Literature DB >> 34131723

A best-practice guide to predicting plant traits from leaf-level hyperspectral data using partial least squares regression.

Angela C Burnett1, Jeremiah Anderson1, Kenneth J Davidson1, Kim S Ely1, Julien Lamour1, Qianyu Li1, Bailey D Morrison1, Dedi Yang1, Alistair Rogers1, Shawn P Serbin1.   

Abstract

Partial least squares regression (PLSR) modelling is a statistical technique for correlating datasets, and involves the fitting of a linear regression between two matrices. One application of PLSR enables leaf traits to be estimated from hyperspectral optical reflectance data, facilitating rapid, high-throughput, non-destructive plant phenotyping. This technique is of interest and importance in a wide range of contexts including crop breeding and ecosystem monitoring. The lack of a consensus in the literature on how to perform PLSR means that interpreting model results can be challenging, applying existing models to novel datasets can be impossible, and unknown or undisclosed assumptions can lead to incorrect or spurious predictions. We address this lack of consensus by proposing best practices for using PLSR to predict plant traits from leaf-level hyperspectral data, including a discussion of when PLSR is applicable, and recommendations for data collection. We provide a tutorial to demonstrate how to develop a PLSR model, in the form of an R script accompanying this manuscript. This practical guide will assist all those interpreting and using PLSR models to predict leaf traits from spectral data, and advocates for a unified approach to using PLSR for predicting traits from spectra in the plant sciences. Published by Oxford University Press on behalf of the Society for Experimental Biology 2021.

Keywords:  Hyperspectral reflectance; LMA; Leaf traits; Modelling; PLSR; Plant traits; Spectra; Spectroradiometer; Spectroscopy

Year:  2021        PMID: 34131723     DOI: 10.1093/jxb/erab295

Source DB:  PubMed          Journal:  J Exp Bot        ISSN: 0022-0957            Impact factor:   6.992


  6 in total

1.  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

Review 2.  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

Review 3.  Can we improve the chilling tolerance of maize photosynthesis through breeding?

Authors:  Angela C Burnett; Johannes Kromdijk
Journal:  J Exp Bot       Date:  2022-05-23       Impact factor: 7.298

4.  Monitoring Wheat Powdery Mildew Based on Hyperspectral, Thermal Infrared, and RGB Image Data Fusion.

Authors:  Ziheng Feng; Li Song; Jianzhao Duan; Li He; Yanyan Zhang; Yongkang Wei; Wei Feng
Journal:  Sensors (Basel)       Date:  2021-12-22       Impact factor: 3.576

5.  Engineering and screening of novel β-1,3-xylanases with desired hydrolysate type by optimized ancestor sequence reconstruction and data mining.

Authors:  Bo Zeng; ShuYan Zhao; Rui Zhou; YanHong Zhou; WenHui Jin; ZhiWei Yi; GuangYa Zhang
Journal:  Comput Struct Biotechnol J       Date:  2022-06-27       Impact factor: 6.155

6.  Automated hyperspectral vegetation index derivation using a hyperparameter optimisation framework for high-throughput plant phenotyping.

Authors:  Joshua C O Koh; Bikram P Banerjee; German Spangenberg; Surya Kant
Journal:  New Phytol       Date:  2022-01-20       Impact factor: 10.323

  6 in total

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