QTL and genomic prediction accuracy for grain yield and secondary traits in a maize population under heat and heat-drought stresses
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Main Authors: | Neiff, Nicolás, González Perez, Lorena, Mendoza Lugo, Jose Alberto, Martínez, Carlos, Kettler, Belén Araceli, Dhliwayo, Thanda, Babu, Raman, Trachsel, Samuel |
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Published: |
2023-01-19T16:59:54Z
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Online Access: | https://hdl.handle.net/10568/127591 |
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