The Key Laboratory of Biomedical Information Engineering of Ministry of Education, School of Life Science and Technology, Xi'an Jiaotong University, Xi'an 710049, PR China.
The Key Laboratory of Biomedical Information Engineering of Ministry of Education, School of Life Science and Technology, Xi'an Jiaotong University, Xi'an 710049, PR China; Xi'an Hospital of Traditional Chinese Medicine, Xi'an 710021, PR China.
Ultrasonics. 2023 Jan;127:106833. doi: 10.1016/j.ultras.2022.106833. Epub 2022 Aug 28.
High-frame-rate plane wave (PW) imaging suffers from unsatisfactory image quality due to the absence of focus in transmission. Although coherent compounding from tens of PWs can improve PW image quality, it in turn results in a decreased frame rate, which is limited for tracking fast moving tissues. To overcome the trade-off between frame rate and image quality, we propose a progressively dual reconstruction network (PDRN) to achieve adaptive beamforming and enhance the image quality via both supervised and transfer learning in the condition of single or a few PWs transmission. Specifically, the proposed model contains a progressive network and a dual network to form a close loop and provide collaborative supervision for model optimization. The progressive network takes the channel delay of each spatial point as input and progressively learns coherent compounding beamformed data with increased numbers of steered PWs step by step. The dual network learns the downsampling process and reconstructs the beamformed data with decreased numbers of steered PWs, which reduces the space of the possible learning functions and improves the model's discriminative ability. In addition, the dual network is leveraged to perform transfer learning for the training data without sufficient steered PWs. The simulated, in vivo, vocal cords (VCs), and public available CUBDL dataset are collected for model evaluation.
高帧率平面波(PW)成像由于在发射中没有聚焦而导致图像质量不理想。尽管来自数十个 PW 的相干复合可以提高 PW 图像质量,但这反过来又导致帧率降低,这对于跟踪快速运动的组织来说是有限的。为了克服帧率和图像质量之间的权衡,我们提出了一种渐进式双重建网络(PDRN),以在单次或少数 PW 传输的情况下通过监督和迁移学习来实现自适应波束形成并提高图像质量。具体来说,所提出的模型包含一个渐进式网络和一个双网络,以形成闭环并为模型优化提供协作监督。渐进式网络以每个空间点的通道延迟作为输入,并逐步学习具有增加数量的定向 PW 的相干复合波束形成数据。双网络学习下采样过程,并使用减少数量的定向 PW 重建波束形成数据,这减少了可能的学习函数的空间,并提高了模型的判别能力。此外,双网络被用于在没有足够定向 PW 的情况下进行训练数据的迁移学习。模拟、体内、声带(VC)和公共可用的 CUBDL 数据集被收集用于模型评估。