Genomic Selection in Plant Breeding: Methods, Models, and Perspectives

Trends in Plant Science - Tập 22 Số 11 - Trang 961-975 - 2017
José Crossa1, Paulino Pérez‐Rodríguez2, Jaime Cuevas3, Osval A. Montesinos‐López4, Diego Jarquín5, Gustavo de los Campos6, Juan Burgueño1, Juan Manuel González‐Camacho2, Sergio Pérez‐Elizalde2, Yoseph Beyene1, Susanne Dreisigacker1, Ravi P. Singh1, Xuecai Zhang1, Manje Gowda1, Manish Roorkiwal7, Jessica Rutkoski8, Rajeev K. Varshney7
1International Maize and Wheat Improvement Center (CIMMYT), Apdo. Postal 6-641, 06600, Mexico City, Mexico
2Colegio de Postgraduados, Montecillo, Texcoco, 56230, Edo. de Mexico, Mexico
3Universidad de Quintana Roo, Quintana Roo, 77019, Mexico
4Facultad de Telemática, Universidad de Colima, Colima, 28040, Mexico
5Department of Agronomy and Horticulture, University of Nebraska-Lincoln, 321 Keim Hall, Lincoln, NE 68503-0915, USA
6Department of Epidemiology & Biostatistics, Michigan State University, 909 Fee Road, Room B601, East Lansing, MI 48824, USA
7International Crops Research Institute for the Semi-Arid Tropics (ICRISAT), Patancheru 502 324, Telangana, India
8International Rice Research Institute, Los Baños, 4030, Philippines

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