Efficient Self-Supervised Grading of Prostate Cancer Pathology
Journal:
arXiv
Published Date:
Jan 26, 2025
Abstract
Prostate cancer grading using the ISUP system (International Society of
Urological Pathology) for treatment decisions is highly subjective and requires
considerable expertise. Despite advances in computer-aided diagnosis systems,
few have handled efficient ISUP grading on Whole Slide Images (WSIs) of
prostate biopsies based only on slide-level labels. Some of the general
challenges include managing gigapixel WSIs, obtaining patch-level annotations,
and dealing with stain variability across centers. One of the main
task-specific challenges faced by deep learning in ISUP grading, is the
learning of patch-level features of Gleason patterns (GPs) based only on their
slide labels. In this scenario, an efficient framework for ISUP grading is
developed.
The proposed TSOR is based on a novel Task-specific Self-supervised learning
(SSL) model, which is fine-tuned using Ordinal Regression. Since the diversity
of training samples plays a crucial role in SSL, a patch-level dataset is
created to be relatively balanced w.r.t. the Gleason grades (GGs). This
balanced dataset is used for pre-training, so that the model can effectively
learn stain-agnostic features of the GP for better generalization. In medical
image grading, it is desirable that misclassifications be as close as possible
to the actual grade. From this perspective, the model is then fine-tuned for
the task of ISUP grading using an ordinal regression-based approach.
Experimental results on the most extensive multicenter prostate biopsies
dataset (PANDA challenge), as well as the SICAP dataset, demonstrate the
effectiveness of this novel framework compared to state-of-the-art methods.