Prediction drug-target interaction networks based on semi-supervised learning method
暂无分享,去创建一个
Tao Han | Yongsheng Ding | Quan Gu | Tong-Liang Zhang | Q. Gu | Yongsheng Ding | Tao Han | Tongliang Zhang
[1] K. Chou,et al. Predicting Drug-Target Interaction Networks Based on Functional Groups and Biological Features , 2010, PloS one.
[2] Yong-Sheng Ding,et al. Prediction of subcellular location apoptosis proteins with ensemble classifier and feature selection , 2010, Amino Acids.
[3] Ji Zhang,et al. Locally Embedding Autoencoders: A Semi-Supervised Manifold Learning Approach of Document Representation , 2016, PloS one.
[4] Xiaoyong Zou,et al. Prediction of protein secondary structure content by using the concept of Chou's pseudo amino acid composition and support vector machine. , 2009, Protein and peptide letters.
[5] Kuo-Chen Chou,et al. Structure of cytochrome p450s and personalized drug. , 2009, Current medicinal chemistry.
[6] Kuo-Chen Chou,et al. Identifying the hub proteins from complicated membrane protein network systems. , 2010, Medicinal chemistry (Shariqah (United Arab Emirates)).
[7] Tran Van Hoai,et al. A novel semi-supervised algorithm for the taxonomic assignment of metagenomic reads , 2016, BMC Bioinformatics.
[8] M. Kanehisa,et al. Development of a chemical structure comparison method for integrated analysis of chemical and genomic information in the metabolic pathways. , 2003, Journal of the American Chemical Society.
[9] Antonio Reverter,et al. PCIT: an R package for weighted gene co-expression networks based on partial correlation and information theory approaches , 2010, Bioinform..
[10] Kuo-Chen Chou,et al. QuatIdent: a web server for identifying protein quaternary structural attribute by fusing functional domain and sequential evolution information. , 2009, Journal of proteome research.
[11] Q Gu,et al. Prediction of G-protein-coupled receptor classes in low homology using Chou's pseudo amino acid composition with approximate entropy and hydrophobicity patterns. , 2010, Protein and peptide letters.
[12] Yoshihiro Yamanishi,et al. Prediction of drug–target interaction networks from the integration of chemical and genomic spaces , 2008, ISMB.
[13] Xiaobo Zhou,et al. Semi-supervised drug-protein interaction prediction from heterogeneous biological spaces , 2010, BMC Systems Biology.
[14] Jonathan Knowles,et al. A guide to drug discovery: Target selection in drug discovery , 2003, Nature Reviews Drug Discovery.
[15] Andrey Rzhetsky,et al. Quantitative systems-level determinants of human genes targeted by successful drugs. , 2008, Genome research.