Biomechanical Constraints Assimilation in Deep-Learning Image Registration: Application to sliding and locally rigid deformations
By: Ziad Kheil, Soleakhena Ken, Laurent Risser
Potential Business Impact:
Makes medical scans match body parts better.
Regularization strategies in medical image registration often take a one-size-fits-all approach by imposing uniform constraints across the entire image domain. Yet biological structures are anything but regular. Lacking structural awareness, these strategies may fail to consider a panoply of spatially inhomogeneous deformation properties, which would faithfully account for the biomechanics of soft and hard tissues, especially in poorly contrasted structures. To bridge this gap, we propose a learning-based image registration approach in which the inferred deformation properties can locally adapt themselves to trained biomechanical characteristics. Specifically, we first enforce in the training process local rigid displacements, shearing motions or pseudo-elastic deformations using regularization losses inspired from the field of solid-mechanics. We then show on synthetic and real 3D thoracic and abdominal images that these mechanical properties of different nature are well generalized when inferring the deformations between new image pairs. Our approach enables neural-networks to infer tissue-specific deformation patterns directly from input images, ensuring mechanically plausible motion. These networks preserve rigidity within hard tissues while allowing controlled sliding in regions where tissues naturally separate, more faithfully capturing physiological motion. The code is publicly available at https://github.com/Kheil-Z/biomechanical_DLIR .
Similar Papers
Implicit Deformable Medical Image Registration with Learnable Kernels
CV and Pattern Recognition
Makes medical scans match up perfectly for treatment.
Deep Biomechanically-Guided Interpolation for Keypoint-Based Brain Shift Registration
Image and Video Processing
Helps surgeons see inside the brain better.
Strategies for Robust Deep Learning Based Deformable Registration
CV and Pattern Recognition
Makes brain scans match better, even with different pictures.