Literature DB >> 33763091

Functional Hyperspectral Imaging by High-Related Vegetation Indices to Track the Wide-Spectrum Trichoderma Biocontrol Activity Against Soil-Borne Diseases of Baby-Leaf Vegetables.

Gelsomina Manganiello1, Nicola Nicastro1, Michele Caputo1, Massimo Zaccardelli1, Teodoro Cardi1, Catello Pane1.   

Abstract

Research has been increasingly focusing on the selection of novel and effective biological control agents (BCAs) against soil-borne plant pathogens. The large-scale application of BCAs requires fast and robust screening methods for the evaluation of the efficacy of high numbers of candidates. In this context, the digital technologies can be applied not only for early disease detection but also for rapid performance analyses of BCAs. The present study investigates the ability of different Trichoderma spp. to contain the development of main baby-leaf vegetable pathogens and applies functional plant imaging to select the best performing antagonists against multiple pathosystems. Specifically, sixteen different Trichoderma spp. strains were characterized both in vivo and in vitro for their ability to contain R. solani, S. sclerotiorum and S. rolfsii development. All Trichoderma spp. showed, in vitro significant radial growth inhibition of the target phytopathogens. Furthermore, biocontrol trials were performed on wild rocket, green and red baby lettuces infected, respectively, with R. solani, S. sclerotiorum and S. rolfsii. The plant status was monitored by using hyperspectral imaging. Two strains, Tl35 and Ta56, belonging to T. longibrachiatum and T. atroviride species, significantly reduced disease incidence and severity (DI and DSI) in the three pathosystems. Vegetation indices, calculated on the hyperspectral data extracted from the images of plant-Trichoderma-pathogen interaction, proved to be suitable to refer about the plant health status. Four of them (OSAVI, SAVI, TSAVI and TVI) were found informative for all the pathosystems analyzed, resulting closely correlated to DSI according to significant changes in the spectral signatures among health, infected and bio-protected plants. Findings clearly indicate the possibility to promote sustainable disease management of crops by applying digital plant imaging as large-scale screening method of BCAs' effectiveness and precision biological control support.
Copyright © 2021 Manganiello, Nicastro, Caputo, Zaccardelli, Cardi and Pane.

Entities:  

Keywords:  BCAs; Diplotaxis tenuifolia; Lactuca sativa; Rhizoctonia solani; Sclerotinia sclerotiorum; Sclerotium rolfsii; fresh-cutting vegetables; plant reflectance

Year:  2021        PMID: 33763091      PMCID: PMC7984460          DOI: 10.3389/fpls.2021.630059

Source DB:  PubMed          Journal:  Front Plant Sci        ISSN: 1664-462X            Impact factor:   5.753


  4 in total

1.  Hyperspectral Reflectance Response of Wild Rocket (Diplotaxis tenuifolia) Baby-Leaf to Bio-Based Disease Resistance Inducers Using a Linear Mixed Effect Model.

Authors:  Catello Pane; Angelica Galieni; Carmela Riefolo; Nicola Nicastro; Annamaria Castrignanò
Journal:  Plants (Basel)       Date:  2021-11-25

2.  Sorting biotic and abiotic stresses on wild rocket by leaf-image hyperspectral data mining with an artificial intelligence model.

Authors:  Alejandra Navarro; Nicola Nicastro; Corrado Costa; Alfonso Pentangelo; Mariateresa Cardarelli; Luciano Ortenzi; Federico Pallottino; Teodoro Cardi; Catello Pane
Journal:  Plant Methods       Date:  2022-04-02       Impact factor: 4.993

Review 3.  Presence and future of plant phenotyping approaches in biostimulant research and development.

Authors:  Nuria De Diego; Lukáš Spíchal
Journal:  J Exp Bot       Date:  2022-09-03       Impact factor: 7.298

4.  Surveying soil-borne disease development on wild rocket salad crop by proximal sensing based on high-resolution hyperspectral features.

Authors:  Angelica Galieni; Nicola Nicastro; Alfonso Pentangelo; Cristiano Platani; Teodoro Cardi; Catello Pane
Journal:  Sci Rep       Date:  2022-03-24       Impact factor: 4.379

  4 in total

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