Department of Paediatrics and Adolescent Medicine, University of Hong Kong, USA.
Hum Mutat. 2011 Mar;32(3):345-53. doi: 10.1002/humu.21432.
Homozygosity mapping has played an important role in detecting recessive mutations using families of consanguineous marriages. However, detection of regions identical and homozygosity by descent (HBD) when family data are not available, or when relationships are unknown, is still a challenge. Making use of population data from high-density SNP genotyping may allow detection of regions HBD from recent common founders in singleton patients without genealogy information. We report a novel algorithm that detects such regions by estimating the population haplotype frequencies (HF) for an entire homozygous region. We also developed a simulation method to evaluate the probability of HBD and linkage to disease for a homozygous region by examining the best regions in unaffected controls from the host population. The method can be applied to diseases of Mendelian inheritance but can also be extended to complex diseases to detect rare founder mutations that affect a very small number of patients using either multiplex families or sporadic cases. Testing of the method on both real cases (singleton affected) and simulated data demonstrated its superb sensitivity and robustness under genetic heterogeneity.
单体患者家系信息未知或缺失时,利用高密度 SNP 基因分型的人群数据,通过检测来自近期共同祖先的同源同型区域和同型区域由共同祖先遗传(HBD),可以检测到隐性突变。我们报告了一种新的算法,通过估计整个纯合区域的人群单体型频率(HF)来检测此类区域。我们还开发了一种模拟方法,通过检查宿主人群中未受影响对照者的最佳区域,评估纯合区域的 HBD 和与疾病的连锁概率。该方法可应用于孟德尔遗传疾病,但也可扩展到复杂疾病,以检测使用多重家系或散发病例影响极少数患者的罕见起始突变。该方法在真实病例(单体受影响)和模拟数据上的测试结果表明,该方法在遗传异质性下具有极好的灵敏度和稳健性。