Optimal Transport Driven Asymmetric Image-to-Image Translation for Nuclei Segmentation of Histological Images
Journal:
arXiv
Published Date:
Jun 8, 2025
Abstract
Segmentation of nuclei regions from histological images enables morphometric
analysis of nuclei structures, which in turn helps in the detection and
diagnosis of diseases under consideration. To develop a nuclei segmentation
algorithm, applicable to different types of target domain representations,
image-to-image translation networks can be considered as they are invariant to
target domain image representations. One of the important issues with
image-to-image translation models is that they fail miserably when the
information content between two image domains are asymmetric in nature. In this
regard, the paper introduces a new deep generative model for segmenting nuclei
structures from histological images. The proposed model considers an embedding
space for handling information-disparity between information-rich histological
image space and information-poor segmentation map domain. Integrating
judiciously the concepts of optimal transport and measure theory, the model
develops an invertible generator, which provides an efficient optimization
framework with lower network complexity. The concept of invertible generator
automatically eliminates the need of any explicit cycle-consistency loss. The
proposed model also introduces a spatially-constrained squeeze operation within
the framework of invertible generator to maintain spatial continuity within the
image patches. The model provides a better trade-off between network complexity
and model performance compared to other existing models having complex network
architectures. The performance of the proposed deep generative model, along
with a comparison with state-of-the-art nuclei segmentation methods, is
demonstrated on publicly available histological image data sets.