Transfer learning on physics-informed neural networks for tracking the hemodynamics in the evolving false lumen of dissected aorta
Mitchell Daneker(Yale University), Lu Lu(Yale University), Shengze Cai(ZheJiang Institute For Food and Drug Control), He Li(University of Georgia), Ying Qian(University of Georgia), Eric Myzelev(University of Pennsylvania), Arsh Kumbhat(ETH Zurich)
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