Graduate School of Engineering, Tohoku University, 6-6-05 Aoba, Aramaki, Aoba-ku, Sendai, 980-8579, Japan.
J Med Ultrason (2001). 2022 Jan;49(1):3-15. doi: 10.1007/s10396-021-01162-7. Epub 2021 Nov 27.
The purpose of this study was to detect two dimensional and sub-pixel displacement with high spatial resolution using an ultrasonic diagnostic apparatus. Conventional displacement detection methods assume neighborhood uniformity and cannot achieve both high spatial resolution and sub-pixel displacement detection.
A deep-learning network that utilizes ultrasound images and output displacement distribution was developed. The network structure was constructed by modifying FlowNet2, a widely used network for optical flow estimation, and a training dataset was developed using ultrasound image simulation. Detection accuracy and spatial resolution were evaluated via simulated ultrasound images, and the clinical usefulness was evaluated with ultrasound images of the liver exposed to high-intensity-focused ultrasound (HIFU). These results were compared to the Lucas-Kanade method, a conventional sub-pixel displacement detection method.
For a displacement within ± 40 µm (± 0.6 pixels), a pixel size of 67 µm, and signal noise of 1%, the accuracy was above 0.5 µm and 0.2 µm, the precision was above 0.4 µm and 0.3 µm, and the spatial resolution was 1.1 mm and 0.8 mm for the lateral and axial displacements, respectively. These improvements were also observed in the experimental data. Visualization of the lateral displacement distribution, which determines the edge of the treated lesion using HIFU, was also realized.
Two-dimensional and sub-pixel displacement detection with high spatial resolution was realized using a deep-learning methodology. The proposed method enabled the monitoring of small and local tissue deformations induced by HIFU exposure.
本研究旨在使用超声诊断设备以高空间分辨率检测二维和亚像素位移。传统的位移检测方法假设邻域均匀,无法同时实现高空间分辨率和亚像素位移检测。
开发了一种利用超声图像和输出位移分布的深度学习网络。该网络结构通过修改广泛用于光流估计的 FlowNet2 构建,并使用超声图像模拟开发了训练数据集。通过模拟超声图像评估检测精度和空间分辨率,并使用高强度聚焦超声(HIFU)暴露的肝脏超声图像评估临床实用性。将这些结果与传统的亚像素位移检测方法 Lucas-Kanade 方法进行比较。
对于±40μm(±0.6 像素)的位移、67μm 的像素大小和 1%的信号噪声,精度高于 0.5μm 和 0.2μm,精度高于 0.4μm 和 0.3μm,横向和轴向位移的空间分辨率分别为 1.1mm 和 0.8mm。在实验数据中也观察到了这些改进。还实现了使用 HIFU 确定处理病变边缘的横向位移分布的可视化。
使用深度学习方法实现了具有高空间分辨率的二维和亚像素位移检测。该方法能够监测 HIFU 暴露引起的小范围和局部组织变形。