An unsupervised method for histological image segmentation based on tissue cluster level graph cut

Volume: 93, Pages: 101974 - 101974
Published: Oct 1, 2021
Abstract
While deep learning models have demonstrated outstanding performance in medical image segmentation tasks, histological annotations for training deep learning models are usually challenging to obtain, due to the effort and experience required to carefully delineate tissue structures. In this study, we propose an unsupervised method, termed as tissue cluster level graph cut (TisCut), for segmenting histological images into meaningful compartments...
Paper Details
Title
An unsupervised method for histological image segmentation based on tissue cluster level graph cut
Published Date
Oct 1, 2021
Volume
93
Pages
101974 - 101974
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