High-Throughput Phenotyping: Application in Maize Breeding

E. L. Resende, A. T. Bruzi, Everton da Silva Cardoso, Vinícius Quintão Carneiro, Vitório Antônio Pereira de Souza, Paulo Henrique Frois Correa Barros, Raphael Rodrigues Pereira
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Abstract

In breeding programs, the demand for high-throughput phenotyping is substantial as it serves as a crucial tool for enhancing technological sophistication and efficiency. This advanced approach to phenotyping enables the rapid and precise measurement of complex traits. Therefore, the objective of this study was to estimate the correlation between vegetation indices (VIs) and grain yield and to identify the optimal timing for accurately estimating yield. Furthermore, this study aims to employ photographic quantification to measure the characteristics of corn ears and establish their correlation with corn grain yield. Ten corn hybrids were evaluated in a Complete Randomized Block (CRB) design with three replications across three locations. Vegetation and green leaf area indices were estimated throughout the growing cycle using an unmanned aerial vehicle (UAV) and were subsequently correlated with grain yield. The experiments consistently exhibited high levels of experimental quality across different locations, characterized by both high accuracy and low coefficients of variation. The experimental quality was consistently significant across all sites, with accuracy ranging from 79.07% to 95.94%. UAV flights conducted at the beginning of the crop cycle revealed a positive correlation between grain yield and the evaluated vegetation indices. However, a positive correlation with yield was observed at the V5 vegetative growth stage in Lavras and Ijaci, as well as at the V8 stage in Nazareno. In terms of corn ear phenotyping, the regression coefficients for ear width, length, and total number of grains (TNG) were 0.92, 0.88, and 0.62, respectively, demonstrating a strong association with manual measurements. The use of imaging for ear phenotyping is promising as a method for measuring corn components. It also enables the identification of the optimal timing to accurately estimate corn grain yield, leading to advancements in the agricultural imaging sector by streamlining the process of estimating corn production.
高通量表型分析:在玉米育种中的应用
在育种计划中,对高通量表型分析的需求很大,因为它是提高技术先进性和效率的重要工具。这种先进的表型方法能够快速、精确地测量复杂的性状。因此,本研究旨在估算植被指数(VIs)与谷物产量之间的相关性,并确定准确估算产量的最佳时机。此外,本研究还旨在采用照相定量法测量玉米穗的特征,并确定其与玉米籽粒产量的相关性。采用完全随机区组(CRB)设计,在三个地点进行三次重复,对十个玉米杂交种进行了评估。使用无人驾驶飞行器(UAV)对整个生长周期中的植被指数和绿叶面积指数进行了估算,随后将其与谷物产量相关联。不同地点的实验始终表现出较高的实验质量,其特点是精确度高、变异系数低。所有地点的实验质量都非常显著,准确率从 79.07% 到 95.94%。在作物周期开始时进行的无人机飞行显示,谷物产量与所评估的植被指数呈正相关。不过,在拉夫拉斯和伊亚希的 V5 植被生长阶段,以及在纳扎雷诺的 V8 阶段,都观察到了与产量的正相关性。在玉米果穗表型方面,果穗宽度、长度和总粒数(TNG)的回归系数分别为 0.92、0.88 和 0.62,表明与人工测量结果有很大的关联。使用成像技术进行果穗表型是一种很有前景的玉米成分测量方法。它还能确定准确估算玉米籽粒产量的最佳时机,通过简化玉米产量估算流程,推动农业成像领域的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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