CVMar 16

One CT Unified Model Training Framework to Rule All Scanning Protocols

arXiv:2603.1502542.7h-index: 8
AI Analysis

This work addresses a critical limitation in medical imaging for clinical use by enabling more robust CT image enhancement without requiring paired data, though it appears incremental as it builds on existing unified model approaches.

The paper tackles the problem of enhancing non-ideal measurement computed tomography (NICT) images across varied scanning protocols, where existing unsupervised methods fail due to assumptions of homogeneous noise and discrete sub-manifolds, by proposing an Uncertainty-Guided Manifold Smoothing (UMS) framework that bridges gaps between sub-manifolds, resulting in improved reconstruction performance validated on public datasets.

Non-ideal measurement computed tomography (NICT), which lowers radiation at the cost of image quality, is expanding the clinical use of CT. Although unified models have shown promise in NICT enhancement, most methods require paired data, which is an impractical demand due to inevitable organ motion. Unsupervised approaches attempt to overcome this limitation, but their assumption of homogeneous noise neglects the variability of scanning protocols, leading to poor generalization and potential model collapse. We further observe that distinct scanning protocols, which correspond to different physical imaging processes, produce discrete sub-manifolds in the feature space, contradicting these assumptions and limiting their effectiveness. To address this, we propose an Uncertainty-Guided Manifold Smoothing (UMS) framework to bridge the gaps between sub-manifolds. A classifier in UMS identifies sub-manifolds and predicts uncertainty scores, which guide the generation of diverse samples across the entire manifold. By leveraging the classifier's capability, UMS effectively fills the gaps between discrete sub-manifolds, and promotes a continuous and dense feature space. Due to the complexity of the global manifold, it's hard to directly model it. Therefore, we propose to dynamically incorporate the global- and sub-manifold-specific features. Specifically, we design a global- and sub-manifold-driven architecture guided by the classifier, which enables dynamic adaptation to subdomain variations. This dynamic mechanism improves the network's capacity to capture both shared and domain-specific features, thereby improving reconstruction performance. Extensive experiments on public datasets are conducted to validate the effectiveness of our method across different generation paradigms.

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