Automatic Landmark Detection and Registration of Brain Cortical Surfaces via Quasi-Conformal Geometry and Convolutional Neural Networks
Yuchen Guo, Qiguang Chen, Gary P. T. Choi, Lok Ming Lui

TL;DR
This paper introduces an automated framework combining neural networks and quasi-conformal geometry for brain cortical surface registration, improving efficiency and accuracy over traditional manual landmark-based methods.
Contribution
It presents a novel deep learning approach for automatic landmark detection and registration of brain surfaces using quasi-conformal theory, reducing reliance on manual labeling.
Findings
High accuracy in landmark detection demonstrated
Effective surface registration with guaranteed bijectivity
Potential for improved medical shape analysis
Abstract
In medical imaging, surface registration is extensively used for performing systematic comparisons between anatomical structures, with a prime example being the highly convoluted brain cortical surfaces. To obtain a meaningful registration, a common approach is to identify prominent features on the surfaces and establish a low-distortion mapping between them with the feature correspondence encoded as landmark constraints. Prior registration works have primarily focused on using manually labeled landmarks and solving highly nonlinear optimization problems, which are time-consuming and hence hinder practical applications. In this work, we propose a novel framework for the automatic landmark detection and registration of brain cortical surfaces using quasi-conformal geometry and convolutional neural networks. We first develop a landmark detection network (LD-Net) that allows for the…
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Taxonomy
Topics3D Shape Modeling and Analysis · Medical Image Segmentation Techniques · Medical Imaging and Analysis
