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Electronic Journal of Plant Breeding
Year : 2024, Volume : 15, Issue : 1
First page : ( 94) Last page : ( 101)
Online ISSN : 0975-928X.
Article DOI : 10.37992/2024.1501.012

Integrating principal component and regression analyses for genetic diversity and trait evaluation in oat genotypes

Chawla Rukoo1,2, Jattan Minakshi1, Phogat D.S.3, Rani Babita4, Verma Deepankar5, Naresh1,*, Mahla Prachi2

1Department of Genetics and Plant Breeding, CCS HAU, Hisar, Haryana, India

2Department of Genetics and Plant Breeding, MPUAT, Udaipur, Rajasthan, India

3Department of Molecular Biology, Biotechnology and Bioinformatics, CCS HAU, Hisar, Haryana, India

4Department of Biochemistry, CCS HAU, HAU, Haryana, India

5Department of Mathematics and Statistics, CCS HAU, Hisar, Haryana, India

*E-Mail: naresh123bhatti@gmail.com

Online Published on 18 April, 2024.

Abstract

Oat holds significant importance in global agriculture and nutrition due to their adaptability and versatility. In the present study, Principal Component Analysis (PCA) and Regression analysis were carried out to identify the cause and effect relationship among various traits. PCA on 13 yield attributes revealed five main components contributing to 80.75% cumulative variance. PC1, associated with green fodder yield, dry matter yield, tillers per plant and seed yield was a prominent contributor. PC2 was influenced largely by days to 50% flowering and days to maturity. Biplot analysis identified two distinct trait groups. Multiple regression analysis revealed tillers per plant, test weight and number of spikelets as significant predictors of seed yield. The findings offer insights into genetic association among traits in oat by uncovering the quantitative relationships among them and to identify patterns of genetic variation among different oat genotypes. The analysis of individual trait regression graphs enhances understanding of trait contributions to seed yield. This study advances oat improvement strategies for enhanced crop productivity and resilience.

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Keywords

Oat, Principal component, Regression analysis, Yield.

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