| Literature DB >> 30964878 |
Alex J Goodell1,2, Priya B Shete2,3,4, Rick Vreman2, Devon McCabe1,2, Travis C Porco2,5,6, Pennan M Barry7, Jennifer Flood7, Suzanne M Marks8, Andrew Hill8, Adithya Cattamanchi3,4, James G Kahn2,6,9.
Abstract
RATIONALE: As part of the End TB Strategy, the World Health Organization calls for low-tuberculosis (TB) incidence settings to achieve pre-elimination (<10 cases per million) and elimination (<1 case per million) by 2035 and 2050, respectively. These targets require testing and treatment for latent tuberculosis infection (LTBI).Entities:
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Year: 2019 PMID: 30964878 PMCID: PMC6456190 DOI: 10.1371/journal.pone.0214532
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Fig 1Modelled cases attributable to medical risk factors, recent transmission, and imported cases, 2001–2014.
In 2014, the major risk factors for TB were smoking (267 attributable cases), diabetes (162), ESRD (74), HIV (51), transplant (3) and TNF-alpha (1). Increased risk due to recent transmission accounted to 146 cases, and 80 cases were imported. The remaining 1096 cases had no identified risk factor.
Fig 2Results of calibration.
Mean number of TB cases predicted by model (250 iterations) and historic TB case data reported to California Department of Public Health, in the US-born (USB) and non-USB (NUSB), 2001–2014. For uncertainty ranges in modeled predictions, see Fig 3.
Fig 3Annual cases of TB projected for 2017–2065, for LTBI test and treat strategies targeted to those with medical risk factors, the non-USB, both of these groups, and all (universal), for 2, 4, and 10-fold increases in testing rates.
Dotted and dashed lines show elimination and pre-elimination targets. Solid lines represent mean cases from 250 iterations using best available estimates. Shaded areas represent 95% confidence interval from 250 iterations using probabilistic sensitivity analysis.
Estimated values for single input parameters.
| Name | Base | Low | High | Reference |
|---|---|---|---|---|
| Number of LTBI cases caused by one active case (transmission coefficient) | 4.00 | 3.95 | 15.00 | Calibration, [ |
| Base risk of progression, monthly | 0.0000609 | 0.00 | 0.00 | Calibration, [ |
| Proportion of LTBI treated | 0.165 | 0.05 | 0.2 | [ |
| Fast latent progression | 0.0008097 | 0.00 | 0.00 | Derived, [ |
| Proportion enroll post + TST LTBI test | 0.76 | 0.72 | 0.80 | [ |
| Proportion enroll post +QFT | 0.83 | 0.76 | 0.89 | [ |
| Non-USB TST Sensitivity | 0.83 | 0.71 | 0.87 | |
| Non-USB TST Specificity | 0.82 | 0.47 | 0.92 | |
| Non-USB QFT Sensitivity | 0.85 | 0.70 | 0.97 | |
| Non-USB QFT Specificity | 0.99 | 0.98 | 1.00 | |
| 6H | 0.63 | 0.54 | 0.71 | [ |
| 3HP | 0.82 | 0.62 | 1.00 | [ |
| TST | 9.51 | 8.37 | 10.59 | [ |
| QFT | 84.35 | 74.00 | 105.44 | [ |
| Cost of active TB case (California) | 31400 | 13377 | 39250 | [ |
| 6H | 431.47 | 323.60 | 539.34 | [ |
| 3HP | 840.64 | 630.48 | 1050.80 | [ |
| 9H | 0.92 | 0.90 | 0.93 | [ |
| 6H | 0.69 | 0.52 | 0.86 | [ |
| 3HP | 0.92 | 0.69 | 1.00 | Set equal to 9H |
| Non-USB | 19.4 | 16.1 | 25.8 | [ |
| US-born | 2.4 | 0.9 | 2.6 | [ |
| Diabetes | 8.9 | 8 | 10 | [ |
| Smoking | 12.7 | 9.5 | 16 | [ |
| HIV | 0.41 | 0.3 | 0.5 | [ |
| TNF-alpha | 0.80 | 0.5 | 1 | Derived from [ |
| Solid-organ transplants | 0.17 | 0.15 | 0.19 | [ |
| ESRD | 0.35 | 0.21 | 0.46 | [ |
| Diabetes | 1.6 | 1.3 | 3.6 | |
| Smoking | 2.5 | 1 | 4 | |
| HIV | 5.4 | 2.9 | 22 | |
| TNF-alpha | 4.7 | 2.5 | 5.3 | |
| Solid-organ transplants | 2.4 | 1.7 | 18 | |
| ESRD | 11 | 2 | 20 | |
| QALYs lost per TB case (no medical risk factor) | 1.7 | 1.3 | 2.6 | Calculated, [ |
| QALYs lost per TB case (medical risk factors) | 1.1 | 0.83 | 1.7 | Calculated, [ |
| Risk of mild hepatitis, any regimen | 0.0075 | 0.005 | 0.01 | [ |
| Risk of severe hepatitis, any regimen | 0.002 | 0.001 | 0.003 | [ |
See S1 File for additional inputs. 9H was not used in analysis, but only included in table for comparison.
Major results of TB targeted testing and treatment strategies by target population, 2017–2065, main analysis [2].
| Active cases occurring | Cases averted compared to baseline | Incremental cases averted (compared to prior strategy) | Net cost (undiscounted) | Net costs (discounted) | Incremental costs | Cost per case averted (ICER1), both discounted | ||
|---|---|---|---|---|---|---|---|---|
| 106k (72k - 144k) | N/A | N/A | 12b (11b - 14b) | 5.9b (5.4b - 6.6b) | N/A | N/A | ||
| 79k (53k - 108k) | 27k (11k - 37k) | 27k (11k - 37k) | 15b (14b - 16b) | 7.8b (7.1b - 8.3b) | 1.9b (1.7b - 2.0b) | 192k (136k - 384k) | ||
| 60k (41k - 87k) | 45k (18k - 66k) | 19k (5k - 28k) | 21b (20b - 22b) | 11b (10b - 11b) | 3.2b (2.9b - 3.3b) | 394k (254k - 930k) | ||
| 48k (33k - 74k) | 58k (29k - 85k) | 13k (7k - 19k) | 36b (34b - 38b) | 19b (18b - 19b) | 7.9b (7.0b - 8.6b) | 1.2m (662k - 2.1m) | ||
| 93k (63k - 130k) | 13k (5k - 20k) | 13k (5k - 20k) | 14b (13b - 16b) | 7.1b (6.6b - 7.7b) | 1.2b (1.0b - 1.3b) | 249k (176k - 628k) | ||
| 81k (56k - 116k) | 24k (10k - 31k) | 11k (5k - 17k) | 19b (18b - 20b) | 9.4b (8.9b - 10.0b) | 2.3b (2.1b - 2.5b) | 485k (333k - 1.0m) | ||
| 71k (50k - 106k) | 35k (17k - 51k) | 10k (5k - 23k) | 33b (31b - 36b) | 17b (15b - 18b) | 7.3b (6.4b - 8.1b) | 1.5m (788k - 2.9m) | ||
| 77k (54k - 107k) | 29k (13k - 38k) | 29k (13k - 38k) | 17b (16b - 18b) | 8.6b (7.9b - 9.2b) | 2.7b (2.5b - 2.8b) | 255k (182k - 479k) | ||
| 56k (39k - 85k) | 50k (25k - 64k) | 21k (12k - 30k) | 26b (24b - 27b) | 13b (12b - 14b) | 4.8b (4.4b - 4.9b) | 531k (375k - 940k) | ||
| 41k (26k - 73k) | 64k (32k - 82k) | 14k (7k - 20k) | 50b (47b - 52b) | 26b (24b - 27b) | 13b (11b - 14b) | 1.7m (1.1m - 3.2m) | ||
| 72k (43k - 100k) | 34k (16k - 43k) | 34k (16k - 43k) | 22b (20b - 24b) | 11b (10b - 12b) | 5.5b (5.3b - 5.8b) | 455k (356k - 911k) | ||
| 48k (28k - 80k) | 58k (29k - 72k) | 25k (13k - 34k) | 42b (40b - 44b) | 22b (21b - 23b) | 10b (10b - 11b) | 1.0m (777k - 1.9m) | ||
| 30k (19k - 65k) | 76k (40k - 94k) | 18k (10k - 23k) | 106b (101b - 115b) | 54b (52b - 58b) | 33b (30b - 37b) | 3.6m (2.6m - 7.3m) | ||
Cost-utility results of TB targeted testing and treatment strategies by target population, 2017–2065. costs in 2015 dollars.
| Active cases occurring | Cases averted compared to baseline | Net costs (discounted) | Incremental costs | QALYs gained vs prior option | Cost per QALY gained (ICER2), CA-only | Cost per QALY gained (ICER2), CA and non-CA | |||
|---|---|---|---|---|---|---|---|---|---|
| 106k (72k - 144k) | N/A | 5.9b (5.4b - 6.6b) | N/A | N/A | N/A | N/A | |||
| 79k (53k - 108k) | 27k (11k - 37k) | 7.8b (7.1b - 8.3b) | 1.9b (1.7b - 2.0b) | 11k (5.4k - 16k) | 167k (116k - 347k) | 118k (84k - 210k) | |||
| 60k (41k - 87k) | 45k (18k - 66k) | 11b (10b - 11b) | 3.2b (2.9b - 3.3b) | 9.4k (4.1k - 14k) | 339k (210k - 785k) | 246k (159k - 470k) | |||
| 48k (33k - 74k) | 58k (29k - 85k) | 19b (18b - 19b) | 7.9b (7.0b - 8.6b) | 7.3k (3.5k - 12k) | 1.1m (581k - 2.4m) | 803k (463k - 1.6m) | |||
| 93k (63k - 130k) | 13k (5k - 20k) | 7.1b (6.6b - 7.7b) | 1.2b (1.0b - 1.3b) | 4.7k (1.5k - 6.0k) | 258k (183k - 780k) | 204k (146k - 518k) | |||
| 81k (56k - 116k) | 24k (10k - 31k) | 9.4b (8.9b - 10.0b) | 2.3b (2.1b - 2.5b) | 4.6k (1.7k - 6.9k) | 519k (318k - 1.4m) | 414k (277k - 953k) | |||
| 71k (50k - 106k) | 35k (17k - 51k) | 17b (15b - 18b) | 7.3b (6.4b - 8.1b) | 3.8k (1.1k - 7.3k) | 2.0m (944k - 7.0m) | 1.5m (794k - 3.9m) | |||
| 77k (54k - 107k) | 29k (13k - 38k) | 8.6b (7.9b - 9.2b) | 2.7b (2.5b - 2.8b) | 12k (5.6k - 16k) | 226k (159k - 455k) | 162k (118k - 293k) | |||
| 56k (39k - 85k) | 50k (25k - 64k) | 13b (12b - 14b) | 4.8b (4.4b - 4.9b) | 10k (5.1k - 14k) | 477k (315k - 916k) | 346k (239k - 583k) | |||
| 41k (26k - 73k) | 64k (32k - 82k) | 26b (24b - 27b) | 13b (11b - 14b) | 7.1k (2.6k - 11k) | 1.8m (1.0m - 4.9m) | 1.3m (800k - 2.6m) | |||
| 72k (43k - 100k) | 34k (16k - 43k) | 11b (10b - 12b) | 5.5b (5.3b - 5.8b) | 14k (6.0k - 17k) | 408k (314k - 946k) | 287k (227k - 539k) | |||
| 48k (28k - 80k) | 58k (29k - 72k) | 22b (21b - 23b) | 10b (10b - 11b) | 11k (4.5k - 14k) | 936k (704k - 2.4m) | 657k (516k - 1.3m) | |||
| 30k (19k - 65k) | 76k (40k - 94k) | 54b (52b - 58b) | 33b (30b - 37b) | 6.7k (3.4k - 11k) | 4.9m (3.1m - 31.4m) | 3.1m (2.0m - 11.5m) | |||
| 80k (59k - 102k) | 25k (11k - 32k) | 7.2b (6.6b - 7.8b) | 1.4b (1.2b - 1.5b) | 12k (5.8k - 16k) | 116k (89k - 223k) | 80k (62k - 145k) | |||
| 93k (74k - 129k) | 13k (5k - 19k) | 6.8b (6.4b - 7.4b) | 0.9b (0.8b - 1.0b) | 5.2k (2.2k - 8.3k) | 182k (113k - 414k) | 142k (90k - 297k) | |||
| 80k (59k - 106k) | 26k (13k - 32k) | 7.9b (7.5b - 8.3b) | 2.0b (1.8b - 2.1b) | 12k (6.2k - 15k) | 163k (131k - 303k) | 114k (95k - 194k) | |||
| 80k (64k - 106k) | 25k (10k - 34k) | 9.8b (9.4b - 10b) | 3.9b (3.8b - 4.1b) | 13k (5.6k - 17k) | 309k (226k - 691k) | 216k (163k - 419k) | |||
Simulations of target group testing were run separately and have slightly different basecase results due to stochastic nature of model, explaining minor differences in values. Incremental comparisons are within risk-group set (ie, within non-USB). k = 1,000, m = million, b = billion.