A Wavefield Correlation Approach to Improve Sound Speed Estimation in Ultrasound Autofocusing

arXiv:2602.1280515.21 citationsh-index: 4
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This work addresses the problem of aberration in pulse-echo ultrasound, offering a more accurate sound speed estimation method for challenging clinical scenarios with reverberation clutter and large sound speed variations.

The authors propose a wavefield correlation (WFC) beamforming approach for sound speed estimation in ultrasound autofocusing, which improves accuracy over delay-and-sum methods by better modeling wave propagation in heterogeneous media. Results show decreased sound speed estimation error and improved resolution and contrast in corrected images.

In pulse-echo ultrasound, aberration often degrades image quality when beamforming does not account for wavefront distortions. To address this issue, local sound speed estimators have been developed in the past decade for distributed aberration correction. Recently, methods based on iterative optimization have improved sound speed accuracy with respect to earlier approaches. However, the accuracy of these newer methods is limited by media with reverberation clutter and by the straight-ray model of wave propagation. To address these challenges, we propose using wavefield correlation (WFC) beamforming when performing sound speed optimization. WFC, an ultrasound adaptation of reverse time migration, correlates simulated forward-propagated transmit wavefields and backwards-propagated receive wavefields in order to reconstruct images. This process more accurately models wave propagation in heterogeneous media and can decrease diffuse clutter due to its spatiotemporal matched filtering effect. We implement herein a WFC beamformer using an auto-differentiation software and estimate the sound speed map by optimizing a regularized common-midpoint phase focusing criterion using gradient descent. This approach is compared to a previous method relying on delay and sum (DAS) with straight-ray time delay calculations on a variety of simulated, phantom, and in vivo data with large sound speed variations and clutter. Results show that using WFC decreases sound speed estimation error, leading to improvements in resolution and contrast in the corrected image. In particular, these promising results have potential to improve pulse-echo imaging for challenging clinical scenarios.

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