efficiency of gene mapping studies. This will lead to quicker and more reliable discoveries of genetic risk factors for many different diseases with great public health importance, which should in turn lead to improved prevention and treatment strategies.
机译:用于基因作图的统计方法可以分为两种:连锁分析和关联分析。本文的研究工作涉及这两个领域的统计方法。在连锁分析领域,我考虑了QTL(定量性状基因座)连锁分析的问题。连锁分析需要家族数据,并且如果根据表型选择家族,或者如果感兴趣的性状具有非高斯分布,则标准分析方法可能不合适。通过对链接参数取似然度的一阶导数得出的得分统计量,保持了基于似然度的方法的强大功能,并且使用经验方差估计量可以抵抗非正态性状和所选样本。我研究了许多可用于一般家谱的经验方差估计量,并评估了不同方差估计量和特征参数估计量对得分统计量功效的影响。在关联分析领域,我考虑了什么是病例对照研究的简单基因组扫描分析的最佳模型。在病例对照全基因组关联研究中,对数十万个SNP进行了基因分型,并且统计分析通常从1或2 df卡方检验或逻辑回归模型开始。这些方法的子集之间已经进行了功率比较,但是这些论文都没有全面解决哪种方法最适合基因组扫描中的单变量扫描的问题。我比较了针对案例对照研究的不同测试程序和回归模型,这些研究从单基因座分析开始,然后进行协变量扫描,然后进行全基因组分析。根据模拟结果,我提供了选择健壮的测试程序或测试遗传效应的回归模型的指南,此处提出的方法可用于提高基因定位研究的效率。这将导致对具有重大公共卫生重要性的许多不同疾病的遗传危险因素的发现更快,更可靠,这反过来又将导致改进的预防和治疗策略。

著录项

  • 作者

    Kuo Chia-Ling;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

相似文献

  • 外文文献
  • 中文文献
  • 专利

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