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논문 기본 정보

자료유형
학술저널
저자정보
Vasily Sachnev (The Catholic University of Korea) Sundaram Suresh (Nanyang Technological University)
저널정보
Korean Institute of Information Scientists and Engineers Journal of Computing Science and Engineering Journal of Computing Science and Engineering Vol.10 No.4
발행연도
2016.12
수록면
111 - 117 (7page)

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초록· 키워드

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An accurate approach for diagnosis of attention deficit hyperactivity disorder (ADHD) is presented in this paper. The presented technique efficiently classifies three subtypes of ADHD (ADHD-C, ADHD-H, ADHD-I) and typically developing control (TDC) by using only structural magnetic resonance imaging (MRI). The research examines structural MRI of the hippocampus from the ADHD-200 database. Each available MRI has been processed by a region-of-interest (ROI) to build a set of features for further analysis. The presented ADHD diagnostic approach unifies feature selection and classification techniques. The feature selection technique based on the proposed binary-coded genetic algorithm searches for an optimal subset of features extracted from the hippocampus. The classification technique uses a chosen optimal subset of features for accurate classification of three subtypes of ADHD and TDC. In this study, the famous Extreme Learning Machine is used as a classification technique. Experimental results clearly indicate that the presented BCGA-ELM (binary-coded genetic algorithm coupled with Extreme Learning Machine) efficiently classifies TDC and three subtypes of ADHD and outperforms existing techniques.

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Abstract
I. INTRODUCTION
II. ADHD-200
III. PROPOSED BCGA-ELM APPROACH FOR ADHD DIAGNOSIS
IV. EXPERIMENTAL RESULTS
V. CONCLUSION
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UCI(KEPA) : I410-ECN-0101-2017-569-002020774