Martin E R, Ritchie M D, Hahn L, Kang S, Moore J H
Department of Medicine, Center for Human Genetics, Duke University Medical Center, 595 LaSalle Street, DUMC 3445, Durham, NC 27710, USA.
Genet Epidemiol. 2006 Feb;30(2):111-23. doi: 10.1002/gepi.20128.
It is now well recognized that gene-gene and gene-environment interactions are important in complex diseases, and statistical methods to detect interactions are becoming widespread. Traditional parametric approaches are limited in their ability to detect high-order interactions and handle sparse data, and standard stepwise procedures may miss interactions that occur in the absence of detectable main effects. To address these limitations, the multifactor dimensionality reduction (MDR) method [Ritchie et al., 2001: Am J Hum Genet 69:138-147] was developed. The MDR is well-suited for examining high-order interactions and detecting interactions without main effects. The MDR was originally designed to analyze balanced case-control data. The analysis can use family data, but requires a single matched pair be selected from each family. This may be a discordant sib pair, or may be constructed from triad data when parents are available. To take advantage of additional affected and unaffected siblings requires a test statistic that measures the association of genotype with disease in general nuclear families. We have developed a novel test, the MDR-PDT, by merging the MDR method with the genotype-Pedigree Disequilibrium Test (geno-PDT)[Martin et al., 2003: Genet Epidemiol 25:203-213]. MDR-PDT allows identification of single-locus effects or joint effects of multiple loci in families of diverse structure. We present simulations to demonstrate the validity of the test and evaluate its power. To examine its applicability to real data, we applied the MDR-PDT to data from candidate genes for Alzheimer disease (AD) in a large family dataset. These results show the utility of the MDR-PDT for understanding the genetics of complex diseases.
现在人们已经充分认识到,基因与基因、基因与环境的相互作用在复杂疾病中起着重要作用,检测相互作用的统计方法也越来越普遍。传统的参数方法在检测高阶相互作用和处理稀疏数据方面能力有限,标准的逐步程序可能会错过在没有可检测到的主效应时发生的相互作用。为了解决这些局限性,开发了多因素降维(MDR)方法[Ritchie等人,2001年:《美国人类遗传学杂志》69:138 - 147]。MDR非常适合检查高阶相互作用并检测无主效应的相互作用。MDR最初设计用于分析平衡的病例对照数据。该分析可以使用家系数据,但要求从每个家系中选择一对匹配个体。这可以是一对不一致的同胞对,或者当有父母数据时可以从三联体数据构建。为了利用更多受影响和未受影响的兄弟姐妹的数据,需要一个检验统计量来衡量一般核心家庭中基因型与疾病的关联。我们通过将MDR方法与基因型 - 家系不平衡检验(geno - PDT)[Martin等人,2003年:《遗传流行病学》25:203 - 213]合并,开发了一种新的检验方法,即MDR - PDT。MDR - PDT允许识别不同结构家系中单个位点的效应或多个位点的联合效应。我们通过模拟来证明该检验的有效性并评估其效能。为了检验其对实际数据的适用性,我们将MDR - PDT应用于一个大型家系数据集中阿尔茨海默病(AD)候选基因的数据。这些结果表明MDR - PDT在理解复杂疾病遗传学方面的实用性。