Reliable Liver Fibrosis Assessment from Ultrasound using Global Hetero-Image Fusion and View-Specific Parameterization
Dec 25, 2020
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
Yuankai Huo
Assistant Professor of Computer Science, Electrical and Computer Engineering
My research interests include large-scale medical computer vision, data science, and machine learning.
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