Perlin M W, Lancia G, Ng S K
Computer Science Department, Carnegie Mellon University, Pittsburgh, PA 15213, USA.
Am J Hum Genet. 1995 Nov;57(5):1199-210.
Dense genetic linkage maps have been constructed for the human and mouse genomes, with average densities of 2.9 cM and 0.35 cM, respectively. These genetic maps are crucial for mapping both Mendelian and complex traits and are useful in clinical genetic diagnosis. Current maps are largely comprised of abundant, easily assayed, and highly polymorphic PCR-based microsatellite markers, primarily dinucleotide (CA)n repeats. One key limitation of these length polymorphisms is the PCR stutter (or slippage) artifact that introduces additional stutter bands. With two (or more) closely spaced alleles, the stutter bands overlap, and it is difficult to accurately determine the correct alleles; this stutter phenomenon has all but precluded full automation, since a human must visually inspect the allele data. We describe here novel deconvolution methods for accurate genotyping that mathematically remove PCR stutter artifact from microsatellite markers. These methods overcome the manual interpretation bottleneck and thereby enable full automation of genetic map construction and use. New functionalities, including the pooling of DNAs and the pooling of markers, are described that may greatly reduce the associated experimentation requirements.
人类和小鼠基因组已经构建了密集的遗传连锁图谱,平均密度分别为2.9厘摩和0.35厘摩。这些遗传图谱对于孟德尔性状和复杂性状的定位至关重要,并且在临床遗传诊断中很有用。目前的图谱主要由丰富、易于检测且高度多态的基于聚合酶链反应(PCR)的微卫星标记组成,主要是二核苷酸(CA)n重复序列。这些长度多态性的一个关键限制是PCR拖尾(或滑动)假象,它会引入额外的拖尾条带。当有两个(或更多)紧密间隔的等位基因时,拖尾条带会重叠,难以准确确定正确的等位基因;这种拖尾现象几乎排除了完全自动化,因为必须由人工目视检查等位基因数据。我们在此描述了用于准确基因分型的新型去卷积方法,该方法通过数学方法消除微卫星标记中的PCR拖尾假象。这些方法克服了人工解读的瓶颈,从而实现了遗传图谱构建和使用的完全自动化。还描述了包括DNA混合和标记混合在内的新功能,这可能会大大降低相关的实验要求。