SPARS: Self-Play Adversarial Reinforcement Learning for Segmentation of Liver Tumours
Journal:
arXiv
Published Date:
May 25, 2025
Abstract
Accurate tumour segmentation is vital for various targeted diagnostic and
therapeutic procedures for cancer, e.g., planning biopsies or tumour ablations.
Manual delineation is extremely labour-intensive, requiring substantial expert
time. Fully-supervised machine learning models aim to automate such
localisation tasks, but require a large number of costly and often subjective
3D voxel-level labels for training. The high-variance and subjectivity in such
labels impacts model generalisability, even when large datasets are available.
Histopathology labels may offer more objective labels but the infeasibility of
acquiring pixel-level annotations to develop tumour localisation methods based
on histology remains challenging in-vivo. In this work, we propose a novel
weakly-supervised semantic segmentation framework called SPARS (Self-Play
Adversarial Reinforcement Learning for Segmentation), which utilises an object
presence classifier, trained on a small number of image-level binary cancer
presence labels, to localise cancerous regions on CT scans. Such binary labels
of patient-level cancer presence can be sourced more feasibly from biopsies and
histopathology reports, enabling a more objective cancer localisation on
medical images. Evaluating with real patient data, we observed that SPARS
yielded a mean dice score of $77.3 \pm 9.4$, which outperformed other
weakly-supervised methods by large margins. This performance was comparable
with recent fully-supervised methods that require voxel-level annotations. Our
results demonstrate the potential of using SPARS to reduce the need for
extensive human-annotated labels to detect cancer in real-world healthcare
settings.