CVAILGMLJan 7, 2019

Universal Deep Beamformer for Variable Rate Ultrasound Imaging

arXiv:1901.01706v14 citations
Originality Highly original
AI Analysis

This addresses image quality issues in ultrasound imaging for medical applications, offering a novel solution that is not incremental but introduces a new paradigm.

The authors tackled the problem of ultrasound image quality degradation due to reduced measurement channels by proposing a universal deep beamformer trained data-driven, which significantly improved images across varying subsampling patterns and configurations.

Ultrasound (US) imaging is based on the time-reversal principle, in which individual channel RF measurements are back-propagated and accumulated to form an image after applying specific delays. While this time reversal is usually implemented as a delay-and-sum (DAS) beamformer, the image quality quickly degrades as the number of measurement channels decreases. To address this problem, various types of adaptive beamforming techniques have been proposed using predefined models of the signals. However, the performance of these adaptive beamforming approaches degrade when the underlying model is not sufficiently accurate. Here, we demonstrate for the first time that a single universal deep beamformer trained using a purely data-driven way can generate significantly improved images over widely varying aperture and channel subsampling patterns. In particular, we design an end-to-end deep learning framework that can directly process sub-sampled RF data acquired at different subsampling rate and detector configuration to generate high quality ultrasound images using a single beamformer. Experimental results using B-mode focused ultrasound confirm the efficacy of the proposed methods.

Code Implementations1 repo
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