Feasibility study of ResNet‐50 in the distinction of intraoral neural tumors using histopathological images
Giovanna Calabrese dos Santos,
Anna Luíza Damaceno Araújo,
Henrique Alves de Amorim
et al.
Abstract:BackgroundNeural tumors are difficult to distinguish based solely on cellularity and often require immunohistochemical staining to aid in identifying the cell lineage. This article investigates the potential of a Convolutional Neural Network for the histopathological classification of the three most prevalent benign neural tumor types: neurofibroma, perineurioma, and schwannoma.MethodsA model was developed, trained, and evaluated for classification using the ResNet‐50 architecture, with a database of 30 whole‐… Show more
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