CWLy-pred: A novel cell wall lytic enzyme identifier based on an improved MRMD feature selection method.
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Benzhi Dong | Lei Xu | Fei Guo | Jin Wu | Chaolu Meng
[1] Yann LeCun,et al. Measuring the VC-Dimension of a Learning Machine , 1994, Neural Computation.
[2] J L Sussman,et al. Protein Data Bank (PDB): database of three-dimensional structural information of biological macromolecules. , 1998, Acta crystallographica. Section D, Biological crystallography.
[3] Marti J. Anderson,et al. A new method for non-parametric multivariate analysis of variance in ecology , 2001 .
[4] Charu C. Aggarwal,et al. On the Surprising Behavior of Distance Metrics in High Dimensional Spaces , 2001, ICDT.
[5] T. Ezaki,et al. Lytic enzyme, labiase for a broad range of Gram-positive bacteria and its application to analyze functional DNA/RNA. , 2005, Journal of microbiological methods.
[6] Fuhui Long,et al. Feature selection based on mutual information criteria of max-dependency, max-relevance, and min-redundancy , 2003, IEEE Transactions on Pattern Analysis and Machine Intelligence.
[7] D. Kerr,et al. Engineering Disease Resistant Cattle , 2005, Transgenic Research.
[8] J. Asenjo,et al. Enzymatic lysis of microbial cells , 2007, Biotechnology Letters.
[9] Jack Y. Yang,et al. Transcription factor and microRNA regulation in androgen-dependent and -independent prostate cancer cells , 2008, BMC Genomics.
[10] M. Ueda,et al. Isolation of bacteria which produce yeast cell wall-lytic enzymes and their characterization. , 2008, Biocontrol science.
[11] Yadong Wang,et al. Signal Transducers and Activators of Transcription-1 (STAT1) Regulates microRNA Transcription in Interferon γ-Stimulated HeLa Cells , 2010, PloS one.
[12] Chih-Jen Lin,et al. LIBSVM: A library for support vector machines , 2011, TIST.
[13] Zhengwei Zhu,et al. CD-HIT: accelerated for clustering the next-generation sequencing data , 2012, Bioinform..
[14] Wei Chen,et al. Naïve Bayes Classifier with Feature Selection to Identify Phage Virion Proteins , 2013, Comput. Math. Methods Medicine.
[15] Yadong Wang,et al. Predicting human microRNA-disease associations based on support vector machine , 2013, Int. J. Data Min. Bioinform..
[16] Xing Gao,et al. Enhanced Protein Fold Prediction Method Through a Novel Feature Extraction Technique , 2015, IEEE Transactions on NanoBioscience.
[17] Shaoping Wu,et al. Mycobacterium tuberculosis Secreted Proteins As Potential Biomarkers for the Diagnosis of Active Tuberculosis and Latent Tuberculosis Infection , 2014, Journal of clinical laboratory analysis.
[18] Q. Zou,et al. A novel machine learning method for cytokine-receptor interaction prediction. , 2016, Combinatorial chemistry & high throughput screening.
[19] Ying Ju,et al. Pretata: predicting TATA binding proteins with novel features and dimensionality reduction strategy , 2016, BMC Systems Biology.
[20] Q. Zou,et al. Similarity computation strategies in the microRNA-disease network: a survey. , 2015, Briefings in functional genomics.
[21] Hua Tang,et al. Identification of Bacterial Cell Wall Lyases via Pseudo Amino Acid Composition , 2016, BioMed research international.
[22] Gabriel del Rio,et al. Effective Design of Multifunctional Peptides by Combining Compatible Functions , 2016, PLoS Comput. Biol..
[23] Jijun Tang,et al. Identification of Protein–Protein Interactions via a Novel Matrix-Based Sequence Representation Model with Amino Acid Contact Information , 2016, International journal of molecular sciences.
[24] Liujuan Cao,et al. A novel features ranking metric with application to scalable visual and bioinformatics data classification , 2016, Neurocomputing.
[25] K. Chou,et al. iACP: a sequence-based tool for identifying anticancer peptides , 2016, Oncotarget.
[26] L. Cavaş,et al. Neural Network Modeling of AChE Inhibition by New Carbazole-Bearing Oxazolones , 2017, Interdisciplinary Sciences: Computational Life Sciences.
[27] Fei Guo,et al. Improved prediction of protein-protein interactions using novel negative samples, features, and an ensemble classifier , 2017, Artif. Intell. Medicine.
[28] Jijun Tang,et al. Identification of drug-target interactions via multiple information integration , 2017, Inf. Sci..
[29] Xiangxiang Zeng,et al. Prediction and Validation of Disease Genes Using HeteSim Scores , 2017, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[30] Leyi Wei,et al. A novel hierarchical selective ensemble classifier with bioinformatics application , 2017, Artif. Intell. Medicine.
[31] F. Wang,et al. Methods of MicroRNA Promoter Prediction and Transcription Factor Mediated Regulatory Network , 2017, BioMed research international.
[32] Rong Chen,et al. HBPred: a tool to identify growth hormone-binding proteins , 2018, International journal of biological sciences.
[33] Guangmin Liang,et al. SeqSVM: A Sequence-Based Support Vector Machine Method for Identifying Antioxidant Proteins , 2018, International journal of molecular sciences.
[34] Fu-Ying Dao,et al. Identifying Phage Virion Proteins by Using Two-Step Feature Selection Methods , 2018, Molecules.
[35] Yadong Wang,et al. MeDReaders: a database for transcription factors that bind to methylated DNA , 2017, Nucleic Acids Res..
[36] Guangmin Liang,et al. An Efficient Classifier for Alzheimer’s Disease Genes Identification , 2018, Molecules.
[37] Jiangning Song,et al. ACPred-FL: a sequence-based predictor using effective feature representation to improve the prediction of anti-cancer peptides , 2018, Bioinform..
[38] Guangmin Liang,et al. A Novel Hybrid Sequence-Based Model for Identifying Anticancer Peptides , 2018, Genes.
[39] Fei Guo,et al. AOPs-SVM: A Sequence-Based Classifier of Antioxidant Proteins Using a Support Vector Machine , 2019, Front. Bioeng. Biotechnol..
[40] Minghui Wang,et al. SGL-SVM: a novel method for tumor classification via support vector machine with sparse group Lasso. , 2019, Journal of theoretical biology.
[41] Xiaofeng Liu,et al. Developing a Multi-Dose Computational Model for Drug-Induced Hepatotoxicity Prediction Based on Toxicogenomics Data , 2019, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[42] Guangmin Liang,et al. k-Skip-n-Gram-RF: A Random Forest Based Method for Alzheimer's Disease Protein Identification , 2019, Front. Genet..
[43] Gaotao Shi,et al. Fast Prediction of Protein Methylation Sites Using a Sequence-Based Feature Selection Technique , 2019, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[44] Dong-Qing Wei,et al. Prediction of CYP450 Enzyme-Substrate Selectivity Based on the Network-Based Label Space Division Method , 2019, J. Chem. Inf. Model..
[45] Alfonso Rodríguez-Patón,et al. Meta-Path Methods for Prioritizing Candidate Disease miRNAs , 2019, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[46] Bin Liu,et al. A Review on the Recent Developments of Sequence-based Protein Feature Extraction Methods , 2019, Current Bioinformatics.
[47] Xiangrong Liu,et al. deepDR: a network-based deep learning approach to in silico drug repositioning , 2019, Bioinform..
[48] Jijun Tang,et al. Identification of drug-side effect association via multiple information integration with centered kernel alignment , 2019, Neurocomputing.
[49] Han Zhang,et al. BioSeq-Analysis2.0: an updated platform for analyzing DNA, RNA and protein sequences at sequence level and residue level based on machine learning approaches , 2019, Nucleic acids research.
[50] Nilanjan Dey,et al. Morphological Segmentation Analysis and Texture-based Support Vector Machines Classification on Mice Liver Fibrosis Microscopic Images , 2019, Current Bioinformatics.
[51] Xiaoying Wang,et al. Protein-protein interaction sites prediction by ensemble random forests with synthetic minority oversampling technique , 2018, Bioinform..
[52] Jiu-Xin Tan,et al. Identification of hormone binding proteins based on machine learning methods. , 2019, Mathematical biosciences and engineering : MBE.
[53] Wei Chen,et al. iProEP: A Computational Predictor for Predicting Promoter , 2019, Molecular therapy. Nucleic acids.
[54] Usha Chouhan,et al. Relevance of Machine Learning Techniques and Various Protein Features in Protein Fold Classification: A Review , 2019 .
[55] Xiangxiang Zeng,et al. MOEA/HD: A Multiobjective Evolutionary Algorithm Based on Hierarchical Decomposition , 2019, IEEE Transactions on Cybernetics.
[56] Dong-Qing Wei,et al. SPVec: A Word2vec-Inspired Feature Representation Method for Drug-Target Interaction Prediction , 2020, Frontiers in Chemistry.
[57] Wei Chen,et al. Predicting protein structural classes for low-similarity sequences by evaluating different features , 2019, Knowl. Based Syst..
[58] Jian Huang,et al. A Brief Survey of Machine Learning Methods in Protein Sub-Golgi Localization , 2019, Current Bioinformatics.
[59] Qinghua Guo,et al. LncRNA2Target v2.0: a comprehensive database for target genes of lncRNAs in human and mouse , 2018, Nucleic Acids Res..
[60] Quan Zou,et al. SecProMTB: Support Vector Machine‐Based Classifier for Secretory Proteins Using Imbalanced Data Sets Applied to Mycobacterium tuberculosis , 2019, Proteomics.
[61] Lei Xu,et al. A Computational Method for the Identification of Endolysins and Autolysins. , 2019, Protein and peptide letters.
[62] Bin Liu,et al. BioSeq-Analysis: a platform for DNA, RNA and protein sequence analysis based on machine learning approaches , 2019, Briefings Bioinform..
[63] Xiangxiang Zeng,et al. A novel molecular representation with BiGRU neural networks for learning atom , 2019, Briefings Bioinform..
[64] Qin Ma,et al. CirRNAPL: A web server for the identification of circRNA based on extreme learning machine , 2020, Computational and structural biotechnology journal.
[65] Zongyu Wang,et al. Identification of Highest-Affinity Binding Sites of Yeast Transcription Factor Families , 2020, J. Chem. Inf. Model..
[66] Jijun Tang,et al. DeepAVP: A Dual-Channel Deep Neural Network for Identifying Variable-Length Antiviral Peptides , 2020, IEEE Journal of Biomedical and Health Informatics.
[67] Jiangning Song,et al. Comparative analysis and prediction of quorum-sensing peptides using feature representation learning and machine learning algorithms , 2018, Briefings Bioinform..
[68] Fei Guo,et al. Critical evaluation of web-based prediction tools for human protein subcellular localization , 2019, Briefings Bioinform..
[69] Hui Yang,et al. iDNA-MS: An Integrated Computational Tool for Detecting DNA Modification Sites in Multiple Genomes , 2020, iScience.
[70] Xiangrong Liu,et al. Identifying enhancer-promoter interactions with neural network based on pre-trained DNA vectors and attention mechanism , 2019, Bioinform..
[71] Hao Wang,et al. Identification of membrane protein types via multivariate information fusion with Hilbert-Schmidt Independence Criterion , 2020, Neurocomputing.
[72] Fei Guo,et al. Review and comparative analysis of machine learning-based phage virion protein identification methods. , 2020, Biochimica et biophysica acta. Proteins and proteomics.
[73] Ying Zhang,et al. PSBP-SVM: A Machine Learning-Based Computational Identifier for Predicting Polystyrene Binding Peptides , 2020, Frontiers in Bioengineering and Biotechnology.
[74] Bin Liu,et al. DeepSVM-fold: protein fold recognition by combining support vector machines and pairwise sequence similarity scores generated by deep learning networks , 2019, Briefings Bioinform..
[75] Xiangxiang Zeng,et al. StackCPPred: a stacking and pairwise energy content-based prediction of cell-penetrating peptides and their uptake efficiency , 2020, Bioinform..
[76] Shan Huang,et al. ECFS-DEA: an ensemble classifier-based feature selection for differential expression analysis on expression profiles , 2020, BMC Bioinformatics.
[77] Xingpeng Jiang,et al. Sequence clustering in bioinformatics: an empirical study. , 2018, Briefings in bioinformatics.
[78] Bin Liu,et al. FoldRec-C2C: protein fold recognition by combining cluster-to-cluster model and protein similarity network , 2020, Briefings Bioinform..
[79] Jianan Wang,et al. CHTKC: a robust and efficient k-mer counting algorithm based on a lock-free chaining hash table , 2020, Briefings Bioinform..
[80] Wei Chen,et al. Design powerful predictor for mRNA subcellular location prediction in Homo sapiens , 2020, Briefings Bioinform..