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RESEARCH ARTICLE

Trait physiology and crop modelling as a framework to link phenotypic complexity to underlying genetic systems

Graeme L. Hammer A B E , Scott Chapman C , Erik van Oosterom A and Dean W. Podlich D
+ Author Affiliations
- Author Affiliations

A Agricultural Production Systems Research Unit, School of Land and Food Sciences, The University of Queensland, Brisbane, Qld 4072, Australia.

B Agricultural Production Systems Research Unit, Queensland Department of Primary Industries and Fisheries, Toowoomba, Qld 4350, Australia.

C CSIRO Plant Industry, Queensland Bioscience Precinct, 306 Carmody Rd, St Lucia, Qld 4067, Australia.

D 7250 NW 62nd Ave, PO Box 552, Pioneer Hi-Bred International Inc., Johnston, IA 50131, USA.

E Corresponding author. Email: g.hammer@uq.edu.au

Australian Journal of Agricultural Research 56(9) 947-960 https://doi.org/10.1071/AR05157
Submitted: 9 May 2005  Accepted: 20 June 2005   Published: 28 September 2005

Abstract

New tools derived from advances in molecular biology have not been widely adopted in plant breeding for complex traits because of the inability to connect information at gene level to the phenotype in a manner that is useful for selection. In this study, we explored whether physiological dissection and integrative modelling of complex traits could link phenotype complexity to underlying genetic systems in a way that enhanced the power of molecular breeding strategies. A crop and breeding system simulation study on sorghum, which involved variation in 4 key adaptive traits—phenology, osmotic adjustment, transpiration efficiency, stay-green—and a broad range of production environments in north-eastern Australia, was used. The full matrix of simulated phenotypes, which consisted of 547 location–season combinations and 4235 genotypic expression states, was analysed for genetic and environmental effects. The analysis was conducted in stages assuming gradually increased understanding of gene-to-phenotype relationships, which would arise from physiological dissection and modelling. It was found that environmental characterisation and physiological knowledge helped to explain and unravel gene and environment context dependencies in the data. Based on the analyses of gene effects, a range of marker-assisted selection breeding strategies was simulated. It was shown that the inclusion of knowledge resulting from trait physiology and modelling generated an enhanced rate of yield advance over cycles of selection. This occurred because the knowledge associated with component trait physiology and extrapolation to the target population of environments by modelling removed confounding effects associated with environment and gene context dependencies for the markers used. Developing and implementing this gene-to-phenotype capability in crop improvement requires enhanced attention to phenotyping, ecophysiological modelling, and validation studies to test the stability of candidate genetic regions.

Additional keywords: gene-to-phenotype modelling, complex traits, molecular breeding, virtual plants.


Acknowledgments

An earlier version of this paper was published in the Proceedings of the 4th International Crop Science Congress, held in Brisbane, 26 September–1 October 2004. We thank the Congress organisers for permission to publish this updated manuscript as part of this series, which was based on presentations made to a symposium forming part of that Congress. We also thank Mark Cooper for invaluable discussions on framing the ideas and analyses reported in this paper, and Jeremy Lecoeur for many useful suggestions on an earlier version of this manuscript.


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