Training Variational Networks with Multi-Domain Simulations: Speed-of-Sound Image Reconstruction
Melanie Bernhardt, Valery Vishnevskiy, Richard Rau, Orcun Goksel

TL;DR
This paper introduces a novel variational network approach for speed-of-sound image reconstruction in breast cancer imaging, leveraging multi-domain simulations to improve generalization from simulated to real data.
Contribution
The work presents the first variational network solution for pulse-echo speed-of-sound imaging using diverging waves and multi-source domain training to enhance domain adaptation.
Findings
54% reduction in median RMSE on wave-based simulations
Improved reconstruction quality on tissue-mimicking phantom data
Reconstruction achieved in 12 milliseconds
Abstract
Speed-of-sound has been shown as a potential biomarker for breast cancer imaging, successfully differentiating malignant tumors from benign ones. Speed-of-sound images can be reconstructed from time-of-flight measurements from ultrasound images acquired using conventional handheld ultrasound transducers. Variational Networks (VN) have recently been shown to be a potential learning-based approach for optimizing inverse problems in image reconstruction. Despite earlier promising results, these methods however do not generalize well from simulated to acquired data, due to the domain shift. In this work, we present for the first time a VN solution for a pulse-echo SoS image reconstruction problem using diverging waves with conventional transducers and single-sided tissue access. This is made possible by incorporating simulations with varying complexity into training. We use loop unrolling…
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