Comparison of Deep Learning With Multiple Machine Learning Methods and Metrics Using Diverse Drug Discovery Data Sets

被引:234
作者
Korotcov, Alexandru [1 ]
Tkachenko, Valery [1 ]
Russo, Daniel P. [2 ,3 ]
Ekins, Sean [2 ]
机构
[1] Sci Data Software LLC, 14914 Bradwill Court, Rockville, MD 20850 USA
[2] Collaborat Pharmaceut Inc, 840 Main Campus Dr,Lab 3510, Raleigh, NC 27606 USA
[3] Rutgers Ctr Computat & Integrat Biol, Camden, NJ 08102 USA
关键词
deep learning; drug discovery; machine learning; pharmaceutics; support vector machine; IN-SILICO PHARMACOLOGY; ADMET EVALUATION; METABOLIC STABILITY; DISTRIBUTION VALUES; AQUEOUS SOLUBILITY; PREDICTION MODELS; SYSTEMS-ADME/TOX; NEURAL-NETWORKS; BAYESIAN MODELS; BASIC DRUGS;
D O I
10.1021/acs.molpharmaceut.7b00578
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
Machine learning methods have been applied to many data sets in pharmaceutical research for several decades. The relative ease and availability of fingerprint type molecular descriptors paired with Bayesian methods resulted in the widespread use of this approach for a diverse array of end points relevant to drug discovery. Deep learning is the latest machine learning algorithm attracting attention for many of pharmaceutical applications from docking to virtual screening. Deep learning is based on an artificial neural network with multiple hidden layers and has found considerable traction for many artificial intelligence applications. We have previously suggested the need for a comparison of different machine learning methods with deep learning across an array of varying data sets that is applicable to pharmaceutical research. End points relevant to pharmaceutical research include absorption, distribution, metabolism, excretion, and toxicity (ADME/Tox) properties, as well as activity against pathogens and drug discovery data sets. In this study, we have used data sets for solubility, probe-likeness, hERG, KCNQ1, bubonic plague, Chagas, tuberculosis, and malaria to compare different machine learning methods using FCFP6 fingerprints. These data sets represent whole cell screens, individual proteins, physicochemical properties as well as a data set with a complex end point. Our aim was to assess whether deep learning offered any improvement in testing when assessed using an array of metrics including AUC, F1 score, Cohens kappa, Matthews correlation coefficient and others. Based on ranked normalized scores for the metrics or data sets Deep Neural Networks (DNN) ranked higher than SVM, which in turn was ranked higher than all the other machine learning methods. Visualizing these properties for training and test sets using radar type plots indicates when models are inferior or perhaps over trained. These results also suggest the need for assessing deep learning further using multiple metrics with much larger scale comparisons, prospective testing as well as assessment of different fingerprints and DNN architectures beyond those used.
引用
收藏
页码:4462 / 4475
页数:14
相关论文
共 121 条
[11]  
Balakin Konstantin V, 2005, Curr Drug Discov Technol, V2, P99, DOI 10.2174/1570163054064666
[12]   A renaissance of neural networks in drug discovery [J].
Baskin, Igor I. ;
Winkler, David ;
Tetko, Igor V. .
EXPERT OPINION ON DRUG DISCOVERY, 2016, 11 (08) :785-795
[13]   Analysis of pharmacology data and the prediction of adverse drug reactions and off-target effects from chemical structure [J].
Bender, Andreas ;
Scheiber, Josef ;
Glick, Meir ;
Davies, John W. ;
Azzaoui, Kamal ;
Hamon, Jacques ;
Urban, Laszlo ;
Whitebread, Steven ;
Jenkins, Jeremy L. .
CHEMMEDCHEM, 2007, 2 (06) :861-873
[14]   Experimental and computational screening models for prediction of aqueous drug solubility [J].
Bergström, CAS ;
Norinder, U ;
Luthman, K ;
Artursson, P .
PHARMACEUTICAL RESEARCH, 2002, 19 (02) :182-188
[15]  
Campbell C, 2003, SIGKDD EXPLOR NEWSL, V2, P1, DOI [10.1145/380995.380999, DOI 10.1145/380995.380999]
[16]   TopologyNet: Topology based deep convolutional and multi-task neural networks for biomolecular property predictions [J].
Cang, Zixuan ;
Wei, Guowei .
PLOS COMPUTATIONAL BIOLOGY, 2017, 13 (07)
[17]   QSAR Modeling of Tox21 Challenge Stress Response and Nuclear Receptor Signaling Toxicity Assays [J].
Capuzzi, Stephen J. ;
Politi, Regina ;
Isayev, Olexandr ;
Farag, Sherif ;
Tropsha, Alexander .
FRONTIERS IN ENVIRONMENTAL SCIENCE, 2016, 4
[18]  
Carletta J, 1996, COMPUT LINGUIST, V22, P249
[19]  
Caruana R., 2006, P 23 INT C MACH LEAR, P161, DOI DOI 10.1145/1143844.1143865
[20]  
Chang C., 2006, PHARMACOPHORES PHARM, P299