JOURNAL ARTICLE

Deep learning for fast super-resolution ultrasound microvessel imaging

Shunyao LuanXiangyang YuShuang LeiChi MaXiao WangXudong XueYi DingTeng MaBenpeng Zhu

Year: 2023 Journal:   Physics in Medicine and Biology Vol: 68 (24)Pages: 245023-245023   Publisher: IOP Publishing

Abstract

Abstract Objective . Ultrasound localization microscopy (ULM) enables microvascular reconstruction by localizing microbubbles (MBs). Although ULM can obtain microvascular images that are beyond the ultimate resolution of the ultrasound (US) diffraction limit, it requires long data processing time, and the imaging accuracy is susceptible to the density of MBs. Deep learning (DL)-based ULM is proposed to alleviate these limitations, which simulated MBs at low-resolution and mapped them to coordinates at high-resolution by centroid localization. However, traditional DL-based ULMs are imprecise and computationally complex. Also, the performance of DL is highly dependent on the training datasets, which are difficult to realistically simulate. Approach . A novel architecture called adaptive matching network (AM-Net) and a dataset generation method named multi-mapping (MMP) was proposed to overcome the above challenges. The imaging performance and processing time of the AM-Net have been assessed by simulation and in vivo experiments. Main results . Simulation results show that at high density (20 MBs/frame), when compared to other DL-based ULM, AM-Net achieves higher localization accuracy in the lateral/axial direction. In vivo experiment results show that the AM-Net can reconstruct ∼24.3 μ m diameter micro-vessels and separate two ∼28.3 μ m diameter micro-vessels. Furthermore, when processing a 128 × 128 pixels image in simulation experiments and an 896 × 1280 pixels image in vivo experiment, the processing time of AM-Net is ∼13 s and ∼33 s, respectively, which are 0.3–0.4 orders of magnitude faster than other DL-based ULM. Significance . We proposes a promising solution for ULM with low computing costs and high imaging performance.

Keywords:
Computer science Pixel Artificial intelligence Computer vision Microbubbles Image processing Deep learning Image resolution Centroid Pattern recognition (psychology) Ultrasound Image (mathematics) Physics Acoustics

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105
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Citation History

Topics

Photoacoustic and Ultrasonic Imaging
Physical Sciences →  Engineering →  Biomedical Engineering
Ultrasound Imaging and Elastography
Health Sciences →  Medicine →  Radiology, Nuclear Medicine and Imaging
Ultrasound and Hyperthermia Applications
Physical Sciences →  Engineering →  Biomedical Engineering
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