Tsantis Stavros, Spiliopoulos Stavros, Skouroliakou Aikaterini, Karnabatidis Dimitrios, Hazle John D, Kagadis George C
Department of Medical Physics, School of Medicine, University of Patras, Rion, GR 26504, Greece.
Department of Radiology, School of Medicine, University of Patras, Rion, GR 26504, Greece.
Med Phys. 2014 Jul;41(7):072903. doi: 10.1118/1.4883815.
Speckle suppression in ultrasound (US) images of various anatomic structures via a novel speckle noise reduction algorithm.
The proposed algorithm employs an enhanced fuzzy c-means (EFCM) clustering and multiresolution wavelet analysis to distinguish edges from speckle noise in US images. The edge detection procedure involves a coarse-to-fine strategy with spatial and interscale constraints so as to classify wavelet local maxima distribution at different frequency bands. As an outcome, an edge map across scales is derived whereas the wavelet coefficients that correspond to speckle are suppressed in the inverse wavelet transform acquiring the denoised US image.
A total of 34 thyroid, liver, and breast US examinations were performed on a Logiq 9 US system. Each of these images was subjected to the proposed EFCM algorithm and, for comparison, to commercial speckle reduction imaging (SRI) software and another well-known denoising approach, Pizurica's method. The quantification of the speckle suppression performance in the selected set of US images was carried out via Speckle Suppression Index (SSI) with results of 0.61, 0.71, and 0.73 for EFCM, SRI, and Pizurica's methods, respectively. Peak signal-to-noise ratios of 35.12, 33.95, and 29.78 and edge preservation indices of 0.94, 0.93, and 0.86 were found for the EFCM, SIR, and Pizurica's method, respectively, demonstrating that the proposed method achieves superior speckle reduction performance and edge preservation properties. Based on two independent radiologists' qualitative evaluation the proposed method significantly improved image characteristics over standard baseline B mode images, and those processed with the Pizurica's method. Furthermore, it yielded results similar to those for SRI for breast and thyroid images significantly better results than SRI for liver imaging, thus improving diagnostic accuracy in both superficial and in-depth structures.
A new wavelet-based EFCM clustering model was introduced toward noise reduction and detail preservation. The proposed method improves the overall US image quality, which in turn could affect the decision-making on whether additional imaging and/or intervention is needed.
通过一种新型的散斑噪声降低算法对各种解剖结构的超声(US)图像进行散斑抑制。
所提出的算法采用增强模糊c均值(EFCM)聚类和多分辨率小波分析来区分US图像中的边缘和散斑噪声。边缘检测过程涉及一种带有空间和尺度间约束的由粗到细的策略,以便对不同频带的小波局部极大值分布进行分类。结果,得到了一个跨尺度的边缘图,而在逆小波变换中对应于散斑的小波系数被抑制,从而获得去噪后的US图像。
在一台Logiq 9 US系统上总共进行了34次甲状腺、肝脏和乳腺的US检查。这些图像中的每一幅都采用了所提出的EFCM算法进行处理,并且为了进行比较,还采用了商业散斑减少成像(SRI)软件以及另一种著名的去噪方法,即皮祖里察方法。通过散斑抑制指数(SSI)对所选US图像集的散斑抑制性能进行量化,EFCM、SRI和皮祖里察方法的结果分别为0.61、0.71和0.73。EFCM、SIR和皮祖里察方法的峰值信噪比分别为35.12、33.95和29.78,边缘保留指数分别为0.94、0.93和0.86,这表明所提出的方法实现了卓越的散斑减少性能和边缘保留特性。基于两位独立放射科医生的定性评估,所提出的方法相对于标准基线B模式图像以及用皮祖里察方法处理的图像显著改善了图像特征。此外,对于乳腺和甲状腺图像,其产生的结果与SRI相似,对于肝脏成像,其结果比SRI显著更好,从而提高了浅表和深部结构的诊断准确性。
引入了一种基于小波的新型EFCM聚类模型用于降噪和细节保留。所提出的方法提高了整体US图像质量,这反过来可能会影响关于是否需要额外成像和/或干预的决策。