Equivariant Imaging Biomarkers for Robust Unsupervised Segmentation of Histopathology
Journal:
arXiv
Published Date:
May 8, 2025
Abstract
Histopathology evaluation of tissue specimens through microscopic examination
is essential for accurate disease diagnosis and prognosis. However, traditional
manual analysis by specially trained pathologists is time-consuming,
labor-intensive, cost-inefficient, and prone to inter-rater variability,
potentially affecting diagnostic consistency and accuracy. As digital pathology
images continue to proliferate, there is a pressing need for automated analysis
to address these challenges. Recent advancements in artificial
intelligence-based tools such as machine learning (ML) models, have
significantly enhanced the precision and efficiency of analyzing
histopathological slides. However, despite their impressive performance, ML
models are invariant only to translation, lacking invariance to rotation and
reflection. This limitation restricts their ability to generalize effectively,
particularly in histopathology, where images intrinsically lack meaningful
orientation. In this study, we develop robust, equivariant histopathological
biomarkers through a novel symmetric convolutional kernel via unsupervised
segmentation. The approach is validated using prostate tissue micro-array (TMA)
images from 50 patients in the Gleason 2019 Challenge public dataset. The
biomarkers extracted through this approach demonstrate enhanced robustness and
generalizability against rotation compared to models using standard convolution
kernels, holding promise for enhancing the accuracy, consistency, and
robustness of ML models in digital pathology. Ultimately, this work aims to
improve diagnostic and prognostic capabilities of histopathology beyond
prostate cancer through equivariant imaging.