An effective colorectal polyp classification for histopathological images based on supervised contrastive learning
Özet
Early detection of colon adenomatous polyps is pivotal in reducing colon cancer risk. In this context, accurately
distinguishing between adenomatous polyp subtypes, especially tubular and tubulovillous, from hyperplastic
variants is crucial. This study introduces a cutting-edge computer-aided diagnosis system optimized for this
task. Our system employs advanced Supervised Contrastive learning to ensure precise classification of colon
histopathology images. Significantly, we have integrated the Big Transfer model, which has gained prominence
for its exemplary adaptability to visual tasks in medical imaging. Our novel approach discerns between in-class
and out-of-class images, thereby elevating its discriminatory power for polyp subtypes. We validated our system
using two datasets: a specially curated one and the publicly accessible UniToPatho dataset. The results reveal
that our model markedly surpasses traditional deep convolutional neural networks, registering classification
accuracies of 87.1% and 70.3% for the custom and UniToPatho datasets, respectively. Such results emphasize
the transformative potential of our model in polyp classification endeavors