Ieee Transactions on Visualization and Computer Graphics 1 Blood Flow Clustering and Applications in Virtual Stenting of Intracranial Aneurysms
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Bernhard Preim | Gábor Janiga | Dirk J. Lehmann | Holger Theisel | Steffen Oeltze-Jafra | Alexander Kuhn | G. Janiga | S. Oeltze | H. Theisel | B. Preim | S. Oeltze-Jafra | A. Kuhn | D. Lehmann | G. Abor Janiga
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