| Literature DB >> 32627657 |
Zoë Pieters1,2, Mark Strong3, Virginia E Pitzer4, Philippe Beutels2, Joke Bilcke2.
Abstract
Background. Threshold analysis is used to determine the threshold value of an input parameter at which a health care strategy becomes cost-effective. Typically, it is performed in a deterministic manner, in which inputs are varied one at a time while the remaining inputs are each fixed at their mean value. This approach will result in incorrect threshold values if the cost-effectiveness model is nonlinear or if inputs are correlated. Objective. To propose a probabilistic method for performing threshold analysis, which accounts for the joint uncertainty in all input parameters and makes no assumption about the linearity of the cost-effectiveness model. Methods. Three methods are compared: 1) deterministic threshold analysis (DTA); 2) a 2-level Monte Carlo approach, which is considered the gold standard; and 3) a regression-based method using a generalized additive model (GAM), which identifies threshold values directly from a probabilistic sensitivity analysis sample. Results. We applied the 3 methods to estimate the minimum probability of hospitalization for typhoid fever at which 3 different vaccination strategies become cost-effective in Uganda. The threshold probability of hospitalization at which routine vaccination at 9 months with catchup campaign to 5 years becomes cost-effective is estimated to be 0.060 and 0.061 (95% confidence interval [CI], 0.058-0.064), respectively, for 2-level and GAM. According to DTA, routine vaccination at 9 months with catchup campaign to 5 years would never become cost-effective. The threshold probability at which routine vaccination at 9 months with catchup campaign to 15 years becomes cost-effective is estimated to be 0.092 (DTA), 0.074 (2-level), and 0.072 (95% CI, 0.069-0.075) (GAM). GAM is 430 times faster than the 2-level approach. Conclusions. When the cost-effectiveness model is nonlinear, GAM provides similar threshold values to the 2-level Monte Carlo approach and is computationally more efficient. DTA provides incorrect results and should not be used.Entities:
Keywords: Monte Carlo approach; deterministic sensitivity analysis; probabilistic sensitivity analysis; probabilistic threshold analysis
Mesh:
Year: 2020 PMID: 32627657 PMCID: PMC7401185 DOI: 10.1177/0272989X20937253
Source DB: PubMed Journal: Med Decis Making ISSN: 0272-989X Impact factor: 2.583
Two-Level Monte Carlo Scheme for Estimating Threshold Value for Parameter
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Note: There may be no values of , in which case there are no threshold values, and the optimal health care strategy does not depend on the value of the input parameter considered. There may be a single value of , in which case, there is a single threshold value, . Or, there may be multiple values of and therefore multiple threshold values. We approximate by the midpoint of the interval . This is justified as long as sufficient values are sampled from the distribution of .
Figure 1A guide for performing parameter threshold analysis.
Regression-Based Scheme for Estimating Threshold Value for Parameter
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Note: There may be no values of , in which case, there are no threshold values. There may be a single value of , in which case, there is a single threshold value, . Or, there may be multiple values of and therefore multiple threshold values. We approximate by the midpoint of the interval .
Distributional Characteristics of the Uncertain Input Parameters
| Parameter | Mean | Median | 95% Credible Interval | Uncertainty Distribution |
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| 0.059 | 0.044 | 0.008–0.196 |
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| 0.061 | 0.038 | 0.004–0.249 |
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| 0.043 | 0.043 | 0.034–0.054 |
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Comparison of the Parameter Threshold Values Obtained with DTA, Adjusted 2-Level MC Approach, and GAM for Different Settings[a]
| DTA | Adjusted 2-Level MC | GAM | |||||||||||
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| Cubic Regression Splines, | |||||||||||
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| | 700,094 | 0.062 | RC15 | 16.6 | 0.040 | RC15 | 235.6 | 0.036 | RC15 | 0.6 | 0.035–0.039 | 998/1000 | 159.5 |
| | 1,276,475 | 0.052 | RC15 | 14.4 | 0.043 | RC15 | 220.0 | 0.041 | RC15 | 0.6 | 0.040–0.043 | 1000/1000 | 160.2 |
| | 0 | None[ | No vac | 14.6 | None | RC15 | 231.0 | None | RC15 | 0.5 | NA | 391/1000 | 159.2 |
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| | 1,860,599 | 0.113 | RC15 | 15.9 | 0.069 | RC15 | 219.2 | 0.064 | RC15 | 0.7 | 0.060–0.071 | 983/1000 | 199.1 |
| | 2,665,148 | 0.093 | RC15 | 14.5 | 0.074 | RC15 | 207.7 | 0.070 | RC15 | 0.6 | 0.066–0.073 | 1000/1000 | 189.9 |
| | 0 | None | No vac | 16.7 | None | No vac | 214.3 | None | No vac | 0.6 | NA | 191/1000 | 189.6 |
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| | 18,451,230 | 0.109 | RC15 | 23.3 | 0.056 | RC5 | 241.0 | 0.058 | RC5 | 0.6 | 0.052–0.061 | 965/1000 | 199.2 |
| | 25,018,120 | 0.092 | RC15 | 14.9 | 0.060 | RC5 | 214.8 | 0.061 | RC5 | 0.6 | 0.058–0.064 | 999/1000 | 194.5 |
| | 4256 | None | No vac | 14.9 | None | RC5 | 217.3 | 0.033 | RC5 | 0.7 | 0.030–0.061 | 98/1000 | 202.1 |
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| | 2,788,364 | 0.114 | RC15 | 16.8 | 0.053 | RC5 | 227.5 | 0.055 | RC5 | 0.6 | 0.052–0.062 | 955/1000 | 188.9 |
| | 4,837,512 | 0.083 | RC15 | 16.5 | 0.059 | RC5 | 226.8 | 0.060 | RC5 | 0.7 | 0.058–0.062 | 998/1000 | 191.4 |
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| | 0 | None | RC15 | 13.7 | None | RC15 | 219.1 | None | RC15 | 0.6 | NA | 966/1000 | 188.5 |
| | 0 | None | RC15 | 14.5 | None | RC15 | 218.6 | None | RC15 | 0.6 | NA | 714/1000 | 198.4 |
CI, confidence interval; DTA, deterministic threshold analysis; EVPPI, expected value of partial perfect information; GAM, generalized additive model; MC, Monte Carlo; NA, not applicable when no parameter threshold value is obtained; No vac, no vaccination; RC5, routine vaccination with catchup campaign to 5 years; RC15, routine vaccination with catchup campaign up 15 years; WTP = willingness to pay for 1 disability-adjusted life-year averted (in USD).
parameter of interest; threshold value(s), if present, for ; health care strategy with the highest expected incremental net monetary benefit (INB) at . If not mentioned otherwise, the health care strategy at is no vaccination; = number of bootstrap samples retained to calculate the 95% CI; EVPPI quantifies the value of obtaining perfect information on the parameter of interest. The EVPPI is calculated based on Strong et al.[14]
Indicate the time needed to perform, respectively, the method and the bootstrap (GAM: excluding the time needed to obtain the probabilistic sensitivity analysis sample).
“None” indicates that no parameter threshold value was obtained, meaning that the health care strategy with the highest expected INB remains the same and is denoted under .