Enhancement of 18F-Fluorodeoxyglucose PET Image Quality by Deep-Learning-Based Image Reconstruction Using Advanced Intelligent Clear-IQ Engine in Semiconductor-Based PET/CT Scanners

被引:4
|
作者
Yamagiwa, Ken [1 ]
Tsuchiya, Junichi [1 ]
Yokoyama, Kota [1 ]
Watanabe, Ryosuke [1 ]
Kimura, Koichiro [1 ]
Kishino, Mitsuhiro [1 ]
Tateishi, Ukihide [1 ]
机构
[1] Tokyo Med & Dent Univ, Dept Diagnost Radiol & Nucl Med, Bunkyo Ku, 1-5-45 Yushima, Tokyo 1138510, Japan
关键词
image quality; deep learning reconstruction; semiconductor-based PET/CT; F-18-fluorodeoxyglucose positron emission tomography; FDG-PET/CT; CRITERIA;
D O I
10.3390/diagnostics12102500
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Deep learning (DL) image quality improvement has been studied for application to F-18-fluorodeoxyglucose positron emission tomography/computed tomography (F-18-FDG PET/CT). It is unclear, however, whether DL can increase the quality of images obtained with semiconductor-based PET/CT scanners. This study aimed to compare the quality of semiconductor-based PET/CT scanner images obtained by DL-based technology and conventional OSEM image with Gaussian postfilter. For DL-based data processing implementation, we used Advanced Intelligent Clear-IQ Engine (AiCE, Canon Medical Systems, Tochigi, Japan) and for OSEM images, Gaussian postfilter of 3 mm FWHM is used. Thirty patients who underwent semiconductor-based PET/CT scanner imaging between May 6, 2021, and May 19, 2021, were enrolled. We compared AiCE images and OSEM images and scored them for delineation, image noise, and overall image quality. We also measured standardized uptake values (SUVs) in tumors and healthy tissues and compared them between AiCE and OSEM. AiCE images scored significantly higher than OSEM images for delineation, image noise, and overall image quality. The Fleiss kappa value for the interobserver agreement was 0.57. Among the 21 SUV measurements in healthy organs, 11 (52.4%) measurements were significantly different between AiCE and OSEM images. More pathological lesions were detected in AiCE images as compared with OSEM images, with AiCE images showing higher SUVs for pathological lesions than OSEM images. AiCE can improve the quality of images acquired with semiconductor-based PET/CT scanners, including the noise level, contrast, and tumor detection capability.
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页数:9
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