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Modelling temporal genetic and spatio-temporal residual effects for high-throughput phenotyping data

机译:用于高吞吐量表型数据的颞遗传和时空残余效果

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High-throughput phenomics data are being collected in both the laboratory and the field. The data are often collected at many time points and there may be spatial variation in the laboratory or field that impacts on the growth of the plants, and that may influence the traits of interest. Modelling the genetic effects is of primary interest in such studies, but these effects might be biased if non-genetic effects present in the experiment are ignored. With data that are collected both in time and space, there may be a need to jointly model these multi-dimensional non-genetic effects. Thus both modelling of genetic effects over time and non-genetic effects over time and space in a one-stage analysis is considered. An experiment that involves field phenomics data with four dimensions, two in space and two in time, provides the vehicle to examine the models. Factor analytic (FA) models are often used for genetic effects for different environments to provide reliable estimates of genetic variances and correlations. As the time dimension defines the environments, FA models are examined for the phenomics data. Reduced rank tensor smoothing splines are presented as a possible approach for modelling the spatio-temporal effects, although an additional term is included for heterogeneity over the two time dimensions. This approach is feasible, although very time-consuming. The process of model selection for the genetic effects is presented including tests, information criteria and diagnostics. Comparisons of more simplistic models are made with the reduced rank tensor spline. This also shows the interplay between the genetic and residual models in model selection.
机译:在实验室和领域都收集了高吞吐量的表情数据。经常在许多时间点收集数据,并且在对植物的生长影响的实验室或领域可能存在空间变化,并且可能影响感兴趣的特征。建模遗传效应对这些研究具有初等兴趣,但如果实验中存在的非遗传效应被忽略,则可能偏置这些效果。通过在时间和空间中收集的数据,可能需要共同模拟这些多维非遗传效果。因此,考虑了遗传效应的建模,随着时间的推移和非遗传效应以及一步分析中的空间。一个实验,涉及具有四个维度,两个空间和两个时间和两个时间的实地表情数据,提供了车辆检查模型。因子分析(FA)模型通常用于不同环境的遗传效果,以提供遗传方差和相关性的可靠估计。由于时间尺寸定义环境,因此针对表达数据检查了FA模型。减少的等级张量平滑样条作为用于建模时空效应的可能方法,尽管在两个时间尺寸上包括异质性。这种方法是可行的,但虽然非常耗时。介绍了遗传效果的模型选择的过程,包括测试,信息标准和诊断。更简单的模型的比较是用缩小的张量样条曲线进行的。这也显示了模型选择中遗传和残余模型之间的相互作用。

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