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从图像到基因座:应用3D深度学习实现多变量和多时间点数字表型分析并绘制小麦氮素利用效率的遗传基础图谱

From Images to Loci: Applying 3D Deep Learning to Enable Multivariate and Multitemporal Digital Phenotyping and Mapping the Genetics Underlying Nitrogen Use Efficiency in Wheat.

作者信息

Chen Jiawei, Li Qing, Jiang Dong

机构信息

Plant Phenomics Research Centre, Academy for Advanced Interdisciplinary Studies, Collaborative Innovation Centre for Modern Crop Production, Co-sponsored by Province and Ministry, College of Agriculture, State Key Laboratory of Crop Genetics & Germplasm Enhancement and Utilization, Nanjing Agricultural University, Nanjing 210095, China.

出版信息

Plant Phenomics. 2024 Dec 19;6:0270. doi: 10.34133/plantphenomics.0270. eCollection 2024.

Abstract

The selection and promotion of high-yielding and nitrogen-efficient wheat varieties can reduce nitrogen fertilizer application while ensuring wheat yield and quality and contribute to the sustainable development of agriculture; thus, the mining and localization of nitrogen use efficiency (NUE) genes is particularly important, but the localization of NUE genes requires a large amount of phenotypic data support. In view of this, we propose the use of low-altitude aerial photography to acquire field images at a large scale, generate 3-dimensional (3D) point clouds and multispectral images of wheat plots, propose a wheat 3D plot segmentation dataset, quantify the plot canopy height via combination with PointNet++, and generate 4 nitrogen utilization-related vegetation indices via index calculations. Six height-related and 24 vegetation-index-related dynamic digital phenotypes were extracted from the digital phenotypes collected at different time points and fitted to generate dynamic curves. We applied height-derived dynamic numerical phenotypes to genome-wide association studies of 160 wheat cultivars (660,000 single-nucleotide polymorphisms) and found that we were able to locate reliable loci associated with height and NUE, some of which were consistent with published studies. Finally, dynamic phenotypes derived from plant indices can also be applied to genome-wide association studies and ultimately locate NUE- and growth-related loci. In conclusion, we believe that our work demonstrates valuable advances in 3D digital dynamic phenotyping for locating genes for NUE in wheat and provides breeders with accurate phenotypic data for the selection and breeding of nitrogen-efficient wheat varieties.

摘要

选育高产、氮高效小麦品种,在保证小麦产量和品质的同时减少氮肥施用量,有助于农业可持续发展;因此,挖掘和定位氮素利用效率(NUE)基因尤为重要,但NUE基因的定位需要大量表型数据支持。鉴于此,我们建议利用低空航空摄影大规模获取田间图像,生成小麦地块的三维(3D)点云图和多光谱图像,提出一个小麦3D地块分割数据集,结合PointNet++量化地块冠层高度,并通过指标计算生成4个与氮素利用相关的植被指数。从不同时间点采集的数字表型中提取6个与高度相关和24个与植被指数相关的动态数字表型,并拟合生成动态曲线。我们将基于高度的动态数字表型应用于160个小麦品种(660,000个单核苷酸多态性)的全基因组关联研究,发现能够定位与高度和NUE相关的可靠位点,其中一些与已发表的研究一致。最后,源自植物指数的动态表型也可应用于全基因组关联研究,并最终定位与NUE和生长相关的位点。总之,我们认为我们的工作在用于定位小麦NUE基因的3D数字动态表型分析方面取得了有价值的进展,并为育种者提供了用于选育氮高效小麦品种的准确表型数据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7e2/11658601/eddc0e45fae2/plantphenomics.0270.fig.001.jpg

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