Splicing sites prediction of human genome using machine learning techniques

被引:0
作者
Waseem Ullah
Khan Muhammad
Ijaz Ul Haq
Amin Ullah
Saeed Ullah Khattak
Muhammad Sajjad
机构
[1] Sejong University,Intelligent Media Laboratory
[2] Sejong University,Visual Analytics for Knowledge Laboratory, Department of Software
[3] University of Peshawar,Centre of Biotechnology and Microbiology
[4] Islamia College Peshawar,Department of Computer Science
来源
Multimedia Tools and Applications | 2021年 / 80卷
关键词
Biomedical data; Big data analysis; Computer-aided diagnosis; Genomics; Machine learning; Pattern recognition; Splicing sites;
D O I
暂无
中图分类号
学科分类号
摘要
The accurate splice site prediction has several applications in the field of medical sciences and biochemistry. For instance, any mutation affecting the splice site will lead to genetic diseases and cancer such as Lynch syndrome and breast cancer. For this purpose, collecting the Ribonucleic Acid (RNA) samples is an efficient and convenient method to detect the involvement of splicing defects in disease formation. Therefore, the present study aims to develop an accurate and robust Computer-Aided Diagnosis (CAD) method for swift and precise targeting of splice site sequences. A composite features-based model is proposed by integrating three different sample representation methods i.e., Dinucleotide Composition (DNC), Trinucleotide Composition (TNC) and Tetranucleotide Composition (TetraNC) for precise splice site prediction after converting the DNA sequences into numerical descriptors. The precision and accuracy of these features are analyzed by applying different machine learning algorithms such as Support Vector Machine (SVM), K-Nearest Neighbor (KNN) and Naïve Bayes (NB). Results show that the proposed model of composite features vector with SVM classifier achieved an accuracy of 95.20% and 97.50% for donor and acceptor sites datasets, respectively.
引用
收藏
页码:30439 / 30460
页数:21
相关论文
共 270 条
  • [1] Ali F(2016)Machine learning approaches for discrimination of extracellular matrix proteins using hybrid feature space J Theor Biol 403 30-37
  • [2] Hayat M(2017)DeepCpG: accurate prediction of single-cell DNA methylation states using deep learning Genome Biol 18 67-94
  • [3] Angermueller C(1997)Prediction of complete gene structures in human genomic DNA1 J Mol Biol 268 78-52
  • [4] Lee HJ(2014)Functional architecture of the cell's nucleus in development, aging, and disease Curr Top Dev Biol 109 1-3263
  • [5] Reik W(2003)Support vector machines for predicting membrane protein types by using functional domain composition Biophys J 84 3257-962
  • [6] Stegle O(2013)Propy: a tool to generate various modes of Chou’s PseAAC Bioinformatics 29 960-3571
  • [7] Burge C(2003)ESEfinder: a web resource to identify exonic splicing enhancers Nucleic Acids Res 31 3568-e68
  • [8] Karlin S(2013)iRSpot-PseDNC: identify recombination spots with pseudo dinucleotide composition Nucleic Acids Res 41 e68-623149
  • [9] Burke B(2014)iSS-PseDNC: identifying splicing sites using pseudo dinucleotide composition Biomed Res Int 2014 623149-120
  • [10] Stewart CL(2014)PseKNC-general: a cross-platform package for generating various modes of pseudo nucleotide compositions Bioinformatics 31 119-83