Abstract

Inferring trait networks from a large volume of genetically correlated diverse phenotypes such as yield, architecture, and disease resistance can provide information on the manner in which complex phenotypes are interrelated. However, studies on statistical methods tailored to multidimensional phenotypes are limited, whereas numerous methods are available for evaluating the massive number of genetic markers. Factor analysis operates at the level of latent variables predicted to generate observed responses. The objectives of this study were to illustrate the manner in which data‐driven exploratory factor analysis can map observed phenotypes into a smaller number of latent variables and infer a genomic latent factor network using 45 agro‐morphological, disease, and grain mineral phenotypes measured in synthetic hexaploid wheat lines (Triticum aestivum L.). In total, eight latent factors including grain yield, architecture, flag leaf‐related traits, grain minerals, yellow rust, two types of stem rust, and leaf rust were identified as common sources of the observed phenotypes. The genetic component of the factor scores for each latent variable was fed into a Bayesian network to obtain a trait structure reflecting the genetic interdependency among traits. Three directed paths were consistently identified by two Bayesian network algorithms. Flag leaf‐related traits influenced leaf rust, and yellow rust and stem rust influenced grain yield. Additional paths that were identified included flag leaf‐related traits to minerals and minerals to architecture. This study shows that data‐driven exploratory factor analysis can reveal smaller dimensional common latent phenotypes that are likely to give rise to numerous observed field phenotypes without relying on prior biological knowledge. The inferred genomic latent factor structure from the Bayesian network provides insights for plant breeding to simultaneously improve multiple traits, as an intervention on one trait will affect the values of focal phenotypes in an interrelated complex trait system.

Highlights

  • With the development of high-throughput phenotyping technologies, phenomics has been generating plant measurements at a greater level of resolution and dimensionality (Araus & Cairns, 2014; Watanabe et al, 2017)

  • The current study demonstrates the advantages of the joint application of factor analysis and Bayesian network as a data-driven approach to discover interrelationships between a set of many correlated traits in wheat

  • These results suggest that flag leaf traits play an important role in determining the grain mineral concentration, which agrees with our results indicating a direct link from FL to MIN

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Summary

| INTRODUCTION

With the development of high-throughput phenotyping technologies, phenomics has been generating plant measurements at a greater level of resolution and dimensionality (Araus & Cairns, 2014; Watanabe et al, 2017) Integrating these diverse and heterogeneous data to improve the biological understanding of plant systems and interpret the underlying interrelationships among phenotypes remains challenging (Morota et al, 2019). Yu et al (2019) showed that factor analysis can be used to reduce the dimension of response variables by assuming latent factors that give rise to observed phenotypes in rice They used confirmatory factor analysis (CFA), which requires knowledge of the phenotype–factor category before data analysis. The second objective was to determine a trait network structure among the genomic latent factors using a Bayesian network This is an essential task because breeding programs often aim to improve multiple correlated traits concurrently. The current study demonstrates the advantages of the joint application of factor analysis and Bayesian network as a data-driven approach to discover interrelationships between a set of many correlated traits in wheat

| MATERIALS AND METHODS
| DISCUSSION
| CONCLUSIONS
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