Department of Radiology, University Hospital Cologne, Cologne, Germany;Department of Diagnostic and Interventional Radiology, University Medical Center of the Johannes Gutenberg University Mainz, Mainz, Germany.
Department of Diagnostic and Interventional Radiology, University Medical Center of the Johannes Gutenberg University Mainz, Mainz, Germany;Department of Internal Medicine, St. Hildegardis Hospital, Cologne, Germany.
Diagn Interv Radiol. 2020 Jan;26(1):22-27. doi: 10.5152/dir.2019.18245.
PURPOSE We aimed to evaluate the influence of irreversible image compression at varying levels on image post-processing algorithms (3D volume rendering of angiographs, computer-assisted detection of lung nodules, segmentation and volumetry of liver lesions, and automated evaluation of functional cardiac imaging) in computed tomography (CT). METHODS Uncompressed CT image data (30 angiographs of the lower limbs, 38 lung exams, 20 liver exams and 30 cardiac exams) were anonymized and subsequently compressed using the JPEG2000 algorithm with compression ratios of 8:1, 10:1, and 15:1. Volume renderings of CT angiographies obtained from compressed and uncompressed data were compared using objective and subjective measures. Computer-assisted detection of lung nodules was performed on compressed and uncompressed image data and compared with respect to diagnostic performance. Segmentation and volumetry of liver lesions as well as measurement of ejection fraction on cardiac studies was performed on compressed and uncompressed datasets; differences in measurements were analyzed. RESULTS No differences could be detected for the 3D volume renderings and no statistically significant differences in performance were found for the computer-assisted detection algorithm. Measurements in volumetry of liver lesions and functional cardiac imaging showed good to excellent reliability. CONCLUSION Irreversible image compression within the limits proposed by the European Society of Radiology has no significant influence on commonly used image post-processing algorithms in CT.
目的 本研究旨在评估在不同程度下不可逆图像压缩对计算机断层扫描(CT)后处理算法(血管造影的三维容积再现、肺结节的计算机辅助检测、肝脏病变的分割和体积测量以及心脏功能成像的自动评估)的影响。
方法 对未压缩的 CT 图像数据(30 例下肢血管造影、38 例肺部检查、20 例肝脏检查和 30 例心脏检查)进行匿名处理,然后使用 JPEG2000 算法进行压缩,压缩比分别为 8:1、10:1 和 15:1。使用客观和主观测量方法比较从压缩和未压缩数据中获得的 CT 血管造影的容积再现。对压缩和未压缩的图像数据进行肺结节的计算机辅助检测,并比较其诊断性能。对肝脏病变的分割和体积测量以及心脏研究的射血分数测量在压缩和未压缩的数据集上进行;分析测量结果的差异。
结果 三维容积再现无明显差异,计算机辅助检测算法的性能也无统计学差异。肝脏病变体积测量和心脏功能成像的测量具有良好到极好的可靠性。
结论 在欧洲放射学会规定的范围内进行不可逆图像压缩对 CT 中常用的后处理算法没有显著影响。