Deep learning based Non-Rigid Volume-to-Surface Registration for Brain Shift compensation Using Point Cloud
Eashrat Jahan Muniya, Gernot Kronreif, Ander Biguri, Wolfgang Birkfellner, Sepideh Hatamikia

TL;DR
This paper introduces a deep learning framework for non-rigid brain shift registration using partial intra-operative surface point clouds, improving surgical navigation accuracy without disrupting workflow.
Contribution
It presents a novel deep learning method that estimates dense brain deformations from limited surface data, integrating partial intra-operative observations into pre-operative models.
Findings
Achieved an Endpoint Error of 1.13 mm in deformation recovery.
Demonstrated accurate dense deformation estimation from sparse surface data.
Supported automatic brain-shift compensation compatible with surgical workflow.
Abstract
Soft-tissue deformation remains a major limitation in image-guided neurosurgery, where intra-operative anatomy can deviate substantially from pre-operative imaging due to brain shift, compromising navigation accuracy and surgical safety. Existing compensation methods often rely on intra-operative MRI, CT, or ultrasound, which are disruptive and difficult to integrate repeatedly into the surgical workflow. In contrast, partial 3D cortical surfaces can be reconstructed as point clouds from stereoscopic microscopes or laser range scanners (LRS), capturing only a limited portion of the exposed cortex. This makes point cloud registration a practical alternative without interrupting surgery; however, such partial and noisy observations make deformation estimation highly challenging. In this study, we propose a deep learning-based framework for non-rigid volume-to-surface registration,…
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