Institute of Human Genetics, Newcastle University, International Centre for Life, Central Parkway, Newcastle upon Tyne NE1 3BZ, UK.
Nat Rev Genet. 2009 Jun;10(6):392-404. doi: 10.1038/nrg2579.
Following the identification of several disease-associated polymorphisms by genome-wide association (GWA) analysis, interest is now focusing on the detection of effects that, owing to their interaction with other genetic or environmental factors, might not be identified by using standard single-locus tests. In addition to increasing the power to detect associations, it is hoped that detecting interactions between loci will allow us to elucidate the biological and biochemical pathways that underpin disease. Here I provide a critical survey of the methods and related software packages currently used to detect the interactions between genetic loci that contribute to human genetic disease. I also discuss the difficulties in determining the biological relevance of statistical interactions.
在通过全基因组关联 (GWA) 分析鉴定出几种与疾病相关的多态性后,现在的研究重点是检测由于与其他遗传或环境因素相互作用而无法通过使用标准单基因座测试来识别的影响。除了提高检测关联的能力外,还希望检测基因座之间的相互作用将使我们能够阐明疾病背后的生物和生化途径。在这里,我对目前用于检测导致人类遗传疾病的遗传基因座之间相互作用的方法和相关软件包进行了批判性调查。我还讨论了确定统计相互作用的生物学相关性的困难。