Plane-wave medical image reconstruction based on dynamic Criss-Cross attention and multi-scale convolution

Technol Health Care. 2024 Apr 12. doi: 10.3233/THC-248026. Online ahead of print.

Abstract

Background: Plane-wave imaging is widely employed in medical imaging due to its ultra-fast imaging speed. However, the image quality is compromised. Existing techniques to enhance image quality tend to sacrifice the imaging frame rate.

Objective: The study aims to reconstruct high-quality plane-wave images while maintaining the imaging frame rate.

Methods: The proposed method utilizes a U-Net-based generator incorporating a multi-scale convolution module in the encoder to extract information at different levels. Additionally, a Dynamic Criss-Cross Attention (DCCA) mechanism is proposed in the decoder of the U-Net-based generator to extract both local and global features of plane-wave images while avoiding interference caused by irrelevant regions.

Results: In the reconstruction of point targets, the experimental images achieved a reduction in Full Width at Half Maximum (FWHM) of 0.0499 mm, compared to the Coherent Plane-Wave Compounding (CPWC) method using 75-beam plane waves. For the reconstruction of cyst targets, the simulated image achieved a 3.78% improvement in Contrast Ratio (CR) compared to CPWC.

Conclusions: The proposed model effectively addresses the issue of unclear lesion sites in plane-wave images.

Keywords: Reconstruction; dynamic criss-cross attention; multi-scale convolution.