2022
DOI: 10.21203/rs.3.rs-2172876/v1
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Recognizing pathology of renal tumor from macroscopic cross-section image by deep learning

Abstract: Objectives: This study aims to develop and evaluate the deep learning-based classification model for recognizing the pathology of renal tumor from macroscopic cross-section image. Methods: A total of 467 pathology-confirmed patients who received radical nephrectomy or partial nephrectomy were retrospectively enrolled. The experiment of distinguishing malignant and benign renal tumor are conducted followed by performing the multi-subtypes classification models for recognizing four subtypes of benign tumor and … Show more

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