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Publication Detail
Assessment of a technique for 2D-3D registration of cerebral intra-arterial angiography
  • Publication Type:
    Journal article
  • Publication Sub Type:
    Article
  • Authors:
    Byrne JV, Colominas C, Hipwell J, Cox T, Noble JA, Penney GP, Hawkes DJ
  • Publication date:
    02/2004
  • Pagination:
    123, 128
  • Journal:
    BR J RADIOL
  • Volume:
    77
  • Issue:
    007-1285 (Print), 914
  • Keywords:
    Algorithms, Aneurysm, Angiography, Cerebral Angiography, Humans, Image Processing, Computer-Assisted, Intracranial Aneurysm, methods, radiography, Reproducibility of Results, Sensitivity and Specificity, standards, surgery
  • Addresses:
    Department of Neuroradiology, Nuffield Department of Surgery, University of Oxford, Radcliffe Infirmary, Woodstock Road, Oxford OX2 6HE, UK
  • Notes:
    DA - 20040310
Abstract
This study assesses the ability of a computer algorithm to perform automated 2D-3D registrations of digitally subtracted cerebral angiograms. The technique was tested on clinical studies of five patients with intracranial aneurysms. The automated procedure was compared against a gold standard manual registration, and achieved a mean registration accuracy of 1.3 mm (SD 0.6 mm). Two registration strategies were tested using coarse (128 x 128 pixel) or fine (256 x 256 pixel) images. The mean registration errors proved similar but registration of the lower resolution images was 3 times quicker (mean registration times 33 s, SD 13 s for low and 150 s SD 48 s for high resolution images). The automated techniques were considerably faster than manual registrations but achieved similar accuracy. The technique has several potential uses but is particularly applicable to endovascular treatment techniques
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