Deep learning in drug discovery: an integrative review and future challenges

被引:147
作者
Askr, Heba [1 ]
Elgeldawi, Enas [2 ]
Ella, Heba Aboul [4 ]
Elshaier, Yaseen A. M. M. [5 ]
Gomaa, Mamdouh M. [2 ]
Hassanien, Aboul Ella [3 ]
机构
[1] Univ Sadat City, Fac Comp & Artificial Intelligence, Sadat City, Egypt
[2] Minia Univ, Fac Sci, Comp Sci Dept, Al Minya, Egypt
[3] Cairo Univ, Fac Comp & Artificial Intelligence, Cairo, Egypt
[4] Chinese Univ Egypt CUE, Fac Pharm & Drug Technol, Cairo, Egypt
[5] Univ Sadat City, Fac Pharm, Menoufia, Egypt
关键词
Drug discovery; Artificial intelligence; Deep learning; Drug-target interactions; Drug-drug similarity; Drug side-effects; Drug sensitivity and response; Drug dosing optimization; Explainable artificial intelligence; Digital twining; TARGET INTERACTION PREDICTION; DIGITAL TWIN; NEURAL-NETWORKS; ARTIFICIAL-INTELLIGENCE; CONNECTIVITY MAP; PRODUCT DESIGN; SIMILARITY; CELL; SYSTEMS; MODELS;
D O I
10.1007/s10462-022-10306-1
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Recently, using artificial intelligence (AI) in drug discovery has received much attention since it significantly shortens the time and cost of developing new drugs. Deep learning (DL)-based approaches are increasingly being used in all stages of drug development as DL technology advances, and drug-related data grows. Therefore, this paper presents a systematic Literature review (SLR) that integrates the recent DL technologies and applications in drug discovery Including, drug-target interactions (DTIs), drug-drug similarity interactions (DDIs), drug sensitivity and responsiveness, and drug-side effect predictions. We present a review of more than 300 articles between 2000 and 2022. The benchmark data sets, the databases, and the evaluation measures are also presented. In addition, this paper provides an overview of how explainable AI (XAI) supports drug discovery problems. The drug dosing optimization and success stories are discussed as well. Finally, digital twining (DT) and open issues are suggested as future research challenges for drug discovery problems. Challenges to be addressed, future research directions are identified, and an extensive bibliography is also included.
引用
收藏
页码:5975 / 6037
页数:63
相关论文
共 316 条
[41]  
Chauhan R, 2018, 2018 FIRST INTERNATIONAL CONFERENCE ON SECURE CYBER COMPUTING AND COMMUNICATIONS (ICSCCC 2018), P278, DOI 10.1109/ICSCCC.2018.8703316
[42]  
Chen A W., Int J Community Med Public Health, DOI [DOI 10.18203/2394-6040.IJCMPH20180744, 10.18203/2394-6040.ijcmph20180744]
[43]   HAPPI: an online database of comprehensive human annotated and predicted protein interactions [J].
Chen, Jake Yue ;
Mamidipalli, SudhaRani ;
Huan, Tianxiao .
BMC GENOMICS, 2009, 10
[44]   Drug-target interaction prediction by random walk on the heterogeneous network [J].
Chen, Xing ;
Liu, Ming-Xi ;
Yan, Gui-Ying .
MOLECULAR BIOSYSTEMS, 2012, 8 (07) :1970-1978
[45]   Digital Twins in Pharmaceutical and Biopharmaceutical Manufacturing: A Literature Review [J].
Chen, Yingjie ;
Yang, Ou ;
Sampat, Chaitanya ;
Bhalode, Pooja ;
Ramachandran, Rohit ;
Ierapetritou, Marianthi .
PROCESSES, 2020, 8 (09)
[46]   Network-based prediction of drug combinations [J].
Cheng, Feixiong ;
Kovacs, Istvan A. ;
Barabasi, Albert-Laszlo .
NATURE COMMUNICATIONS, 2019, 10 (1)
[47]   Predicting drug response of tumors from integrated genomic profiles by deep neural networks [J].
Chiu, Yu-Chiao ;
Chen, Hung-I Harry ;
Zhang, Tinghe ;
Zhang, Songyao ;
Gorthi, Aparna ;
Wang, Li-Ju ;
Huang, Yufei ;
Chen, Yidong .
BMC MEDICAL GENOMICS, 2019, 12 (Suppl 1)
[48]  
Chu X, 2018, Arxiv, DOI arXiv:1811.00208
[49]  
Chu X, 2019, PROCEEDINGS OF THE TWENTY-EIGHTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, P4518
[50]   Advancing Computational Toxicology in the Big Data Era by Artificial Intelligence: Data-Driven and Mechanism-Driven Modeling for Chemical Toxicity [J].
Ciallella, Heather L. ;
Zhu, Hao .
CHEMICAL RESEARCH IN TOXICOLOGY, 2019, 32 (04) :536-547