Wu Jiasheng, Zhang Bo, Cui Yuehua, Zhao Wei, Xu Li'an, Huang Minren, Zeng Yanru, Zhu Jun, Wu Rongling
College of Agriculture and Biotechnology, Zhejiang University, Hangzhou, Zhejiang 310029, People's Republic of China.
Genetics. 2007 Jun;176(2):1187-96. doi: 10.1534/genetics.107.072843. Epub 2007 Apr 15.
Developmental instability or noise, defined as the phenotypic imprecision of an organism in the face of internal or external stochastic disturbances, has been thought to play an important role in shaping evolutionary processes and patterns. The genetic studies of developmental instability have been based on fluctuating asymmetry (FA) that measures random differences between the left and the right sides of bilateral traits. In this article, we frame an experimental design characterized by a spatial autocorrelation structure for determining the genetic control of developmental instability for those traits that cannot be bilaterally measured. This design allows the residual environmental variance of a quantitative trait to be dissolved into two components due to permanent and random environmental factors. The degree of developmental instability is quantified by the relative proportion of the random residual variance to the total residual variance. We formulate a mixture model to estimate and test the genetic effects of quantitative trait loci (QTL) on the developmental instability of the trait. The genetic parameters including the QTL position, the QTL effects, and spatial autocorrelations are estimated by implementing the EM algorithm within the mixture model framework. Simulation studies were performed to investigate the statistical behavior of the model. A live example for poplar trees was used to map the QTL that control root length growth and its developmental instability from cuttings in water culture.
发育不稳定性或噪声,被定义为生物体在面对内部或外部随机干扰时的表型不精确性,被认为在塑造进化过程和模式中发挥着重要作用。发育不稳定性的遗传学研究基于波动不对称性(FA),它测量双侧性状左右两侧的随机差异。在本文中,我们构建了一种具有空间自相关结构的实验设计,用于确定那些无法进行双侧测量的性状的发育不稳定性的遗传控制。这种设计允许将数量性状的残余环境方差分解为由于永久环境因素和随机环境因素导致的两个分量。发育不稳定性的程度通过随机残余方差占总残余方差的相对比例来量化。我们制定了一个混合模型来估计和检验数量性状基因座(QTL)对该性状发育不稳定性的遗传效应。通过在混合模型框架内实施期望最大化(EM)算法来估计包括QTL位置、QTL效应和空间自相关在内的遗传参数。进行了模拟研究以考察该模型的统计行为。以杨树为例,绘制了控制水培插条根长生长及其发育不稳定性的QTL图谱。