A joint learning approach for genomic prediction in polyploid grasses

被引:0
|
作者
Alexandre Hild Aono
Rebecca Caroline Ulbricht Ferreira
Aline da Costa Lima Moraes
Letícia Aparecida de Castro Lara
Ricardo José Gonzaga Pimenta
Estela Araujo Costa
Luciana Rossini Pinto
Marcos Guimarães de Andrade Landell
Mateus Figueiredo Santos
Liana Jank
Sanzio Carvalho Lima Barrios
Cacilda Borges do Valle
Lucimara Chiari
Antonio Augusto Franco Garcia
Reginaldo Massanobu Kuroshu
Ana Carolina Lorena
Gregor Gorjanc
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] University of São Paulo (USP),Genetics Department, Luiz de Queiroz College of Agriculture (ESALQ)
[4] Universidade Federal de São Paulo (UNIFESP),Instituto de Ciência e Tecnologia (ICT)
[5] Agronomic Institute of Campinas (IAC),Advanced Center of Sugarcane Agrobusiness Technological Research
[6] Brazilian Agricultural Research Corporation,Embrapa Beef Cattle
[7] Aeronautics Institute of Technology,Department of Plant Biology, Institute of Biology (IB)
[8] University of Campinas (UNICAMP),undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Poaceae, among the most abundant plant families, includes many economically important polyploid species, such as forage grasses and sugarcane (Saccharum spp.). These species have elevated genomic complexities and limited genetic resources, hindering the application of marker-assisted selection strategies. Currently, the most promising approach for increasing genetic gains in plant breeding is genomic selection. However, due to the polyploidy nature of these polyploid species, more accurate models for incorporating genomic selection into breeding schemes are needed. This study aims to develop a machine learning method by using a joint learning approach to predict complex traits from genotypic data. Biparental populations of sugarcane and two species of forage grasses (Urochloa decumbens, Megathyrsus maximus) were genotyped, and several quantitative traits were measured. High-quality markers were used to predict several traits in different cross-validation scenarios. By combining classification and regression strategies, we developed a predictive system with promising results. Compared with traditional genomic prediction methods, the proposed strategy achieved accuracy improvements exceeding 50%. Our results suggest that the developed methodology could be implemented in breeding programs, helping reduce breeding cycles and increase genetic gains.
引用
收藏
相关论文
共 50 条
  • [31] An integrative genomic and proteomic approach to chemosensitivity prediction
    Ma, Yan
    Ding, Zhenyu
    Qian, Yong
    Wan, Ying-Wooi
    Tosun, Kursad
    Shi, Xianglin
    Castranova, Vincent
    Harner, E. James
    Guo, Nancy L.
    INTERNATIONAL JOURNAL OF ONCOLOGY, 2009, 34 (01) : 107 - 115
  • [32] Cercis: A Non-polyploid Genomic Relic Within the Generally Polyploid Legume Family
    Stai, Jacob S.
    Yadav, Akshay
    Sinou, Carole
    Bruneau, Anne
    Doyle, Jeff J.
    Fernandez-Baca, David
    Cannon, Steven B.
    FRONTIERS IN PLANT SCIENCE, 2019, 10
  • [33] A Semi-Automated SNP-Based Approach for Contaminant Identification in Biparental Polyploid Populations of Tropical Forage Grasses
    Martins, Felipe Bitencourt
    Moraes, Aline Costa Lima
    Aono, Alexandre Hild
    Ferreira, Rebecca Caroline Ulbricht
    Chiari, Lucimara
    Simeao, Rosangela Maria
    Barrios, Sanzio Carvalho Lima
    Santos, Mateus Figueiredo
    Jank, Liana
    Do Valle, Cacilda Borges
    Vigna, Bianca Baccili Zanotto
    De Souza, Anete Pereira
    FRONTIERS IN PLANT SCIENCE, 2021, 12
  • [34] Feline degenerative joint disease: a genomic and proteomic approach
    Gao, Xiangming
    Lee, Junyu
    Malladi, Sukhaswami
    Melendez, Lynda
    Lascelles, B. Duncan X.
    Al-Murrani, Samer
    JOURNAL OF FELINE MEDICINE AND SURGERY, 2013, 15 (06) : 466 - 477
  • [35] Genomic Approaches for Improvement of Understudied Grasses
    Amundsen, Keenan
    Sarath, Gautam
    Donze-Reiner, Teresa
    FRONTIERS IN PLANT SCIENCE, 2017, 8
  • [36] Genomic and Genetic Database Resources for the Grasses
    Childs, Kevin L.
    PLANT PHYSIOLOGY, 2009, 149 (01) : 132 - 136
  • [37] A joint multi-model machine learning prediction approach based on confidence for ship stability
    Chaicheng Jiang
    Xianbo Xiang
    Gong Xiang
    Complex & Intelligent Systems, 2024, 10 : 3873 - 3890
  • [38] Joint Prediction of Remaining Useful Life and Failure Type of Train Wheelsets: Multitask Learning Approach
    Wang, Weixin
    He, Qing
    Cui, Yu
    Li, Zhiguo
    JOURNAL OF TRANSPORTATION ENGINEERING PART A-SYSTEMS, 2018, 144 (06)
  • [39] A joint multi-model machine learning prediction approach based on confidence for ship stability
    Jiang, Chaicheng
    Xiang, Xianbo
    Xiang, Gong
    COMPLEX & INTELLIGENT SYSTEMS, 2024, 10 (03) : 3873 - 3890
  • [40] deepGBLUP: joint deep learning networks and GBLUP framework for accurate genomic prediction of complex traits in Korean native cattle
    Lee, Hyo-Jun
    Lee, Jun Heon
    Gondro, Cedric
    Koh, Yeong Jun
    Lee, Seung Hwan
    GENETICS SELECTION EVOLUTION, 2023, 55 (01)