A divide-and-conquer approach for genomic prediction in rubber tree using machine learning

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作者
Alexandre Hild Aono
Felipe Roberto Francisco
Livia Moura Souza
Paulo de Souza Gonçalves
Erivaldo J. Scaloppi Junior
Vincent Le Guen
Roberto Fritsche-Neto
Gregor Gorjanc
Marcos Gonçalves Quiles
Anete Pereira de Souza
机构
[1] University of Campinas (UNICAMP),Molecular Biology and Genetic Engineering Center (CBMEG)
[2] The University of Edinburgh,The Roslin Institute and Royal (Dick) School of Veterinary Studies
[3] São Francisco University (USF),AGAP, CIRAD, INRAE, Institut Agro
[4] Center of Rubber Tree and Agroforestry Systems,Genetics Department, Luiz de Queiroz College of Agriculture (ESALQ)
[5] Agronomic Institute (IAC),Instituto de Ciência e Tecnologia (ICT)
[6] Centre de Coopération Internationale en Recherche Agronomique pour le Développement (CIRAD),Department of Plant Biology, Institute of Biology (IB)
[7] UMR AGAP,undefined
[8] Univ Montpellier,undefined
[9] University of São Paulo (USP),undefined
[10] Universidade Federal de São Paulo (UNIFESP),undefined
[11] University of Campinas (UNICAMP),undefined
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摘要
Rubber tree (Hevea brasiliensis) is the main feedstock for commercial rubber; however, its long vegetative cycle has hindered the development of more productive varieties via breeding programs. With the availability of H. brasiliensis genomic data, several linkage maps with associated quantitative trait loci have been constructed and suggested as a tool for marker-assisted selection. Nonetheless, novel genomic strategies are still needed, and genomic selection (GS) may facilitate rubber tree breeding programs aimed at reducing the required cycles for performance assessment. Even though such a methodology has already been shown to be a promising tool for rubber tree breeding, increased model predictive capabilities and practical application are still needed. Here, we developed a novel machine learning-based approach for predicting rubber tree stem circumference based on molecular markers. Through a divide-and-conquer strategy, we propose a neural network prediction system with two stages: (1) subpopulation prediction and (2) phenotype estimation. This approach yielded higher accuracies than traditional statistical models in a single-environment scenario. By delivering large accuracy improvements, our methodology represents a powerful tool for use in Hevea GS strategies. Therefore, the incorporation of machine learning techniques into rubber tree GS represents an opportunity to build more robust models and optimize Hevea breeding programs.
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