Plant Phenomics (Jan 2024)

Using UAV-Based Temporal Spectral Indices to Dissect Changes in the Stay-Green Trait in Wheat

  • Rui Yu,
  • Xiaofeng Cao,
  • Jia Liu,
  • Ruiqi Nie,
  • Chuanliang Zhang,
  • Meng Yuan,
  • Yanchuan Huang,
  • Xinzhe Liu,
  • Weijun Zheng,
  • Changfa Wang,
  • Tingting Wu,
  • Baofeng Su,
  • Zhensheng Kang,
  • Qingdong Zeng,
  • Dejun Han,
  • Jianhui Wu

DOI
https://doi.org/10.34133/plantphenomics.0171
Journal volume & issue
Vol. 6

Abstract

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Stay-green (SG) in wheat is a beneficial trait that increases yield and stress tolerance. However, conventional phenotyping techniques limited the understanding of its genetic basis. Spectral indices (SIs) as non-destructive tools to evaluate crop temporal senescence provide an alternative strategy. Here, we applied SIs to monitor the senescence dynamics of 565 diverse wheat accessions from anthesis to maturation stages over 2 field seasons. Four SIs (normalized difference vegetation index, green normalized difference vegetation index, normalized difference red edge index, and optimized soil-adjusted vegetation index) were normalized to develop relative stay-green scores (RSGS) as the SG indicators. An RSGS-based genome-wide association study identified 47 high-confidence quantitative trait loci (QTL) harboring 3,079 single-nucleotide polymorphisms associated with SG and 1,085 corresponding candidate genes. Among them, 15 QTL overlapped or were adjacent to known SG-related QTL/genes, while the remaining QTL were novel. Notably, a set of favorable haplotypes of SG-related candidate genes such as TraesCS2A03G1081100, TracesCS6B03G0356400, and TracesCS2B03G1299500 are increasing following the Green Revolution, further validating the feasibility of the pipeline. This study provided a valuable reference for further quantitative SG and genetic research in diverse wheat panels.