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基于少量相控阵通道数据的超声平面波图像分割的卷积神经网络。

A Convolutional Neural Network for Ultrasound Plane Wave Image Segmentation With a Small Amount of Phase Array Channel Data.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2022 Jul;69(7):2270-2281. doi: 10.1109/TUFFC.2022.3174637. Epub 2022 Jun 30.

Abstract

Single-angle plane wave has a huge potential in ultrasound high frame rate imaging, which, however, has a number of difficulties, such as low imaging quality and poor segmentation results. To overcome these difficulties, an end-to-end convolutional neural network (CNN) structure from single-angle channel data was proposed to segment images in this article. The network removed the traditional beamforming process and used raw radio frequency (RF) data as input to directly obtain segmented image. The signal features at each depth were extracted and concatenated to obtain the feature map by a special depth signal extraction module, and the feature map was then put into the residual encoder and decoder to obtain the output. A simulated hypoechoic cysts dataset of 2000 and an actual industrial defect dataset of 900 were used for training separately. Good results have been achieved in both simulated medical cysts segmentation and actual industrial defects segmentation. Experiments were conducted on both datasets with phase array sparse element data as input, and segmentation results were obtained for both. On the whole, this work achieved better quality segmented images with shorter processing time from single-angle plane wave channel data using CNNs; compared with other methods, our network has been greatly improved in intersection over union (IOU), F1 score, and processing time. Also, it indicated that the feasibility of applying deep learning in image segmentation can be improved using phase array sparse element data as input.

摘要

单角度平面波在超声高速成像中具有巨大的潜力,但存在成像质量低、分割结果差等诸多困难。为了克服这些困难,本文提出了一种从单角度通道数据端到端卷积神经网络(CNN)结构来分割图像。该网络省去了传统的波束形成过程,直接使用原始射频(RF)数据作为输入,以获得分割图像。通过特殊的深度信号提取模块,提取并连接每个深度的信号特征,得到特征图,然后将特征图放入残差编码器和解码器中得到输出。使用 2000 个模拟的低回声囊肿数据集和 900 个实际工业缺陷数据集分别进行训练。在模拟医学囊肿分割和实际工业缺陷分割中都取得了良好的效果。使用相控稀疏元数据作为输入,在两个数据集上进行了实验,得到了分割结果。总的来说,与其他方法相比,本工作使用 CNN 从单角度平面波通道数据获得了质量更好、处理时间更短的分割图像;在交并比(IOU)、F1 得分和处理时间方面都有了很大的提高。此外,实验结果还表明,使用相控稀疏元数据作为输入可以提高深度学习在图像分割中的可行性。

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