| Literature DB >> 35073862 |
Malancha Karmakar1,2,3, Romain Ragonnet4, David B Ascher1,2, James M Trauer4, Justin T Denholm5,6.
Abstract
BACKGROUND: Antimicrobial resistance develops following the accrual of mutations in the bacterial genome, and may variably impact organism fitness and hence, transmission risk. Classical representation of tuberculosis (TB) dynamics using a single or two strain (DS/MDR-TB) model typically does not capture elements of this important aspect of TB epidemiology. To understand and estimate the likelihood of resistance spreading in high drug-resistant TB incidence settings, we used epidemiological data to develop a mathematical model of Mycobacterium tuberculosis (Mtb) transmission.Entities:
Keywords: Drug resistant tuberculosis; Epidemiological modelling; Fitness cost; Resistance amplification; Tuberculosis transmission dynamics
Mesh:
Substances:
Year: 2022 PMID: 35073862 PMCID: PMC8785585 DOI: 10.1186/s12879-022-07067-1
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Fig. 1Structure of four strain Mtb transmission model. The symbols S, LA, LB, I and R represent uninfected/susceptible, early latent, late latent, infected and recovered health states, respectively. The subscript “X” used in LA and LB compartments and other parameters, indexes the drug resistance patterns, with S, H, R and M representing susceptible, isoniazid mono-resistance, rifampicin mono-resistance and multidrug resistance respectively. The infectious compartment is elaborated in the figure to show the amplification flows of INH and RIF respectively, parameterized with αH and αR (red arrows). The green arrows represent infection/transmission flows, black arrows represent constant progression flows. Compartments stratified according to resistance profiles are shown in blue. (π–birth rate, λX—force of infection, ε–rate of early progression, κ–rate of late progression, ν–reactivation rate, γ–spontaneous recovery rate, θX–risk of re-infection once latently infected, μ–mortality rate, μi–TB-specific mortality rate, τX–treatment rate, δX—risk of re-infection after recovery)
Epidemiological parameters used for calibrating the model and their prior distribution ranges
| A) Universal parameters | |||
|---|---|---|---|
| Parameter | Value | Prior distribution | Sources |
| Early progression (ε) (year−1) | 0.401775 | Uniform [0.1–0.8] | [ |
| Transition to late latency (κ) (year−1) | 3.6525 | Uniform [1.0–7.0] | [ |
| Reactivation (ν) (year−1) | 0.002008875 | Uniform [0.0009, 0.006] | [ |
| Spontaneous recovery (γ) (year−1) | 0.2 | Gamma [0.16, 0.29], mode = 0.20 | [ |
| Natural mortality (μ) (year−1) | 0.0142 | ||
| TB-specific mortality (μi) (year−1) | 0.2 | Gamma [0.06, 1.06], mode = 0.08 | [ |
| Relative risk of reinfection once infected | 0.21 | – | [ |
CDR case detection rate
Summaries of prevalence survey results and drug resistance survey data for Philippines and Viet Nam
| A) TB prevalence data | ||||
|---|---|---|---|---|
| Country | Year | TB prevalence (per 100, 000) | 95% CI | Sources |
| Viet Nam | 2006–2007 | 307.2 | 248.8–365.6 | [ |
| 2017–2018 | 322 | 260–399 | [ | |
| The Philippines | 2007 | 660 | 510–810 | [ |
| 2016 | 1159 | 1016–1301 | [ | |
Fig. 2Model calibration: A Isoniazid mono resistance, B Rifampicin mono resistance and C MDR-TB. The red dots with the line represent the empiric data (including intervals) obtained from the drug resistance surveys of the Philippines and Viet Nam. The model predictions are represented in blue solid line as median, interquartile range (dark blue shade) and central 95% credible interval (light blue shade)
Posterior distribution of parameters obtained using the AM algorithm
| DR- TB related parameter | Estimate (median, 50% CI) | |
|---|---|---|
| The Philippines | Viet Nam | |
| Proportion of previously INH-susceptible individuals that acquire resistance on treatment failure | 0.84 (0.79–0.89) | 0.77 (0.71–0.84) |
| Proportion of previously RIF-susceptible individuals that acquire resistance on treatment failure | 0.05 (0.04–0.07) | 0.011 (0.010–0.012) |
| Relative fitness of INH-R TB strains | 0.87 (0.83–0.92) | 0.98 (0.95–1.00) |
| Relative fitness of RIF-R TB strains | 0.78 (0.74–0.84) | 0.77 (0.73–0.81) |
| Relative fitness of MDR-TB strains | 0.67 (0.58–0.71) | 0.64 (0.56–0.75) |
| CDR final/maximum value | 0.49 (0.47–0.51) | 0.66 (0.63–0.69) |
Fig. 3The estimated risk of INH-R and RIF-R amplification when treatment fails. The probability density function (red line) represents the posterior distribution of the estimates of amplification and the white background represents the prior ranges. The dashed blue line is the median of the estimates. A Proportion of previously INH-susceptible strains that acquire resistance on treatment failure and B proportion of previously RIF-susceptible strains that acquire resistance on treatment failure
Estimates obtained for proportions of incident DR-TB due to direct transmission rather than DR amplification
| DR-TB | Estimate (median, 50% CI) | |
|---|---|---|
| The Philippines | Viet Nam | |
| INH-R TB | 50 (43–70) | 67 (54–73) |
| RIF-R TB | 52 (43–70) | 63 (55–71) |
| MDR-TB | 40 (28–52) | 43 (34–51) |