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The Proposal of Segmentation Algorithm for the Applying Breast Ultrasound Image to CAD  

Koo, Lock-Jo (Department of Industrial Engineering Ajou University)
Jung, In-Sung (Department of Industrial & Information Systems Engineering Ajou University)
Bea, Jea-Ho (EIB Korea)
Choi, Sung-Wook (Department of Industrial Engineering Ajou University)
Park, Hee-Boong (Park breast Clinic)
Wang, Gi-Nam (Department of Industrial & Information Systems Engineering Ajou University)
Publication Information
IE interfaces / v.21, no.4, 2008 , pp. 394-402 More about this Journal
Abstract
The objective of this paper is to design segmentation algorithm for applying the breast ultrasound image to CAD(Computer Aided Diagnosis). This study is conducted after understanding limits, used algorithm and demands of CAD system by interviewing with a medical doctor and analyzing related works based on a general CAD framework that is consisted of five step-establishment of plan, analysis of needs, design, implementation and test & maintenance. Detection function of CAD is accomplished by Canny algorithm and arithmetic operations for segmentation. In addition to, long computing time is solved by extracting ROI (Region Of Interests) and applying segmentation technical methods based morphology algorithm. Overall course of study is conducted by verification of medical doctor. And validity and verification are satisfied by medical doctor's confirmation. Moreover, manual segmentation of related works, restrictions on the number of tumor and dependency of image resolution etc. was solved. This study is utilized as a support system aided doctors' subjective diagnosis even though a lot of future studies is needed for entire application of CAD system.
Keywords
CAD(Computer Aided Diagnosis); Segmentation; Breast ultrasound image;
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Times Cited By KSCI : 1  (Citation Analysis)
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