Wang Adam S, Pelc Norbert J
Department of Electrical Engineering, Stanford University, Stanford, California 94305, USA.
Med Phys. 2009 Aug;36(8):3643-53. doi: 10.1118/1.3158738.
The requirements for raw data transmission through a CT scanner slip ring, through the computation system, and for storage of raw CT data can be quite challenging as scanners continue to increase in speed and to collect more data per rotation. Although lossy compression greatly mitigates this problem, users must be cautious about how errors introduced manifest themselves in the reconstructed images. This paper describes two simple yet effective methods for controlling the effect of errors in raw data compression and describe the impact of each stage on the image errors. A CT system simulator (CATSIM, GE Global Research Center, Niskayuna, NY) was used to generate raw CT datasets that simulate different regions of human anatomy. The raw data are digitized by a 20-bit ADC and companded by a log compander. Lossy compression is performed by quantization and is followed by JPEG-LS (lossless), which takes advantage of the correlations between neighboring measurements in the sinogram. Error feedback, a previously proposed method that controls the spatial distribution of reconstructed image errors, and projection filtering, a newly proposed method that takes advantage of the filtered backprojection reconstruction process, are applied independently (and combined) to study their intended impact on the control and behavior of the additional noise due to the compression methods used. The log compander and the projection filtering method considerably reduce image error levels, while error feedback pushes image errors toward the periphery of the field of view. The results for the images are a compression ratio (CR) of 3 that keeps peak compression errors under 1 HU and a CR of 9 that increases image noise by only 1 HU in common CT applications. Lossy compression can substantially reduce raw CT data size at low computational cost. The proposed methods have the flexibility to operate at a wide range of compression ratios and produce predictable, object-independent, and often imperceptible image artifacts.
随着CT扫描仪速度不断提高且每旋转采集的数据越来越多,通过CT扫描仪滑环传输原始数据、经过计算系统以及存储原始CT数据的要求可能极具挑战性。尽管有损压缩大大缓解了这个问题,但用户必须谨慎对待原始数据压缩中引入的错误在重建图像中的表现方式。本文描述了两种简单而有效的方法来控制原始数据压缩中错误的影响,并描述了每个阶段对图像错误的影响。使用CT系统模拟器(CATSIM,通用电气全球研究中心,纽约州尼斯卡尤纳)生成模拟人体解剖不同区域的原始CT数据集。原始数据由20位模数转换器数字化,并由对数压缩扩展器进行压缩扩展。有损压缩通过量化执行,随后是JPEG-LS(无损),它利用了正弦图中相邻测量值之间的相关性。误差反馈是一种先前提出的控制重建图像误差空间分布的方法,投影滤波是一种新提出的利用滤波反投影重建过程的方法,它们被独立应用(并结合应用)以研究它们对由于所使用的压缩方法而产生的额外噪声的控制和行为的预期影响。对数压缩扩展器和投影滤波方法大大降低了图像误差水平,而误差反馈则将图像误差推向视野边缘。在常见的CT应用中,图像的结果是压缩比(CR)为3时峰值压缩误差保持在1 HU以下,压缩比为9时图像噪声仅增加1 HU。有损压缩可以以较低的计算成本大幅减小原始CT数据大小。所提出的方法具有在广泛的压缩比范围内运行的灵活性,并产生可预测的、与对象无关的且通常难以察觉的图像伪影。