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Noise suppression in photon-counting computed tomography using unsupervised Poisson flow generative models.
Hein, Dennis; Holmin, Staffan; Szczykutowicz, Timothy; Maltz, Jonathan S; Danielsson, Mats; Wang, Ge; Persson, Mats.
Affiliation
  • Hein D; Department of Physics, KTH Royal Institute of Technology, Stockholm, 1142, Sweden. dhein@kth.se.
  • Holmin S; MedTechLabs, Karolinska University Hospital, Stockholm, 17164, Sweden. dhein@kth.se.
  • Szczykutowicz T; Department of Clinical Neuroscience, Karolinska Institutet, Stockholm, 17164, Sweden.
  • Maltz JS; Department of Neuroradiology, Karolinska University Hospital, Stockholm, 17164, Sweden.
  • Danielsson M; Department of Radiology, School of Medicine and Public Health, University of Wisconsin, Madison, WI, 53705, United States.
  • Wang G; GE HealthCare, Waukesha, WI, 53188, United States.
  • Persson M; Department of Physics, KTH Royal Institute of Technology, Stockholm, 1142, Sweden.
Vis Comput Ind Biomed Art ; 7(1): 24, 2024 Sep 23.
Article in En | MEDLINE | ID: mdl-39311990
ABSTRACT
Deep learning (DL) has proven to be important for computed tomography (CT) image denoising. However, such models are usually trained under supervision, requiring paired data that may be difficult to obtain in practice. Diffusion models offer unsupervised means of solving a wide range of inverse problems via posterior sampling. In particular, using the estimated unconditional score function of the prior distribution, obtained via unsupervised learning, one can sample from the desired posterior via hijacking and regularization. However, due to the iterative solvers used, the number of function evaluations (NFE) required may be orders of magnitudes larger than for single-step samplers. In this paper, we present a novel image denoising technique for photon-counting CT by extending the unsupervised approach to inverse problem solving to the case of Poisson flow generative models (PFGM)++. By hijacking and regularizing the sampling process we obtain a single-step sampler, that is NFE = 1. Our proposed method incorporates posterior sampling using diffusion models as a special case. We demonstrate that the added robustness afforded by the PFGM++ framework yields significant performance gains. Our results indicate competitive performance compared to popular supervised, including state-of-the-art diffusion-style models with NFE = 1 (consistency models), unsupervised, and non-DL-based image denoising techniques, on clinical low-dose CT data and clinical images from a prototype photon-counting CT system developed by GE HealthCare.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Vis Comput Ind Biomed Art Year: 2024 Document type: Article Affiliation country: Sweden Country of publication: Germany

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Vis Comput Ind Biomed Art Year: 2024 Document type: Article Affiliation country: Sweden Country of publication: Germany