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结合无人机-RGB 高通量田间表型分析和全基因组关联研究揭示水稻种质资源对干旱胁迫动态响应的遗传变异。

Combining UAV-RGB high-throughput field phenotyping and genome-wide association study to reveal genetic variation of rice germplasms in dynamic response to drought stress.

机构信息

Macro Agriculture Research Institute, College of Resource and Environment, Huazhong Agricultural University, Wuhan, 430070, China.

National Key Laboratory of Crop Genetic Improvement and National Center of Plant Gene Research (Wuhan), Hubei Hongshan Laboratory, Huazhong Agricultural University, Wuhan, 430070, China.

出版信息

New Phytol. 2021 Oct;232(1):440-455. doi: 10.1111/nph.17580. Epub 2021 Jul 23.

Abstract

Accurate and high-throughput phenotyping of the dynamic response of a large rice population to drought stress in the field is a bottleneck for genetic dissection and breeding of drought resistance. Here, high-efficiency and high-frequent image acquisition by an unmanned aerial vehicle (UAV) was utilized to quantify the dynamic drought response of a rice population under field conditions. Deep convolutional neural networks (DCNNs) and canopy height models were applied to extract highly correlated phenotypic traits including UAV-based leaf-rolling score (LRS_uav), plant water content (PWC_uav) and a new composite trait, drought resistance index by UAV (DRI_uav). The DCNNs achieved high accuracy (correlation coefficient R = 0.84 for modeling set and R = 0.86 for test set) to replace manual leaf-rolling rating. PWC_uav values were precisely estimated (correlation coefficient R = 0.88) and DRI_uav was modeled to monitor the drought resistance of rice accessions dynamically and comprehensively. A total of 111 significantly associated loci were detected by genome-wide association study for the three dynamic traits, and 30.6% of them were not detected in previous mapping studies using nondynamic drought response traits. Unmanned aerial vehicle and deep learning are confirmed effective phenotyping techniques for more complete genetic dissection of rice dynamic responses to drought and exploration of valuable alleles for drought resistance improvement.

摘要

在田间条件下准确、高通量地表征大型水稻群体对干旱胁迫的动态响应是遗传解析和抗旱育种的瓶颈。在这里,利用无人机(UAV)进行高效、高频图像采集,定量测量了水稻群体在田间条件下的动态干旱响应。深度卷积神经网络(DCNN)和冠层高度模型被用于提取高度相关的表型特征,包括基于无人机的叶片卷曲评分(LRS_uav)、植株含水量(PWC_uav)和一个新的综合特征,即基于无人机的抗旱指数(DRI_uav)。DCNN 实现了高精度(建模集的相关系数 R=0.84,测试集的 R=0.86),可替代手动叶片卷曲评分。PWC_uav 值被精确估计(相关系数 R=0.88),并对 DRI_uav 进行建模,以动态和全面地监测水稻品系的抗旱性。通过全基因组关联研究,共检测到与三个动态性状显著相关的 111 个位点,其中 30.6%的位点在以前使用非动态干旱响应性状的作图研究中未被检测到。无人机和深度学习被证实是水稻对干旱动态响应进行更完整遗传解析和探索抗旱改良有价值等位基因的有效表型技术。

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