Patch2Loc: Learning to Localize Patches for Unsupervised Brain Lesion Detection
Journal:
arXiv
Published Date:
Jun 25, 2025
Abstract
Detecting brain lesions as abnormalities observed in magnetic resonance
imaging (MRI) is essential for diagnosis and treatment. In the search of
abnormalities, such as tumors and malformations, radiologists may benefit from
computer-aided diagnostics that use computer vision systems trained with
machine learning to segment normal tissue from abnormal brain tissue. While
supervised learning methods require annotated lesions, we propose a new
unsupervised approach (Patch2Loc) that learns from normal patches taken from
structural MRI. We train a neural network model to map a patch back to its
spatial location within a slice of the brain volume. During inference, abnormal
patches are detected by the relatively higher error and/or variance of the
location prediction. This generates a heatmap that can be integrated into
pixel-wise methods to achieve finer-grained segmentation. We demonstrate the
ability of our model to segment abnormal brain tissues by applying our approach
to the detection of tumor tissues in MRI on T2-weighted images from BraTS2021
and MSLUB datasets and T1-weighted images from ATLAS and WMH datasets. We show
that it outperforms the state-of-the art in unsupervised segmentation. The
codebase for this work can be found on our
\href{https://github.com/bakerhassan/Patch2Loc}{GitHub page}.