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A hierarchical two-phase framework for selecting genes in cancer datasets with a neuro-fuzzy system

Authors
Lim, JongwooWang, BohyunLim, Joon S.
Issue Date
2016
Publisher
IOS PRESS
Keywords
Microarray data; feature selection; neuro network fuzzy algorithm
Citation
TECHNOLOGY AND HEALTH CARE, v.24, pp.S601 - S605
Journal Title
TECHNOLOGY AND HEALTH CARE
Volume
24
Start Page
S601
End Page
S605
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/9738
DOI
10.3233/THC-161187
ISSN
0928-7329
Abstract
Finding the minimum number of appropriate biomarkers for specific targets such as a lung cancer has been a challenging issue in bioinformatics. We propose a hierarchical two-phase framework for selecting appropriate biomarkers that extracts candidate biomarkers from the cancer microarray datasets and then selects the minimum number of appropriate biomarkers from the extracted candidate biomarkers datasets with a specific neuro-fuzzy algorithm, which is called a neural network with weighted fuzzy membership function (NEWFM). In this context, as the first phase, the proposed framework is to extract candidate biomarkers by using a Bhattacharyya distance method that measures the similarity of two discrete probability distributions. Finally, the proposed framework is able to reduce the cost of finding biomarkers by not receiving medical supplements and improve the accuracy of the biomarkers in specific cancer target datasets.
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Lim, Joon Shik
College of IT Convergence (컴퓨터공학부(컴퓨터공학전공))
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