Department of Botany, The Islamia University of Bahawalpur, Bahawalpur, Pakistan.
Department of Botany, University of Sargodha, Sargodha, Pakistan.
Sci Rep. 2024 Mar 21;14(1):6757. doi: 10.1038/s41598-024-57193-w.
Wheat is a staple food crop that provides a significant portion of the world's daily caloric intake, serving as a vital source of carbohydrates and dietary fiber for billions of people. Seed shape studies of wheat typically involve the use of digital image analysis software to quantify various seed shape parameters such as length, width, area, aspect ratio, roundness, and symmetry. This study presents a comprehensive investigation into the water-absorbing capacity of seeds from 120 distinct wheat lines, leveraging digital image analysis techniques facilitated by SmartGrain software. Water absorption is a pivotal process in the early stages of seed germination, directly influencing plant growth and crop yield. SmartGrain, a powerful image analysis tool, was employed to extract precise quantitative data from digital images of wheat seeds, enabling the assessment of various seed traits in relation to their water-absorbing capacity. The analysis revealed significant transformations in seed characteristics as they absorbed water, including changes in size, weight, shape, and more. Through statistical analysis and correlation assessments, we identified robust relationships between these seed traits, both before and after water treatment. Principal Component Analysis (PCA) and Agglomerative Hierarchical Clustering (AHC) were employed to categorize genotypes with similar trait patterns, providing insights valuable for crop breeding and genetic research. Multiple linear regression analysis further elucidated the influence of specific seed traits, such as weight, width, and distance, on water-absorbing capacity. Our study contributes to a deeper understanding of seed development, imbibition, and the crucial role of water absorption in wheat. These insights have practical implications in agriculture, offering opportunities to optimize breeding programs for improved water absorption in wheat genotypes. The integration of SmartGrain software with advanced statistical methods enhances the reliability and significance of our findings, paving the way for more efficient and resilient wheat crop production. Significant changes in wheat seed shape parameters were observed after imbibition, with notable increases in area, perimeter, length, width, and weight. The length-to-width ratio (LWR) and circularity displayed opposite trends, with higher values before imbibition and lower values after imbibition.
小麦是一种主要的粮食作物,为全球数十亿人提供了大量的日常热量,是碳水化合物和膳食纤维的重要来源。小麦种子形状的研究通常涉及使用数字图像分析软件来量化各种种子形状参数,如长度、宽度、面积、长宽比、圆度和对称性。本研究利用 SmartGrain 软件提供的数字图像分析技术,全面研究了 120 个不同小麦品系的种子吸水性。吸水是种子萌发早期的一个关键过程,直接影响植物生长和作物产量。SmartGrain 是一种强大的图像分析工具,用于从小麦种子的数字图像中提取精确的定量数据,评估与吸水性相关的各种种子特征。分析表明,种子在吸水过程中会发生显著的特征变化,包括大小、重量、形状等方面的变化。通过统计分析和相关性评估,我们确定了这些种子特征在吸水前后之间存在稳健的关系。主成分分析(PCA)和凝聚层次聚类(AHC)用于对具有相似特征模式的基因型进行分类,为作物育种和遗传研究提供了有价值的见解。多元线性回归分析进一步阐明了特定种子特征(如重量、宽度和距离)对吸水性的影响。本研究有助于深入了解种子发育、吸胀和水分吸收在小麦中的关键作用。这些见解在农业实践中具有实际意义,为优化小麦基因型的水分吸收提供了机会。SmartGrain 软件与先进的统计方法的结合,提高了研究结果的可靠性和重要性,为更高效、更具弹性的小麦作物生产铺平了道路。吸水后,小麦种子形状参数发生了显著变化,面积、周长、长度、宽度和重量显著增加。长宽比(LWR)和圆度呈现相反的趋势,吸水前的数值较高,吸水后的数值较低。