| Literature DB >> 36045338 |
Huan Jiang1,2, Xinyang Feng3,4, Shannon Lange3,5,6, Alexander Tran3, Jakob Manthey7,8,9, Jürgen Rehm3,4,5,6,7,8,10,11.
Abstract
BACKGROUND: A classic methodology used in evaluating the impact of health policy interventions is interrupted time-series (ITS) analysis, applying a quasi-experimental design that uses both pre- and post-policy data without randomization. In this paper, we took a simulation-based approach to estimating intervention effects under different assumptions.Entities:
Keywords: GAMM; Interrupted time-series; Policy evaluation; Quasi-experimental design; Segmented regression; Simulation
Mesh:
Year: 2022 PMID: 36045338 PMCID: PMC9429656 DOI: 10.1186/s12874-022-01716-4
Source DB: PubMed Journal: BMC Med Res Methodol ISSN: 1471-2288 Impact factor: 4.612
Fig. 1Illustration of the time trends of three scenarios
Number of deaths prevented and their 95% confidence intervals (CI) for the three scenarios and their various assumptions
| Year of implementation | Approach | Number of deaths preventeda | 95% CI | Number of deaths preventeda | 95% CI | Number of deaths preventeda | 95% CI |
|---|---|---|---|---|---|---|---|
| Scenario 1 | Effect size | ||||||
| −5 | − 10 | − 15 | |||||
| True value | 60 | 120 | 180 | ||||
| 5 | 56 | (1, 112) | 122 | (71, 173) | 179 | (126, 233) | |
| 55 | (−43, 153) | 118 | (24, 213) | 176 | (77, 275) | ||
| True value | 60 | 120 | 180 | ||||
| 9 | 61 | (0, 122) | 121 | (54, 188) | 181 | (118, 245) | |
| 61 | (−18, 140) | 120 | (41, 200) | 181 | (101, 261) | ||
| True value | 50 | 120 | 180 | ||||
| 13 | 59 | (1, 117) | 119 | (62, 176) | 179 | (120, 238) | |
| 59 | (−15, 133) | 118 | (44, 192) | 179 | (102, 256) | ||
| Scenario 2 | Effect size | ||||||
| −5 | −10 | −15 | |||||
| True value | 52 | 112 | 172 | ||||
| 5 | 52 | (7, 96) | 112 | (67, 156) | 171 | (127, 215) | |
| 50 | (−50, 150) | 111 | (10, 212) | 171 | (71, 271) | ||
| True value | 52 | 112 | 172 | ||||
| 9 | 52 | (22, 82) | 112 | (80, 145) | 172 | (142, 202) | |
| 53 | (−26, 131) | 111 | (30, 191) | 172 | (94, 251) | ||
| True value | 52 | 112 | 172 | ||||
| 13 | 52 | (21, 82) | 113 | (81, 144) | 171 | (141, 202) | |
| 51 | (−23, 124) | 111 | (35, 187) | 179 | (94, 247) | ||
| Scenario 3 | Effect size | ||||||
| −5 | −10 | −15 | |||||
| True value | 1 | 17 | 33 | ||||
| 5 | 0 | (− 28, 28) | 17 | (−11, 45) | 33 | (4, 62) | |
| −1 | (− 93, 91) | 16 | (−75, 108) | 32 | (− 59, 124) | ||
| True value | 1 | 17 | 33 | ||||
| 9 | 1 | (−19, 20) | 17 | (−3, 37) | 33 | (13, 52) | |
| 0 | (−74, 75) | 15 | (− 57, 88) | 34 | (−41, 108) | ||
| True value | 1 | 17 | 33 | ||||
| 13 | 0 | (−20, 21) | 17 | (−2, 35) | 33 | (14, 52) | |
| 0 | (− 68, 67) | 15 | (−53, 83) | 32 | (−38, 102) | ||
CI Confidence interval
aIn the 12 months following the intervention
Sensitivity analyses: Number of deaths prevented after one year of policy implementation and their 95% confidence interval (CI) under Scenario 3 (lagged level and slope change) being analyzed with a misspecified model
| Year of implementation | Approach | Number of deaths preventeda | 95% CI | Number of deaths preventeda | 95% CI | Number of deaths preventeda | 95% CI |
|---|---|---|---|---|---|---|---|
| Scenario 3, using Model 1 | Effect size | ||||||
| −5 | −10 | − 15 | |||||
| True values | 1 | 17 | 33 | ||||
| 5 | 45 | (−12, 101) | 85 | (21, 148) | 107 | (9, 205) | |
| −1 | (−93, 91) | 16 | (−77, 108) | 32 | (− 60, 124) | ||
| True values | 1 | 17 | 33 | ||||
| 9 | 28 | (− 36, 91) | 61 | (−8, 130) | 91 | (11, 171) | |
| 1 | (−73, 75) | 16 | (−59, 90) | 34 | (−41, 109) | ||
| True values | 1 | 17 | 33 | ||||
| 13 | −7 | (−63, 50) | 33 | (−24, 91) | 74 | (14, 134) | |
| 0 | (−68, 67) | 15 | (−55, 85) | 32 | (−38, 102) | ||
| Scenario 3, using Model 2 | Effect size | ||||||
| −5 | −10 | −15 | |||||
| True values | 1 | 17 | 33 | ||||
| 5 | 13 | (−67, 94) | 58 | (−27, 142) | 85 | (−20, 191) | |
| −1 | (−93, 91) | 16 | (−75, 108) | 32 | (−60, 124) | ||
| True values | 1 | 17 | 33 | ||||
| 9 | 13 | (− 49, 75) | 51 | (−16, 117) | 83 | (1, 164) | |
| 0 | (−74, 75) | 16 | (−57, 89) | 34 | (−41, 109) | ||
| True values | 1 | 17 | 33 | ||||
| 13 | 8 | (−50, 66) | 38 | (−24, 99) | 68 | (3, 132) | |
| 0 | (−68, 67) | 15 | (−55, 84) | 32 | (−38, 102) | ||
CI Confidence interval
aIn the 12 months following the intervention
Coverage probabilities for the three scenarios with matched and unmatched analysis
| Effect size | Year of implementation | Coverage of 95% CI - matched analysis | Coverage of 95% CI - unmatched analysis | |||
|---|---|---|---|---|---|---|
| Scenario 1 with Model 1 | Scenario 2 with Model 2 | Scenario 3 with Model 3 | Scenario 3 with Model 1 | Scenario 3 with Model 2 | ||
| −5 | 5 | 0.856 | 0.899 | 0.878 | 0.858 | 0.738 |
| 9 | 0.885 | 0.884 | 0.875 | 0.804 | 0.652 | |
| 13 | 0.871 | 0.884 | 0.869 | 0.307 | 0.615 | |
| −10 | 5 | 0.892 | 0.896 | 0.879 | 0.715 | 0.623 |
| 9 | 0.832 | 0.875 | 0.880 | 0.510 | 0.423 | |
| 13 | 0.882 | 0.873 | 0.889 | 0.112 | 0.252 | |
| −15 | 5 | 0.872 | 0.907 | 0.871 | 0.398 | 0.396 |
| 9 | 0.882 | 0.897 | 0.874 | 0.256 | 0.210 | |
| 13 | 0.870 | 0.884 | 0.882 | 0.040 | 0.068 | |