Bosev, Dane

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Multivariate analysis of quantitative traits can effectively classify rapeseed germplasm

Jankulovska, Mirjana; Ivanovska, Sonja; Marjanović-Jeromela, Ana; Bolarić, Snjezana; Jankuloski, Ljupčo; Dimov, Zoran; Bosev, Dane; Kuzmanovska, Biljana

(Društvo genetičara Srbije, Beograd, 2014)

TY  - JOUR
AU  - Jankulovska, Mirjana
AU  - Ivanovska, Sonja
AU  - Marjanović-Jeromela, Ana
AU  - Bolarić, Snjezana
AU  - Jankuloski, Ljupčo
AU  - Dimov, Zoran
AU  - Bosev, Dane
AU  - Kuzmanovska, Biljana
PY  - 2014
UR  - http://fiver.ifvcns.rs/handle/123456789/1310
AB  - In this study, the use of different multivariate approaches to classify rapeseed genotypes based on quantitative traits has been presented. Tree regression analysis, PCA analysis and two-way cluster analysis were applied in order todescribe and understand the extent of genetic variability in spring rapeseed genotype by trait data. The traits which highly influenced seed and oil yield in rapeseed were successfully identified by the tree regression analysis. Principal predictor for both response variables was number of pods per plant (NP). NP and 1000 seed weight could help in the selection of high yielding genotypes. High values for both traits and oil content could lead to high oil yielding genotypes. These traits may serve as indirect selection criteria and can lead to improvement of seed and oil yield in rapeseed. Quantitative traits that explained most of the variability in the studied germplasm were classified using principal component analysis. In this data set, five PCs were identified, out of which the first three PCs explained 63% of the total variance. It helped in facilitating the choice of variables based on which the genotypes' clustering could be performed. The two-way cluster analysissimultaneously clustered genotypes and quantitative traits. The final number of clusters was determined using bootstrapping technique. This approach provided clear overview on the variability of the analyzed genotypes. The genotypes that have similar performance regarding the traits included in this study can be easily detected on the heatmap. Genotypes grouped in the clusters 1 and 8 had high values for seed and oil yield, and relatively short vegetative growth duration period and those in cluster 9, combined moderate to low values for vegetative growth duration and moderate to high seed and oil yield. These genotypes should be further exploited and implemented in the rapeseed breeding program. The combined application of these multivariate methods can assist in deciding how, and based on which traits to select the genotypes, especially in early generations, at the beginning of a breeding program.
PB  - Društvo genetičara Srbije, Beograd
T2  - Genetika-Belgrade
T1  - Multivariate analysis of quantitative traits can effectively classify rapeseed germplasm
EP  - 559
IS  - 2
SP  - 545
VL  - 46
DO  - 10.2298/GENSR1402545J
ER  - 
@article{
author = "Jankulovska, Mirjana and Ivanovska, Sonja and Marjanović-Jeromela, Ana and Bolarić, Snjezana and Jankuloski, Ljupčo and Dimov, Zoran and Bosev, Dane and Kuzmanovska, Biljana",
year = "2014",
abstract = "In this study, the use of different multivariate approaches to classify rapeseed genotypes based on quantitative traits has been presented. Tree regression analysis, PCA analysis and two-way cluster analysis were applied in order todescribe and understand the extent of genetic variability in spring rapeseed genotype by trait data. The traits which highly influenced seed and oil yield in rapeseed were successfully identified by the tree regression analysis. Principal predictor for both response variables was number of pods per plant (NP). NP and 1000 seed weight could help in the selection of high yielding genotypes. High values for both traits and oil content could lead to high oil yielding genotypes. These traits may serve as indirect selection criteria and can lead to improvement of seed and oil yield in rapeseed. Quantitative traits that explained most of the variability in the studied germplasm were classified using principal component analysis. In this data set, five PCs were identified, out of which the first three PCs explained 63% of the total variance. It helped in facilitating the choice of variables based on which the genotypes' clustering could be performed. The two-way cluster analysissimultaneously clustered genotypes and quantitative traits. The final number of clusters was determined using bootstrapping technique. This approach provided clear overview on the variability of the analyzed genotypes. The genotypes that have similar performance regarding the traits included in this study can be easily detected on the heatmap. Genotypes grouped in the clusters 1 and 8 had high values for seed and oil yield, and relatively short vegetative growth duration period and those in cluster 9, combined moderate to low values for vegetative growth duration and moderate to high seed and oil yield. These genotypes should be further exploited and implemented in the rapeseed breeding program. The combined application of these multivariate methods can assist in deciding how, and based on which traits to select the genotypes, especially in early generations, at the beginning of a breeding program.",
publisher = "Društvo genetičara Srbije, Beograd",
journal = "Genetika-Belgrade",
title = "Multivariate analysis of quantitative traits can effectively classify rapeseed germplasm",
pages = "559-545",
number = "2",
volume = "46",
doi = "10.2298/GENSR1402545J"
}
Jankulovska, M., Ivanovska, S., Marjanović-Jeromela, A., Bolarić, S., Jankuloski, L., Dimov, Z., Bosev, D.,& Kuzmanovska, B.. (2014). Multivariate analysis of quantitative traits can effectively classify rapeseed germplasm. in Genetika-Belgrade
Društvo genetičara Srbije, Beograd., 46(2), 545-559.
https://doi.org/10.2298/GENSR1402545J
Jankulovska M, Ivanovska S, Marjanović-Jeromela A, Bolarić S, Jankuloski L, Dimov Z, Bosev D, Kuzmanovska B. Multivariate analysis of quantitative traits can effectively classify rapeseed germplasm. in Genetika-Belgrade. 2014;46(2):545-559.
doi:10.2298/GENSR1402545J .
Jankulovska, Mirjana, Ivanovska, Sonja, Marjanović-Jeromela, Ana, Bolarić, Snjezana, Jankuloski, Ljupčo, Dimov, Zoran, Bosev, Dane, Kuzmanovska, Biljana, "Multivariate analysis of quantitative traits can effectively classify rapeseed germplasm" in Genetika-Belgrade, 46, no. 2 (2014):545-559,
https://doi.org/10.2298/GENSR1402545J . .
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