Cargando…

A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library

INTRODUCTION: Dynamic crop growth models are an important tool to predict complex traits, like crop yield, for modern and future genotypes in their current and evolving environments, as those occurring under climate change. Phenotypic traits are the result of interactions between genetic, environmen...

Descripción completa

Detalles Bibliográficos
Autores principales: van Voorn, George A. K., Boer, Martin P., Truong, Sandra Huynh, Friedenberg, Nicholas A., Gugushvili, Shota, McCormick, Ryan, Bustos Korts, Daniela, Messina, Carlos D., van Eeuwijk, Fred A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10303120/
https://www.ncbi.nlm.nih.gov/pubmed/37389290
http://dx.doi.org/10.3389/fpls.2023.1172359
_version_ 1785065203373703168
author van Voorn, George A. K.
Boer, Martin P.
Truong, Sandra Huynh
Friedenberg, Nicholas A.
Gugushvili, Shota
McCormick, Ryan
Bustos Korts, Daniela
Messina, Carlos D.
van Eeuwijk, Fred A.
author_facet van Voorn, George A. K.
Boer, Martin P.
Truong, Sandra Huynh
Friedenberg, Nicholas A.
Gugushvili, Shota
McCormick, Ryan
Bustos Korts, Daniela
Messina, Carlos D.
van Eeuwijk, Fred A.
author_sort van Voorn, George A. K.
collection PubMed
description INTRODUCTION: Dynamic crop growth models are an important tool to predict complex traits, like crop yield, for modern and future genotypes in their current and evolving environments, as those occurring under climate change. Phenotypic traits are the result of interactions between genetic, environmental, and management factors, and dynamic models are designed to generate the interactions producing phenotypic changes over the growing season. Crop phenotype data are becoming increasingly available at various levels of granularity, both spatially (landscape) and temporally (longitudinal, time-series) from proximal and remote sensing technologies. METHODS: Here we propose four phenomenological process models of limited complexity based on differential equations for a coarse description of focal crop traits and environmental conditions during the growing season. Each of these models defines interactions between environmental drivers and crop growth (logistic growth, with implicit growth restriction, or explicit restriction by irradiance, temperature, or water availability) as a minimal set of constraints without resorting to strongly mechanistic interpretations of the parameters. Differences between individual genotypes are conceptualized as differences in crop growth parameter values. RESULTS: We demonstrate the utility of such low-complexity models with few parameters by fitting them to longitudinal datasets from the simulation platform APSIM-Wheat involving in silico biomass development of 199 genotypes and data of environmental variables over the course of the growing season at four Australian locations over 31 years. While each of the four models fits well to particular combinations of genotype and trial, none of them provides the best fit across the full set of genotypes by trials because different environmental drivers will limit crop growth in different trials and genotypes in any specific trial will not necessarily experience the same environmental limitation. DISCUSSION: A combination of low-complexity phenomenological models covering a small set of major limiting environmental factors may be a useful forecasting tool for crop growth under genotypic and environmental variation.
format Online
Article
Text
id pubmed-10303120
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-103031202023-06-29 A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library van Voorn, George A. K. Boer, Martin P. Truong, Sandra Huynh Friedenberg, Nicholas A. Gugushvili, Shota McCormick, Ryan Bustos Korts, Daniela Messina, Carlos D. van Eeuwijk, Fred A. Front Plant Sci Plant Science INTRODUCTION: Dynamic crop growth models are an important tool to predict complex traits, like crop yield, for modern and future genotypes in their current and evolving environments, as those occurring under climate change. Phenotypic traits are the result of interactions between genetic, environmental, and management factors, and dynamic models are designed to generate the interactions producing phenotypic changes over the growing season. Crop phenotype data are becoming increasingly available at various levels of granularity, both spatially (landscape) and temporally (longitudinal, time-series) from proximal and remote sensing technologies. METHODS: Here we propose four phenomenological process models of limited complexity based on differential equations for a coarse description of focal crop traits and environmental conditions during the growing season. Each of these models defines interactions between environmental drivers and crop growth (logistic growth, with implicit growth restriction, or explicit restriction by irradiance, temperature, or water availability) as a minimal set of constraints without resorting to strongly mechanistic interpretations of the parameters. Differences between individual genotypes are conceptualized as differences in crop growth parameter values. RESULTS: We demonstrate the utility of such low-complexity models with few parameters by fitting them to longitudinal datasets from the simulation platform APSIM-Wheat involving in silico biomass development of 199 genotypes and data of environmental variables over the course of the growing season at four Australian locations over 31 years. While each of the four models fits well to particular combinations of genotype and trial, none of them provides the best fit across the full set of genotypes by trials because different environmental drivers will limit crop growth in different trials and genotypes in any specific trial will not necessarily experience the same environmental limitation. DISCUSSION: A combination of low-complexity phenomenological models covering a small set of major limiting environmental factors may be a useful forecasting tool for crop growth under genotypic and environmental variation. Frontiers Media S.A. 2023-06-14 /pmc/articles/PMC10303120/ /pubmed/37389290 http://dx.doi.org/10.3389/fpls.2023.1172359 Text en Copyright © 2023 van Voorn, Boer, Truong, Friedenberg, Gugushvili, McCormick, Bustos Korts, Messina and van Eeuwijk https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Plant Science
van Voorn, George A. K.
Boer, Martin P.
Truong, Sandra Huynh
Friedenberg, Nicholas A.
Gugushvili, Shota
McCormick, Ryan
Bustos Korts, Daniela
Messina, Carlos D.
van Eeuwijk, Fred A.
A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
title A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
title_full A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
title_fullStr A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
title_full_unstemmed A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
title_short A conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
title_sort conceptual framework for the dynamic modeling of time-resolved phenotypes for sets of genotype-environment-management combinations: a model library
topic Plant Science
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10303120/
https://www.ncbi.nlm.nih.gov/pubmed/37389290
http://dx.doi.org/10.3389/fpls.2023.1172359
work_keys_str_mv AT vanvoorngeorgeak aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT boermartinp aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT truongsandrahuynh aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT friedenbergnicholasa aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT gugushvilishota aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT mccormickryan aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT bustoskortsdaniela aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT messinacarlosd aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT vaneeuwijkfreda aconceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT vanvoorngeorgeak conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT boermartinp conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT truongsandrahuynh conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT friedenbergnicholasa conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT gugushvilishota conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT mccormickryan conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT bustoskortsdaniela conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT messinacarlosd conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary
AT vaneeuwijkfreda conceptualframeworkforthedynamicmodelingoftimeresolvedphenotypesforsetsofgenotypeenvironmentmanagementcombinationsamodellibrary