“…The same researchers looked at pictures to find diseases automatically on binary and multiclass datasets using CNN architecture, stratified K-fold validation, and transfer learning in a different study.The proposed CNN architecture achieves F1 scores of 84%, 78%, and 87% for hygienic mouths or ulcers, and 83%, 87%, and 84% for normal mouths, ulcers, and leukoplakia, respectively. The idea is to classify ulcers, healthy mouths, and precancerous type "Leukoplakia" using non-invasive techniques, hence diagnosing patients without the need for them to see a physician [22]. Roshan Alex and his colleagues then went one step further, applying the Bounding Box Method to composite annotations created by combining annotations from multiple clinicians and further applying transfer learning to multiple images, yielding encouraging results [23].…”