CycleULM: A unified label-free deep learning framework for ultrasound localisation microscopy
Su Yan, Clara Rodrigo Gonzalez, Vincent C. H. Leung, Herman Verinaz-Jadan, Jiakang Chen, Matthieu Toulemonde, Kai Riemer, Jipeng Yan, Clotilde Vi\'e, Qingyuan Tan, Peter D. Weinberg, Pier Luigi Dragotti, Kevin G. Murphy, Meng-Xing Tang

TL;DR
CycleULM is a novel deep learning framework that enhances ultrasound localisation microscopy by enabling label-free, real-time processing with significant improvements in image quality, localisation accuracy, and computational speed, facilitating clinical translation.
Contribution
CycleULM introduces the first unified label-free deep learning approach for ULM, using CycleGAN to bridge the gap between real ultrasound data and simplified microbubble models without requiring paired ground truth.
Findings
Improves contrast-to-noise ratio by up to 15.3 dB
Reduces point spread function FWHM by 2.5 times
Enhances microbubble localisation recall and precision significantly
Abstract
Super-resolution ultrasound via microbubble (MB) localisation and tracking, also known as ultrasound localisation microscopy (ULM), can resolve microvasculature beyond the acoustic diffraction limit. However, significant challenges remain in localisation performance and data acquisition and processing time. Deep learning methods for ULM have shown promise to address these challenges, however, they remain limited by in vivo label scarcity and the simulation-to-reality domain gap. We present CycleULM, the first unified label-free deep learning framework for ULM. CycleULM learns a physics-emulating translation between the real contrast-enhanced ultrasound (CEUS) data domain and a simplified MB-only domain, leveraging the power of CycleGAN without requiring paired ground truth data. With this translation, CycleULM removes dependence on high-fidelity simulators or labelled data, and makes MB…
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Taxonomy
TopicsUltrasound Imaging and Elastography · Ultrasound and Hyperthermia Applications · Photoacoustic and Ultrasonic Imaging
