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  • Coert Metz, Stefan Klein, Michiel Schaap, Theo van Walsum, Wiro J. Niessen
  • Computer Science, Medicine
  • Medical Image Anal.
  • 2011 (First Publication: 1 April 2011)
  • A registration method for motion estimation in dynamic medical imaging data is proposed. Registration is performed directly on the dynamic image, thus avoiding a bias towards a specifically chosenExpand
  • M. Schaap, C. Metz, +27 authors W. Niessen
  • Computer Science, Mathematics, Medicine
  • Medical Image Anal.
  • 2009 (First Publication: 1 October 2009)
  • Efficiently obtaining a reliable coronary artery centerline from computed tomography angiography data is relevant in clinical practice. Whereas numerous methods have been presented for this purpose,Expand
  • H. Kirisli, M. Schaap, +35 authors T. V. Walsum
  • Computer Science, Medicine
  • Medical Image Anal.
  • 2013 (First Publication: 1 December 2013)
  • Though conventional coronary angiography (CCA) has been the standard of reference for diagnosing coronary artery disease in the past decades, computed tomography angiography (CTA) has rapidlyExpand
  • Nora Baka, Coert Metz, Carl J. Schultz, Robert Jan van Geuns, Wiro J. Niessen, Theo van Walsum
  • Computer Science, Mathematics, Medicine
  • IEEE Transactions on Medical Imaging
  • 2014 (First Publication: 14 January 2014)
  • 2D/3D registration of patient vasculature from preinterventional computed tomography angiography (CTA) to interventional X-ray angiography is of interest to improve guidance in percutaneous coronaryExpand
  • Michiel Schaap, Theo van Walsum, +4 authors Wiro J. Niessen
  • Mathematics, Computer Science, Medicine
  • IEEE Transactions on Medical Imaging
  • 2011 (First Publication: 23 June 2011)
  • This paper presents a vessel segmentation method which learns the geometry and appearance of vessels in medical images from annotated data and uses this knowledge to segment vessels in unseen images.Expand