Back to Search Start Over

In silico-based high-throughput screen for discovery of novel combinations for tuberculosis treatment.

Authors :
Singh R
Ramachandran V
Shandil R
Sharma S
Khandelwal S
Karmarkar M
Kumar N
Solapure S
Saralaya R
Nanduri R
Panduga V
Reddy J
Prabhakar KR
Rajagopalan S
Rao N
Narayanan S
Anandkumar A
Balasubramanian V
Datta S
Source :
Antimicrobial agents and chemotherapy [Antimicrob Agents Chemother] 2015 Sep; Vol. 59 (9), pp. 5664-74. Date of Electronic Publication: 2015 Jul 06.
Publication Year :
2015

Abstract

There are currently 18 drug classes for the treatment of tuberculosis, including those in the development pipeline. An in silico simulation enabled combing the innumerably large search space to derive multidrug combinations. Through the use of ordinary differential equations (ODE), we constructed an in silico kinetic platform in which the major metabolic pathways in Mycobacterium tuberculosis and the mechanisms of the antituberculosis drugs were integrated into a virtual proteome. The optimized model was used to evaluate 816 triplets from the set of 18 drugs. The experimentally derived cumulative fractional inhibitory concentration (∑FIC) value was within twofold of the model prediction. Bacterial enumeration revealed that a significant number of combinations that were synergistic for growth inhibition were also synergistic for bactericidal effect. The in silico-based screen provided new starting points for testing in a mouse model of tuberculosis, in which two novel triplets and five novel quartets were significantly superior to the reference drug triplet of isoniazid, rifampin, and ethambutol (HRE) or the quartet of HRE plus pyrazinamide (HREZ).<br /> (Copyright © 2015, Singh et al.)

Details

Language :
English
ISSN :
1098-6596
Volume :
59
Issue :
9
Database :
MEDLINE
Journal :
Antimicrobial agents and chemotherapy
Publication Type :
Academic Journal
Accession number :
26149995
Full Text :
https://doi.org/10.1128/AAC.05148-14