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Bayesian multi-QTL mapping for growth curve parameters

机译:贝叶斯多QTL映射增长曲线参数

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Background Identification of QTL affecting a phenotype which is measured multiple times on the same experimental unit is not a trivial task because the repeated measures are not independent and in most cases show a trend in time. A complicating factor is that in most cases the mean increases non-linear with time as well as the variance. A two- step approach was used to analyze a simulated data set containing 1000 individuals with 5 measurements each. First the measurements were summarized in latent variables and subsequently a genome wide analysis was performed of these latent variables to identify segregating QTL using a Bayesian algorithm. Results For each individual a logistic growth curve was fitted and three latent variables: asymptote (ASYM), inflection point (XMID) and scaling factor (SCAL) were estimated per individual. Applying an 'animal' model showed heritabilities of approximately 48% for ASYM and SCAL while the heritability for XMID was approximately 24%. The genome wide scan revealed four QTLs affecting ASYM, one QTL affecting XMID and four QTLs affecting SCAL. The size of the QTL differed. QTL with a larger effect could be more precisely located compared to QTL with small effect. The locations of the QTLs for separate parameters were very close in some cases and probably caused the genetic correlation observed between ASYM and XMID and SCAL respectively. None of the QTL appeared on chromosome five. Conclusions Repeated observations on individuals were affected by at least nine QTLs. For most QTL a precise location could be determined. The QTL for the inflection point (XMID) was difficult to pinpoint and might actually exist of two closely linked QTL on chromosome one.
机译:在同一实验单元上多次测量影响表型的QTL的背景鉴定并不是一件容易的事,因为重复的测量值不是独立的,并且在大多数情况下显示出时间趋势。一个复杂的因素是,在大多数情况下,平均值随时间和方差呈非线性增长。使用了两步方法来分析包含1000个个体的模拟数据集,每个个体有5个测量值。首先,将测量值汇总为潜在变量,然后使用贝叶斯算法对这些潜在变量进行全基因组分析,以识别分离的QTL。结果为每个人拟合了逻辑增长曲线,并为每个人估计了三个潜在变量:渐近线(ASYM),拐点(XMID)和缩放因子(SCAL)。应用“动物”模型显示出ASYM和SCAL的遗传力约为48%,而XMID的遗传力约为24%。全基因组扫描揭示了四个影响ASYM的QTL,一个影响XMID的QTL和四个影响SCAL的QTL。 QTL的大小不同。与效果较小的QTL相比,效果较大的QTL可以更精确地定位。在某些情况下,用于单独参数的QTL位置非常接近,可能分别导致了ASYM与XMID和SCAL之间的遗传相关性。 QTL均未出现在第五号染色体上。结论对个人的重复观察受到至少9个QTL的影响。对于大多数QTL,可以确定一个精确的位置。拐点(XMID)的QTL很难查明,实际上可能在一个染色体上存在两个紧密相连的QTL。

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