Yamagiwa Ken, Tsuchiya Junichi, Yokoyama Kota, Watanabe Ryosuke, Kimura Koichiro, Kishino Mitsuhiro, Tateishi Ukihide
Department of Diagnostic Radiology and Nuclear Medicine, Tokyo Medical and Dental University, 1-5-45 Yushima, Bunkyo-ku, Tokyo 113-8510, Japan.
Diagnostics (Basel). 2022 Oct 15;12(10):2500. doi: 10.3390/diagnostics12102500.
Deep learning (DL) image quality improvement has been studied for application to F-fluorodeoxyglucose positron emission tomography/computed tomography (F-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.
深度学习(DL)图像质量改善已被研究用于氟脱氧葡萄糖正电子发射断层扫描/计算机断层扫描(F-FDG PET/CT)。然而,尚不清楚DL是否能提高基于半导体的PET/CT扫描仪所获得图像的质量。本研究旨在比较基于DL技术获得的基于半导体的PET/CT扫描仪图像与采用高斯后置滤波器的传统有序子集期望最大化(OSEM)图像的质量。对于基于DL的数据处理实现,我们使用了高级智能清晰图像质量引擎(AiCE,佳能医疗系统公司,日本栃木),对于OSEM图像,则使用半高宽为3毫米的高斯后置滤波器。纳入了2021年5月6日至2021年5月19日期间接受基于半导体的PET/CT扫描仪成像的30例患者。我们比较了AiCE图像和OSEM图像,并对其进行了轮廓描绘、图像噪声和整体图像质量评分。我们还测量了肿瘤和健康组织中的标准化摄取值(SUV),并在AiCE和OSEM之间进行了比较。AiCE图像在轮廓描绘、图像噪声和整体图像质量方面的得分显著高于OSEM图像。观察者间一致性的Fleiss κ值为0.57。在健康器官的21次SUV测量中,AiCE图像和OSEM图像之间有11次(52.4%)测量结果存在显著差异。与OSEM图像相比,AiCE图像检测到更多的病理病变,且AiCE图像中病理病变的SUV高于OSEM图像。AiCE可以提高基于半导体的PET/CT扫描仪所采集图像的质量,包括噪声水平、对比度和肿瘤检测能力。