Böhringer Stefan, Hardt Cornelia, Miterski Bianca, Steland Ansgar, Epplen Jörg T
Institut für Humangenetik, Universitätsklinikum Essen, Germany.
Eur J Hum Genet. 2003 Aug;11(8):573-84. doi: 10.1038/sj.ejhg.5201008.
New statistics are developed to gather the contribution of many alleles at different loci to common diseases. Both inferential and descriptive statistics are included in order to uncover epistatic effects as well as heterogeneity. The problem of multiple testing is circumvented by considering a global null hypothesis. Global testing is supplemented by descriptive methods that make use of measures like odds ratio or the P-value of individually tested allele combinations. Visualization helps to reflect complex data sets. The methods described here have been scrutinized by statistical simulations, and we show that power gains can be substantial as compared to single locus statistics. Typing data of multiple sclerosis patients and controls are investigated, representing an example of larger scale information in screening candidate genes for their impact on complex diseases. New insights emerge from this data set demonstrating genetic heterogeneity and evidence for epistasis.
新的统计方法被开发出来,用于收集不同基因座上多个等位基因对常见疾病的贡献。为了揭示上位效应以及异质性,同时纳入了推断性统计和描述性统计。通过考虑全局零假设来规避多重检验的问题。全局检验辅以描述性方法,这些方法利用诸如优势比或单个测试等位基因组合的P值等度量。可视化有助于反映复杂的数据集。这里描述的方法已经通过统计模拟进行了仔细审查,并且我们表明,与单基因座统计相比,功效增益可能相当可观。对多发性硬化症患者和对照的分型数据进行了研究,这代表了在筛选候选基因对复杂疾病的影响时更大规模信息的一个例子。从这个数据集中出现了新的见解,证明了遗传异质性和上位性的证据。