Literature DB >> 33879050

AutoDTI++: deep unsupervised learning for DTI prediction by autoencoders.

Seyedeh Zahra Sajadi1, Mohammad Ali Zare Chahooki2, Sajjad Gharaghani3, Karim Abbasi3.   

Abstract

BACKGROUND: Drug-target interaction (DTI) plays a vital role in drug discovery. Identifying drug-target interactions related to wet-lab experiments are costly, laborious, and time-consuming. Therefore, computational methods to predict drug-target interactions are an essential task in the drug discovery process. Meanwhile, computational methods can reduce search space by proposing potential drugs already validated on wet-lab experiments. Recently, deep learning-based methods in drug-target interaction prediction have gotten more attention. Traditionally, DTI prediction methods' performance heavily depends on additional information, such as protein sequence and molecular structure of the drug, as well as deep supervised learning.
RESULTS: This paper proposes a method based on deep unsupervised learning for drug-target interaction prediction called AutoDTI++. The proposed method includes three steps. The first step is to pre-process the interaction matrix. Since the interaction matrix is sparse, we solved the sparsity of the interaction matrix with drug fingerprints. Then, in the second step, the AutoDTI approach is introduced. In the third step, we post-preprocess the output of the AutoDTI model.
CONCLUSIONS: Experimental results have shown that we were able to improve the prediction performance. To this end, the proposed method has been compared to other algorithms using the same reference datasets. The proposed method indicates that the experimental results of running five repetitions of tenfold cross-validation on golden standard datasets (Nuclear Receptors, GPCRs, Ion channels, and Enzymes) achieve good performance with high accuracy.

Entities:  

Keywords:  Deep learning; Denoising autoencoder; Drug-target interactions; Latent feature; Unsupervised learning

Year:  2021        PMID: 33879050     DOI: 10.1186/s12859-021-04127-2

Source DB:  PubMed          Journal:  BMC Bioinformatics        ISSN: 1471-2105            Impact factor:   3.169


  31 in total

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Authors:  Xing Chen; Ming-Xi Liu; Gui-Ying Yan
Journal:  Mol Biosyst       Date:  2012-04-26

Review 2.  Docking and scoring in virtual screening for drug discovery: methods and applications.

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Journal:  Nat Rev Drug Discov       Date:  2004-11       Impact factor: 84.694

Review 3.  Similarity-based machine learning methods for predicting drug-target interactions: a brief review.

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Journal:  Brief Bioinform       Date:  2013-08-11       Impact factor: 11.622

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Review 5.  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

6.  Protein-ligand interaction prediction: an improved chemogenomics approach.

Authors:  Laurent Jacob; Jean-Philippe Vert
Journal:  Bioinformatics       Date:  2008-08-01       Impact factor: 6.937

7.  DeepConv-DTI: Prediction of drug-target interactions via deep learning with convolution on protein sequences.

Authors:  Ingoo Lee; Jongsoo Keum; Hojung Nam
Journal:  PLoS Comput Biol       Date:  2019-06-14       Impact factor: 4.475

8.  DTI-SNNFRA: Drug-target interaction prediction by shared nearest neighbors and fuzzy-rough approximation.

Authors:  Sk Mazharul Islam; Sk Md Mosaddek Hossain; Sumanta Ray
Journal:  PLoS One       Date:  2021-02-19       Impact factor: 3.240

9.  Prediction of drug-target interaction networks from the integration of chemical and genomic spaces.

Authors:  Yoshihiro Yamanishi; Michihiro Araki; Alex Gutteridge; Wataru Honda; Minoru Kanehisa
Journal:  Bioinformatics       Date:  2008-07-01       Impact factor: 6.937

Review 10.  Machine learning approaches and databases for prediction of drug-target interaction: a survey paper.

Authors:  Maryam Bagherian; Elyas Sabeti; Kai Wang; Maureen A Sartor; Zaneta Nikolovska-Coleska; Kayvan Najarian
Journal:  Brief Bioinform       Date:  2021-01-18       Impact factor: 11.622

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  5 in total

1.  Matrix factorization with denoising autoencoders for prediction of drug-target interactions.

Authors:  Seyedeh Zahra Sajadi; Mohammad Ali Zare Chahooki; Maryam Tavakol; Sajjad Gharaghani
Journal:  Mol Divers       Date:  2022-07-23       Impact factor: 3.364

2.  Multi-Objective Drug Design Based on Graph-Fragment Molecular Representation and Deep Evolutionary Learning.

Authors:  Muhetaer Mukaidaisi; Andrew Vu; Karl Grantham; Alain Tchagang; Yifeng Li
Journal:  Front Pharmacol       Date:  2022-07-04       Impact factor: 5.988

3.  OptNCMiner: a deep learning approach for the discovery of natural compounds modulating disease-specific multi-targets.

Authors:  Seo Hyun Shin; Seung Man Oh; Jung Han Yoon Park; Ki Won Lee; Hee Yang
Journal:  BMC Bioinformatics       Date:  2022-06-07       Impact factor: 3.307

Review 4.  A brief review of protein-ligand interaction prediction.

Authors:  Lingling Zhao; Yan Zhu; Junjie Wang; Naifeng Wen; Chunyu Wang; Liang Cheng
Journal:  Comput Struct Biotechnol J       Date:  2022-06-03       Impact factor: 6.155

5.  Bipartite graph search optimization for type II diabetes mellitus Jamu formulation using branch and bound algorithm.

Authors:  Wisnu Ananta Kusuma; Zulfahmi Ibnu Habibi; Muhammad Fahmi Amir; Aulia Fadli; Husnul Khotimah; Vektor Dewanto; Rudi Heryanto
Journal:  Front Pharmacol       Date:  2022-08-11       Impact factor: 5.988

  5 in total

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