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Suppressing HIFU interference in ultrasound images using 1D U-Net-based neural networks. | LitMetric

Suppressing HIFU interference in ultrasound images using 1D U-Net-based neural networks.

Phys Med Biol

The State Key Laboratory of Ultrasound Engineering in Medicine, College of Biomedical Engineering, Chongqing Medical University, People's Republic of China.

Published: March 2024

AI Article Synopsis

  • HIFU generates intense acoustic interference that disrupts B-mode monitoring images, reducing their effectiveness.
  • A study proposes that one-dimensional (1D) U-Net-based networks are more effective than two-dimensional (2D) networks in suppressing this interference and improving image quality.
  • Experiments showed that 1D U-Net-based methods improved structural similarity by over 30% compared to 2D methods, indicating their potential for better ultrasound monitoring in HIFU systems.

Article Abstract

One big challenge with high-intensity focused ultrasound (HIFU) is that the intense acoustic interference generated by HIFU irradiation overwhelms the B-mode monitoring images, compromising monitoring effectiveness. This study aims to overcome this problem using a one-dimensional (1D) deep convolutional neural network.. U-Net-based networks have been proven to be effective in image reconstruction and denoising, and the two-dimensional (2D) U-Net has already been investigated for suppressing HIFU interference in ultrasound monitoring images. In this study, we propose that the one-dimensional (1D) convolution in U-Net-based networks is more suitable for removing HIFU artifacts and can better recover the contaminated B-mode images compared to 2D convolution.andHIFU experiments were performed on a clinically equivalent ultrasound-guided HIFU platform to collect image data, and the 1D convolution in U-Net, Attention U-Net, U-Net++, and FUS-Net was applied to verify our proposal.All 1D U-Net-based networks were more effective in suppressing HIFU interference than their 2D counterparts, with over 30% improvement in terms of structural similarity (SSIM) to the uncontaminated B-mode images. Additionally, 1D U-Nets trained usingdatasets demonstrated better generalization performance inexperiments.These findings indicate that the utilization of 1D convolution in U-Net-based networks offers great potential in addressing the challenges of monitoring in ultrasound-guided HIFU systems.

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Source
http://dx.doi.org/10.1088/1361-6560/ad2b95DOI Listing

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