Development and Evaluation of a Convolutional Neural Network for Microscopic Diagnosis Between Pleomorphic Adenoma and Carcinoma Ex‐Pleomorphic Adenoma
Sebastião Silvério Sousa‐Neto,
Thaís Cerqueira Reis Nakamura,
Daniela Giraldo‐Roldan
et al.
Abstract:AimsTo develop a model capable of distinguishing carcinoma ex‐pleomorphic adenoma from pleomorphic adenoma using a convolutional neural network architecture.Methods and ResultsA cohort of 83 Brazilian patients, divided into carcinoma ex‐pleomorphic adenoma (n = 42) and pleomorphic adenoma (n = 41), was used for training a convolutional neural network. The whole‐slide images were annotated and fragmented into 743 869 (carcinoma ex‐pleomorphic adenomas) and 211 714 (pleomorphic adenomas) patches, measuring 224 ×… Show more
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