Choong Miew Keen, Logeswaran Rajasvaran, Bister Michel
Faculty of Engineering, Multimedia University, Cyberjaya, Malaysia.
J Med Syst. 2006 Jun;30(3):139-43. doi: 10.1007/s10916-005-8374-4.
This paper attempts to improve the diagnostic quality of magnetic resonance (MR) images through application of lossy compression as a noise-reducing filter. The amount of imaging noise present in MR images is compared with the amount of noise introduced by the compression, with particular attention given to the situation where the compression noise is a fraction of the imaging noise. A popular wavelet-based algorithm with good performance, Set Partitioning in Hierarchical Trees (SPIHT), was employed for the lossy compression. Tests were conducted with a number of MR patient images and corresponding phantom images. Different plausible ratios between imaging noise and compression noise (ICR) were considered, and the achievable compression gain through the controlled lossy compression was evaluated. Preliminary results show that at certain ICR's, it becomes virtually impossible to distinguish between the original and compressed-decompressed image. Radiologists presented with a blind test, in certain cases, showed preference to the compressed image rather than the original uncompressed ones, indicating that under controlled circumstances, lossy image compression can be used to improve the diagnostic quality of the MR images.
本文试图通过应用有损压缩作为降噪滤波器来提高磁共振(MR)图像的诊断质量。将MR图像中存在的成像噪声量与压缩引入的噪声量进行比较,特别关注压缩噪声是成像噪声一部分的情况。采用了一种性能良好的基于小波的流行算法——分层树状集合划分(SPIHT)进行有损压缩。对一些MR患者图像和相应的体模图像进行了测试。考虑了成像噪声与压缩噪声之间不同的合理比率(ICR),并评估了通过可控有损压缩可实现的压缩增益。初步结果表明,在某些ICR下,几乎无法区分原始图像和压缩后解压缩的图像。在盲测中,放射科医生在某些情况下表现出对压缩图像而非原始未压缩图像的偏好,这表明在可控条件下,有损图像压缩可用于提高MR图像的诊断质量。