Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network

Abstract Background The aim of the study was to develop and test an artificial intelligence (AI)-based method to improve the quality of [18F]fluorodeoxyglucose (FDG) positron emission tomography (PET) images. Methods A convolutional neural network (CNN) was trained by using pairs of excellent (acqui...

Full description

Bibliographic Details
Main Authors: John Ly, David Minarik, Jonas Jögi, Per Wollmer, Elin Trägårdh
Format: Article
Language:English
Published: SpringerOpen 2021-05-01
Series:EJNMMI Research
Subjects:
PET
Online Access:https://doi.org/10.1186/s13550-021-00788-5
id doaj-4b43e028692a40d292e3b1856cba8dc4
record_format Article
spelling doaj-4b43e028692a40d292e3b1856cba8dc42021-05-11T14:53:26ZengSpringerOpenEJNMMI Research2191-219X2021-05-0111111010.1186/s13550-021-00788-5Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural networkJohn Ly0David Minarik1Jonas Jögi2Per Wollmer3Elin Trägårdh4Department of Radiology, Kristianstad HospitalDepartment of Translational Medicine, Lund UniversityClinical Physiology and Nuclear Medicine, Skåne University Hospital and Lund UniversityDepartment of Translational Medicine, Lund UniversityDepartment of Translational Medicine, Lund UniversityAbstract Background The aim of the study was to develop and test an artificial intelligence (AI)-based method to improve the quality of [18F]fluorodeoxyglucose (FDG) positron emission tomography (PET) images. Methods A convolutional neural network (CNN) was trained by using pairs of excellent (acquisition time of 6 min/bed position) and standard (acquisition time of 1.5 min/bed position) or sub-standard (acquisition time of 1 min/bed position) images from 72 patients. A test group of 25 patients was used to validate the CNN qualitatively and quantitatively with 5 different image sets per patient: 4 min/bed position, 1.5 min/bed position with and without CNN, and 1 min/bed position with and without CNN. Results Difference in hotspot maximum or peak standardized uptake value between the standard 1.5 min and 1.5 min CNN images fell short of significance. Coefficient of variation, the noise level, was lower in the CNN-enhanced images compared with standard 1 min and 1.5 min images. Physicians ranked the 1.5 min CNN and the 4 min images highest regarding image quality (noise and contrast) and the standard 1 min images lowest. Conclusions AI can enhance [18F]FDG-PET images to reduce noise and increase contrast compared with standard images whilst keeping SUVmax/peak stability. There were significant differences in scoring between the 1.5 min and 1.5 min CNN image sets in all comparisons, the latter had higher scores in noise and contrast. Furthermore, difference in SUVmax and SUVpeak fell short of significance for that pair. The improved image quality can potentially be used either to provide better images to the nuclear medicine physicians or to reduce acquisition time/administered activity.https://doi.org/10.1186/s13550-021-00788-5CancerArtificial intelligencePETImage quality
collection DOAJ
language English
format Article
sources DOAJ
author John Ly
David Minarik
Jonas Jögi
Per Wollmer
Elin Trägårdh
spellingShingle John Ly
David Minarik
Jonas Jögi
Per Wollmer
Elin Trägårdh
Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network
EJNMMI Research
Cancer
Artificial intelligence
PET
Image quality
author_facet John Ly
David Minarik
Jonas Jögi
Per Wollmer
Elin Trägårdh
author_sort John Ly
title Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network
title_short Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network
title_full Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network
title_fullStr Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network
title_full_unstemmed Post-reconstruction enhancement of [18F]FDG PET images with a convolutional neural network
title_sort post-reconstruction enhancement of [18f]fdg pet images with a convolutional neural network
publisher SpringerOpen
series EJNMMI Research
issn 2191-219X
publishDate 2021-05-01
description Abstract Background The aim of the study was to develop and test an artificial intelligence (AI)-based method to improve the quality of [18F]fluorodeoxyglucose (FDG) positron emission tomography (PET) images. Methods A convolutional neural network (CNN) was trained by using pairs of excellent (acquisition time of 6 min/bed position) and standard (acquisition time of 1.5 min/bed position) or sub-standard (acquisition time of 1 min/bed position) images from 72 patients. A test group of 25 patients was used to validate the CNN qualitatively and quantitatively with 5 different image sets per patient: 4 min/bed position, 1.5 min/bed position with and without CNN, and 1 min/bed position with and without CNN. Results Difference in hotspot maximum or peak standardized uptake value between the standard 1.5 min and 1.5 min CNN images fell short of significance. Coefficient of variation, the noise level, was lower in the CNN-enhanced images compared with standard 1 min and 1.5 min images. Physicians ranked the 1.5 min CNN and the 4 min images highest regarding image quality (noise and contrast) and the standard 1 min images lowest. Conclusions AI can enhance [18F]FDG-PET images to reduce noise and increase contrast compared with standard images whilst keeping SUVmax/peak stability. There were significant differences in scoring between the 1.5 min and 1.5 min CNN image sets in all comparisons, the latter had higher scores in noise and contrast. Furthermore, difference in SUVmax and SUVpeak fell short of significance for that pair. The improved image quality can potentially be used either to provide better images to the nuclear medicine physicians or to reduce acquisition time/administered activity.
topic Cancer
Artificial intelligence
PET
Image quality
url https://doi.org/10.1186/s13550-021-00788-5
work_keys_str_mv AT johnly postreconstructionenhancementof18ffdgpetimageswithaconvolutionalneuralnetwork
AT davidminarik postreconstructionenhancementof18ffdgpetimageswithaconvolutionalneuralnetwork
AT jonasjogi postreconstructionenhancementof18ffdgpetimageswithaconvolutionalneuralnetwork
AT perwollmer postreconstructionenhancementof18ffdgpetimageswithaconvolutionalneuralnetwork
AT elintragardh postreconstructionenhancementof18ffdgpetimageswithaconvolutionalneuralnetwork
_version_ 1721443866267090944