A Semi-Supervised Learning Framework for Classifying Colorectal Neoplasia Based on the NICE Classification
Yu Wang,
Haoxiang Ni,
Jielu Zhou
et al.
Abstract:Labelling medical images is an arduous and costly task that necessitates clinical expertise and large numbers of qualified images. Insufficient samples can lead to underfitting during training and poor performance of supervised learning models. In this study, we aim to develop a SimCLR-based semi-supervised learning framework to classify colorectal neoplasia based on the NICE classification. First, the proposed framework was trained under self-supervised learning using a large unlabelled dataset; subsequently,… Show more
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