Electrical and Computer Engineering Department, Johns Hopkins University, Baltimore, MD 21218, USA.
IEEE Trans Biomed Eng. 2013 Jun;60(6):1556-62. doi: 10.1109/TBME.2013.2239293. Epub 2013 Jan 10.
Improving the signal-to-noise-ratio (SNR) of magnetic resonance imaging (MRI) using denoising techniques could enhance their value, provided that signal statistics and image resolution are not compromised. Here, a new denoising method based on spectral subtraction of the measured noise power from each signal acquisition is presented. Spectral subtraction denoising (SSD) assumes no prior knowledge of the acquired signal and does not increase acquisition time. Whereas conventional denoising/filtering methods are compromised in parallel imaging by spatially dependent noise statistics, SSD is performed on signals acquired from each coil separately, prior to reconstruction. Using numerical simulations, we show that SSD can improve SNR by up to ~45% in MRI reconstructed from both single and array coils, without compromising image resolution. Application of SSD to phantom, human heart, and brain MRI achieved SNR improvements of ~40% compared to conventional reconstruction. Comparison of SSD with anisotropic diffusion filtering showed comparable SNR enhancement at low-SNR levels (SNR = 5-15) but improved accuracy and retention of structural detail at a reduced computational load.
利用去噪技术提高磁共振成像 (MRI) 的信噪比 (SNR),可以提高其价值,但前提是信号统计和图像分辨率不会受到影响。这里提出了一种基于从每个信号采集测量噪声功率中减去噪声功率的新去噪方法。谱减法去噪 (SSD) 假设对采集的信号没有先验知识,并且不会增加采集时间。传统的去噪/滤波方法在并行成像中受到空间相关噪声统计的影响,而 SSD 则在重建之前对每个线圈分别采集的信号进行处理。通过数值模拟,我们表明 SSD 可以将从单个线圈和阵列线圈重建的 MRI 的 SNR 提高多达~45%,而不会影响图像分辨率。SSD 在对人体心脏和脑部 MRI 的体模、人体心脏和脑部 MRI 的应用中,与传统重建相比,SNR 提高了约 40%。与各向异性扩散滤波的比较表明,在低 SNR 水平 (SNR = 5-15) 下,SNR 增强效果相当,但在降低计算负载的情况下,提高了准确性并保留了结构细节。