Verbyla Arūnas P, Cullis Brian R, Thompson Robin
School of Agriculture, Food and Wine, The University of Adelaide, PMB 1, Glen Osmond, SA, Australia.
Theor Appl Genet. 2007 Dec;116(1):95-111. doi: 10.1007/s00122-007-0650-x. Epub 2007 Oct 20.
An extension of interval mapping is presented that incorporates all intervals on the linkage map simultaneously. The approach uses a working model in which the sizes of putative QTL for all intervals across the genome are random effects. An outlier detection method is used to screen for possible QTL. Selected QTL are subsequently fitted as fixed effects. This screening and selection approach is repeated until the variance component for QTL sizes is not statistically significant. A comprehensive simulation study is conducted in which map uncertainty is included. The proposed method is shown to be superior to composite interval mapping in terms of power of detection of QTL. There is an increase in the rate of false positive QTL detected when using the new approach, but this rate decreases as the population size increases. The new approach is much simpler computationally. The analysis of flour milling yield in a doubled haploid population illustrates the improved power of detection of QTL using the approach, and also shows how vital it is to allow for sources of non-genetic variation in the analysis.
本文提出了区间作图的一种扩展方法,该方法同时纳入了连锁图谱上的所有区间。该方法使用了一个工作模型,其中全基因组所有区间的假定数量性状位点(QTL)大小为随机效应。采用一种异常值检测方法来筛选可能的QTL。随后将选定的QTL作为固定效应进行拟合。重复这种筛选和选择方法,直到QTL大小的方差分量在统计学上不显著。进行了一项全面的模拟研究,其中考虑了图谱不确定性。结果表明,所提出的方法在检测QTL的能力方面优于复合区间作图。使用新方法时检测到的假阳性QTL率有所增加,但随着群体大小的增加,该率会降低。新方法在计算上要简单得多。对一个加倍单倍体群体的制粉产量分析表明,使用该方法检测QTL的能力有所提高,同时也表明在分析中考虑非遗传变异来源是多么重要。