Semi-Supervised Segmentation of Functional Tissue Units at the Cellular Level

Sydorskyi, Volodymyr, Krashenyi, Igor, Sakva, Denis, Zarichkovyi, Oleksandr

arXiv.org Artificial Intelligence 

We present a new method for functional tissue unit segmentation at the cellular level, which utilizes the latest deep learning semantic segmentation approaches together with domain adaptation and semi-supervised learning techniques. This approach allows for minimizing the domain gap, class imbalance, and captures settings influence between HPA and HubMAP datasets. The presented approach achieves comparable with state-of-the-art-result in functional tissue unit segmentation at the cellular level.