Enhancing Row-column array (RCA)-based 3D ultrasound vascular imaging with spatial-temporal similarity weighting.

Jingke Zhang, Chengwu Huang, U-Wai Lok, Zhijie Dong, Hui Liu, Ping Gong, Pengfei Song, Shigao Chen
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Abstract

Ultrasound vascular imaging (UVI) is a valuable tool for monitoring the physiological states and evaluating the pathological diseases. Advancing from conventional two-dimensional (2D) to three-dimensional (3D) UVI would enhance the vasculature visualization, thereby improving its reliability. Row-column array (RCA) has emerged as a promising approach for cost-effective ultrafast 3D imaging with a low channel count. However, ultrafast RCA imaging is often hampered by high-level sidelobe artifacts and low signal-to-noise ratio (SNR), which makes RCA-based UVI challenging. In this study, we propose a spatial-temporal similarity weighting (St-SW) method to overcome these challenges by exploiting the incoherence of sidelobe artifacts and noise between datasets acquired using orthogonal transmissions. Simulation, in vitro blood flow phantom, and in vivo experiments were conducted to compare the proposed method with existing orthogonal plane wave imaging (OPW), row-column-specific frame-multiply-and-sum beamforming (RC-FMAS), and XDoppler techniques. Qualitative and quantitative results demonstrate the superior performance of the proposed method. In simulations, the proposed method reduced the sidelobe level by 31.3 dB, 20.8 dB, and 14.0 dB, compared to OPW, XDoppler, and RC-FMAS, respectively. In the blood flow phantom experiment, the proposed method significantly improved the contrast-to-noise ratio (CNR) of the tube by 26.8 dB, 25.5 dB, and 19.7 dB, compared to OPW, XDoppler, and RC-FMAS methods, respectively. In the human submandibular gland experiment, it not only reconstructed a more complete vasculature but also improved the CNR by more than 15 dB, compared to OPW, XDoppler, and RC-FMAS methods. In summary, the proposed method effectively suppresses the side-lobe artifacts and noise in images collected using an RCA under low SNR conditions, leading to improved visualization of 3D vasculatures.

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利用时空相似性加权增强基于行列式阵列(RCA)的三维超声血管成像。
超声血管成像(UVI)是监测生理状态和评估病理疾病的重要工具。从传统的二维(2D)到三维(3D)超声血管成像(UVI)将增强血管的可视化,从而提高其可靠性。行列式阵列(RCA)是一种很有前途的方法,它能以较少的通道数进行经济高效的超快三维成像。然而,RCA 的超快成像往往受到高水平侧叶伪影和低信噪比(SNR)的影响,这使得基于 RCA 的超快三维成像具有挑战性。在这项研究中,我们提出了一种空间-时间相似性加权(St-SW)方法,利用正交传输获取的数据集之间的边瓣伪影和噪声的不一致性来克服这些挑战。通过仿真、体外血流模型和体内实验,将提出的方法与现有的正交平面波成像(OPW)、行列特定帧乘和波束成形(RC-FMAS)和 XDoppler 技术进行了比较。定性和定量结果都证明了所提方法的优越性能。在模拟实验中,与 OPW、XDoppler 和 RC-FMAS 相比,所提出的方法分别降低了 31.3 dB、20.8 dB 和 14.0 dB 的侧叶水平。在血流模型实验中,与 OPW、XDoppler 和 RC-FMAS 方法相比,所提出的方法大大提高了管道的对比度-噪声比(CNR),分别为 26.8 dB、25.5 dB 和 19.7 dB。在人体下颌下腺实验中,与 OPW、XDoppler 和 RC-FMAS 方法相比,该方法不仅重建了更完整的脉管,还将 CNR 提高了 15 分贝以上。总之,所提出的方法能有效抑制低信噪比条件下使用 RCA 采集图像中的侧叶伪影和噪声,从而改善三维血管的可视化。
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