Optimization of allelic combinations controlling parameters of a peach quality model

Process-based models are effective tools to predict the phenotype of an individual in different growing conditions. Combined with a quantitative trait locus (QTL) mapping approach, it is then possible to predict the behavior of individuals with any combinations of alleles. However the number of simu...

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Main Authors: Bénédicte QUILOT-TURION, Michel GENARD, Pierre VALSESIA, Mohamed-Mahmoud MEMMAH
Format: Article
Language:English
Published: Frontiers Media S.A. 2016-12-01
Series:Frontiers in Plant Science
Subjects:
QTL
Online Access:http://journal.frontiersin.org/Journal/10.3389/fpls.2016.01873/full
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spelling doaj-7ddc23d3ed734763a1dc8da0d58eb5e92020-11-25T00:48:04ZengFrontiers Media S.A.Frontiers in Plant Science1664-462X2016-12-01710.3389/fpls.2016.01873221649Optimization of allelic combinations controlling parameters of a peach quality modelBénédicte QUILOT-TURION0Michel GENARD1Pierre VALSESIA2Mohamed-Mahmoud MEMMAH3INRAINRAINRAINRAProcess-based models are effective tools to predict the phenotype of an individual in different growing conditions. Combined with a quantitative trait locus (QTL) mapping approach, it is then possible to predict the behavior of individuals with any combinations of alleles. However the number of simulations to explore the realm of possibilities may become infinite. Therefore, the use of an efficient optimization algorithm to intelligently explore the search space becomes imperative. The optimization algorithm has to solve a multi-objective problem, since the phenotypes of interest are usually a complex of traits, to identify the individuals with best tradeoffs between those traits.In this study we proposed to unroll such a combined approach in the case of peach fruit quality described through three targeted traits, using a process-based model with 7 parameters controlled by QTL. We compared a current approach based on the optimization of the values of the parameters with a more evolved way to proceed which consists in the direct optimization of the alleles controlling the parameters. The optimization algorithm has been adapted to deal with both continuous and combinatorial problems. We compared the spaces of parameters obtained with different tactics and the phenotype of the individuals resulting from random simulations and optimization in these spaces. The use of a genetic model enabled the restriction of the dimension of the parameter space towards more feasible combinations of parameter values, reproducing relationships between parameters as observed in a real progeny. The results of this study demonstrated the potential of such an approach to refine the solutions towards more realistic ideotypes. Perspectives of improvement are discussed.http://journal.frontiersin.org/Journal/10.3389/fpls.2016.01873/fullFruitQTLoptimizationModelGenetic AlgorithmPrunus persica
collection DOAJ
language English
format Article
sources DOAJ
author Bénédicte QUILOT-TURION
Michel GENARD
Pierre VALSESIA
Mohamed-Mahmoud MEMMAH
spellingShingle Bénédicte QUILOT-TURION
Michel GENARD
Pierre VALSESIA
Mohamed-Mahmoud MEMMAH
Optimization of allelic combinations controlling parameters of a peach quality model
Frontiers in Plant Science
Fruit
QTL
optimization
Model
Genetic Algorithm
Prunus persica
author_facet Bénédicte QUILOT-TURION
Michel GENARD
Pierre VALSESIA
Mohamed-Mahmoud MEMMAH
author_sort Bénédicte QUILOT-TURION
title Optimization of allelic combinations controlling parameters of a peach quality model
title_short Optimization of allelic combinations controlling parameters of a peach quality model
title_full Optimization of allelic combinations controlling parameters of a peach quality model
title_fullStr Optimization of allelic combinations controlling parameters of a peach quality model
title_full_unstemmed Optimization of allelic combinations controlling parameters of a peach quality model
title_sort optimization of allelic combinations controlling parameters of a peach quality model
publisher Frontiers Media S.A.
series Frontiers in Plant Science
issn 1664-462X
publishDate 2016-12-01
description Process-based models are effective tools to predict the phenotype of an individual in different growing conditions. Combined with a quantitative trait locus (QTL) mapping approach, it is then possible to predict the behavior of individuals with any combinations of alleles. However the number of simulations to explore the realm of possibilities may become infinite. Therefore, the use of an efficient optimization algorithm to intelligently explore the search space becomes imperative. The optimization algorithm has to solve a multi-objective problem, since the phenotypes of interest are usually a complex of traits, to identify the individuals with best tradeoffs between those traits.In this study we proposed to unroll such a combined approach in the case of peach fruit quality described through three targeted traits, using a process-based model with 7 parameters controlled by QTL. We compared a current approach based on the optimization of the values of the parameters with a more evolved way to proceed which consists in the direct optimization of the alleles controlling the parameters. The optimization algorithm has been adapted to deal with both continuous and combinatorial problems. We compared the spaces of parameters obtained with different tactics and the phenotype of the individuals resulting from random simulations and optimization in these spaces. The use of a genetic model enabled the restriction of the dimension of the parameter space towards more feasible combinations of parameter values, reproducing relationships between parameters as observed in a real progeny. The results of this study demonstrated the potential of such an approach to refine the solutions towards more realistic ideotypes. Perspectives of improvement are discussed.
topic Fruit
QTL
optimization
Model
Genetic Algorithm
Prunus persica
url http://journal.frontiersin.org/Journal/10.3389/fpls.2016.01873/full
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AT michelgenard optimizationofalleliccombinationscontrollingparametersofapeachqualitymodel
AT pierrevalsesia optimizationofalleliccombinationscontrollingparametersofapeachqualitymodel
AT mohamedmahmoudmemmah optimizationofalleliccombinationscontrollingparametersofapeachqualitymodel
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