A leaf-level spectral library to support high-throughput plant phenotyping: predictive accuracy and model transfer

J Exp Bot. 2023 Aug 3;74(14):4050-4062. doi: 10.1093/jxb/erad129.

Abstract

Leaf-level hyperspectral reflectance has become an effective tool for high-throughput phenotyping of plant leaf traits due to its rapid, low-cost, multi-sensing, and non-destructive nature. However, collecting samples for model calibration can still be expensive, and models show poor transferability among different datasets. This study had three specific objectives: first, to assemble a large library of leaf hyperspectral data (n=2460) from maize and sorghum; second, to evaluate two machine-learning approaches to estimate nine leaf properties (chlorophyll, thickness, water content, nitrogen, phosphorus, potassium, calcium, magnesium, and sulfur); and third, to investigate the usefulness of this spectral library for predicting external datasets (n=445) including soybean and camelina using extra-weighted spiking. Internal cross-validation showed satisfactory performance of the spectral library to estimate all nine traits (mean R2=0.688), with partial least-squares regression outperforming deep neural network models. Models calibrated solely using the spectral library showed degraded performance on external datasets (mean R2=0.159 for camelina, 0.337 for soybean). Models improved significantly when a small portion of external samples (n=20) was added to the library via extra-weighted spiking (mean R2=0.574 for camelina, 0.536 for soybean). The leaf-level spectral library greatly benefits plant physiological and biochemical phenotyping, whilst extra-weight spiking improves model transferability and extends its utility.

Keywords: Biochemical traits; camelina; extra-weighted spiking; high-throughput phenotyping; leaf hyperspectral reflectance; machine-learning; maize; partial least squares regression; sorghum; soybean; trait modeling.

Publication types

  • Research Support, U.S. Gov't, Non-P.H.S.

MeSH terms

  • Chlorophyll* / metabolism
  • Edible Grain* / metabolism
  • Glycine max / metabolism
  • Least-Squares Analysis
  • Phenotype
  • Plant Leaves / metabolism

Substances

  • Chlorophyll