TY - JOUR
T1 - Complex Transformer Network for Single-Angle Plane-Wave Imaging
AU - Qu, Xiaolei
AU - Ren, Chujian
AU - Wang, Zihao
AU - Fan, Shuangchun
AU - Zheng, Dezhi
AU - Wang, Shuai
AU - Lin, Hongxiang
AU - Jiang, Jue
AU - Xing, Weiwei
N1 - Publisher Copyright:
© 2023 World Federation for Ultrasound in Medicine & Biology
PY - 2023/10
Y1 - 2023/10
N2 - Objective: Plane-wave imaging (PWI) is a high-frame-rate imaging technique that sacrifices image quality. Deep learning can potentially enhance plane-wave image quality, but processing complex in-phase and quadrature (IQ) data and suppressing incoherent signals pose challenges. To address these challenges, we present a complex transformer network (CTN) that integrates complex convolution and complex self-attention (CSA) modules. Methods: The CTN operates in a four-step process: delaying complex IQ data from a 0° single-angle plane wave for each pixel as CTN input data; extracting reconstruction features with a complex convolution layer; suppressing irrelevant features derived from incoherent signals with two CSA modules; and forming output images with another complex convolution layer. The training labels are generated by minimum variance (MV). Results: Simulation, phantom and in vivo experiments revealed that CTN produced comparable- or even higher-quality images than MV, but with much shorter computation time. Evaluation metrics included contrast ratio, contrast-to-noise ratio, generalized contrast-to-noise ratio and lateral and axial full width at half-maximum and were –11.59 dB, 1.16, 0.68, 278 μm and 329 μm for simulation, respectively, and 9.87 dB, 0.96, 0.62, 357 μm and 305 μm for the phantom experiment, respectively. In vivo experiments further indicated that CTN could significantly improve details that were previously vague or even invisible in DAS and MV images. And after being accelerated by GPU, the CTN runtime (76.03 ms) was comparable to that of delay-and-sum (DAS, 61.24 ms). Conclusion: The proposed CTN significantly improved the image contrast, resolution and some unclear details by the MV beamformer, making it an efficient tool for high-frame-rate imaging.
AB - Objective: Plane-wave imaging (PWI) is a high-frame-rate imaging technique that sacrifices image quality. Deep learning can potentially enhance plane-wave image quality, but processing complex in-phase and quadrature (IQ) data and suppressing incoherent signals pose challenges. To address these challenges, we present a complex transformer network (CTN) that integrates complex convolution and complex self-attention (CSA) modules. Methods: The CTN operates in a four-step process: delaying complex IQ data from a 0° single-angle plane wave for each pixel as CTN input data; extracting reconstruction features with a complex convolution layer; suppressing irrelevant features derived from incoherent signals with two CSA modules; and forming output images with another complex convolution layer. The training labels are generated by minimum variance (MV). Results: Simulation, phantom and in vivo experiments revealed that CTN produced comparable- or even higher-quality images than MV, but with much shorter computation time. Evaluation metrics included contrast ratio, contrast-to-noise ratio, generalized contrast-to-noise ratio and lateral and axial full width at half-maximum and were –11.59 dB, 1.16, 0.68, 278 μm and 329 μm for simulation, respectively, and 9.87 dB, 0.96, 0.62, 357 μm and 305 μm for the phantom experiment, respectively. In vivo experiments further indicated that CTN could significantly improve details that were previously vague or even invisible in DAS and MV images. And after being accelerated by GPU, the CTN runtime (76.03 ms) was comparable to that of delay-and-sum (DAS, 61.24 ms). Conclusion: The proposed CTN significantly improved the image contrast, resolution and some unclear details by the MV beamformer, making it an efficient tool for high-frame-rate imaging.
KW - Adaptive beamforming
KW - Deep learning
KW - Plane-wave imaging
KW - Ultrasound
UR - http://www.scopus.com/inward/record.url?scp=85167793012&partnerID=8YFLogxK
U2 - 10.1016/j.ultrasmedbio.2023.07.005
DO - 10.1016/j.ultrasmedbio.2023.07.005
M3 - Article
C2 - 37544831
AN - SCOPUS:85167793012
SN - 0301-5629
VL - 49
SP - 2234
EP - 2246
JO - Ultrasound in Medicine and Biology
JF - Ultrasound in Medicine and Biology
IS - 10
ER -