Ultrasound (US) is widely used for clinical imaging applications thanks to its real-time and non-invasive nature. However, its lesion detectability is often limited in many applications due to the phase aberration artefact caused by variations in the speed of sound (SoS) within body parts. To address this, here we propose a novel self-supervised 3D CNN that enables phase aberration robust plane-wave imaging. Instead of aiming at estimating the SoS distribution as in conventional methods, our approach is unique in that the network is trained in a self-supervised manner to robustly generate a high-quality image from various phase aberrated images by modeling the variation in the speed of sound as stochastic. Experimental results using real measurements from tissue-mimicking phantom and \textit{in vivo} scans confirmed that the proposed method can significantly reduce the phase aberration artifacts and improve the visual quality of deep scans.
翻译:超声波(US)由于其实时和非侵入性的性质,广泛用于临床成像应用。然而,由于身体部位内声速变化导致的声速变化导致的相位畸变,其损害可探测性在许多应用中往往有限。为了解决这个问题,我们在这里提议了一个新的自我监督的3DCNN, 使相位畸变强的平面波波成像能够实现相位畸变。我们的方法不以常规方法来估计SOS的分布,而具有独特性,因为网络以自我监督的方式接受培训,通过模拟声速变异作为蒸汽,从不同阶段图像中强有力地生成高品质的图像。使用组织模拟幻影和微风微量子实际测量结果的实验结果证实,拟议的方法可以大大减少阶段畸变的文物,提高深度扫描的视觉质量。