4.7 Article

Artificial intelligence enables whole-body positron emission tomography scans with minimal radiation exposure

Journal

Publisher

SPRINGER
DOI: 10.1007/s00259-021-05197-3

Keywords

Pediatric cancer imaging; PET/MRI; Whole-body PET reconstruction; PET denoising; Deep learning

Funding

  1. Eunice Kennedy Shriver National Institute of Child Health and Human Development (NICHD) [R01 HD081123A]
  2. Andrew McDonough B+ Foundation
  3. Biostatistics Shared Resource - Cancer Center Support Grant [P30CA124435]

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The study utilized a novel artificial intelligence algorithm to generate diagnostic F-18-FDG PET images of pediatric cancer patients from ultra-low-dose input images. The convolutional neural network (CNN) successfully reconstructed standard-dose PET images from simulated ultra-low-dose scans, improving image quality and diagnostic accuracy compared to traditional low-dose scans. The CNN augmentation also led to higher agreement in diagnostic confidence between standard clinical scans and AI-reconstructed PET scans.
Purpose To generate diagnostic F-18-FDG PET images of pediatric cancer patients from ultra-low-dose F-18-FDG PET input images, using a novel artificial intelligence (AI) algorithm. Methods We used whole-body F-18-FDG-PET/MRI scans of 33 children and young adults with lymphoma (3-30 years) to develop a convolutional neural network (CNN), which combines inputs from simulated 6.25% ultra-low-dose F-18-FDG PET scans and simultaneously acquired MRI scans to produce a standard-dose F-18-FDG PET scan. The image quality of ultra-low-dose PET scans, AI-augmented PET scans, and clinical standard PET scans was evaluated by traditional metrics in computer vision and by expert radiologists and nuclear medicine physicians, using Wilcoxon signed-rank tests and weighted kappa statistics. Results The peak signal-to-noise ratio and structural similarity index were significantly higher, and the normalized root-mean-square error was significantly lower on the AI-reconstructed PET images compared to simulated 6.25% dose images (p < 0.001). Compared to the ground-truth standard-dose PET, SUVmax values of tumors and reference tissues were significantly higher on the simulated 6.25% ultra-low-dose PET scans as a result of image noise. After the CNN augmentation, the SUVmax values were recovered to values similar to the standard-dose PET. Quantitative measures of the readers' diagnostic confidence demonstrated significantly higher agreement between standard clinical scans and AI-reconstructed PET scans (kappa = 0.942) than 6.25% dose scans (kappa = 0.650). Conclusions Our CNN model could generate simulated clinical standard F-18-FDG PET images from ultra-low-dose inputs, while maintaining clinically relevant information in terms of diagnostic accuracy and quantitative SUV measurements.

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