Abstract

SummaryBackgroundMycobacterium tuberculosis whole genome sequencing (WGS) data can provide insights into temporal and geographical trends in resistance acquisition and inform public health interventions. We aimed to use a large clinical collection of M tuberculosis WGS and resistance phenotype data to study how, when, and where resistance was acquired on a global scale.MethodsWe did a retrospective analysis of WGS data. We curated a set of clinical M tuberculosis isolates with high-quality sequencing and culture-based drug susceptibility data (spanning four lineages and 52 countries in Africa, Asia, the Americas, and Europe) using public databases and literature curation. For inclusion, sequence quality criteria and country of origin data were required. We constructed geographical and lineage specific M tuberculosis phylogenies and used Bayesian molecular dating with BEAST, version 1.10.4, to infer the most recent common susceptible ancestor age for 4869 instances of resistance to ten drugs.FindingsBetween Jan 1, 1987, and Sept 12, 2014, of 10 299 M tuberculosis clinical isolates, 8550 were curated, of which 6099 (71%) from 15 countries met criteria for molecular dating. The number of independent resistance acquisition events was lower than the number of resistant isolates across all countries, suggesting ongoing transmission of drug resistance. Ancestral age distributions supported the presence of old resistance, 20 years or more before, in most countries. A consistent order of resistance acquisition was observed globally starting with resistance to isoniazid, but resistance ancestral age varied by country. We found a direct correlation between gross domestic product per capita and resistance age (r2=0·47; p=0·014). Amplification of fluoroquinolone and second-line injectable resistance among multidrug-resistant isolates is estimated to have occurred very recently (median ancestral age 4·7 years [IQR 1·9–9·8] before sample collection). We found the sensitivity of commercial molecular diagnostics for second-line resistance to vary significantly by country (p<0·0003).InterpretationOur results highlight that both resistance transmission and amplification are contributing to disease burden globally but vary by country. The observation that wealthier nations are more likely to have old resistance (most recent common susceptible ancestor >20 years before isolation) suggests that programmatic improvements can reduce resistance amplification, but that fit resistant strains can circulate for decades subsequently implies the need for continued surveillance.

Highlights

  • The global epidemic of tuberculosis is responsible for more deaths than any other infection due to a single pathogen.[1]

  • We aimed to use a large clinical collection of M tuberculosis whole genome sequencing (WGS) and resistance phenotype data to study how, when, and where resistance was acquired on a global scale

  • Study design We did a retrospective analysis of WGS data, in which we curated a set of clinical M tuberculosis isolates with highquality sequencing and culture-based drug susceptibility data

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Summary

Introduction

The global epidemic of tuberculosis is responsible for more deaths than any other infection due to a single pathogen.[1] The emergence of multidrug-resistant and extensively drug-resistant tuberculosis presents a major obstacle to efforts to accelerate tuberculosis decline. Halting the transmission of drug-resistant tuberculosis has been a major focus of studies addressing the emergence of drug-resistant tuberculosis.[2] But the epidemic is defined by local factors that remain understudied in many parts of the world.[3] The study of geographical and temporal heterogeneity of the drug-resistant tuberculosis epidemic can provide insights into these local factors as key drivers of multidrug-resistant tuberculosis prevalence and persistence in the community, including programmatic and bacterial factors This understanding is key to future disease control and prevention of antibiotic resistance development

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