Please use this identifier to cite or link to this item: https://repositorio.inpa.gov.br/handle/1/14981
Title: Comparison of BLUE and BLUP/REML in the selection of clones and families of potato (Solanum tuberosum)
Authors: Ticona-Benavente, César Augusto
Silva Filho, Danilo Fernandes da
Keywords: Behavior
Breeding
Controlled Study
Family
Family Study
Maximum Likelihood Method
Potato
Prediction
Relative Density
Tuber Yield
Algorithm
Biological Model
Genetic Database
Selection, Genetic
Genetics
Gravity
Potato
Algorithms
Breeding
Databases, Genetic
Gravitation
Models, Genetic
Selection, Genetic
Solanum Tuberosum
Issue Date: 2015
metadata.dc.publisher.journal: Genetics and Molecular Research
metadata.dc.relation.ispartof: Volume 14, Número 4, Pags. 18421-18430
Abstract: The use of best linear unbiased prediction/restricted maximum likelihood (BLUP/REML) in perennial crops and animal breeding enhances selection gain. However, its advantage with respect to annual crops is not clear. We compared the BLUP and best linear unbiased estimator selection efficiency in the breeding of various potato generations. This was done by simulating various selection intensities on clonal families (full sibs), and clones. The characters evaluated were tuber yield and tuber specific gravity. Two criteria were adopted for comparison: a) incidence of families or clones and b) selection gain. For tuber yield, BLUP/REML method was slightly more efficient for selecting families in the first clonal generation, if it were above 50%. Below this value, both methods were equivalent. However, they both presented equal behavior for family selection of tuber specific gravity. For clonal selection, BLUP/REML showed robust superiority from 10 to 90% selection intensities in both characters. Therefore, the adequate use of BLUP/REML in potato breeding can enhance the selection gain on the yield and specific gravity of tubers. © FUNPEC-RP.
metadata.dc.identifier.doi: 10.4238/2015.December.23.30
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