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학술대회 Computer Aided Breast Cancer Diagnosis System with Fuzzy Multiple-Parameter Support Vector Machine
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저자
백철우, Sung Shin, 손성호, 전순익
발행일
201510
출처
Research in Adaptive and Convergent Systems (RACS) 2015, pp.172-176
DOI
https://dx.doi.org/10.1145/2811411.2811504
협약과제
15MR2300, 전자파 이용 조기진단 고정밀 MT 시스템 개발, 전순익
초록
Computer Aided Diagnosis (CAD) system has been proven that it can be utilized as the secondary option for physicians for early breast cancer detection. A typical CAD system consists of several phases like image segmentation, feature extraction and selection, classification. Among those phases, the classification phase is one of the important phases that directly affect the performance of the entire system. Therefore the main issue is to enhance the classification phase to construct better decision-making procedure comparing to conventional classification phase by assigning enhanced logic. In this paper, we propose a Fuzzy Multipleparameter Support Vector Machine (SVM), which will be used in the CAD system. The proposed method uses fuzzy membership to tune up each training data points by assigning proper weight, corresponding to its feature, and adopts multiple parameters as a classifier for SVM, which further improves the machine-learning process to a more robust level. The experimental result shows that the proposed method is far more superior to the existing SVM in terms of performance, sensitivity and accuracy. Additionally, the result suggests for more sophisticated and complex approach to the current classification for CAD system.
KSP 제안 키워드
Breast Cancer(BC), Breast cancer detection, Breast cancer diagnosis, CAD system, Decision-making procedure, Diagnosis system, Early breast cancer, Experimental Result, Feature extraction and selection, Fuzzy Membership, Multiple parameters