Deep Learning Denoising Improves and Homogenizes Patient [ 18 F]FDG PET Image Quality in Digital PET/CT.
Kathleen WeytsElske QuakIdlir LicajRenaud CiappucciniCharline LasnonAurélien Corroyer-DulmontGauthier FoucrasStéphane BardetCyril JaudetPublished in: Diagnostics (Basel, Switzerland) (2023)
Given the constant pressure to increase patient throughput while respecting radiation protection, global body PET image quality (IQ) is not satisfactory in all patients. We first studied the association between IQ and other variables, in particular body habitus, on a digital PET/CT. Second, to improve and homogenize IQ, we evaluated a deep learning PET denoising solution (Subtle PET TM ) using convolutional neural networks. We analysed retrospectively in 113 patients visual IQ (by a 5-point Likert score in two readers) and semi-quantitative IQ (by the coefficient of variation in the liver, CV liv ) as well as lesion detection and quantification in native and denoised PET. In native PET, visual and semi-quantitative IQ were lower in patients with larger body habitus ( p < 0.0001 for both) and in men vs. women ( p ≤ 0.03 for CV liv ). After PET denoising, visual IQ scores increased and became more homogeneous between patients (4.8 ± 0.3 in denoised vs. 3.6 ± 0.6 in native PET; p < 0.0001). CV liv were lower in denoised PET than in native PET, 6.9 ± 0.9% vs. 12.2 ± 1.6%; p < 0.0001. The slope calculated by linear regression of CV liv according to weight was significantly lower in denoised than in native PET ( p = 0.0002), demonstrating more uniform CV liv . Lesion concordance rate between both PET series was 369/371 (99.5%), with two lesions exclusively detected in native PET. SUV max and SUV peak of up to the five most intense native PET lesions per patient were lower in denoised PET ( p < 0.001), with an average relative bias of -7.7% and -2.8%, respectively. DL-based PET denoising by Subtle PET TM allowed [ 18 F]FDG PET global image quality to be improved and homogenized, while maintaining satisfactory lesion detection and quantification. DL-based denoising may render body habitus adaptive PET protocols unnecessary, and pave the way for the improvement and homogenization of PET modalities.
Keyphrases
- pet ct
- positron emission tomography
- computed tomography
- pet imaging
- image quality
- deep learning
- convolutional neural network
- end stage renal disease
- ejection fraction
- radiation therapy
- magnetic resonance imaging
- magnetic resonance
- body mass index
- pregnant women
- peritoneal dialysis
- metabolic syndrome
- type diabetes
- artificial intelligence
- machine learning
- case report
- body weight
- middle aged
- weight loss
- insulin resistance