IVLGMED-PHApr 22, 2024

Experimental Validation of Ultrasound Beamforming with End-to-End Deep Learning for Single Plane Wave Imaging

arXiv:2404.14188v15 citationsh-index: 21
Originality Incremental advance
AI Analysis

This work addresses image quality issues in medical ultrasound imaging, particularly for breast phantom applications, but is incremental as it builds on existing deep learning methods by integrating known techniques.

The paper tackled the problem of reduced image quality in ultrafast single plane wave ultrasound imaging by incorporating conventional image formation techniques as differentiable layers in a deep learning network, achieving improvements in image quality across all evaluation metrics with surprisingly little training data.

Ultrafast ultrasound imaging insonifies a medium with one or a combination of a few plane waves at different beam-steered angles instead of many focused waves. It can achieve much higher frame rates, but often at the cost of reduced image quality. Deep learning approaches have been proposed to mitigate this disadvantage, in particular for single plane wave imaging. Predominantly, image-to-image post-processing networks or fully learned data-to-image neural networks are used. Both construct their mapping purely data-driven and require expressive networks and large amounts of training data to perform well. In contrast, we consider data-to-image networks which incorporate a conventional image formation techniques as differentiable layers in the network architecture. This allows for end-to-end training with small amounts of training data. In this work, using f-k migration as an image formation layer is evaluated in-depth with experimental data. We acquired a data collection designed for benchmarking data-driven plane wave imaging approaches using a realistic breast mimicking phantom and an ultrasound calibration phantom. The evaluation considers global and local image similarity measures and contrast, resolution and lesion detectability analysis. The results show that the proposed network architecture is capable of improving the image quality of single plane wave images on all evaluation metrics. Furthermore, these image quality improvements can be achieved with surprisingly little amounts of training data.

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