Division of Medical Genetics, GlaxoSmithKline, Verona, Italy.
Mol Psychiatry. 2010 Mar;15(3):319-25. doi: 10.1038/mp.2008.100. Epub 2008 Sep 16.
Population-based linkage analysis is a new method for analysing genomewide single nucleotide polymorphism (SNP) genotype data in case-control samples, which does not assume a common disease, common variant model. The genome is scanned for extended segments that show increased identity-by-descent sharing within case-case pairs, relative to case-control or control-control pairs. The method is robust to allelic heterogeneity and is suited to mapping genes which contain multiple, rare susceptibility variants of relatively high penetrance. We analysed genomewide SNP datasets for two schizophrenia case-control cohorts, collected in Aberdeen (461 cases, 459 controls) and Munich (429 cases, 428 controls). Population-based linkage testing must be performed within homogeneous samples and it was therefore necessary to analyse the cohorts separately. Each cohort was first subjected to several procedures to improve genetic homogeneity, including identity-by-state outlier detection and multidimensional scaling analysis. When testing only cases who reported a positive family history of major psychiatric disease, consistent with a model of strongly penetrant susceptibility alleles, we saw a distinct peak on chromosome 19q in both cohorts that appeared in meta-analysis (P=0.000016) to surpass the traditional level for genomewide significance for complex trait linkage. The linkage signal was also present in a third case-control sample for familial bipolar disorder, such that meta-analysing all three datasets together yielded a linkage P=0.0000026. A model of rare but highly penetrant disease alleles may be more applicable to some instances of major psychiatric diseases than the common disease common variant model, and we therefore suggest that other genome scan datasets are analysed with this new, complementary method.
基于人群的连锁分析是一种新的方法,用于分析病例对照样本中的全基因组单核苷酸多态性 (SNP) 基因型数据,它不假设常见疾病、常见变异模型。该方法扫描基因组,寻找在病例-病例对中显示出更高的同系性共享的扩展片段,相对于病例-对照或对照-对照对。该方法对等位基因异质性具有鲁棒性,适用于映射包含多个、罕见的高外显率易感变体的基因。我们分析了两个精神分裂症病例对照队列的全基因组 SNP 数据集,这些队列分别在阿伯丁(461 例病例,459 例对照)和慕尼黑(429 例病例,428 例对照)收集。基于人群的连锁检测必须在同质样本中进行,因此需要分别分析队列。每个队列首先经过几个程序来提高遗传同质性,包括同态性状态外显子检测和多维尺度分析。当仅检测报告主要精神疾病阳性家族史的病例时,符合强外显率易感等位基因模型,我们在两个队列中都看到了 19 号染色体上的一个明显峰值,在元分析中(P=0.000016)超过了复杂性状连锁的传统全基因组显著水平。连锁信号也存在于第三个家族性双相情感障碍的病例对照样本中,因此将这三个数据集一起进行元分析得出的连锁 P=0.0000026。罕见但高度外显率的疾病等位基因模型可能比常见疾病常见变异模型更适用于某些主要精神疾病,因此我们建议使用这种新的、互补的方法分析其他基因组扫描数据集。