Neural blind deconvolution for deblurring and supersampling PSMA PET
Caleb Sample, Arman Rahmim, Carlos Uribe, Fran\c{c}ois B\'enard, Jonn, Wu, Roberto Fedrigo, Haley Clark

TL;DR
This paper introduces a neural blind deconvolution method to simultaneously deblur and supersample PSMA PET images, improving image quality and lesion localization in prostate cancer imaging.
Contribution
The study adapts neural blind deconvolution for PSMA PET, demonstrating its effectiveness in image enhancement and PVE correction compared to traditional interpolation methods.
Findings
Improved image quality metrics over interpolation methods
Accurate prediction of blur kernels in patient images
Enhanced lesion localization in phantom studies
Abstract
Objective: To simultaneously deblur and supersample prostate specific membrane antigen (PSMA) positron emission tomography (PET) images using neural blind deconvolution. Approach: Blind deconvolution is a method of estimating the hypothetical "deblurred" image along with the blur kernel (related to the point spread function) simultaneously. Traditional \textit{maximum a posteriori} blind deconvolution methods require stringent assumptions and suffer from convergence to a trivial solution. A method of modelling the deblurred image and kernel with independent neural networks, called "neural blind deconvolution" had demonstrated success for deblurring 2D natural images in 2020. In this work, we adapt neural blind deconvolution for PVE correction of PSMA PET images with simultaneous supersampling. We compare this methodology with several interpolation methods, using blind image quality…
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Taxonomy
TopicsMedical Imaging Techniques and Applications · Image Processing Techniques and Applications · Medical Image Segmentation Techniques
