Stability of the hypocotyl length of soybean cultivars using neural networks and traditional methods

Author:

Alves Guilherme Ferreira1,Nogueira João Pedro Garcia1,Machado Junior Ronaldo2,Ferreira Silvana da Costa1,Nascimento Moysés1,Matsuo Eder1ORCID

Affiliation:

1. Universidade Federal de Viçosa (UFV), Brazil

2. Universidade Federal de Viçosa (UFV),, Brazil

Abstract

ABSTRACT: The length of the hypocotyl has been highlighted as a potential descriptor of the soybean crop. However, there is no information available in the published literature about its behavior over several planting times. The present study aimed to identify soybean cultivars with stability and predictability of hypocotyl length behavior through neural networks and traditional adaptability and stability methodologies. We analyzed 16 soybean cultivars in 6 planting seasons under greenhouse conditions. In each season, a randomized block design with 4 replications was adopted. The experimental unit was composed of 3 plants. The plot mean was used in the analysis. Hypocotyl length data were analyzed by analysis of variance and Tukey’s test. Then analyses were carried out using the Traditional Method, Plaisted and Peterson, Wricke, Eberhart and Russell, and Artificial Neural Networks. A significant effect (p<0.01 by the F test) was identified for Cultivars versus Planting Season and Planting Seasons and Cultivars. Cultivars BRS810C, BRSMG760SRR, TMG1175RR, and BMX Tornado RR showed lower averages, high stability, and general adaptability regarding soybean hypocotyl length whereas the cultivar BG4272 presented higher mean, high stability, and general adaptability. Identification of soybean cultivars of predictable and stable behavior as to hypocotyl length contributes to Soybean Improvement as it further our knowledge on the potential descriptor and the possibility of increasing the number of descriptors.

Publisher

FapUNIFESP (SciELO)

Subject

General Veterinary,Agronomy and Crop Science,Animal Science and Zoology

Reference23 articles.

1. The use of Eberhart and Russell method as a priori information for application of artificial neural networks and analysis discriminant for evaluate the phenotypic adaptability and stability of alfafa (Medicago sativa) genotypes.;BARROSO L.M.A.;Revista Brasileira de Biometria,2013

2. Institui a Lei de Proteção de Cultivares e dá outras providências.;Lei n. 9.345 de 25 de abril de 1997,1997

3. Regulamenta a Lei n. 9.456 de 25 de abril de 1997, que institui a Proteção de Cultivares, dispões sobre o Serviço Nacional de Proteção de Cultivares-SNPC, e dá outras providências.;Decreto n. 2.366 de 5 de novembro de 1997,1997

4. Artificial neural networks classify cotton genotypes for fiber lenght.;CARVALHO L.P.;Crop Breeding and Applied Biotechnology,2018

5. GENES - a software package for analysis in experimental statistics and quantitative genetics.;CRUZ C.D;Acta Scientiarum. Agronomy,2013

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