Reversed domain adaptation for nuclei segmentation-based pathological image classification

Comput Biol Med. 2024 Jan:168:107726. doi: 10.1016/j.compbiomed.2023.107726. Epub 2023 Nov 18.

Abstract

Despite the fact that digital pathology has provided a new paradigm for modern medicine, the insufficiency of annotations for training remains a significant challenge. Due to the weak generalization abilities of deep-learning models, their performance is notably constrained in domains without sufficient annotations. Our research aims to enhance the model's generalization ability through domain adaptation, increasing the prediction ability for the target domain data while only using the source domain labels for training. To further enhance classification performance, we introduce nuclei segmentation to provide the classifier with more diagnostically valuable nuclei information. In contrast to the general domain adaptation that generates source-like results in the target domain, we propose a reversed domain adaptation strategy that generates target-like results in the source domain, enabling the classification model to be more robust to inaccurate segmentation results. The proposed reversed unsupervised domain adaptation can effectively reduce the disparities in nuclei segmentation between the source and target domains without any target domain labels, leading to improved image classification performance in the target domain. The whole framework is designed in a unified manner so that the segmentation and classification modules can be trained jointly. Extensive experiments demonstrate that the proposed method significantly improves the classification performance in the target domain and outperforms existing general domain adaptation methods.

Keywords: Deep learning; Medical Imaging; Nuclei segmentation; Pathological image classification; Unsupervised domain adaptation.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Cell Nucleus*
  • Image Processing, Computer-Assisted*