| Literature DB >> 27727274 |
Amber Kunkel1,2, Frank G Cobelens3,4, Ted Cohen2.
Abstract
BACKGROUND: New drugs for the treatment of tuberculosis (TB) are becoming available for the first time in over 40 y. Optimal strategies for introducing these drugs have not yet been established. The objective of this study was to compare different strategies for introducing the new TB drug bedaquiline based on patients' resistance patterns. METHODS ANDEntities:
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Year: 2016 PMID: 27727274 PMCID: PMC5058480 DOI: 10.1371/journal.pmed.1002142
Source DB: PubMed Journal: PLoS Med ISSN: 1549-1277 Impact factor: 11.069
Fig 1Overview of model health states and transitions.
An individual’s health state at any given time reflects their culture status, treatment regimen, and resistance profile. See S1 Appendix section 8 for a complete list of states and transitions.
Bedaquiline-associated parameter ranges.
| Parameter | Distribution | References/Explanation |
|---|---|---|
| Default rate on bedaquiline (versus OBR) | Unif(-10%,+10%) | [ |
| Risk of relapse on bedaquiline (ratio to OBR) | Unif(0.4,1) | [ |
| Median time to culture conversion on bedaquiline (ratio to OBR) | Unif(0.4,1) | [ |
| Bedaquiline-associated mortality rate (addition to TB or background mortality) | Unif(0, 5 per 100 person-years) → Unif(0, 0.00096) weekly probability | [ |
| Risk of acquired bedaquiline resistance | Unif(0.1,0.5) for XDR 4x lower for PreXDR 16x lower for MDR | [ |
| Risk of acquired resistance to background drugs on OBR (ratio to on bedaquiline) | Unif(1.05,8) | [ |
| Transmission fitness of bedaquiline resistance (ratio to bedaquiline sensitive) | Unif(0.7,1) | Similar to other TB drugs [ |
Fig 2Optimal bedaquiline use strategy for different outcomes based on 5,000 simulation runs.
The top half of the figure shows the results across all four potential bedaquiline use strategies. The bottom half shows results assuming bedaquiline is made available for at least some patients (i.e., no “none” strategy). The asterisk indicates that one simulation run resulted in this simulation being optimal. See tables for results on the magnitude of differences between strategies.
Fig 3Tornado plot displaying how the potential improvement in average life expectancy that would result from use of bedaquiline for all patients with MDR TB versus no patients depends on the values of particular parameters.
The y-axis displays each bedaquiline-associated parameter as well as its high and low values.
Fig 4Heat maps showing regions in which each bedaquiline use strategy would be preferred.
The x- and y-axes show the explored rates of (relative) median time to culture conversion and added mortality associated with bedaquiline use. Remaining parameters are fixed at their values that least favor bedaquiline (left), their midpoints (middle), and their values that most favor bedaquiline (right). Colors indicate the optimal bedaquiline use strategy, and shading indicates the magnitude of difference in average life expectancy between the best and worst strategies, with the corner values listed on the figure (in years). The PreXDR+XDR strategy is never selected in the left subplot, and the XDR strategy is never selected in the left or center subplots.
Life expectancy by DST method.
| Life Expectancy when BDQ Available for | ||||
|---|---|---|---|---|
| DST Method | All MDR | PreXDR+XDR | XDR Only | None |
| Conventional (Baseline) | 36.0 (33.5, 38.7) | 35.1 (34.4, 35.8) | 34.9 (34.6, 35.2) | 34.8 |
| Rapid | 35.5 (34.5, 36.7) | 35.0 (34.6, 35.5) | ||
Life expectancy from initiation of MDR TB treatment at age 30 comparing bedaquiline (BDQ) use strategies under our baseline scenario (conventional DST to identify PreXDR and XDR cases) and a scenario with rapid DST for fluoroquinolones and injectables. Results are given as simulation mean (2.5 percentile, 97.5 percentile).
Percentage of the initial cohort acquiring different resistance patterns.
| BDQ Available for | ||||
|---|---|---|---|---|
| % Acquiring | All MDR | PreXDR+XDR | XDR Only | None |
| BDQR | 5.88 (2.18, 9.45) | 3.91 (1.44, 6.29) | 3.50 (1.30, 5.62) | 0 |
| PreXDR | 2.50 (1.16, 6.43) | 7.66 | 7.66 | 7.66 |
| PreXDR+BDQR | 1.93 (0.39, 3.69) | 1.00 (0.16, 1.99) | 0 | 0 |
| XDR | 2.56 (1.09, 7.68) | 6.59 (5.84, 8.94) | 9.82 | 9.82 |
| XDR+BDQR | 3.44 (1.29, 6.15) | 3.20 (1.20, 5.23) | 3.50 (1.65,5.62) | 0 |
We only count patients who did not begin with the listed resistance pattern (e.g., patients who are initially XDR may be counted as acquiring “XDR+BDQR” but not “XDR”). Resistance patterns that are unspecified may have any value (e.g., “BDQR” identifies resistance to bedaquiline in combination with any pattern of OBR resistance). Gray shading indicates values that are necessarily the same as if bedaquiline were not available for any patients (“None”). Results are given as simulation mean (2.5th percentile, 97.5th percentile).
Impact of different bedaquiline use strategies on the number and health outcomes of secondary TB cases.
| BDQ Available for | ||||
|---|---|---|---|---|
| Outcome per 100 Initial Patients | All MDR | PreXDR+XDR | XDR Only | None |
| Number of Secondary Cases | 14 (10, 17) | 17 (16, 18) | 18 (18, 19) | 19 |
| Life Years Lost to Secondary Cases | 243 (164, 317) | 315 (290, 336) | 333 (320, 343) | 346 |
Results are given as simulation mean (2.5 percentile, 97.5 percentile).