Literature DB >> 32031662

Spectral differentiation of oak wilt from foliar fungal disease and drought is correlated with physiological changes.

Beth Fallon1,2, Anna Yang3, Cathleen Lapadat1, Isabella Armour1, Jennifer Juzwik4, Rebecca A Montgomery3, Jeannine Cavender-Bares1.   

Abstract

Hyperspectral reflectance tools have been used to detect multiple pathogens in agricultural settings and single sources of infection or broad declines in forest stands. However, differentiation of any one disease from other sources of tree stress is integral for stand and landscape-level applications in mixed species systems. We tested the ability of spectral models to differentiate oak wilt, a fatal disease in oaks caused by Bretziella fagacearum ``Bretz'', from among other mechanisms of decline. We subjected greenhouse-grown oak seedlings (Quercus ellipsoidalis ``E.J. Hill'' and Quercus macrocarpa ``Michx.'') to chronic drought or inoculation with the oak wilt fungus or bur oak blight fungus (Tubakia iowensis ``T.C. Harr. & D. McNew''). We measured leaf and canopy spectroscopic reflectance (400-2400 nm) and instantaneous photosynthetic and stomatal conductance rates, then used partial least-squares discriminant analysis to predict treatment from hyperspectral data. We detected oak wilt before symptom appearance, and classified the disease with high accuracy in symptomatic leaves. Classification accuracy from spectra increased with declines in photosynthetic function in oak wilt-inoculated plants. Wavelengths diagnostic of oak wilt were only found in non-visible spectral regions and are associated with water status, non-structural carbohydrates and photosynthetic mechanisms. We show that hyperspectral models can differentiate oak wilt from other causes of tree decline and that detection is correlated with biological mechanisms of oak wilt infection and disease progression. We also show that within the canopy, symptom heterogeneity can reduce detection, but that symptomatic leaves and tree canopies are suitable for highly accurate diagnosis. Remote application of hyperspectral tools can be used for specific detection of disease across a multi-species forest stand exhibiting multiple stress symptoms. Published by Oxford University Press 2020.

Entities:  

Keywords:  disease response; forest pathology; hyperspectra; leaf reflectance; photosynthetic declines; remote sensing; symptom physiology

Mesh:

Year:  2020        PMID: 32031662     DOI: 10.1093/treephys/tpaa005

Source DB:  PubMed          Journal:  Tree Physiol        ISSN: 0829-318X            Impact factor:   4.196


  4 in total

1.  Remote spectral detection of biodiversity effects on forest biomass.

Authors:  Laura J Williams; Jeannine Cavender-Bares; Philip A Townsend; John J Couture; Zhihui Wang; Artur Stefanski; Christian Messier; Peter B Reich
Journal:  Nat Ecol Evol       Date:  2020-11-02       Impact factor: 15.460

2.  Grapevines under drought do not express esca leaf symptoms.

Authors:  Giovanni Bortolami; Gregory A Gambetta; Cédric Cassan; Silvina Dayer; Elena Farolfi; Nathalie Ferrer; Yves Gibon; Jérôme Jolivet; Pascal Lecomte; Chloé E L Delmas
Journal:  Proc Natl Acad Sci U S A       Date:  2021-10-26       Impact factor: 11.205

3.  Multi-sensor spectral synergies for crop stress detection and monitoring in the optical domain: A review.

Authors:  Katja Berger; Miriam Machwitz; Marlena Kycko; Shawn C Kefauver; Shari Van Wittenberghe; Max Gerhards; Jochem Verrelst; Clement Atzberger; Christiaan van der Tol; Alexander Damm; Uwe Rascher; Ittai Herrmann; Veronica Sobejano Paz; Sven Fahrner; Roland Pieruschka; Egor Prikaziuk; Ma Luisa Buchaillot; Andrej Halabuk; Marco Celesti; Gerbrand Koren; Esra Tunc Gormus; Micol Rossini; Michael Foerster; Bastian Siegmann; Asmaa Abdelbaki; Giulia Tagliabue; Tobias Hank; Roshanak Darvishzadeh; Helge Aasen; Monica Garcia; Isabel Pôças; Subhajit Bandopadhyay; Mauro Sulis; Enrico Tomelleri; Offer Rozenstein; Lachezar Filchev; Gheorghe Stancile; Martin Schlerf
Journal:  Remote Sens Environ       Date:  2022-08-04       Impact factor: 13.850

4.  Digital plant pathology: a foundation and guide to modern agriculture.

Authors:  Matheus Thomas Kuska; René H J Heim; Ina Geedicke; Kaitlin M Gold; Anna Brugger; Stefan Paulus
Journal:  J Plant Dis Prot (2006)       Date:  2022-04-28       Impact factor: 1.847

  4 in total

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