Literature DB >> 20835433

Analysis and hit filtering of a very large library of compounds screened against Mycobacterium tuberculosis.

Sean Ekins1, Takushi Kaneko2, Christopher A Lipinski3, Justin Bradford4, Krishna Dole4, Anna Spektor4, Kellan Gregory4, David Blondeau4, Sylvia Ernst4, Jeremy Yang5, Nicko Goncharoff6, Moses M Hohman4, Barry A Bunin4.   

Abstract

There is an urgent need for new drugs against tuberculosis which annually claims 1.7-1.8 million lives. One approach to identify potential leads is to screen in vitro small molecules against Mycobacterium tuberculosis (Mtb). Until recently there was no central repository to collect information on compounds screened. Consequently, it has been difficult to analyze molecular properties of compounds that inhibit the growth of Mtb in vitro. We have collected data from publically available sources on over 300 000 small molecules deposited in the Collaborative Drug Discovery TB Database. A cheminformatics analysis on these compounds indicates that inhibitors of the growth of Mtb have statistically higher mean logP, rule of 5 alerts, while also having lower HBD count, atom count and lower PSA (ChemAxon descriptors), compared to compounds that are classed as inactive. Additionally, Bayesian models for selecting Mtb active compounds were evaluated with over 100 000 compounds and, they demonstrated 10 fold enrichment over random for the top ranked 600 compounds. This represents a promising approach for finding compounds active against Mtb in whole cells screened under the same in vitro conditions. Various sets of Mtb hit molecules were also examined by various filtering rules used widely in the pharmaceutical industry to identify compounds with potentially reactive moieties. We found differences between the number of compounds flagged by these rules in Mtb datasets, malaria hits, FDA approved drugs and antibiotics. Combining these approaches may enable selection of compounds with increased probability of inhibition of whole cell Mtb activity.

Entities:  

Mesh:

Substances:

Year:  2010        PMID: 20835433     DOI: 10.1039/c0mb00104j

Source DB:  PubMed          Journal:  Mol Biosyst        ISSN: 1742-2051


  38 in total

1.  Finding promiscuous old drugs for new uses.

Authors:  Sean Ekins; Antony J Williams
Journal:  Pharm Res       Date:  2011-05-24       Impact factor: 4.200

2.  Combining cheminformatics methods and pathway analysis to identify molecules with whole-cell activity against Mycobacterium tuberculosis.

Authors:  Malabika Sarker; Carolyn Talcott; Peter Madrid; Sidharth Chopra; Barry A Bunin; Gyanu Lamichhane; Joel S Freundlich; Sean Ekins
Journal:  Pharm Res       Date:  2012-04-04       Impact factor: 4.200

3.  Bayesian models for screening and TB Mobile for target inference with Mycobacterium tuberculosis.

Authors:  Sean Ekins; Allen C Casey; David Roberts; Tanya Parish; Barry A Bunin
Journal:  Tuberculosis (Edinb)       Date:  2013-12-19       Impact factor: 3.131

Review 4.  Molecule Property Analyses of Active Compounds for Mycobacterium tuberculosis.

Authors:  Vadim Makarov; Elena Salina; Robert C Reynolds; Phyo Phyo Kyaw Zin; Sean Ekins
Journal:  J Med Chem       Date:  2020-04-20       Impact factor: 7.446

Review 5.  Computational databases, pathway and cheminformatics tools for tuberculosis drug discovery.

Authors:  Sean Ekins; Joel S Freundlich; Inhee Choi; Malabika Sarker; Carolyn Talcott
Journal:  Trends Microbiol       Date:  2010-12-02       Impact factor: 17.079

Review 6.  Collaborative drug discovery for More Medicines for Tuberculosis (MM4TB).

Authors:  Sean Ekins; Anna Coulon Spektor; Alex M Clark; Krishna Dole; Barry A Bunin
Journal:  Drug Discov Today       Date:  2016-11-22       Impact factor: 7.851

7.  Comparing and Validating Machine Learning Models for Mycobacterium tuberculosis Drug Discovery.

Authors:  Thomas Lane; Daniel P Russo; Kimberley M Zorn; Alex M Clark; Alexandru Korotcov; Valery Tkachenko; Robert C Reynolds; Alexander L Perryman; Joel S Freundlich; Sean Ekins
Journal:  Mol Pharm       Date:  2018-04-26       Impact factor: 4.939

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

Authors:  Alexandru Korotcov; Valery Tkachenko; Daniel P Russo; Sean Ekins
Journal:  Mol Pharm       Date:  2017-11-13       Impact factor: 4.939

9.  Bayesian models leveraging bioactivity and cytotoxicity information for drug discovery.

Authors:  Sean Ekins; Robert C Reynolds; Hiyun Kim; Mi-Sun Koo; Marilyn Ekonomidis; Meliza Talaue; Steve D Paget; Lisa K Woolhiser; Anne J Lenaerts; Barry A Bunin; Nancy Connell; Joel S Freundlich
Journal:  Chem Biol       Date:  2013-03-21

10.  Are bigger data sets better for machine learning? Fusing single-point and dual-event dose response data for Mycobacterium tuberculosis.

Authors:  Sean Ekins; Joel S Freundlich; Robert C Reynolds
Journal:  J Chem Inf Model       Date:  2014-07-17       Impact factor: 4.956

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.