» Articles » PMID: 28824683

High Throughput Analysis of Plant Leaf Chemical Properties Using Hyperspectral Imaging

Overview
Journal Front Plant Sci
Date 2017 Aug 22
PMID 28824683
Citations 54
Authors
Affiliations
Soon will be listed here.
Abstract

Image-based high-throughput plant phenotyping in greenhouse has the potential to relieve the bottleneck currently presented by phenotypic scoring which limits the throughput of gene discovery and crop improvement efforts. Numerous studies have employed automated RGB imaging to characterize biomass and growth of agronomically important crops. The objective of this study was to investigate the utility of hyperspectral imaging for quantifying chemical properties of maize and soybean plants . These properties included leaf water content, as well as concentrations of macronutrients nitrogen (N), phosphorus (P), potassium (K), magnesium (Mg), calcium (Ca), and sulfur (S), and micronutrients sodium (Na), iron (Fe), manganese (Mn), boron (B), copper (Cu), and zinc (Zn). Hyperspectral images were collected from 60 maize and 60 soybean plants, each subjected to varying levels of either water deficit or nutrient limitation stress with the goal of creating a wide range of variation in the chemical properties of plant leaves. Plants were imaged on an automated conveyor belt system using a hyperspectral imager with a spectral range from 550 to 1,700 nm. Images were processed to extract reflectance spectrum from each plant and partial least squares regression models were developed to correlate spectral data with chemical data. Among all the chemical properties investigated, water content was predicted with the highest accuracy [ = 0.93 and RPD (Ratio of Performance to Deviation) = 3.8]. All macronutrients were also quantified satisfactorily ( from 0.69 to 0.92, RPD from 1.62 to 3.62), with N predicted best followed by P, K, and S. The micronutrients group showed lower prediction accuracy ( from 0.19 to 0.86, RPD from 1.09 to 2.69) than the macronutrient groups. Cu and Zn were best predicted, followed by Fe and Mn. Na and B were the only two properties that hyperspectral imaging was not able to quantify satisfactorily ( < 0.3 and RPD < 1.2). This study suggested the potential usefulness of hyperspectral imaging as a high-throughput phenotyping technology for plant chemical traits. Future research is needed to test the method more thoroughly by designing experiments to vary plant nutrients individually and cover more plant species, genotypes, and growth stages.

Citing Articles

Micronutrient Biofortification in Wheat: QTLs, Candidate Genes and Molecular Mechanism.

Nasim A, Hao J, Tawab F, Jin C, Zhu J, Luo S Int J Mol Sci. 2025; 26(5).

PMID: 40076800 PMC: 11900071. DOI: 10.3390/ijms26052178.


A combined model of shoot phosphorus uptake based on sparse data and active learning algorithm.

Wang T, Zhang Y, Liu H, Li F, Guo D, Cao N Front Plant Sci. 2025; 15:1470719.

PMID: 39911659 PMC: 11794547. DOI: 10.3389/fpls.2024.1470719.


Non-destructive prediction of anthocyanin concentration in whole eggplant peel using hyperspectral imaging.

Ma Z, Wei C, Wang W, Lin W, Nie H, Duan Z PeerJ. 2024; 12:e17379.

PMID: 39670090 PMC: 11636719. DOI: 10.7717/peerj.17379.


Attenuated total reflection Fourier-transform infrared spectroscopy reveals environment specific phenotypes in clonal Japanese knotweed.

Holden C, McAinsh M, Taylor J, Beckett P, Martin F BMC Plant Biol. 2024; 24(1):769.

PMID: 39135189 PMC: 11321083. DOI: 10.1186/s12870-024-05200-7.


A Multi-Target Regression Method to Predict Element Concentrations in Tomato Leaves Using Hyperspectral Imaging.

Ariza A, Sotta N, Fujiwara T, Guo W, Kamiya T Plant Phenomics. 2024; 6:0146.

PMID: 38629079 PMC: 11020135. DOI: 10.34133/plantphenomics.0146.


References
1.
Virlet N, Sabermanesh K, Sadeghi-Tehran P, Hawkesford M . Field Scanalyzer: An automated robotic field phenotyping platform for detailed crop monitoring. Funct Plant Biol. 2020; 44(1):143-153. DOI: 10.1071/FP16163. View

2.
Houle D, Govindaraju D, Omholt S . Phenomics: the next challenge. Nat Rev Genet. 2010; 11(12):855-66. DOI: 10.1038/nrg2897. View

3.
Busemeyer L, Mentrup D, Moller K, Wunder E, Alheit K, Hahn V . BreedVision--a multi-sensor platform for non-destructive field-based phenotyping in plant breeding. Sensors (Basel). 2013; 13(3):2830-47. PMC: 3658717. DOI: 10.3390/s130302830. View

4.
Yuan J, Tiller K, Al-Ahmad H, Stewart N, Stewart Jr C . Plants to power: bioenergy to fuel the future. Trends Plant Sci. 2008; 13(8):421-9. DOI: 10.1016/j.tplants.2008.06.001. View

5.
Neilson E, Edwards A, Blomstedt C, Berger B, Moller B, Gleadow R . Utilization of a high-throughput shoot imaging system to examine the dynamic phenotypic responses of a C4 cereal crop plant to nitrogen and water deficiency over time. J Exp Bot. 2015; 66(7):1817-32. PMC: 4378625. DOI: 10.1093/jxb/eru526. View