MORPH-LER: Log-Euclidean Regularization for Population-Aware Image Registration
Mokshagna Sai Teja Karanam, Krithika Iyer, Sarang Joshi, Shireen Elhabian

TL;DR
MORPH-LER introduces a Log-Euclidean regularization framework for population-aware image registration, ensuring anatomically plausible, diffeomorphic transformations that incorporate population morphometrics for improved medical image analysis.
Contribution
It presents a novel autoencoder-based regularization method that learns population morphometrics and enforces diffeomorphic properties in image registration networks.
Findings
Produces anatomically accurate deformation fields
Ensures smooth, invertible transformations
Enhances interpretability of population morphometrics
Abstract
Spatial transformations that capture population-level morphological statistics are critical for medical image analysis. Commonly used smoothness regularizers for image registration fail to integrate population statistics, leading to anatomically inconsistent transformations. Inverse consistency regularizers promote geometric consistency but lack population morphometrics integration. Regularizers that constrain deformation to low-dimensional manifold methods address this. However, they prioritize reconstruction over interpretability and neglect diffeomorphic properties, such as group composition and inverse consistency. We introduce MORPH-LER, a Log-Euclidean regularization framework for population-aware unsupervised image registration. MORPH-LER learns population morphometrics from spatial transformations to guide and regularize registration networks, ensuring anatomically plausible…
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Taxonomy
TopicsBrain Tumor Detection and Classification · AI in cancer detection · Medical Image Segmentation Techniques
