Treffer: Waveform-Specific Performance of Deep Learning-Based Super-Resolution for Ultrasound Contrast Imaging.

Title:
Waveform-Specific Performance of Deep Learning-Based Super-Resolution for Ultrasound Contrast Imaging.
Source:
IEEE transactions on ultrasonics, ferroelectrics, and frequency control [IEEE Trans Ultrason Ferroelectr Freq Control] 2025 Apr; Vol. 72 (4), pp. 427-439. Date of Electronic Publication: 2025 Apr 22.
Publication Type:
Journal Article; Research Support, Non-U.S. Gov't
Language:
English
Journal Info:
Publisher: Institute of Electrical and Electronics Engineers Country of Publication: United States NLM ID: 9882735 Publication Model: Print-Electronic Cited Medium: Internet ISSN: 1525-8955 (Electronic) Linking ISSN: 08853010 NLM ISO Abbreviation: IEEE Trans Ultrason Ferroelectr Freq Control Subsets: MEDLINE
Imprint Name(s):
Original Publication: New York, NY : Institute of Electrical and Electronics Engineers, c1985-
Substance Nomenclature:
0 (Contrast Media)
Entry Date(s):
Date Created: 20250303 Date Completed: 20250422 Latest Revision: 20250530
Update Code:
20250530
DOI:
10.1109/TUFFC.2025.3537298
PMID:
40031250
Database:
MEDLINE

Weitere Informationen

Resolving arterial flows is essential for understanding cardiovascular pathologies, improving diagnosis, and monitoring patient condition. Ultrasound contrast imaging uses microbubbles to enhance the scattering of the blood pool, allowing for real-time visualization of blood flow. Recent developments in vector flow imaging further expand the imaging capabilities of ultrasound by temporally resolving fast arterial flow. The next obstacle to overcome is the lack of spatial resolution. Super-resolved ultrasound images can be obtained by deconvolving radiofrequency (RF) signals before beamforming, breaking the link between resolution and pulse duration. Convolutional neural networks (CNNs) can be trained to locally estimate the deconvolution kernel and consequently super-localize the microbubbles directly within the RF signal. However, microbubble contrast is highly nonlinear, and the potential of CNNs in microbubble localization has not yet been fully exploited. Assessing deep learning-based deconvolution performance for nontrivial imaging pulses is therefore essential for successful translation to a practical setting, where the signal-to-noise ratio (SNR) is limited, and transmission schemes should comply with safety guidelines. In this study, we train CNNs to deconvolve RF signals and localize the microbubbles driven by harmonic pulses, chirps, or delay-encoded pulse trains. Furthermore, we discuss potential hurdles for in vitro and in vivo super-resolution by presenting preliminary experimental results. We find that, whereas the CNNs can accurately localize microbubbles for all pulses, a short imaging pulse offers the best performance in noise-free conditions. However, chirps offer a comparable performance without noise, but they are more robust to noise and outperform all other pulses in low-SNR conditions.