Literature DB >> 34731411

DeepStack-DTIs: Predicting Drug-Target Interactions Using LightGBM Feature Selection and Deep-Stacked Ensemble Classifier.

Yan Zhang1,2,3, Zhiwen Jiang2,3, Cheng Chen4, Qinqin Wei2,3, Haiming Gu2,3, Bin Yu5,6,7.   

Abstract

Accurate prediction of drug-target interactions (DTIs), which is often used in the fields of drug discovery and drug repositioning, is regarded a key challenge in the study of drug science. In this paper, a new method called DeepStack-DTIs is proposed to predict DTIs. First, for the target protein, pseudo-position specific score matrix, pseudo amino acid composition and SPIDER3 are used to extract the different feature information of the target protein. Meanwhile, the path-based fingerprint features of each drug are extracted. Then, the synthetic minority oversampling technique (SMOTE) and light gradient boosting machine (LightGBM) are used for data balancing and feature selection, respectively. Finally, the processed features are input to the deep-stacked ensemble classifier composed of gated recurrent unit (GRU), deep neural network (DNN), support vector machine (SVM), eXtreme gradient boosting (XGBoost) and logistic regression (LR) to predict DTIs. Under the five-fold cross-validation and compared with existing methods, the proposed method achieves higher prediction accuracy on the gold standard dataset. To evaluate the predictive power of DeepStack-DTIs, we validate the method on another dataset and predict the drug-target interaction network. The results indicate that DeepStack-DTIs has excellent predictive ability than the other methods, and provides novel insights for the prediction of DTIs. A novel method DeepStack-DTIs for drug-target interactions prediction. PsePSSM, PseAAC, SPIDER3 and FP2 are fused to convert protein sequence and drug molecule information into digital information, respectively. The SMOTE algorithm is used to balance the dataset and LightGBM feature selection algorithm is employed to remove redundant and irrelevant features to select the optimal feature subset. This optimal feature subset is inputted into the deep-stacked ensemble classifier to predict drug-target interactions. The experimental results show DeepStack-DTIs method can significantly improve the prediction accuracy of drug-target interactions.
© 2021. International Association of Scientists in the Interdisciplinary Areas.

Entities:  

Keywords:  Deep stacked ensemble classifier; Drug–target interactions; Feature extraction; LightGBM; SMOTE

Mesh:

Substances:

Year:  2021        PMID: 34731411     DOI: 10.1007/s12539-021-00488-7

Source DB:  PubMed          Journal:  Interdiscip Sci        ISSN: 1867-1462            Impact factor:   2.233


  62 in total

1.  Identifying drug-target interactions based on graph convolutional network and deep neural network.

Authors:  Tianyi Zhao; Yang Hu; Linda R Valsdottir; Tianyi Zang; Jiajie Peng
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2.  Multi-view self-attention for interpretable drug-target interaction prediction.

Authors:  Brighter Agyemang; Wei-Ping Wu; Michael Yelpengne Kpiebaareh; Zhihua Lei; Ebenezer Nanor; Lei Chen
Journal:  J Biomed Inform       Date:  2020-08-27       Impact factor: 6.317

3.  DTI-CDF: a cascade deep forest model towards the prediction of drug-target interactions based on hybrid features.

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Journal:  Brief Bioinform       Date:  2019-12-23       Impact factor: 11.622

Review 4.  Drug-target interaction prediction: databases, web servers and computational models.

Authors:  Xing Chen; Chenggang Clarence Yan; Xiaotian Zhang; Xu Zhang; Feng Dai; Jian Yin; Yongdong Zhang
Journal:  Brief Bioinform       Date:  2015-08-17       Impact factor: 11.622

Review 5.  In silico prediction of drug toxicity.

Authors:  John C Dearden
Journal:  J Comput Aided Mol Des       Date:  2003 Feb-Apr       Impact factor: 3.686

6.  BE-DTI': Ensemble framework for drug target interaction prediction using dimensionality reduction and active learning.

Authors:  Aman Sharma; Rinkle Rani
Journal:  Comput Methods Programs Biomed       Date:  2018-08-22       Impact factor: 5.428

7.  DrugE-Rank: improving drug-target interaction prediction of new candidate drugs or targets by ensemble learning to rank.

Authors:  Qingjun Yuan; Junning Gao; Dongliang Wu; Shihua Zhang; Hiroshi Mamitsuka; Shanfeng Zhu
Journal:  Bioinformatics       Date:  2016-06-15       Impact factor: 6.937

8.  A network integration approach for drug-target interaction prediction and computational drug repositioning from heterogeneous information.

Authors:  Yunan Luo; Xinbin Zhao; Jingtian Zhou; Jinglin Yang; Yanqing Zhang; Wenhua Kuang; Jian Peng; Ligong Chen; Jianyang Zeng
Journal:  Nat Commun       Date:  2017-09-18       Impact factor: 14.919

9.  DTiGEMS+: drug-target interaction prediction using graph embedding, graph mining, and similarity-based techniques.

Authors:  Maha A Thafar; Rawan S Olayan; Haitham Ashoor; Somayah Albaradei; Vladimir B Bajic; Xin Gao; Takashi Gojobori; Magbubah Essack
Journal:  J Cheminform       Date:  2020-06-29       Impact factor: 5.514

10.  Predicting drug-target interactions using restricted Boltzmann machines.

Authors:  Yuhao Wang; Jianyang Zeng
Journal:  Bioinformatics       Date:  2013-07-01       Impact factor: 6.937

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Authors:  Hirokazu Shimizu; Ken Enda; Tomohiro Shimizu; Yusuke Ishida; Hotaka Ishizu; Koki Ise; Shinya Tanaka; Norimasa Iwasaki
Journal:  J Clin Med       Date:  2022-04-05       Impact factor: 4.241

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