Center for Craniofacial and Dental Genetics, School of Dental Medicine, University of Pittsburgh, Pittsburgh, PA 15219, USA.
BMC Genet. 2005 Dec 30;6 Suppl 1(Suppl 1):S42. doi: 10.1186/1471-2156-6-S1-S42.
In order to detect linkage of the simulated complex disease Kofendrerd Personality Disorder across studies from multiple populations, we performed a genome scan meta-analysis (GSMA). Using the 7-cM microsatellite map, nonparametric multipoint linkage analyses were performed separately on each of the four simulated populations independently to determine p-values. The genome of each population was divided into 20-cM bin regions, and each bin was rank-ordered based on the most significant linkage p-value for that population in that region. The bin ranks were then averaged across all four studies to determine the most significant 20-cM regions over all studies. Statistical significance of the averaged bin ranks was determined from a normal distribution of randomly assigned rank averages. To narrow the region of interest for fine-mapping, the meta-analysis was repeated two additional times, with each of the 20-cM bins offset by 7 cM and 13 cM, respectively, creating regions of overlap with the original method. The 6-7 cM shared regions, where the highest averaged 20-cM bins from each of the three offsets overlap, designated the minimum region of maximum significance (MRMS). Application of the GSMA-MRMS method revealed genome wide significance (p-values refer to the average rank assigned to the bin) at regions including or adjacent to all of the simulated disease loci: chromosome 1 (p < 0.0001 for 160-167 cM, including D1), chromosome 3 (p-value < 0.0000001 for 287-294 cM, including D2), chromosome 5 (p-value < 0.001 for 0-7 cM, including D3), and chromosome 9 (p-value < 0.05 for 7-14 cM, the region adjacent to D4). This GSMA analysis approach demonstrates the power of linkage meta-analysis to detect multiple genes simultaneously for a complex disorder. The MRMS method enhances this powerful tool to focus on more localized regions of linkage.
为了检测来自多个群体的多项研究中模拟的复杂疾病科芬德雷个性障碍的连锁关系,我们进行了全基因组扫描荟萃分析(GSMA)。使用 7-cM 微卫星图谱,我们分别对四个模拟群体的每个群体进行了非参数多点连锁分析,以确定 p 值。每个群体的基因组被划分为 20-cM -bin 区域,并且每个 bin 都根据该区域中该群体的最显著连锁 p 值进行排序。然后,将所有四个研究的 bin 等级平均化,以确定所有研究中最显著的 20-cM 区域。通过随机分配等级平均值的正态分布确定平均 bin 等级的统计显著性。为了缩小精细映射的感兴趣区域,荟萃分析又重复了两次,每次将 20-cM bin 分别偏移 7 cM 和 13 cM,与原始方法形成重叠区域。三个偏移的最高平均 20-cM bin 重叠的 6-7 cM 共享区域指定为最大显著区域(MRMS)。应用 GSMA-MRMS 方法揭示了包括或紧邻所有模拟疾病基因座的全基因组显著性(p 值指分配给 bin 的平均等级):染色体 1(160-167 cM 区域,包括 D1,p < 0.0001)、染色体 3(287-294 cM 区域,包括 D2,p 值<0.0000001)、染色体 5(0-7 cM 区域,包括 D3,p 值<0.001)和染色体 9(7-14 cM 区域,紧邻 D4,p 值<0.05)。这种 GSMA 分析方法证明了连锁荟萃分析同时检测复杂疾病多个基因的强大能力。MRMS 方法增强了这一强大工具,使其能够更集中于连锁的局部区域。