Literature DB >> 28461269

Machine Learning Techniques for Predicting Crop Photosynthetic Capacity from Leaf Reflectance Spectra.

David Heckmann1, Urte Schlüter2, Andreas P M Weber3.   

Abstract

Harnessing natural variation in photosynthetic capacity is a promising route toward yield increases, but physiological phenotyping is still too laborious for large-scale genetic screens. Here, we evaluate the potential of leaf reflectance spectroscopy to predict parameters of photosynthetic capacity in Brassica oleracea and Zea mays, a C3 and a C4 crop, respectively. To this end, we systematically evaluated properties of reflectance spectra and found that they are surprisingly similar over a wide range of species. We assessed the performance of a wide range of machine learning methods and selected recursive feature elimination on untransformed spectra followed by partial least squares regression as the preferred algorithm that yielded the highest predictive power. Learning curves of this algorithm suggest optimal species-specific sample sizes. Using the Brassica relative Moricandia, we evaluated the model transferability between species and found that cross-species performance cannot be predicted from phylogenetic proximity. The final intra-species models predict crop photosynthetic capacity with high accuracy. Based on the estimated model accuracy, we simulated the use of the models in selective breeding experiments, and showed that high-throughput photosynthetic phenotyping using our method has the potential to greatly improve breeding success. Our results indicate that leaf reflectance phenotyping is an efficient method for improving crop photosynthetic capacity.
Copyright © 2017 The Author. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  C(4); crops; leaf spectrometry; machine learning; phenotyping; photosynthesis

Mesh:

Year:  2017        PMID: 28461269     DOI: 10.1016/j.molp.2017.04.009

Source DB:  PubMed          Journal:  Mol Plant        ISSN: 1674-2052            Impact factor:   13.164


  22 in total

1.  Spectral Phenotyping of Physiological and Anatomical Leaf Traits Related with Maize Water Status.

Authors:  Lorenzo Cotrozzi; Raquel Peron; Mitchell R Tuinstra; Michael V Mickelbart; John J Couture
Journal:  Plant Physiol       Date:  2020-09-09       Impact factor: 8.340

Review 2.  Machine learning methods for assessing photosynthetic activity: environmental monitoring applications.

Authors:  S S Khruschev; T Yu Plyusnina; T K Antal; S I Pogosyan; G Yu Riznichenko; A B Rubin
Journal:  Biophys Rev       Date:  2022-08-10

3.  High-throughput characterization, correlation, and mapping of leaf photosynthetic and functional traits in the soybean (Glycine max) nested association mapping population.

Authors:  Christopher M Montes; Carolyn Fox; Álvaro Sanz-Sáez; Shawn P Serbin; Etsushi Kumagai; Matheus D Krause; Alencar Xavier; James E Specht; William D Beavis; Carl J Bernacchi; Brian W Diers; Elizabeth A Ainsworth
Journal:  Genetics       Date:  2022-05-31       Impact factor: 4.402

4.  Analysis of Physiological Variations and Genetic Architecture for Photosynthetic Capacity of Japanese Soybean Germplasm.

Authors:  Mohammad Jan Shamim; Akito Kaga; Yu Tanaka; Hiroshi Yamatani; Tatsuhiko Shiraiwa
Journal:  Front Plant Sci       Date:  2022-06-29       Impact factor: 6.627

Review 5.  Advances in field-based high-throughput photosynthetic phenotyping.

Authors:  Peng Fu; Christopher M Montes; Matthew H Siebers; Nuria Gomez-Casanovas; Justin M McGrath; Elizabeth A Ainsworth; Carl J Bernacchi
Journal:  J Exp Bot       Date:  2022-05-23       Impact factor: 7.298

6.  Beyond greenness: Detecting temporal changes in photosynthetic capacity with hyperspectral reflectance data.

Authors:  Mallory L Barnes; David D Breshears; Darin J Law; Willem J D van Leeuwen; Russell K Monson; Alec C Fojtik; Greg A Barron-Gafford; David J P Moore
Journal:  PLoS One       Date:  2017-12-27       Impact factor: 3.240

7.  Hyperspectral reflectance as a tool to measure biochemical and physiological traits in wheat.

Authors:  Viridiana Silva-Perez; Gemma Molero; Shawn P Serbin; Anthony G Condon; Matthew P Reynolds; Robert T Furbank; John R Evans
Journal:  J Exp Bot       Date:  2018-01-23       Impact factor: 6.992

8.  Estimating photosynthetic traits from reflectance spectra: A synthesis of spectral indices, numerical inversion, and partial least square regression.

Authors:  Peng Fu; Katherine Meacham-Hensold; Kaiyu Guan; Jin Wu; Carl Bernacchi
Journal:  Plant Cell Environ       Date:  2020-02-27       Impact factor: 7.228

Review 9.  Hyperspectral reflectance-based phenotyping for quantitative genetics in crops: Progress and challenges.

Authors:  Marcin Grzybowski; Nuwan K Wijewardane; Abbas Atefi; Yufeng Ge; James C Schnable
Journal:  Plant Commun       Date:  2021-05-27

10.  Photons to food: genetic improvement of cereal crop photosynthesis.

Authors:  Robert T Furbank; Robert Sharwood; Gonzalo M Estavillo; Viridiana Silva-Perez; Anthony G Condon
Journal:  J Exp Bot       Date:  2020-04-06       Impact factor: 6.992

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