TY - JOUR
T1 - TP-MV
T2 - Therapeutic Peptides Prediction by Multi-view Learning
AU - Yan, Ke
AU - Lv, Hongwu
AU - Wen, Jie
AU - Guo, Yichen
AU - Liu, Bin
N1 - Publisher Copyright:
© 2022 Bentham Science Publishers.
PY - 2022/2
Y1 - 2022/2
N2 - Background:Therapeutic peptide prediction is critical for drug development and therapy. Researchers have been studying this essential task, developing several computational methods to identify different therapeutic peptide types. Objective: Most predictors are the specific methods for certain peptides. Currently, developing methods to predict the presence of multiple peptides remains a challenging problem. Moreover, it is still challenging to combine different features to make the therapeutic prediction. Methods: In this paper, we proposed a new ensemble method TP-MV for general therapeutic peptide recognition. TP-MV is developed using the stacking framework in conjunction with the KNN, SVM, ET, RF, and XGB. Then TP-MV constructs a multi-view learning model as meta-classifiers to extract the discriminative feature for different peptides. Results: In the experiment, the proposed method outperforms the other existing methods on the bench-mark datasets, indicating that the proposed method has the ability to predict multiple therapeutic peptides simultaneously. Conclusion: The TP-MV is a useful tool for predicting therapeutic peptides.
AB - Background:Therapeutic peptide prediction is critical for drug development and therapy. Researchers have been studying this essential task, developing several computational methods to identify different therapeutic peptide types. Objective: Most predictors are the specific methods for certain peptides. Currently, developing methods to predict the presence of multiple peptides remains a challenging problem. Moreover, it is still challenging to combine different features to make the therapeutic prediction. Methods: In this paper, we proposed a new ensemble method TP-MV for general therapeutic peptide recognition. TP-MV is developed using the stacking framework in conjunction with the KNN, SVM, ET, RF, and XGB. Then TP-MV constructs a multi-view learning model as meta-classifiers to extract the discriminative feature for different peptides. Results: In the experiment, the proposed method outperforms the other existing methods on the bench-mark datasets, indicating that the proposed method has the ability to predict multiple therapeutic peptides simultaneously. Conclusion: The TP-MV is a useful tool for predicting therapeutic peptides.
KW - AAC
KW - Therapeutic peptide recognition
KW - ensemble learning
KW - multi-view learning method
KW - sequence analy-sis
KW - stacking method
UR - http://www.scopus.com/inward/record.url?scp=85127542957&partnerID=8YFLogxK
U2 - 10.2174/1574893617666211220153429
DO - 10.2174/1574893617666211220153429
M3 - Article
AN - SCOPUS:85127542957
SN - 1574-8936
VL - 17
SP - 174
EP - 183
JO - Current Bioinformatics
JF - Current Bioinformatics
IS - 2
ER -