| Literature DB >> 30351270 |
Philip W Fowler1,2, Ana Luíza Gibertoni Cruz2, Sarah J Hoosdally2, Lisa Jarrett3, Emanuele Borroni4, Matteo Chiacchiaretta4, Priti Rathod3, Sarah Lehmann5, Nikolay Molodtsov5, Timothy M Walker2,1, Esther Robinson3, Harald Hoffmann5, Timothy E A Peto2,6, Daniela Maria Cirillo4, Grace E Smith3, Derrick W Crook2,6.
Abstract
M. tuberculosis grows slowly and is challenging to work with experimentally compared with many other bacteria. Although microtitre plates have the potential to enable high-throughput phenotypic testing of M. tuberculosis, they can be difficult to read and interpret. Here we present a software package, the Automated Mycobacterial Growth Detection Algorithm (AMyGDA), that measures how much M. tuberculosis is growing in each well of a 96-well microtitre plate. The plate used here has serial dilutions of 14 anti-tuberculosis drugs, thereby permitting the MICs to be elucidated. The three participating laboratories each inoculated 38 96-well plates with 15 known M. tuberculosis strains (including the standard H37Rv reference strain) and, after 2 weeks' incubation, measured the MICs for all 14 drugs on each plate and took a photograph. By analysing the images, we demonstrate that AMyGDA is reproducible, and that the MICs measured are comparable to those measured by a laboratory scientist. The AMyGDA software will be used by the Comprehensive Resistance Prediction for Tuberculosis: an International Consortium (CRyPTIC) to measure the drug susceptibility profile of a large number (>30000) of samples of M. tuberculosis from patients over the next few years.Entities:
Keywords: Mycobacterium tuberculosis; antibiotic resistance; drug susceptibility testing; image processing; microtitre plates; tuberculosis
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Year: 2018 PMID: 30351270 DOI: 10.1099/mic.0.000733
Source DB: PubMed Journal: Microbiology (Reading) ISSN: 1350-0872 Impact factor: 2.777