Generative Adversarial Network-Enhanced Ultra-Low-Dose [F]-PI-2620 τ PET/MRI in Aging and Neurodegenerative Populations.

AJNR Am J Neuroradiol

Department of Radiology (K.T.C., M.E.I.K., J.O., S.S., G.D., T.L., M.K., G.Z.), Stanford University, Stanford, California.

Published: September 2023

AI Article Synopsis

  • Researchers explored the use of deep learning to improve ultra-low-dose τ PET/MR imaging for diagnosing neurodegenerative diseases, aiming to produce images of diagnostic quality.
  • A generative adversarial network was used to enhance images acquired from only 5% of the original full-dose data, utilizing both τ PET and MR data for improved outcomes.
  • The results indicated that enhanced ultra-low-dose images significantly reduced noise and maintained accurate radiotracer uptake patterns, suggesting potential for lower radiation doses in dementia monitoring.

Article Abstract

Background And Purpose: With the utility of hybrid τ PET/MR imaging in the screening, diagnosis, and follow-up of individuals with neurodegenerative diseases, we investigated whether deep learning techniques can be used in enhancing ultra-low-dose [F]-PI-2620 τ PET/MR images to produce diagnostic-quality images.

Materials And Methods: Forty-four healthy aging participants and patients with neurodegenerative diseases were recruited for this study, and [F]-PI-2620 τ PET/MR data were simultaneously acquired. A generative adversarial network was trained to enhance ultra-low-dose τ images, which were reconstructed from a random sampling of 1/20 (approximately 5% of original count level) of the original full-dose data. MR images were also used as additional input channels. Region-based analyses as well as a reader study were conducted to assess the image quality of the enhanced images compared with their full-dose counterparts.

Results: The enhanced ultra-low-dose τ images showed apparent noise reduction compared with the ultra-low-dose images. The regional standard uptake value ratios showed that while, in general, there is an underestimation for both image types, especially in regions with higher uptake, when focusing on the healthy-but-amyloid-positive population (with relatively lower τ uptake), this bias was reduced in the enhanced ultra-low-dose images. The radiotracer uptake patterns in the enhanced images were read accurately compared with their full-dose counterparts.

Conclusions: The clinical readings of deep learning-enhanced ultra-low-dose τ PET images were consistent with those performed with full-dose imaging, suggesting the possibility of reducing the dose and enabling more frequent examinations for dementia monitoring.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10494955PMC
http://dx.doi.org/10.3174/ajnr.A7961DOI Listing

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