Delakis Ioannis, Hammad Omer, Kitney Richard I
Department of Bioengineering, Imperial College, London, UK.
Phys Med Biol. 2007 Jul 7;52(13):3741-51. doi: 10.1088/0031-9155/52/13/006. Epub 2007 May 25.
Wavelet-based de-noising has been shown to improve image signal-to-noise ratio in magnetic resonance imaging (MRI) while maintaining spatial resolution. Wavelet-based de-noising techniques typically implemented in MRI require that noise displays uniform spatial distribution. However, images acquired with parallel MRI have spatially varying noise levels. In this work, a new algorithm for filtering images with parallel MRI is presented. The proposed algorithm extracts the edges from the original image and then generates a noise map from the wavelet coefficients at finer scales. The noise map is zeroed at locations where edges have been detected and directional analysis is also used to calculate noise in regions of low-contrast edges that may not have been detected. The new methodology was applied on phantom and brain images and compared with other applicable de-noising techniques. The performance of the proposed algorithm was shown to be comparable with other techniques in central areas of the images, where noise levels are high. In addition, finer details and edges were maintained in peripheral areas, where noise levels are low. The proposed methodology is fully automated and can be applied on final reconstructed images without requiring sensitivity profiles or noise matrices of the receiver coils, therefore making it suitable for implementation in a clinical MRI setting.
基于小波的去噪已被证明可以在保持空间分辨率的同时提高磁共振成像(MRI)中的图像信噪比。MRI中通常实施的基于小波的去噪技术要求噪声具有均匀的空间分布。然而,通过并行MRI采集的图像具有空间变化的噪声水平。在这项工作中,提出了一种用于对并行MRI图像进行滤波的新算法。所提出的算法从原始图像中提取边缘,然后从更精细尺度的小波系数生成噪声图。在检测到边缘的位置将噪声图归零,并且还使用方向分析来计算可能未被检测到的低对比度边缘区域中的噪声。将新方法应用于体模和脑图像,并与其他适用的去噪技术进行比较。在所提出算法在图像噪声水平较高的中心区域的性能被证明与其他技术相当。此外,在噪声水平较低的外围区域保持了更精细的细节和边缘。所提出的方法是完全自动化的,可以应用于最终重建图像,而无需接收线圈的灵敏度分布或噪声矩阵,因此使其适用于临床MRI环境。