Artificial intelligence velocimetry reveals in vivo flow rates, pressure gradients, and shear stresses in murine perivascular flows
Kimberly A. Stevens(University of Rochester), Douglas H. Kelley(University of Rochester), John H. Thomas(University of Rochester), Ting Du(Dana-Farber Cancer Institute), Antonio Ladrón-de-Guevara(University of Rochester Medical Center), Maiken Nedergaard(University of Rochester Medical Center), Jiatong Sun(University of Rochester), George Em Karniadakis(John Brown University), Xiaoning Zheng(Jinan University), Shengze Cai(ZheJiang Institute For Food and Drug Control)
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