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Machine learning and structural analysis of Mycobacterium tuberculosis pan-genome identifies genetic signatures of antibiotic resistance.

Authors :
Kavvas, Erol S
Kavvas, Erol S
Catoiu, Edward
Mih, Nathan
Yurkovich, James T
Seif, Yara
Dillon, Nicholas
Heckmann, David
Anand, Amitesh
Yang, Laurence
Nizet, Victor
Monk, Jonathan M
Palsson, Bernhard O
Kavvas, Erol S
Kavvas, Erol S
Catoiu, Edward
Mih, Nathan
Yurkovich, James T
Seif, Yara
Dillon, Nicholas
Heckmann, David
Anand, Amitesh
Yang, Laurence
Nizet, Victor
Monk, Jonathan M
Palsson, Bernhard O
Source :
Nature communications; vol 9, iss 1, 4306; 2041-1723
Publication Year :
2018

Abstract

Mycobacterium tuberculosis is a serious human pathogen threat exhibiting complex evolution of antimicrobial resistance (AMR). Accordingly, the many publicly available datasets describing its AMR characteristics demand disparate data-type analyses. Here, we develop a reference strain-agnostic computational platform that uses machine learning approaches, complemented by both genetic interaction analysis and 3D structural mutation-mapping, to identify signatures of AMR evolution to 13 antibiotics. This platform is applied to 1595 sequenced strains to yield four key results. First, a pan-genome analysis shows that M. tuberculosis is highly conserved with sequenced variation concentrated in PE/PPE/PGRS genes. Second, the platform corroborates 33 genes known to confer resistance and identifies 24 new genetic signatures of AMR. Third, 97 epistatic interactions across 10 resistance classes are revealed. Fourth, detailed structural analysis of these genes yields mechanistic bases for their selection. The platform can be used to study other human pathogens.

Details

Database :
OAIster
Journal :
Nature communications; vol 9, iss 1, 4306; 2041-1723
Notes :
application/pdf, Nature communications vol 9, iss 1, 4306 2041-1723
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367455313
Document Type :
Electronic Resource