Learned super resolution ultrasound for improved breast lesion characterization
Or Bar-Shira, Ahuva Grubstein, Yael Rapson, Dror Suhami, Eli Atar,, Keren Peri-Hanania, Ronnie Rosen, Yonina C. Eldar

TL;DR
This paper introduces a deep learning approach to super resolution ultrasound imaging that enhances breast lesion characterization by visualizing microvasculature without extensive prior knowledge, promising improved diagnostic specificity.
Contribution
A novel deep neural network method enables rapid, high-resolution microvasculature imaging in vivo without prior PSF knowledge or UCAs separability, facilitating clinical translation.
Findings
Successful in vivo imaging of breast lesion microvasculature
Short reconstruction time achieved with the neural network
Microvascular structures correspond with histological features
Abstract
Breast cancer is the most common malignancy in women. Mammographic findings such as microcalcifications and masses, as well as morphologic features of masses in sonographic scans, are the main diagnostic targets for tumor detection. However, improved specificity of these imaging modalities is required. A leading alternative target is neoangiogenesis. When pathological, it contributes to the development of numerous types of tumors, and the formation of metastases. Hence, demonstrating neoangiogenesis by visualization of the microvasculature may be of great importance. Super resolution ultrasound localization microscopy enables imaging of the microvasculature at the capillary level. Yet, challenges such as long reconstruction time, dependency on prior knowledge of the system Point Spread Function (PSF), and separability of the Ultrasound Contrast Agents (UCAs), need to be addressed for…
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