Novel Computational Approach to Predict Off-Target Interactions for Small Molecules

被引:64
作者
Rao, Mohan S. [1 ]
Gupta, Rishi [2 ]
Liguori, Michael J. [1 ]
Hu, Mufeng [3 ]
Huang, Xin [3 ]
Mantena, Srinivasa R. [1 ]
Mittelstadt, Scott W. [1 ]
Blomme, Eric A. G. [1 ]
Van Vleet, Terry R. [1 ]
机构
[1] Abbvie, Global Preclin Safety, N Chicago, IL 60085 USA
[2] AbbVie, Informat Res, N Chicago, IL 60064 USA
[3] AbbVie, Discovery & Early Pipeline Stat, N Chicago, IL 60064 USA
来源
FRONTIERS IN BIG DATA | 2019年 / 2卷
关键词
Off-targets; machine learning; toxicology; pocket search; gene expression; secondary pharmacology; LIGAND-BASED APPROACH; DRUG DISCOVERY; IN-SILICO; WEB SERVER; PHARMACOLOGY; INTEGRATION; DOCKING; CLASSIFICATION; STRATEGIES; INHIBITOR;
D O I
10.3389/fdata.2019.00025
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Most small molecule drugs interact with unintended, often unknown, biological targets and these off-target interactions may lead to both preclinical and clinical toxic events. Undesired off-target interactions are often not detected using current drug discovery assays, such as experimental polypharmacological screens. Thus, improvement in the early identification of off-target interactions represents an opportunity to reduce safety-related attrition rates during preclinical and clinical development. In order to better identify potential off-target interactions that could be linked to predictable safety issues, a novel computational approach to predict safety-relevant interactions currently not covered was designed and evaluated. These analyses, termed Off-Target Safety Assessment (OTSA), cover more than 7,000 targets (similar to 35% of the proteome) and > 2,46,704 preclinical and clinical alerts (as of January 20, 2019). The approach described herein exploits a highly curated training set of >1 million compounds (tracking >20 million compound-structure activity relationship/SAR data points) with known in vitro activities derived from patents, journals, and publicly available databases. This computational process was used to predict both the primary and secondary pharmacological activities for a selection of 857 diverse small molecule drugs for which extensive secondary pharmacology data are readily available (456 discontinued and 401 FDA approved). The OTSA process predicted a total of 7,990 interactions for these 857molecules. Of these, 3,923 and 4,067 possible high-scoring interactions were predicted for the discontinued and approved drugs, respectively, translating to an average of 9.3 interactions per drug. The OTSA process correctly identified the known pharmacological targets for >70% of these drugs, but also predicted a significant number of off-targets that may provide additional insight into observed in vivo effects. About 51.5%(2,025) and 22%(900) of these predicted highscoring interactions have not previously been reported for the discontinued and approved drugs, respectively, and these may have a potential for repurposing efforts. Moreover, for both drug categories, higher promiscuity was observed for compounds with a MW range of 300 to 500, TPSA of similar to 200, and clogP >= 7. This computation also revealed significantly lower promiscuity (i.e., number of confirmed off-targets) for compounds with MW > 700 and MW <200 for both categories. In addition, 15 internal small molecules with known off-target interactions were evaluated. For these compounds, the OTSA framework not only captured about 56.8% of in vitro confirmed off-target interactions, but also identified the right pharmacological targets for 14 compounds as one of the top scoring targets. In conclusion, the OTSA process demonstrates good predictive performance characteristics and represents an additional tool with utility during the lead optimization stage of the drug discovery process. Additionally, the computed physiochemical properties such as clogP (i.e., lipophilicity), molecular weight, pKa and logS (i.e., solubility) were found to be statistically different between the approved and discontinued drugs, but the internal compounds were close to the approved drugs space in most part.
引用
收藏
页数:17
相关论文
共 76 条
[1]  
[Anonymous], 1970, Sel. Tables Math. Stat
[2]   Systems Pharmacology to Predict Drug Toxicity: Integration Across Levels of Biological Organization [J].
Bai, Jane P. F. ;
Abernethy, Darrell R. .
ANNUAL REVIEW OF PHARMACOLOGY AND TOXICOLOGY, VOL 53, 2013, 2013, 53 :451-473
[3]   Revealing promiscuous drug-target interactions by chemical proteomics [J].
Bantscheff, Marcus ;
Scholten, Arjen ;
Heck, Albert J. R. .
DRUG DISCOVERY TODAY, 2009, 14 (21-22) :1021-1029
[4]   Exploring G Protein-Coupled Receptors (GPCRs) Ligand Space via Cheminformatics Approaches: Impact on Rational Drug Design [J].
Basith, Shaherin ;
Cui, Minghua ;
Macalino, Stephani J. Y. ;
Park, Jongmi ;
Clavio, Nina A. B. ;
Kang, Soosung ;
Choi, Sun .
FRONTIERS IN PHARMACOLOGY, 2018, 9
[5]   Lack of efficacy of melanin-concentrating hormone-1 receptor antagonists in models of depression and anxiety [J].
Basso, Ana M. ;
Bratcher, Natalie A. ;
Gallagher, Kelly B. ;
Cowart, Marlon D. ;
Zhao, Chen ;
Sun, Minghua ;
Esbenshade, Timothy A. ;
Brune, Michael E. ;
Fox, Gerard B. ;
Schmidt, Martin ;
Collins, Christine A. ;
SouerS, Andrew J. ;
Iyengar, Rajesh ;
Vasudevan, Anil ;
Kyrn, Philip R. ;
Hancock, Arthur A. ;
Rueter, Lynne E. .
EUROPEAN JOURNAL OF PHARMACOLOGY, 2006, 540 (1-3) :115-120
[6]   CONTROLLING THE FALSE DISCOVERY RATE - A PRACTICAL AND POWERFUL APPROACH TO MULTIPLE TESTING [J].
BENJAMINI, Y ;
HOCHBERG, Y .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY, 1995, 57 (01) :289-300
[7]   Hit and lead generation:: Beyond high-throughput screening [J].
Bleicher, KH ;
Böhm, HJ ;
Müller, K ;
Alanine, AI .
NATURE REVIEWS DRUG DISCOVERY, 2003, 2 (05) :369-378
[8]   Toxicology Strategies for Drug Discovery: Present and Future [J].
Blomme, Eric A. G. ;
Will, Yvonne .
CHEMICAL RESEARCH IN TOXICOLOGY, 2016, 29 (04) :473-504
[9]  
Brown F.K., 1998, Annual Reports in Medicinal Chemistry, V33, P375, DOI [10.1016/s0065-7743(08)61100-8, DOI 10.1016/S0065-7743(08)61100-8]
[10]   Opinion - Drug-target residence time and its implications for lead optimization [J].
Copeland, Robert A. ;
Pompliano, David L. ;
Meek, Thomas D. .
NATURE REVIEWS DRUG DISCOVERY, 2006, 5 (09) :730-739