IEEE Trans Med Imaging. 2024 Jun;43(6):2191-2201. doi: 10.1109/TMI.2024.3358307. Epub 2024 Jun 3.
Although transcranial ultrasound plane-wave imaging (PWI) has promising clinical application prospects, studies have shown that variable speed-of-sound (SoS) would seriously damage the quality of ultrasound images. The mismatch between the conventional constant velocity assumption and the actual SoS distribution leads to the general blurring of ultrasound images. The optimization scheme for reconstructing transcranial ultrasound image is often solved using iterative methods like full-waveform inversion. These iterative methods are computationally expensive and based on prior magnetic resonance imaging (MRI) or computed tomography (CT) information. In contrast, the multi-stencils fast marching (MSFM) method can produce accurate time travel maps for the skull with heterogeneous acoustic speed. In this study, we first propose a convolutional neural network (CNN) to predict SoS maps of the skull from PWI channel data. Then, use these maps to correct the travel time to reduce transcranial aberration. To validate the performance of the proposed method, numerical, phantom and intact human skull studies were conducted using a linear array transducer (L11-5v, 128 elements, pitch = 0.3 mm). Numerical simulations demonstrate that for point targets, the lateral resolution of MSFM-restored images increased by 65%, and the center position shift decreased by 89%. For the cyst targets, the eccentricity of the fitting ellipse decreased by 75%, and the center position shift decreased by 58%. In the phantom study, the lateral resolution of MSFM-restored images was increased by 49%, and the position shift was reduced by 1.72 mm. This pipeline, termed AutoSoS, thus shows the potential to correct distortions in real-time transcranial ultrasound imaging, as demonstrated by experiments on the intact human skull.
尽管经颅超声平面波成像(PWI)具有很有前景的临床应用前景,但研究表明,可变声速(SoS)会严重损害超声图像的质量。传统的恒定速度假设与实际 SoS 分布之间的不匹配导致超声图像普遍模糊。重建经颅超声图像的优化方案通常使用全波反演等迭代方法来解决。这些迭代方法计算成本高,并且基于磁共振成像(MRI)或计算机断层扫描(CT)的先验信息。相比之下,多模板快速行进(MSFM)方法可以为具有异声声速的颅骨生成准确的时程图。在这项研究中,我们首先提出了一种卷积神经网络(CNN),用于从 PWI 通道数据预测颅骨的 SoS 图。然后,使用这些地图来校正飞行时间以减少颅外偏差。为了验证所提出方法的性能,我们使用线阵换能器(L11-5v,128 个元件,节距= 0.3mm)进行了数值、幻影和完整人类颅骨研究。数值模拟表明,对于点目标,MSFM 恢复图像的横向分辨率提高了 65%,中心位置偏移减少了 89%。对于囊肿目标,拟合椭圆的偏心率降低了 75%,中心位置偏移减少了 58%。在幻影研究中,MSFM 恢复图像的横向分辨率提高了 49%,位置偏移减少了 1.72mm。该管道称为 AutoSoS,因此在完整人类颅骨的实验中显示出实时校正经颅超声成像失真的潜力。