IVCVFeb 13, 2024

PFCM: Poisson flow consistency models for low-dose CT image denoising

arXiv:2402.08159v26 citationsh-index: 4IEEE Transactions on Medical Imaging
AI Analysis

This work addresses the problem of reducing radiation exposure in medical CT imaging for patients and clinicians, presenting an incremental improvement by adapting a generative model for a specific denoising task.

The authors tackled low-dose CT image denoising by introducing Poisson Flow Consistency Models (PFCM), a novel deep generative model that combines PFGM++ robustness with efficient sampling, achieving excellent performance on the Mayo dataset as measured by LPIPS, SSIM, and PSNR metrics.

X-ray computed tomography (CT) is widely used for medical diagnosis and treatment planning; however, concerns about ionizing radiation exposure drive efforts to optimize image quality at lower doses. This study introduces Poisson Flow Consistency Models (PFCM), a novel family of deep generative models that combines the robustness of PFGM++ with the efficient single-step sampling of consistency models. PFCM are derived by generalizing consistency distillation to PFGM++ through a change-of-variables and an updated noise distribution. As a distilled version of PFGM++, PFCM inherit the ability to trade off robustness for rigidity via the hyperparameter $D \in (0,\infty)$. A fact that we exploit to adapt this novel generative model for the task of low-dose CT image denoising, via a ``task-specific'' sampler that ``hijacks'' the generative process by replacing an intermediate state with the low-dose CT image. While this ``hijacking'' introduces a severe mismatch -- the noise characteristics of low-dose CT images are different from that of intermediate states in the Poisson flow process -- we show that the inherent robustness of PFCM at small $D$ effectively mitigates this issue. The resulting sampler achieves excellent performance in terms of LPIPS, SSIM, and PSNR on the Mayo low-dose CT dataset. By contrast, an analogous sampler based on standard consistency models is found to be significantly less robust under the same conditions, highlighting the importance of a tunable $D$ afforded by our novel framework. To highlight generalizability, we show effective denoising of clinical images from a prototype photon-counting system reconstructed using a sharper kernel and at a range of energy levels.

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