RT Journal T1 DIGITAL IMAGING-BASED PHENOTYPING OF WHEAT KERNELS UNDER DROUGHT STRESS A1 Muhammad Qadir Ahmad A1 Sanwal Zaheer A1 Muhammad Asif Saleem A1 Attiqa Saleem A1 Waqas Malik JF Journal of Animal and Plant Sciences JO JAPS SN 1018-7081 VO 36 IS 1 SP 128 OP 138 YR 2026 FD 2026/01/20 DO DOI https://doi.org/10.36899/JAPS.2026.1.0011 AB

Drought stress significantly impairs wheat growth and productivity, primarily by affecting kernel development. Given their strong association with kernel yield and quality, kernel traits offer reliable means to assess genotypic responses to drought stress conditions. In this study, 70 diverse wheat (Triticum aestivum L.) genotypes were evaluated under two moisture regimes: well-watered (four irrigations) and drought stress (irrigation withheld after the first watering). At maturity, the following agronomic traits were recorded: number of days to 50% heading, number of days to 50% physiological maturity, number of kernels per spike, number of spikelets per spike, thousand kernel weight, and kernel yield per spike. Nine kernels from each genotype were photographed in horizontal and vertical orientations using a 3 cm scale. Kernel traits were measured using Image-J software and included: horizontal area, vertical area, horizontal perimeter, vertical perimeter, horizontal length, horizontal roundness, horizontal width, vertical thickness, vertical roundness, factor from density, aspect ratio, kernel volume, horizontal deviation from ellipse, and vertical deviation from ellipse. Analysis of variance (ANOVA) showed significant differences among genotypes for all traits. Principal component analysis (PCA) highlighted kernel volume and horizontal area as the most variable traits. Genotype G17 had the highest thousand kernel weight under drought, while G30 and G41 performed best under normal irrigation. Biplot analysis showed that kernel yield per spike, number of spikelets per spike and number of kernels per spike were positively associated with horizontal kernel traits (horizontal area, horizontal length, and horizontal deviation from ellipse). In contrast, thousand kernel weight was positively associated with vertical kernel traits (vertical area, vertical perimeter, vertical thickness, vertical roundness, and vertical deviation from ellipse). In conclusion, digital imaging effectively captures variation in kernel morphology. The identified relationships between kernel traits and yield components can help breeders select drought-tolerant genotypes using both conventional and image-based traits.

K1 Kernel morphology, morphometric traits, biplot, high throughput phenotyping, multivariate analysis PB Pakistan Agricultural Scientists Forum LK https://thejaps.org.pk/AbstractView.aspx?mid=2025-JAPS-626