Cosman P C, Davidson H C, Bergin C J, Tseng C W, Moses L E, Riskin E A, Olshen R A, Gray R M
Department of Electrical Engineering, Stanford University, CA 94305-4055.
Radiology. 1994 Feb;190(2):517-24. doi: 10.1148/radiology.190.2.8284409.
To evaluate the effects of lossy image (noninvertible) compression on diagnostic accuracy of thoracic computed tomographic images.
Sixty images from patients with mediastinal adenopathy and pulmonary nodules were compressed to six different levels with tree-structured vector quantization. Three radiologists then used the original and compressed images for diagnosis. Unlike many previous receiver operating characteristic-based studies that used confidence rankings and binary detection tasks, this study examined the sensitivity and predictive value positive scores from nonbinary detection tasks.
At the 5% significance level, there was no statistically significant difference in diagnostic accuracy of image assessment at compression rates of up to 9:1.
The techniques presented for evaluation of image quality do not depend on the specific compression algorithm and provide a useful approach to evaluation of the benefits of any lossy image processing technique.
评估有损图像(不可逆)压缩对胸部计算机断层扫描图像诊断准确性的影响。
采用树形结构矢量量化技术,将60例纵隔淋巴结肿大和肺结节患者的图像压缩至6个不同水平。然后,三名放射科医生使用原始图像和压缩图像进行诊断。与以往许多基于接受者操作特征的研究不同,以往研究使用置信度排名和二元检测任务,而本研究则检查了非二元检测任务的敏感度和阳性预测值分数。
在5%的显著性水平下,压缩率高达9:1时,图像评估的诊断准确性在统计学上没有显著差异。
所提出的图像质量评估技术不依赖于特定的压缩算法,为评估任何有损图像处理技术的益处提供了一种有用的方法。