Genetic diversity, discriminant and trait association analyses of Celosia argentea accessions

Author:

Oyetunde Oyeboade Adebiyi1,Otusanya Gbemisola Oluwayemisi2,Lawal Ismael Temitayo2,Oduntan Adebusola Olubunmi1,Olalekan Olawale Jubril3

Affiliation:

1. School of Agriculture, Lagos State Polytechnic , Ikorodu , Nigeria

2. Federal University of Agriculture , College of Plant Science and Crop Production , Abeokuta , Nigeria

3. Forestry Research Institute of Nigeria , Ibadan , Nigeria

Abstract

Abstract Celosia (Celosia argentea), is an important tropical vegetable for households in sub-Saharan Africa. Despite the multifaceted usefulness, available genotypes are low-yielding, and the vegetable faces dangers of genetic erosion due to poor research attention. The magnitude and pattern of variability will guide the choice of breeding methods for improvement. Twenty-one celosia accessions were evaluated in 2018 and 2019 to determine study genetic variability and heterotic patterns among clusters. Accessions and clusters differed significantly (p ≤0.05/0.01) for plant height, number of leaves/plant, stem weight, harvest index and dry matter content. Genotypic coefficients of variation; ranging from 37.89 to 0.12, were lower than phenotypic coefficients of variation which ranged from 114.55 to 0.12, both for number of leaves/plant and harvest index respectively, indicating the importance of environment in the variability. Discriminant analysis indicated low (8.12%) classification error rate, indicating the possibility of heterotic patterns among clusters. Principal component (PC) analysis controlled 73% of the observed variability among accessions and identified all measured traits as important contributors with loadings ranging from 0.30 (in PC 1) to 0.63 (in PC 2) for harvest index and stem weight respectively. Useful levels of association were also observed among measured traits. The study concluded that there was sufficient genetic variability for effective selection. Discriminant and principal component analyses identified plant height, number of leaves/plant and dry matter content as major contributors to variation among accessions. Weight of edible parts of Celosia can be simultaneously improved with plant height and number of leaves/plants.

Publisher

Walter de Gruyter GmbH

Reference18 articles.

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2. Adeyeye, A.S., Ogunwale, O.A., & Mofikoya, F.A. (2013). Growth, dry matter accumulation and shoot yield of Celosia argentea as affected by poultry manure and urea application. International Journal of Agricultural Policy and Research, 1(8), 210–215.

3. ARIYO, O. J. (1995). Genetic variability, correlations and path coefficient analysis of components of seed yield in cowpea (Vigna unguiculata). Pertanika Journal of Tropical Agricultural Sciences, 18(1), 63–69.

4. Babajide, P. A., & Olla, N. O. (2014). Performance of indigenous Celosia argentea variety and soil physico-chemical properties as affected by dual application of compost and single N-mineral fertilizer in Southern Guinea savanna vegetation zone of Nigeria. Journal of Biology, Agriculture and Healthcare, 4(19), 69–74.

5. Ewemoje, T. A. (2007). Variable irrigation scheduling effects on growth parameters of Celosia ergentea in humid tropical environment. Agricultural Engineering International: the CIGR Ejournal. IX: Manuscript ID LW 06 018. Available online at https://cigrjournal.org/index.php/Ejounral/article/view/844/838 (Last accessed: 26-06-2020, 3:12 pm).

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