Computational Databases, Pathway and Cheminformatics Tools for Tuberculosis Drug Discovery

Citation

Ekins S1, Freundlich JS, Choi I, Sarker M, Talcott C., “Computational databases, pathway and cheminformatics tools for tuberculosis drug discovery.” Trends Microbiology. 2011 Feb;19(2):65-74. doi: 10.1016/j.tim.2010.10.005. Epub 2010 Dec 2.

Abstract

We are witnessing the growing menace of both increasing cases of drug-sensitive and drug-resistant Mycobacterium tuberculosis strains and the challenge to produce the first new tuberculosis (TB) drug in well over 40 years. The TB community, having invested in extensive high-throughput screening efforts, is faced with the question of how to optimally leverage these data to move from a hit to a lead to a clinical candidate and potentially, a new drug. Complementing this approach, yet conducted on a much smaller scale, cheminformatic techniques have been leveraged and are examined in this review. We suggest that these computational approaches should be optimally integrated within a workflow with experimental approaches to accelerate TB drug discovery.


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