Integrated Approach in Genomic Selection to Accelerate Genetic Gain in Sugarcane

被引:11
|
作者
Sandhu, Karansher Singh [1 ]
Shiv, Aalok [2 ]
Kaur, Gurleen [3 ]
Meena, Mintu Ram [4 ]
Raja, Arun Kumar [5 ]
Vengavasi, Krishnapriya [5 ]
Mall, Ashutosh Kumar [2 ]
Kumar, Sanjeev [2 ]
Singh, Praveen Kumar [2 ]
Singh, Jyotsnendra [2 ]
Hemaprabha, Govind [6 ]
Pathak, Ashwini Dutt [2 ]
Krishnappa, Gopalareddy [6 ]
Kumar, Sanjeev [2 ]
机构
[1] Washington State Univ, Dept Crop & Soil Sci, Pullman, WA 99163 USA
[2] ICAR Indian Inst Sugarcane Res, Div Crop Improvement, Lucknow 226002, Uttar Pradesh, India
[3] Univ Florida, Dept Hort Sci, Gainesville, FL 32611 USA
[4] ICAR Sugarcane Breeding Inst, Reg Ctr, Karnal 132001, India
[5] ICAR Sugarcane Breeding Inst, Div Crop Prod, Coimbatore 641007, Tamil Nadu, India
[6] ICAR Sugarcane Breeding Inst, Div Crop Improvement, Coimbatore 641007, Tamil Nadu, India
来源
PLANTS-BASEL | 2022年 / 11卷 / 16期
关键词
genomic selection; prediction models; GEBV; genomic accuracy; sugarcane; breeding; high-throughput phenotyping; high-throughput genotyping; machine learning; speed breeding; MARKER-ASSISTED SELECTION; LEAF WATER-CONTENT; ENABLED PREDICTION; GENOMEWIDE SELECTION; QUANTITATIVE TRAITS; CANOPY TEMPERATURE; UNIT TIME; RESISTANCE; ACCURACY; VALUES;
D O I
10.3390/plants11162139
中图分类号
Q94 [植物学];
学科分类号
071001 ;
摘要
Marker-assisted selection (MAS) has been widely used in the last few decades in plant breeding programs for the mapping and introgression of genes for economically important traits, which has enabled the development of a number of superior cultivars in different crops. In sugarcane, which is the most important source for sugar and bioethanol, marker development work was initiated long ago; however, marker-assisted breeding in sugarcane has been lagging, mainly due to its large complex genome, high levels of polyploidy and heterozygosity, varied number of chromosomes, and use of low/medium-density markers. Genomic selection (GS) is a proven technology in animal breeding and has recently been incorporated in plant breeding programs. GS is a potential tool for the rapid selection of superior genotypes and accelerating breeding cycle. However, its full potential could be realized by an integrated approach combining high-throughput phenotyping, genotyping, machine learning, and speed breeding with genomic selection. For better understanding of GS integration, we comprehensively discuss the concept of genetic gain through the breeder's equation, GS methodology, prediction models, current status of GS in sugarcane, challenges of prediction accuracy, challenges of GS in sugarcane, integrated GS, high-throughput phenotyping (HTP), high-throughput genotyping (HTG), machine learning, and speed breeding followed by its prospective applications in sugarcane improvement.
引用
收藏
页数:22
相关论文
共 50 条
  • [41] Genomic selection shows improved expected genetic gain over phenotypic selection of agronomic traits in allotetraploid white clover
    Ehoche, O. Grace
    Arojju, Sai Krishna
    Jahufer, M. Z. Zulfi
    Jauregui, Ruy
    Larking, Anna C.
    Cousins, Greig
    Tate, Jennifer A.
    Lockhart, Peter J.
    Griffiths, Andrew G.
    THEORETICAL AND APPLIED GENETICS, 2025, 138 (01)
  • [42] Genomic estimated selection criteria and parental contributions in parent selection increase genetic gain of maternal haploid inducers in maize
    Chen, Yu-Ru
    Frei, Ursula K.
    Lubberstedt, Thomas
    THEORETICAL AND APPLIED GENETICS, 2024, 137 (11)
  • [43] Genetic parameters and selection of sugarcane in early selection stages for resistance to sugarcane borer Diatraea saccharalis
    Tomaz, Adriano Cirino
    Wartha, Cleiton Antonio
    Vilela de Resende, Marcos Deon
    Brasileiro, Bruno Portela
    Peternelli, Luiz Alexandre
    Pereira Barbosa, Marcio Henrique
    CROP BREEDING AND APPLIED BIOTECHNOLOGY, 2019, 19 (02): : 208 - 216
  • [44] Genetic divergence and parent selection of sugarcane clones
    Lopes, Valeria Rosa
    Bespalhok Filho, Joao Carlos
    de Oliveira, Ricardo Augusto
    Guerra, Edson Perez
    Camargo Zambon, Jose Luis
    Daros, Edelclaiton
    CROP BREEDING AND APPLIED BIOTECHNOLOGY, 2008, 8 (03): : 225 - 231
  • [45] How genomic selection has increased rates of genetic gain and inbreeding in the Australian national herd, genomic information nucleus, and bulls
    Scott, B. A.
    Haile-Mariam, M.
    Cocks, B. G.
    Pryce, J. E.
    JOURNAL OF DAIRY SCIENCE, 2021, 104 (11) : 11832 - 11849
  • [46] AN APPROACH TO DATA PROCESSING IN SELECTION FOR GENETIC GAIN USING HIGH SPEED COMPUTERS
    SCHEINBERG, E
    CANADIAN JOURNAL OF GENETICS AND CYTOLOGY, 1967, 9 (04): : 857 - +
  • [47] Experimental evaluation of genomic selection prediction for rust resistance in sugarcane
    Islam, Md S.
    McCord, Per H.
    Olatoye, Marcus O.
    Qin, Lifang
    Sood, Sushma
    Lipka, Alexander Edward
    Todd, James R.
    PLANT GENOME, 2021, 14 (03):
  • [48] Genomic selection in soybean: accuracy and time gain in relation to phenotypic selection
    Gilvani Matei
    Leomar Guilherme Woyann
    Anderson Simionato Milioli
    Ivone de Bem Oliveira
    Andrei Daniel Zdziarski
    Rodrigo Zanella
    Alexandre Siqueira Guedes Coelho
    Taciane Finatto
    Giovani Benin
    Molecular Breeding, 2018, 38
  • [49] Genomic selection in soybean: accuracy and time gain in relation to phenotypic selection
    Matei, Gilvani
    Woyann, Leomar Guilherme
    Milioli, Anderson Simionato
    Oliveira, Ivone de Bem
    Zdziarski, Andrei Daniel
    Zanella, Rodrigo
    Guedes Coelho, Alexandre Siqueira
    Finatto, Taciane
    Benin, Giovani
    MOLECULAR BREEDING, 2018, 38 (09)
  • [50] Establishment and Optimization of Genomic Selection to Accelerate the Domestication and Improvement of Intermediate Wheatgrass
    Zhang, Xiaofei
    Sallam, Ahmad
    Gao, Liangliang
    Kantarski, Traci
    Poland, Jesse
    DeHaan, Lee R.
    Wyse, Donald L.
    Anderson, James A.
    PLANT GENOME, 2016, 9 (01):