Remote protein homology detection has been widely used as a part of the analysis of protein structure and function. In this study, the good quality of protein feature vectors is the main aspect to detect remote protein homology; as it will assist discriminative classifier model to discriminate all the proteins into homologue or non-homologue members precisely. In order for the protein feature vectors to be characterized as having good quality, the feature vectors must contain high protein structural similarity information and are represented in low dimension which is free from any contaminated data. In this study, the contaminated data which originates from protein dataset was investigated. This contaminated data may prevent remote protein homology detection framework to produce the best representation of high protein structural similarity information in order to detect the homology of proteins. To reduce the contaminated data and extract high protein structural similarity information, some research has been done on the extraction of protein feature vectors and protein similarity. The extraction of protein feature vectors of good quality is believed could assist in getting better result for remote protein homology detection. Where, the good quality of protein feature vectors containing the useful protein similarity information and represent in low dimension will be used to identify protein family precisely by discriminative classifier model. Referring to this factor, a method which combines Protein Substring Scoring (PSS) and Pairwise Protein Substring Alignment (PPSA) from sequence comparison model, chi-square and Singular Value Decomposition (SVD) from generative model, and Support Vector Machine (SVM) as discriminative classifier model is introduced.
목차
Abstract 1. Introduction 2. Methods 3. Dataset 4. Sequence Comparison Model 4.1. Protein Substrings 4.2. Pairwise Protein Substring Alignment 5. Generative Model 5.1. Protein Words 5.2. Protein Pattern Blocks 5.3. Chi-square 5.4. Singular Values Decomposition 6. Discriminative Classifier Model 6.1. Support Vector Machines 7. Results and Discussion 8. Conclusion References
키워드
Remote Protein Homology DetectionProtein Substring ScoringPairwise Protein Substring AlignmentLatent Semantic AnalysisSupport Vector Machines.
저자
Surayati Ismail [ Laboratory of Computational Intelligence and Biotechnology, Universiti Teknologi Malaysia ]
Razib M. Othman [ Laboratory of Computational Intelligence and Biotechnology, Universiti Teknologi Malaysia ]
Corresponding author
Shahreen Kasim [ Department of Web Technology, Faculty of Computer Science and Information Technology, Universiti Tun Hussein ]
Rohayanti Hassan [ Laboratory of Computational Intelligence and Biotechnology, Universiti Teknologi Malaysia ]
Hishammuddin Asmuni [ Laboratory of Computational Intelligence and Biotechnology, Universiti Teknologi Malaysia ]
Jumail Taliba [ Laboratory of Computational Intelligence and Biotechnology, Universiti Teknologi Malaysia ]
보안공학연구지원센터(IJBSBT) [Science & Engineering Research Support Center, Republic of Korea(IJBSBT)]
설립연도
2006
분야
공학>컴퓨터학
소개
1. 보안공학에 대한 각종 조사 및 연구
2. 보안공학에 대한 응용기술 연구 및 발표
3. 보안공학에 관한 각종 학술 발표회 및 전시회 개최
4. 보안공학 기술의 상호 협조 및 정보교환
5. 보안공학에 관한 표준화 사업 및 규격의 제정
6. 보안공학에 관한 산학연 협동의 증진
7. 국제적 학술 교류 및 기술 협력
8. 보안공학에 관한 논문지 발간
9. 기타 본 회 목적 달성에 필요한 사업
간행물
간행물명
International Journal of Bio-Science and Bio-Technology
간기
격월간
pISSN
2233-7849
수록기간
2009~2016
등재여부
SCOPUS
십진분류
KDC 505DDC 605
이 권호 내 다른 논문 / International Journal of Bio-Science and Bio-Technology Vol.3 No.3