“…The diagnosis of oral pathology has long depended on histopathological image observation, which can be a burden for pathologists, especially when dealing with rare cases. In the last decade, various machine learning methods, such as supervised learning methods for classification, detection, and segmentation, have been proposed to aid in clinical and histopathological diagnosis and to improve speed and accuracy to avoid delays in diagnosis [3,4,[9][10][11][12]26]. However, the exploration for oral histopathology diagnosis has been hampered by the difficulty of obtaining an adequately extensive database that includes rare cases and constructing an effective model.…”