Presentation + Paper
4 April 2022 Deep learning framework to synthesize high-count preclinical PET images from low-count preclinical PET images
Author Affiliations +
Abstract
Preclinical PET imaging is widely used to quantify in vivo biological and metabolic process at molecular level in small animal imaging. In preclinical PET, low-count acquisition has numerous benefits in terms of animal logistics, maintaining integrity in longitudinal multi-tracer studies, and increased throughput. Low-count acquisition can be realized by either decreasing the injected dose or by shortening the acquisition time. However, both these approaches lead to reduced photons, generating PET images with low signal-to-noise ratio (SNR) exhibiting poor image quality, lesion contrast, and quantitative accuracy. This study is aimed at developing a deep-learning (DL) based framework to generate high-count PET (HC-PET) from low-count PET (LC-PET) images using Residual U-Net (RU-Net) and Dilated U-Net (D-Net)-based architectures. Preclinical PET images at different photon count levels were simulated using a stochastic and physics-based method and fed into the framework. The integration of residual learning in the U-Net architecture enhanced feature propagation while the dilated kernels enlarged receptive field-of-view to incorporate multiscale context. Both DL methods exhibited significantly (p≤0.05) better performance in terms of Structural Similarity Index Metric (SSIM), Peak Signal-to-Noise Ratio (PSNR) and Normalized Root Mean Square Error (NRMSE) when compared to existing non-DL denoising techniques such as Non-Local Means (NLM) and BM3D filtering. In objective evaluation of quantification task, the DL-based approaches yielded significantly lower bias in determining the mean standardized uptake value (SUVmean) of liver and tumor lesion than the non-DL approaches. Of the DL frameworks, D-Net based generation of HC-PET had the least bias and coefficient of variation at all photon count levels. Our study suggests that DL can predict HC-PET images with improved visual quality and quantitative accuracy from LC-PET (preclinical) images.
Conference Presentation
© (2022) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Kaushik Dutta, Ziping Liu, Richard Laforest, Abhinav Jha, and Kooresh Isaac Shoghi "Deep learning framework to synthesize high-count preclinical PET images from low-count preclinical PET images", Proc. SPIE 12031, Medical Imaging 2022: Physics of Medical Imaging, 120311F (4 April 2022); https://doi.org/10.1117/12.2612729
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KEYWORDS
Positron emission tomography

Photons

Tumors

Data modeling

Signal to noise ratio

Denoising

Liver

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