
Class-imbalanced Unsupervised and Semi-Supervised Domain Adaptation for Histopathology Images
Author(s) -
S. Maryam Hosseini,
Abubakr Shafique,
Morteza Babaie,
H. R. Tizhoosh
Publication year - 2023
Publication title -
2023 45th annual international conference of the ieee engineering in medicine and biology society (embc)
Language(s) - English
Resource type - Conference proceedings
eISSN - 2694-0604
ISBN - 979-8-3503-2447-1
DOI - 10.1109/embc40787.2023.10340049
Subject(s) - bioengineering , engineering profession , general topics for engineers
In dealing with the lack of sufficient annotated data and in contrast to supervised learning, unsupervised, self-supervised, and semi-supervised domain adaptation methods are promising approaches, enabling us to transfer knowledge from rich labeled source domains to different (but related) unlabeled target domains, reducing distribution discrepancy between the source and target domains. However, most existing domain adaptation methods do not consider the imbalanced nature of the real-world data, affecting their performance in practice. We propose to overcome this limitation by proposing a novel domain adaptation approach that includes two modifications to the existing models. Firstly, we leverage the focal loss function in response to class-imbalanced labeled data in the source domain. Secondly, we introduce a novel co-training approach to involve pseudo-labeled target data points in the training process. Experiments show that the proposed model can be effective in transferring knowledge from source to target domain. As an example, we use the classification of prostate cancer images into low-cancerous and high-cancerous regions.