Predicting rice blast disease: machine learning versus process-based models.
David F NettletonDimitrios KatsantonisArgyris KalaitzidisNatasa Sarafijanovic-DjukicPau PuigdollersRoberto ConfalonieriPublished in: BMC bioinformatics (2019)
Process-based and data-driven models can be used to provide early warnings to anticipate rice blast and detect its presence, thus supporting fungicide applications. Data-driven models derived from machine learning methods are a viable alternative to process-based approaches and - in cases when training datasets are available - offer a potentially greater adaptability to new contexts.