反应规范对多种环境信号的功能映射。

Jiasheng Wu, Yanru Zeng, Jianqing Huang, Wei Hou, Jun Zhu, Rongling Wu
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引用次数: 11

摘要

是否有不同的基因参与对不同环境信号的反应,以及这些基因如何相互作用决定性状的最终表达,在农业和生物学研究中具有重要的基础意义。我们提出了一个统计框架,用于绘制环境诱导基因(或数量性状位点,qtl),这些基因对响应变化环境的性状表达有主要影响。该框架采用基于最大似然的混合模型构建,其中环境诱导响应的均值和协方差结构建模。不同QTL基因型对连续环境状态反应的均值,即反应规范,通过从基本生物学原理导出的数学方程或基于观测数据的统计拟合优度来近似计算。不同环境状态间的残差协方差采用自回归过程建模。这种研究反应规范遗传控制的方法有望优于不考虑生物学原理和统计结构的传统制图方法。我们通过模拟光合速率过程作为温度和光辐照度的函数来证明这种方法的分析过程和能力。我们的方法允许测试一个QTL如何影响光合速率对特定环境的反应规范,以及是否存在不同的QTL分别介导光合对温度和光照的反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional mapping of reaction norms to multiple environmental signals.

Whether there are different genes involved in response to different environmental signals and how these genes interact to determine the final expression of the trait are of fundamental importance in agricultural and biological research. We present a statistical framework for mapping environment-induced genes (or quantitative trait loci, QTLs) of major effects on the expression of a trait that respond to changing environments. This framework is constructed with a maximum-likelihood-based mixture model, in which the mean and covariance structure of environment-induced responses is modelled. The means for responses to continuous environmental states, referred to as reaction norms, are approximated for different QTL genotypes by mathematical equations that were derived from fundamental biological principles or based on statistical goodness-of-fit to observational data. The residual covariance between different environmental states was modelled by autoregressive processes. Such an approach to studying the genetic control of reaction norms can be expected to be advantageous over traditional mapping approaches in which no biological principles and statistical structures are considered. We demonstrate the analytical procedure and power of this approach by modelling the photosynthetic rate process as a function of temperature and light irradiance. Our approach allows for testing how a QTL affects the reaction norm of photosynthetic rate to a specific environment and whether there exist different QTLs to mediate photosynthetic responses to temperature and light irradiance, respectively.

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