A Review of Drug-related Associations Prediction Based on Artificial Intelligence Methods

被引:0
作者
Ma, Mei [1 ,2 ]
Lei, Xiujuan [1 ]
Zhang, Yuchen [1 ]
机构
[1] Shaanxi Normal Univ, Sch Comp Sci, 620 West Chang An Ave, Xian 710119, Peoples R China
[2] Qinghai Normal Univ, Sch Math & Stat, Xining, Qinghai, Peoples R China
基金
中国国家自然科学基金;
关键词
Drug-related associations prediction; similarity measurement; artificial intelligence; machine learning; deep learning; computational methods; mainstream public datasets; TARGET INTERACTION PREDICTION; GRAPH ATTENTION NETWORKS; SEMANTIC SIMILARITY; COMPUTATIONAL PREDICTION; GENE; INTEGRATION; IDENTIFICATION; DATABASE; DISCOVERY; CHEMISTRY;
D O I
10.2174/1574893618666230707123817
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background Predicting drug-related associations is an important task in drug development and discovery. With the rapid advancement of high-throughput technologies and various biological and medical data, artificial intelligence (AI), especially progress in machine learning (ML) and deep learning (DL), has paved a new way for the development of drug-related associations prediction. Many studies have been conducted in the literature to predict drug-related associations. This study looks at various computational methods used for drug-related associations prediction with the hope of getting a better insight into the computational methods used.Methods The various computational methods involved in drug-related associations prediction have been reviewed in this work. We have first summarized the drug, target, and disease-related mainstream public datasets. Then, we have discussed existing drug similarity, target similarity, and integrated similarity measurement approaches and grouped them according to their suitability. We have then comprehensively investigated drug-related associations and introduced relevant computational methods. Finally, we have briefly discussed the challenges involved in predicting drug-related associations.Results We discovered that quite a few studies have used implemented ML and DL approaches for drug-related associations prediction. The key challenges were well noted in constructing datasets with reasonable negative samples, extracting rich features, and developing powerful prediction models or ensemble strategies.Conclusion This review presents useful knowledge and future challenges on the subject matter with the hope of promoting further studies on predicting drug-related associations.
引用
收藏
页码:530 / 550
页数:21
相关论文
共 205 条
[1]   OMIM.org: Online Mendelian Inheritance in Man (OMIM®), an online catalog of human genes and genetic disorders [J].
Amberger, Joanna S. ;
Bocchini, Carol A. ;
Schiettecatte, Francois ;
Scott, Alan F. ;
Hamosh, Ada .
NUCLEIC ACIDS RESEARCH, 2015, 43 (D1) :D789-D798
[2]   Discovery and development of safe-in-man broad-spectrum antiviral agents [J].
Andersen, Petter I. ;
Ianevski, Aleksandr ;
Lysvand, Hilde ;
Vitkauskiene, Astra ;
Oksenych, Valentyn ;
Bjoras, Magnar ;
Telling, Kaidi ;
Lutsar, Irja ;
Dumpis, Uga ;
Irie, Yasuhiko ;
Tenson, Tanel ;
Kantele, Anu ;
Kainov, Denis E. .
INTERNATIONAL JOURNAL OF INFECTIOUS DISEASES, 2020, 93 :268-276
[3]  
[Anonymous], 2019, The Lancet, V393, P2275, DOI [10.1016/S0140-6736(19)31205-X, DOI 10.1016/S0140-6736(19)31205-X, 10.1016/s0140-6736(19)31205-x, DOI 10.1016/S0140-6736]
[4]   Gene Ontology: tool for the unification of biology [J].
Ashburner, M ;
Ball, CA ;
Blake, JA ;
Botstein, D ;
Butler, H ;
Cherry, JM ;
Davis, AP ;
Dolinski, K ;
Dwight, SS ;
Eppig, JT ;
Harris, MA ;
Hill, DP ;
Issel-Tarver, L ;
Kasarskis, A ;
Lewis, S ;
Matese, JC ;
Richardson, JE ;
Ringwald, M ;
Rubin, GM ;
Sherlock, G .
NATURE GENETICS, 2000, 25 (01) :25-29
[5]   An ensemble framework for clustering protein-protein interaction networks [J].
Asur, Sitaram ;
Ucar, Duygu ;
Parthasarathy, Srinivasan .
BIOINFORMATICS, 2007, 23 (13) :I29-I40
[6]   eDGAR: a database of Disease-Gene Associations with annotated Relationships among genes [J].
Babbi, Giulia ;
Martelli, Pier Luigi ;
Profiti, Giuseppe ;
Bovo, Samuele ;
Savojardo, Castrense ;
Casadio, Rita .
BMC GENOMICS, 2017, 18
[7]   Accurate prediction of protein structures and interactions using a three-track neural network [J].
Baek, Minkyung ;
DiMaio, Frank ;
Anishchenko, Ivan ;
Dauparas, Justas ;
Ovchinnikov, Sergey ;
Lee, Gyu Rie ;
Wang, Jue ;
Cong, Qian ;
Kinch, Lisa N. ;
Schaeffer, R. Dustin ;
Millan, Claudia ;
Park, Hahnbeom ;
Adams, Carson ;
Glassman, Caleb R. ;
DeGiovanni, Andy ;
Pereira, Jose H. ;
Rodrigues, Andria V. ;
van Dijk, Alberdina A. ;
Ebrecht, Ana C. ;
Opperman, Diederik J. ;
Sagmeister, Theo ;
Buhlheller, Christoph ;
Pavkov-Keller, Tea ;
Rathinaswamy, Manoj K. ;
Dalwadi, Udit ;
Yip, Calvin K. ;
Burke, John E. ;
Garcia, K. Christopher ;
Grishin, Nick V. ;
Adams, Paul D. ;
Read, Randy J. ;
Baker, David .
SCIENCE, 2021, 373 (6557) :871-+
[8]   Supervised prediction of drug-target interactions using bipartite local models [J].
Bleakley, Kevin ;
Yamanishi, Yoshihiro .
BIOINFORMATICS, 2009, 25 (18) :2397-2403
[9]   Drug repositioning based on the heterogeneous information fusion graph convolutional network [J].
Cai, Lijun ;
Lu, Changcheng ;
Xu, Junlin ;
Meng, Yajie ;
Wang, Peng ;
Fu, Xiangzheng ;
Zeng, Xiangxiang ;
Su, Yansen .
BRIEFINGS IN BIOINFORMATICS, 2021, 22 (06)
[10]   Side effect prediction based on drug-induced gene expression profiles and random forest with iterative feature selection [J].
Cakir, Arzu ;
Tuncer, Melisa ;
Taymaz-Nikerel, Hilal ;
Ulucan, Ozlem .
PHARMACOGENOMICS JOURNAL, 2021, 21 (06) :673-681