IEEE Trans Ultrason Ferroelectr Freq Control. 2014 Mar;61(3):428-40. doi: 10.1109/TUFFC.2014.2928.
In vivo ultrasonic imaging with transducer arrays suffers from image degradation resulting from beamforming limitations, including diffraction-limited beamforming and beamforming degradation caused by tissue inhomogeneity. Additionally, based on recent studies, multipath scattering also causes significant image degradation. To reduce degradation from both sources, we propose a model-based signal decomposition scheme. The proposed algorithm identifies spatial frequency signatures to decompose received wavefronts into their most significant scattering sources. Scattering sources originating from a region of interest are used to reconstruct decluttered wavefronts, which are beamformed into decluttered RF scan lines or A-lines. To test the algorithm, ultrasound system channel data were acquired during liver scans from 8 patients. Multiple data sets were acquired from each patient, with 55 total data sets, 43 of which had identifiable hypoechoic regions on normal B-mode images. The data sets with identifiable hypoechoic regions were analyzed. The results show the decluttered B-mode images have an average improvement in contrast over normal images of 7.3 ± 4.6 dB. The contrast-to-noise ratio (CNR) changed little on average between normal and decluttered Bmode, -0.4 ± 5.9 dB. The in vivo speckle SNR decreased; the change was -0.65 ± 0.28. Phantom speckle SNR also decreased, but only by -0.40 ± 0.03.
体内超声成像是利用换能器阵列进行的,由于波束形成的限制,包括衍射受限波束形成和组织非均质性引起的波束形成退化,会导致图像质量下降。此外,基于最近的研究,多径散射也会导致图像质量显著下降。为了降低来自这两个来源的退化,我们提出了一种基于模型的信号分解方案。该算法识别空间频率特征,将接收的波前分解为其最重要的散射源。来自感兴趣区域的散射源用于重建无混叠的波前,这些波前被波束形成到无混叠的 RF 扫描线或 A 线中。为了测试该算法,从 8 名患者的肝脏扫描中采集了超声系统通道数据。从每位患者采集了多个数据集,总共采集了 55 个数据集,其中 43 个数据集在正常 B 模式图像上有可识别的低回声区域。对具有可识别低回声区域的数据集进行了分析。结果表明,无混叠 B 模式图像的对比度平均比正常图像提高了 7.3±4.6dB。正常和无混叠 B 模式之间的平均对比噪声比(CNR)变化不大,为-0.4±5.9dB。体内散斑信噪比降低,变化为-0.65±0.28。幻影散斑信噪比也降低了,但仅为-0.40±0.03。