Predicting airborne ascospores of Sclerotinia sclerotiorum through machine learning and statistical methods

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creativework.keywords - en
aerobiology
air--microbiology
disease forecasting
dry beans
machine learning
scientific modeling
molds (fungi)
white mold
creativework.keywords - fr
sclérotiniose
moisissures
modèles scientifiques
apprentissage automatique
haricots sec
prévision des maladies
air--microbiologie
aérobiologie
dc.contributor.author
Reich, Jonathan
McLaren, Debra
Kim, Yong Min
Wally, Owen
Yevtushenko, Dmytro
Hamelin, Richard
Chatterton, Syama
dc.date.accepted
2024-02-23
dc.date.accessioned
2024-05-10T13:37:38Z
dc.date.available
2024-05-10T13:37:38Z
dc.date.issued
2024-04-09
dc.date.submitted
2023-10-12
dc.description.abstract - en
A main biological constraint of dry bean (Phaseolus vulgaris) production in Canada is white mould, caused by the fungal pathogen Sclerotinia sclerotiorum. The primary infectious propagules of S. sclerotiorum are airborne ascospores and monitoring the air for inoculum levels could help predict the severity of white mould in bean fields. Daily air samples were collected in commercial dry bean fields in Alberta, Manitoba and Ontario and ascospores were quantified using quantitative PCR. Daily weather data was obtained from in-field weather stations. The number of ascospores on a given day was modelled using 63 different environmental variables and several modelling methods, both regression and classification approaches, were implemented with machine learning (ML) (random forests, logistic regression and support vector machines) and statistical (generalized linear models) approaches. Across all years and provinces, ascospores were most highly correlated with ascospore release from the previous day (r ranged from 0.15 to 0.6). This variable was also the only variable included in all models and had the greatest weight in all models. Models without this variable had much poorer performance than those with it. Correlations of ascospores with other environmental variables varied by province and sometimes by year. A comparison of ML and statistical models revealed that they both performed similarly, but that the statistical models were easier to interpret. However, the precise relationship between airborne ascospore levels and in-field disease severity remains unclear, and spore sampling methods will require further development before they can be deployed as a disease management tool.
dc.identifier.citation
Reich, J., McLaren, D., Kim, Y. M., Wally, O., Yevtushenko, D., Hamelin, R., & Chatterton, S., (2024). Predicting airborne ascospores of Sclerotinia sclerotiorum through machine learning and statistical methods. Plant Pathology, 73(6), 1-16. https://doi.org/10.1111/ppa.13902
dc.identifier.doi
https://doi.org/10.1111/ppa.13902
dc.identifier.issn
1365-3059
0032-0862
dc.identifier.uri
https://open-science.canada.ca/handle/123456789/2484
dc.language.iso
en
dc.publisher
British Society for Plant Pathology
dc.rights - en
Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0)
dc.rights - fr
Creative Commons Attribution - Pas d'utilisation commerciale - Pas de modification 4.0 International (CC BY-NC-ND 4.0)
dc.rights.openaccesslevel - en
Green
dc.rights.openaccesslevel - fr
Vert
dc.rights.uri - en
https://creativecommons.org/licenses/by-nc-nd/4.0/
dc.rights.uri - fr
https://creativecommons.org/licenses/by-nc-nd/4.0/deed.fr
dc.subject - en
Agriculture
dc.subject - fr
Agriculture
dc.subject.en - en
Agriculture
dc.subject.fr - fr
Agriculture
dc.title - en
Predicting airborne ascospores of Sclerotinia sclerotiorum through machine learning and statistical methods
dc.type - en
Article
dc.type - fr
Article
local.article.journalissue
6
local.article.journaltitle
Plant Pathology
local.article.journalvolume
73
local.pagination
1-16
local.peerreview - en
Yes
local.peerreview - fr
Oui
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