UAV‐based time‐series phenotyping reveals the genetic basis of plant height in upland cotton

Author:

Ye Yulu1,Wang Peilin1ORCID,Zhang Man1,Abbas Mubashir1,Zhang Jiaxin1,Liang Chengzhen1,Wang Yuan1,Wei Yunxiao1,Meng Zhigang1,Zhang Rui1

Affiliation:

1. Biotechnology Research Institute Chinese Academy of Agricultural Sciences Beijing 100081 China

Abstract

SUMMARYPlant height (PH) is an important agronomic trait affecting crop architecture, biomass, resistance to lodging and mechanical harvesting. Elucidating the genetic governance of plant height is crucial because of the global demand for high crop yields. However, during the rapid growth period of plants the PH changes a lot on a daily basis, which makes it difficult to accurately phenotype the trait by hand on a large scale. In this study, an unmanned aerial vehicle (UAV)‐based remote‐sensing phenotyping platform was applied to obtain time‐series PHs of 320 upland cotton accessions in three different field trials. The results showed that the PHs obtained from UAV images were significantly correlated with ground‐based manual measurements, for three trials (R2 = 0.96, 0.95 and 0.96). Two genetic loci on chromosomes A01 and A11 associated with PH were identified by genome‐wide association studies (GWAS). GhUBP15 and GhCUL1 were identified to influence PH in further analysis. We obtained a time series of PH values for three field conditions based on remote sensing with UAV. The key genes identified in this study are of great value for the breeding of ideal plant architecture in cotton.

Publisher

Wiley

Subject

Cell Biology,Plant Science,Genetics

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