Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system

The study explores the complex relationship between quantitative and qualitative characteristics in strawberries grown using a vertical farming system and artificial full spectrum light (AFSL). The research reveals the interdependencies between traits, identifies direct, and indirect effects on yiel...

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Format: Article
Language:English
Published: Elsevier 2025-01-01
Series:Kuwait Journal of Science
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Online Access:https://www.sciencedirect.com/science/article/pii/S2307410824001287
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collection DOAJ
description The study explores the complex relationship between quantitative and qualitative characteristics in strawberries grown using a vertical farming system and artificial full spectrum light (AFSL). The research reveals the interdependencies between traits, identifies direct, and indirect effects on yield and quality, and highlights critical factors influencing overall variation in strawberry characteristics using correlation analysis, path-coefficient analysis, and principal component analysis (PCA). These discoveries open the door for specialized breeding and cultivation techniques that optimize vertical farming procedures and increase the sustainability and productivity of strawberries. This study confirmed the suitability of a four-layered vertical farming system for strawberry cultivation; however, an additional supply of AFSL at lower levels of verticals ensures a higher yield. The number of fruits per plant and average berry weight had a high (pij > 0.3) degree of association with yield per plant at genotypic and phenotypic levels. The principal component analysis revealed a close association of T1 (top level of vertical with natural light only), T2 (third level from the top of vertical with natural light only), and T5 (third level from the top of vertical with natural light and AFSL for 2 h) with yield contributing traits (number of bud formation, number of flowers, number of fruits per plant, fruit setting (%), fruit volume, average berry weight, average yield, and estimated yield per hectare). © 2024 The Authors
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spelling doaj-art-e44ae0caf5b9459680df0eb3f540b88c2025-08-20T03:23:06ZengElsevierKuwait Journal of Science2307-41082307-41162025-01-0152110030310.1016/j.kjs.2024.100303Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming systemThe study explores the complex relationship between quantitative and qualitative characteristics in strawberries grown using a vertical farming system and artificial full spectrum light (AFSL). The research reveals the interdependencies between traits, identifies direct, and indirect effects on yield and quality, and highlights critical factors influencing overall variation in strawberry characteristics using correlation analysis, path-coefficient analysis, and principal component analysis (PCA). These discoveries open the door for specialized breeding and cultivation techniques that optimize vertical farming procedures and increase the sustainability and productivity of strawberries. This study confirmed the suitability of a four-layered vertical farming system for strawberry cultivation; however, an additional supply of AFSL at lower levels of verticals ensures a higher yield. The number of fruits per plant and average berry weight had a high (pij > 0.3) degree of association with yield per plant at genotypic and phenotypic levels. The principal component analysis revealed a close association of T1 (top level of vertical with natural light only), T2 (third level from the top of vertical with natural light only), and T5 (third level from the top of vertical with natural light and AFSL for 2 h) with yield contributing traits (number of bud formation, number of flowers, number of fruits per plant, fruit setting (%), fruit volume, average berry weight, average yield, and estimated yield per hectare). © 2024 The Authorshttps://www.sciencedirect.com/science/article/pii/S2307410824001287correlation coefficientpath coefficientprincipal component analysis (pca)strawberryvertical farming
spellingShingle Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
Kuwait Journal of Science
correlation coefficient
path coefficient
principal component analysis (pca)
strawberry
vertical farming
title Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
title_full Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
title_fullStr Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
title_full_unstemmed Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
title_short Correlation, path-coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
title_sort correlation path coefficient and principal component analysis association among quantitative traits in strawberry to unlock potential of vertical farming system
topic correlation coefficient
path coefficient
principal component analysis (pca)
strawberry
vertical farming
url https://www.sciencedirect.com/science/article/pii/S2307410824001287