...
首页> 外文期刊>Annals of Human Genetics >A Combinatorial Searching Method for Detecting a Set of Interacting Loci Associated with Complex Traits
【24h】

A Combinatorial Searching Method for Detecting a Set of Interacting Loci Associated with Complex Traits

机译:一种用于检测与复杂性状相关的相互作用位点的组合搜索方法

获取原文
获取原文并翻译 | 示例

摘要

Complex diseases are presumed to be the results of the interaction of several genes and environmental factors, with each gene only having a small effect on the disease. Mapping complex disease genes therefore becomes one of the greatest challenges facing geneticists,. Most current approaches of association studies essentially evaluate one marker or one gene (haplotype approach) at a time. These approaches ignore the possibility that effects of multilocus functional genetic units may play a larger role than a single-locus effect in determining trait variability In this article, we propose a Combinatorial Searching Method (CSM) to detect a set of interacting loci (may be unlinked) that predicts the complex trait. In the application of the CSM, a simple filter is used to filter all the possible locus-sets and retain the candidate locus-sets, then a new objective function based on the cross-validation and partitions of the multi-locus genotypes is proposed to evaluate the retained locus-sets. The locus-set with the largest value of the objective function is the final locus-set and a permutation procedure is performed to evaluate the overall p-value of the test for association between the final locus-set and the trait. The performance of the method is evaluated by simulation studies as well as by being applied to a real data set. The simulation studies show that the CSM has reasonable power to detect high-order interactions. When the CSM is applied to a real data set to detect the locus-set (among the 13 loci in the ACE gene) that predicts systolic blood pressure (SBP) or diastolic blood pressure (DBP), we found that a four-locus gene-gene interaction model best predicts SBP with an overall p-value = 0.0.3.3, and similarly a two-locus gene-gene interaction model best predicts DBP 'with an overall p-value = 0,045.
机译:复杂疾病被认为是几种基因与环境因素相互作用的结果,每种基因对疾病的影响很小。因此,绘制复杂的疾病基因成为遗传学家面临的最大挑战之一。当前大多数关联研究方法基本上一次评估一个标记或一个基因(单倍型方法)。这些方法忽略了在确定性状变异性时多位点功能遗传单位的作用可能比单位点作用更大的可能性。在本文中,我们提出了一种组合搜索法(CSM),以检测一组相互作用的基因座(可能是无关联的)来预测复杂的特征。在CSM的应用中,使用简单的过滤器对所有可能的基因座进行过滤,并保留候选基因座,然后提出了一种基于交叉验证和多基因座基因型分区的新目标函数。评估保留的基因座。目标函数值最大的基因座是最终基因座,并执行置换程序以评估测试的总体p值,以了解最终基因座和性状之间的关联。该方法的性能通过仿真研究以及通过应用于实际数据集进行评估。仿真研究表明,CSM具有检测高阶相互作用的合理能力。当将CSM应用于真实数据集以检测预测收缩压(SBP)或舒张压(DBP)的基因座(在ACE基因的13个基因座中)时,我们发现一个四基因座基因-基因相互作用模型最能预测总体P值为0.0.3.3的SBP,类似地,两基因座基因-基因相互作用模型最能预测总体P值为0.045的DBP'。

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