Prediction of Hemodynamic-Related Hemolysis in Carotid Stenosis and Aiding in Treatment Planning and Risk Stratification Using Computational Fluid Dynamics
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Ł. Makowski | W. Orciuch | K. Wojtas | P. Piasecki | Marek Wierzbicki | J. Narloch | Krystian Jędrzejczak | Michał Kozłowski
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