TL;DR
This paper introduces a fully unsupervised deep learning method for deformable image registration that creates highly realistic anthropomorphic phantoms from a single digital model, enhancing medical imaging research and validation.
Contribution
It presents a novel SSIM-based unsupervised registration algorithm that outperforms existing methods in generating detailed, realistic anatomical phantoms from CT scans.
Findings
Outperforms state-of-the-art methods by over 8% in SSIM
Reduces MSE by less than 30% compared to existing techniques
Produces highly realistic and detailed anthropomorphic phantoms
Abstract
Objectives: Computerized phantoms play an essential role in various applications of medical imaging research. Although the existing computerized phantoms can model anatomical variations through organ and phantom scaling, this does not provide a way to fully reproduce anatomical variations seen in humans. However, having a population of phantoms that models the variations in patient anatomy and, in nuclear medicine, uptake realization is essential for comprehensive validation and training. In this work, we present a novel image registration method for creating highly anatomically detailed anthropomorphic phantoms from a single digital phantom. Methods: We propose a deep-learning-based registration algorithm to predict deformation parameters for warping an XCAT phantom to a patient CT scan. This proposed algorithm optimizes a novel SSIM-based objective function for a given image pair…
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