Influence Of Cannula Angle For Cardiopulmonary Bypass Using Computational Fluid Dynamics

  • Gionata Fragomeni 
  • Department of Medical and Surgical Sciences Magna Graecia University, Campus “S. Venuta”, Catanzaro, 88100, ITALY
Cite as
Fragomeni G.  (2021). Influence Of Cannula Angle For Cardiopulmonary Bypass Using Computational Fluid Dynamics. Proceedings of the 10th International Workshop on Innovative Simulation for Healthcare (IWISH 2021), pp. 7-10. DOI: https://doi.org/10.46354/i3m.2021.iwish.002

Abstract

Effects of perfusion during extracorporeal circulation with different angle of arterial cannulae on aortic hemodynamics were assessed using a patient-specific Computational fluid dynamics (CFD). Three different models were made, based on the angle of the cannula from 0° to 30° and the effects on the hemodynamics were studied.

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