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贝叶斯网络阐明了玉米(L.)的基因组与剩余性状之间的联系。

Bayesian Networks Illustrate Genomic and Residual Trait Connections in Maize ( L.).

作者信息

Töpner Katrin, Rosa Guilherme J M, Gianola Daniel, Schön Chris-Carolin

机构信息

Plant Breeding, TUM School of Life Sciences Weihenstephan, Technical University of Munich, 85354 Freising, Germany.

Institute for Advanced Study, Technical University of Munich, 85748 Garching, Germany.

出版信息

G3 (Bethesda). 2017 Aug 7;7(8):2779-2789. doi: 10.1534/g3.117.044263.

Abstract

Relationships among traits were investigated on the genomic and residual levels using novel methodology. This included inference on these relationships via Bayesian networks and an assessment of the networks with structural equation models. The methodology employed three steps. First, a Bayesian multiple-trait Gaussian model was fitted to the data to decompose phenotypic values into their genomic and residual components. Second, genomic and residual network structures among traits were learned from estimates of these two components. Network learning was performed using six different algorithmic settings for comparison, of which two were score-based and four were constraint-based approaches. Third, structural equation model analyses ranked the networks in terms of goodness of fit and predictive ability, and compared them with the standard multiple-trait fully recursive network. The methodology was applied to experimental data representing the European heterotic maize pools Dent and Flint ( L.). Inferences on genomic and residual trait connections were depicted separately as directed acyclic graphs. These graphs provide information beyond mere pairwise genetic or residual associations between traits, illustrating for example conditional independencies and hinting at potential causal links among traits. Network analysis suggested some genetic correlations as potentially spurious. Genomic and residual networks were compared between Dent and Flint.

摘要

使用新方法在基因组和残差水平上研究了性状之间的关系。这包括通过贝叶斯网络对这些关系进行推断,以及使用结构方程模型对网络进行评估。该方法采用了三个步骤。首先,将贝叶斯多性状高斯模型拟合到数据中,以将表型值分解为其基因组和残差成分。其次,从这两个成分的估计值中学习性状之间的基因组和残差网络结构。使用六种不同的算法设置进行网络学习以作比较,其中两种是基于评分的方法,四种是基于约束的方法。第三,结构方程模型分析根据拟合优度和预测能力对网络进行排名,并将它们与标准的多性状完全递归网络进行比较。该方法应用于代表欧洲杂种优势玉米群体马齿型和硬粒型(L.)的实验数据。对基因组和残差性状联系的推断分别表示为有向无环图。这些图提供的信息不仅仅是性状之间单纯的成对遗传或残差关联,例如说明了条件独立性,并暗示了性状之间潜在的因果联系。网络分析表明一些遗传相关性可能是虚假的。比较了马齿型和硬粒型之间的基因组和残差网络。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2c36/5555481/12137f185a1c/2779f1.jpg

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