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A Computational Approach for Functional Mapping of Quantitative Trait Loci That Regulate Thermal Performance Curves

机译:调节热性能曲线的定量性状位点功能映射的计算方法

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摘要

Whether and how thermal reaction norm is under genetic control is fundamental to understand the mechanistic basis of adaptation to novel thermal environments. However, the genetic study of thermal reaction norm is difficult because it is often expressed as a continuous function or curve. Here we derive a statistical model for dissecting thermal performance curves into individual quantitative trait loci (QTL) with the aid of a genetic linkage map. The model is constructed within the maximum likelihood context and implemented with the EM algorithm. It integrates the biological principle of responses to temperature into a framework for genetic mapping through rigorous mathematical functions established to describe the pattern and shape of thermal reaction norms. The biological advantages of the model lie in the decomposition of the genetic causes for thermal reaction norm into its biologically interpretable modes, such as hotter-colder, faster-slower and generalist-specialist, as well as the formulation of a series of hypotheses at the interface between genetic actions/interactions and temperature-dependent sensitivity. The model is also meritorious in statistics because the precision of parameter estimation and power of QTLdetection can be increased by modeling the mean-covariance structure with a small set of parameters. The results from simulation studies suggest that the model displays favorable statistical properties and can be robust in practical genetic applications. The model provides a conceptual platform for testing many ecologically relevant hypotheses regarding organismic adaptation within the Eco-Devo paradigm.
机译:热反应范式是否受遗传控制以及如何受遗传控制是了解适应新型热环境的机理基础的基础。但是,对热反应范数的遗传研究很困难,因为它通常表示为连续函数或曲线。在这里,我们导出了一个统计模型,用于借助遗传连锁图将热性能曲线分解为各个定量特征位点(QTL)。该模型在最大似然上下文内构建,并通过EM算法实现。它通过建立严格的数学函数将温度响应的生物学原理整合到遗传图谱框架中,这些数学函数是用来描述热反应范式的模式和形状的。该模型的生物学优势在于将热反应范式的遗传原因分解为生物学上可解释的模式,例如更冷,更快,更慢和更全面的专家,以及在模型上提出一系列假设。遗传作用/相互作用与温度依赖性敏感性之间的接口。该模型在统计上也很有用,因为可以通过使用少量参数对均值协方差结构建模来提高参数估计的准确性和QTL检测的功效。仿真研究的结果表明,该模型显示出有利的统计特性,并且在实际的遗传应用中可能很可靠。该模型提供了一个概念平台,可用于检验Eco-Devo范式中有关生物适应性的许多与生态相关的假设。

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