Neural blind deconvolution for deblurring and supersampling PSMA PET.
Caleb M SampleXinchi HouCarlos Felipe UribeFrançois BénardJonn WuRoberto FedrigoHaley ClarkPublished in: Physics in medicine and biology (2024)
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 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 to deblur PSMA PET images while simultaneous supersampling to double the original resolution. We compare this methodology with several interpolation methods in terms of resultant blind image quality metrics and test the model's ability to predict accurate kernels by re-running the model after applying artificial 'pseudokernels' to deblurred images. The methodology was tested on a retrospective set of 30 prostate patients as well as phantom images containing spherical lesions of various volumes. Main results . Neural blind deconvolution led to improvements in image quality over other interpolation methods in terms of blind image quality metrics, recovery coefficients, and visual assessment. Predicted kernels were similar between patients, and the model accurately predicted several artificially-applied pseudokernels. Localization of activity in phantom spheres was improved after deblurring, allowing small lesions to be more accurately defined. Significance . The intrinsically low spatial resolution of PSMA PET leads to partial volume effects (PVEs) which negatively impact uptake quantification in small regions. The proposed method can be used to mitigate this issue, and can be straightforwardly adapted for other imaging modalities.
Keyphrases
- image quality
- pet ct
- computed tomography
- positron emission tomography
- pet imaging
- deep learning
- end stage renal disease
- convolutional neural network
- prostate cancer
- dual energy
- optical coherence tomography
- newly diagnosed
- ejection fraction
- chronic kidney disease
- neural network
- prognostic factors
- peritoneal dialysis
- magnetic resonance
- single molecule