Applied Sciences (Jul 2021)

Comparing Machine Learning Methods for Classifying Plant Drought Stress from Leaf Reflectance Spectra in <i>Arabidopsis thaliana</i>

  • Ana Barradas,
  • Pedro M.P. Correia,
  • Sara Silva,
  • Pedro Mariano,
  • Margarida Calejo Pires,
  • Ana Rita Matos,
  • Anabela Bernardes da Silva,
  • Jorge Marques da Silva

DOI
https://doi.org/10.3390/app11146392
Journal volume & issue
Vol. 11, no. 14
p. 6392

Abstract

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Plant breeders and plant physiologists are deeply committed to high throughput plant phenotyping for drought tolerance. A combination of artificial intelligence with reflectance spectroscopy was tested, as a non-invasive method, for the automatic classification of plant drought stress. Arabidopsis thaliana plants (ecotype Col-0) were subjected to different levels of slowly imposed dehydration (S0, control; S1, moderate stress; S2, severe stress). The reflectance spectra of fully expanded leaves were recorded with an Ocean Optics USB4000 spectrometer and the soil water content (SWC, %) of each pot was determined. The entire data set of the reflectance spectra (intensity vs. wavelength) was given to different machine learning (ML) algorithms, namely decision trees, random forests and extreme gradient boosting. The performance of different methods in classifying the plants in one of the three drought stress classes (S0, S1 and S2) was measured and compared. All algorithms produced very high evaluation scores (F1 > 90%) and agree on the features with the highest discriminative power (reflectance at ~670 nm). Random forests was the best performing method and the most robust to random sampling of training data, with an average F1-score of 0.96 ± 0.05. This classification method is a promising tool to detect plant physiological responses to drought using high-throughput pipelines.

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