Kaushal Swas, Gill Harsimardeep S, Billah Mohammad Maruf, Khan Shahid Nawaz, Halder Jyotirmoy, Bernardo Amy, Amand Paul St, Bai Guihua, Glover Karl, Maimaitijiang Maitiniyazi, Sehgal Sunish K
Department of Agronomy, Horticulture and Plant Science, South Dakota State University, Brookings, SD, United States.
Department of Geography and Geospatial Sciences, Geospatial Sciences Center of Excellence, South Dakota State University, Brookings, SD, United States.
Front Plant Sci. 2024 May 30;15:1410249. doi: 10.3389/fpls.2024.1410249. eCollection 2024.
Integrating high-throughput phenotyping (HTP) based traits into phenomic and genomic selection (GS) can accelerate the breeding of high-yielding and climate-resilient wheat cultivars. In this study, we explored the applicability of Unmanned Aerial Vehicles (UAV)-assisted HTP combined with deep learning (DL) for the phenomic or multi-trait (MT) genomic prediction of grain yield (GY), test weight (TW), and grain protein content (GPC) in winter wheat. Significant correlations were observed between agronomic traits and HTP-based traits across different growth stages of winter wheat. Using a deep neural network (DNN) model, HTP-based phenomic predictions showed robust prediction accuracies for GY, TW, and GPC for a single location with R of 0.71, 0.62, and 0.49, respectively. Further prediction accuracies increased (R of 0.76, 0.64, and 0.75) for GY, TW, and GPC, respectively when advanced breeding lines from multi-locations were used in the DNN model. Prediction accuracies for GY varied across growth stages, with the highest accuracy at the Feekes 11 (Milky ripe) stage. Furthermore, forward prediction of GY in preliminary breeding lines using DNN trained on multi-location data from advanced breeding lines improved the prediction accuracy by 32% compared to single-location data. Next, we evaluated the potential of incorporating HTP-based traits in multi-trait genomic selection (MT-GS) models in the prediction of GY, TW, and GPC. MT-GS, models including UAV data-based anthocyanin reflectance index (ARI), green chlorophyll index (GCI), and ratio vegetation index 2 (RVI_2) as covariates demonstrated higher predictive ability (0.40, 0.40, and 0.37, respectively) as compared to single-trait model (0.23) for GY. Overall, this study demonstrates the potential of integrating HTP traits into DL-based phenomic or MT-GS models for enhancing breeding efficiency.
将基于高通量表型分析(HTP)的性状整合到表型组学和基因组选择(GS)中,可以加速高产和抗逆性小麦品种的育种进程。在本研究中,我们探索了无人机(UAV)辅助的HTP结合深度学习(DL)在冬小麦籽粒产量(GY)、容重(TW)和籽粒蛋白质含量(GPC)的表型组学或多性状(MT)基因组预测中的适用性。在冬小麦不同生长阶段,农艺性状与基于HTP的性状之间观察到显著相关性。使用深度神经网络(DNN)模型,基于HTP的表型组学预测对单个地点的GY、TW和GPC显示出稳健的预测准确性,R值分别为0.71、0.62和0.49。当在DNN模型中使用来自多个地点的先进育种系时,GY、TW和GPC的进一步预测准确性分别提高(R值分别为0.76、0.64和0.75)。GY的预测准确性在不同生长阶段有所不同,在Feekes 11(乳熟期)阶段准确性最高。此外,与单地点数据相比,使用基于多地点数据训练的DNN对初步育种系中的GY进行正向预测,预测准确性提高了32%。接下来,我们评估了在多性状基因组选择(MT-GS)模型中纳入基于HTP的性状对GY、TW和GPC预测的潜力。与GY的单性状模型(0.23)相比,包括基于无人机数据的花青素反射指数(ARI)、绿色叶绿素指数(GCI)和比值植被指数2(RVI_2)作为协变量的MT-GS模型显示出更高的预测能力(分别为0.40、0.40和0.37)。总体而言,本研究证明了将HTP性状整合到基于DL的表型组学或MT-GS模型中以提高育种效率的潜力。