论文标题
使用深度学习的单渠道超声RF信号中的超声波定位
Super-Resolved Microbubble Localization in Single-Channel Ultrasound RF Signals Using Deep Learning
论文作者
论文摘要
最近,具有超声定位显微镜(ULM)的超声超声成像引起了很多关注。但是,乌尔姆依赖于血管中低浓度的微泡,最终导致了很长的收购时间。在这里,我们提出了一种基于单维扩张卷积神经网络(CNN)的单渠道超声射频(RF)信号的直接反卷积的替代超分辨率方法。这项工作着重于低频超声(1.7 MHz),用于深度成像(10 cm)的密集的单分散微泡云(在测量量中高达1000个微泡,对应于平均回声重叠94%)。数据是使用模拟器生成的,该模拟器使用大量的声压(5-250 kPa),并捕获谐振,脂质涂层微泡的完整,非线性响应。该网络通过新型的双损失函数进行了训练,该函数具有分类损失和回归损失的元素,并改善了输出的检测平局特征。尽管施加0的定位公差会产生较差的检测指标,但施加了与波长4%相对应的定位公差产生的精度和回忆为0.90。此外,检测随着声压的增加而改善,随着微泡密度的增加而恶化。用反volved的元素数据进行了延迟和湿度重建,证明了呈现超声超声成像的介绍方法的潜力。与未经处理的元素数据相比,所得的图像显示了轴向分辨率的轴向分辨率的增益。
Recently, super-resolution ultrasound imaging with ultrasound localization microscopy (ULM) has received much attention. However, ULM relies on low concentrations of microbubbles in the blood vessels, ultimately resulting in long acquisition times. Here, we present an alternative super-resolution approach, based on direct deconvolution of single-channel ultrasound radio-frequency (RF) signals with a one-dimensional dilated convolutional neural network (CNN). This work focuses on low-frequency ultrasound (1.7 MHz) for deep imaging (10 cm) of a dense cloud of monodisperse microbubbles (up to 1000 microbubbles in the measurement volume, corresponding to an average echo overlap of 94%). Data are generated with a simulator that uses a large range of acoustic pressures (5-250 kPa) and captures the full, nonlinear response of resonant, lipid-coated microbubbles. The network is trained with a novel dual-loss function, which features elements of both a classification loss and a regression loss and improves the detection-localization characteristics of the output. Whereas imposing a localization tolerance of 0 yields poor detection metrics, imposing a localization tolerance corresponding to 4% of the wavelength yields a precision and recall of both 0.90. Furthermore, the detection improves with increasing acoustic pressure and deteriorates with increasing microbubble density. The potential of the presented approach to super-resolution ultrasound imaging is demonstrated with a delay-and-sum reconstruction with deconvolved element data. The resulting image shows an order-of-magnitude gain in axial resolution compared to a delay-and-sum reconstruction with unprocessed element data.