Image analysis – Applications – Biomedical applications
Reexamination Certificate
2011-02-22
2011-02-22
Ahmed, Samir A (Department: 2624)
Image analysis
Applications
Biomedical applications
C348S065000, C600S101000
Reexamination Certificate
active
07894648
ABSTRACT:
A computer-based method that allows automated measurement of a number of metrics that likely reflect the quality of a colonoscopic procedure. The method is based on analysis of a digitized video file created during colonoscopy, and produces information regarding insertion time, withdrawal time, images at the time of maximal intubation, the time and ratio of clear versus blurred or non-informative images, and a first estimate of effort performed by the endoscopist. As these metrics can be obtained automatically, the method allows future quality control in the day-to-day medical practice setting on a large scale. In addition, the method can be adapted to other healthcare procedures. The method may be useful to assess progress during colonoscopy training, or as part of endoscopic skills assessment evaluations.
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De Groen Piet C.
Oh Jung-hwan
Tavanapong Wallapak
Wong Johnny
Ahmed Samir A
Board of Regents , The University of Texas System
Faegre & Benson LLP
Hu Fred
Iowa State University & Research Foundation, Inc.
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