SiliCoN: Simultaneous Nuclei Segmentation and Color Normalization of Histological Images
Journal:
arXiv
Published Date:
Jun 8, 2025
Abstract
Segmentation of nuclei regions from histological images is an important task
for automated computer-aided analysis of histological images, particularly in
the presence of impermissible color variation in the color appearance of
stained tissue images. While color normalization enables better nuclei
segmentation, accurate segmentation of nuclei structures makes color
normalization rather trivial. In this respect, the paper proposes a novel deep
generative model for simultaneously segmenting nuclei structures and
normalizing color appearance of stained histological images.This model
judiciously integrates the merits of truncated normal distribution and spatial
attention. The model assumes that the latent color appearance information,
corresponding to a particular histological image, is independent of respective
nuclei segmentation map as well as embedding map information. The disentangled
representation makes the model generalizable and adaptable as the modification
or loss in color appearance information cannot be able to affect the nuclei
segmentation map as well as embedding information. Also, for dealing with the
stain overlap of associated histochemical reagents, the prior for latent color
appearance code is assumed to be a mixture of truncated normal distributions.
The proposed model incorporates the concept of spatial attention for
segmentation of nuclei regions from histological images. The performance of the
proposed approach, along with a comparative analysis with related
state-of-the-art algorithms, has been demonstrated on publicly available
standard histological image data sets.