Unsupervised domain adaptation for histopathology image segmentation with incomplete labels

Huihui Zhou, Yan Wang, Benyan Zhang, Chunhua Zhou, Maxim S. Vonsky, Lubov B. Mitrofanova, Duowu Zou, Qingli Li

Research output: Contribution to journalArticlepeer-review

7 Scopus citations

Abstract

Stain variations pose a major challenge to deep learning segmentation algorithms in histopathology images. Current unsupervised domain adaptation methods show promise in improving model generalization across diverse staining appearances but demand abundant accurately labeled source domain data. This paper assumes a novel scenario, namely, unsupervised domain adaptation based segmentation task with incompletely labeled source data. This paper propose a Stain-Adaptive Segmentation Network with Incomplete Labels (SASN-IL). Specifically, the algorithm consists of two stages. The first stage is an incomplete label correction stage, involving reliable model selection and label correction to rectify false-negative regions in incomplete labels. The second stage is the unsupervised domain adaptation stage, achieving segmentation on the target domain. In this stage, we introduce an adaptive stain transformation module, which adjusts the degree of transformation based on segmentation performance. We evaluate our method on a gastric cancer dataset, demonstrating significant improvements, with a 10.01% increase in Dice coefficient compared to the baseline and competitive performance relative to existing methods.

Original languageEnglish
Article number108226
JournalComputers in Biology and Medicine
Volume171
DOIs
StatePublished - Mar 2024

Keywords

  • Histopathology image segmentation
  • Incomplete label
  • Stain transformation
  • Unsupervised domain adaptation

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