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    Early detection of plant virus infection using multispectral imaging and machine learning

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    Journal Article (615.3Kb)
    Date
    2024-07-31
    Author
    Grieve, B.
    Duffy, S.
    Dallas, M.M.
    Ascencio‑Ibanez, J.T.
    Alonso-Chavez, V.
    Legg, J.
    Hanley-Bowdoin, L.
    Yin, H.
    Type
    Journal Article
    Review Status
    Peer Review
    Target Audience
    Scientists
    Metadata
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    Abstract/Description
    Climate change-resilient crops like cassava are projected to play a key role in 21st-century food security. However, cassava production in East Africa is limited by RNA viruses that cause cassava brown streak disease (CBSD). CBSD typically causes subtle or no symptoms on stems and leaves, while destroying the root tissue, which means farmers are often unaware their fields are infected until they have a failed harvest. The subtle symptoms of CBSD have made it difficult to study the spread of the disease in fields. We will use an engineering advancement, our active multispectral imager (MSI), to rapidly determine the infection status of plants in the field in Tanzania. The MSI observes leaves using many different wavelengths, and the resulting light spectra are interpreted by machine learning models trained on cassava leaf scans. Under laboratory conditions, the MSI detects CBSD infection with 95% accuracy at 28 days post-infection, when plants have no visible symptoms. Our multinational team is studying and modeling the spread of CBSD to assess the efficacy of using the MSI to detect and remove infected cassava plants from fields before CBSD can spread. In addition to improving the food security of people who eat cassava in sub-Saharan Africa, our technology and modeling framework may be useful in diseases of other vegetatively propagated crops such as banana/plantain, potato, sweet potato, and yam.
    https://doi.org/10.1079/planthealthcases.2024.0010
    Multi standard citation
    Permanent link to this item
    https://hdl.handle.net/20.500.12478/8650
    IITA Authors ORCID
    James Legghttps://orcid.org/0000-0003-4140-3757
    Digital Object Identifier (DOI)
    https://doi.org/10.1079/planthealthcases.2024.0010
    Research Themes
    Plant Production and Health
    IITA Subjects
    Cassava; Farm Management; Food Security; Pests of Plants; Plant Diseases; Plant Health
    Agrovoc Terms
    Cassava Brown Streak Disease; Cassava; Multispectral Imager; Machine Learning; Plant Viruses
    Regions
    Africa; East Africa
    Countries
    Tanzania
    Hubs
    Eastern Africa Hub
    Journals
    Plant Health Cases
    Collections
    • Journal and Journal Articles5283
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