| Literature DB >> 28424085 |
Andrej Trauner1,2, Qingyun Liu3,4, Laura E Via5,6, Xin Liu7, Xianglin Ruan7, Lili Liang7, Huimin Shi7, Ying Chen7, Ziling Wang7, Ruixia Liang7, Wei Zhang7, Wang Wei7, Jingcai Gao4, Gang Sun3,4, Daniela Brites1,2, Kathleen England5, Guolong Zhang8,9, Sebastien Gagneux10,11, Clifton E Barry12,13, Qian Gao14,15.
Abstract
BACKGROUND: Combination therapy is one of the most effective tools for limiting the emergence of drug resistance in pathogens. Despite the widespread adoption of combination therapy across diseases, drug resistance rates continue to rise, leading to failing treatment regimens. The mechanisms underlying treatment failure are well studied, but the processes governing successful combination therapy are poorly understood. We address this question by studying the population dynamics of Mycobacterium tuberculosis within tuberculosis patients undergoing treatment with different combinations of antibiotics.Entities:
Keywords: Combination therapy; Drug resistance; Tuberculosis; Whole genome sequencing; Within-host evolution
Mesh:
Substances:
Year: 2017 PMID: 28424085 PMCID: PMC5395877 DOI: 10.1186/s13059-017-1196-0
Source DB: PubMed Journal: Genome Biol ISSN: 1474-7596 Impact factor: 13.583
Fig. 1Characteristics of the study population. Our study was based on serial sputum isolates obtained from 12 TB patients at 2-week intervals. We obtained three sputum samples at each time point and cultured each on Löwenstein–Jenssen solid medium (L-J) or in a mycobacterial growth indicator tube (MGIT); we chose one culture per patient per time point for deep sequencing. Eight patients (P01–P08) were treated with a combination composed of at least four effective antibiotics (sampling indicated by red circles). While four patients (P09–P12) were treated with fewer than four effective antibiotics (grey circles). Phenotypic drug susceptibility testing (Phenotypic DST) and genotypic drug susceptibility testing (Genotypic DST) results are shown for each patient with light blue dots indicating drug susceptibility (DS) and red dots reflecting drug resistance (DR). The antibiotics are abbreviated as: RIF rifampicin, INH isoniazid, EMB ethambutol, STR streptomycin, INJ injectable aminoglycosides, FQ fluoroquinolones, PZA pyrazinamide. Resistance profiles of strains are given as: DS drug susceptible, INH-R isoniazid monoresistant, MDR multidrug resistant, P-XDR pre-extensively drug resistant, XDR extensively drug resistant. MDR is defined as RIF and INH resistant, XDR is MDR with additional resistance to FQ and INJ, and P-XDR is MDR with either FQ or INJ resistance
Fig. 2Sputum samples under-represent the true genetic diversity of MTBC populations in the lung. We sequenced three samples from the enrollment time point of patient 12 and compared the detected population heterogeneity. a Mean frequency of detected v-SNPs across samples. Four v-SNPs affecting Rv0678 (mmpR) and ten v-SNPs affecting Rv3696c (glpK) are marked with red lines. b Detection pattern of v-SNPs across the three sputum samples. v-SNPs were classified as recurrent if they were detected in at least one sputum sample from a later time point. c Temporal detection pattern for listed v-SNPs across sputum samples isolated from patient 12 2, 4, 6, and 8 weeks post-enrollment. d Patterns of v-SNP temporal dynamics detected across all patients. One trajectory per type is highlighted for illustration purposes
Fig. 3Structure of MTBC populations in TB patients. a Folded site frequency spectrum: a histogram of estimated variable allele frequencies within MTBC populations in TB patients. Cumulative distributions of allele frequencies for all variable SNPs (v-SNPs) are shown in black—80% of all the v-SNPs are present at an estimated frequency of less than 20% (dotted line). The corresponding distributions for v-SNPs that were detected in sputa from a single time point (unstable, yellow) or from multiple time points (recurrent, blue) are also shown. The observed distribution of alleles could arise from b a dominant clone of MTBC colonizing the lung and minor genetic variants continuously emerging from it which are selected against by purifying selection. Alternatively, c a large number of physically separated populations each produce minor variants. In this setting selection would be less efficient and population dynamics would be driven by genetic drift
Fig. 4Allele dynamics in patients are congruent with purifying selection acting on MTBC populations treated with an efficacious drug combination. a We framed the allele dynamics within patients as a Markov process where alleles are either detected (D) or not detected (ND). We estimated each transition probability by re-sampling (N = 1000) the data with replacement. We stratified the SNPs by treatment efficacy experienced by the population and translational impact. The estimated transition probabilities for all alleles separated by translational impact showing the 95% confidence interval for b all v-SNPs in efficaciously treated patients (red symbols), c all v-SNPs in non-efficaciously treated patients (dark gray symbols). NSY nonsynonymous, SYN synonymous
Fig. 5Efficacious treatment leads to a predominance of purifying selection of MTBC populations. a The proportion of nonsynonymous to synonymous mutations (pNS) for observed fixed SNPs in each patient (N = 12). We used computer simulation to estimate the outcome of mutating the same codons as were affected in patients but under a neutral scenario of genetic drift. b pNS calculated for each efficaciously treated patient at each time point (N = 30) with the corresponding neutral estimate. Patients given efficacious treatment show a pNS that is lower than expected in the absence of selection. c pNS calculated for each non-efficaciously treated patient at each time point (N = 21) with the corresponding neutral estimate. Patients given non-efficacious treatment do not show a significant decrease of pNS when compared to the expectation of no selection. All reported p values were calculated with the Mann Whitney U-test comparing the observed pNS to a simulated result generated using the assumption of genetic drift. n.s. not significant
Fig. 6Emergence of fluoroquinolone resistance in patient 10 is driven by selection and modulated by clonal interference. The trajectory of estimated allele frequencies for two independent v-SNPs in gyrA: alanine 90 to valine (GyrAAla90Val, yellow dots) and aspartate 94 to glycine (GyrAAsp94Gly, blue dots)
Excessive mutation of MTBC gene sets that are likely targets of positive selection
| 4+ effective drugs | <4 effective drugs | ||||
|---|---|---|---|---|---|
| Gene set | Na | Excessive mutationb | Excess NSYc | Excessive mutation | Excess NSY |
| Drug resistanced | 13 | 0/100 (0.501) | 0/0 (1.000) | 5/87 (0.001) | 5/5 (0.177) |
| Drug resistance associatede,f | 166 | 10/100 (0.545) | 4/10 (0.987) | 6/87 (0.946) | 6/6 (0.121) |
| Mycolate superpathwayg | 54 | 3/100 (0.881) | 1/3 (0.964) | 5/87 (0.229) | 3/5 (0.876) |
| MTBC T-cell antigensh | 300 | 14/100 (0.153) | 10/14 (0.426) | 6/87 (0.550) | 6/6 (0.121) |
aNumber of genes in the gene set
bProportion of mutations in gene set, p value calculated with a one-sided binomial test
cProportion of NSY mutations in gene set, p value calculated with a one-sided binomial test
d[73]
e[38]
f[39]
g[55]
h[74]