CVIVJan 22, 2025

Beyond the Lungs: Extending the Field of View in Chest CT with Latent Diffusion Models

arXiv:2501.13068v1h-index: 17Medical Imaging
Originality Incremental advance
AI Analysis

This addresses a domain-specific problem in medical imaging for improving patient care by enabling more comprehensive CT analysis.

The paper tackles the problem of restricted field of view in chest CT images, which limits analysis of lung disease impacts on other organs, by proposing SCOPE, a latent diffusion model approach that extends the FOV to include liver and kidneys, achieving an SSIM of 0.81 on generated slices.

The interconnection between the human lungs and other organs, such as the liver and kidneys, is crucial for understanding the underlying risks and effects of lung diseases and improving patient care. However, most research chest CT imaging is focused solely on the lungs due to considerations of cost and radiation dose. This restricted field of view (FOV) in the acquired images poses challenges to comprehensive analysis and hinders the ability to gain insights into the impact of lung diseases on other organs. To address this, we propose SCOPE (Spatial Coverage Optimization with Prior Encoding), a novel approach to capture the inter-organ relationships from CT images and extend the FOV of chest CT images. Our approach first trains a variational autoencoder (VAE) to encode 2D axial CT slices individually, then stacks the latent representations of the VAE to form a 3D context for training a latent diffusion model. Once trained, our approach extends the FOV of CT images in the z-direction by generating new axial slices in a zero-shot manner. We evaluated our approach on the National Lung Screening Trial (NLST) dataset, and results suggest that it effectively extends the FOV to include the liver and kidneys, which are not completely covered in the original NLST data acquisition. Quantitative results on a held-out whole-body dataset demonstrate that the generated slices exhibit high fidelity with acquired data, achieving an SSIM of 0.81.

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