| Literature DB >> 35843996 |
Sameera Senanayake1, Helen Healy2,3, Steven M McPhail4,5, Keshwar Baboolal2,3, Sanjeewa Kularatna4.
Abstract
INTRODUCTION: There is a severe shortage of donor organs globally. There is growing interest in understanding how a 'soft opt-out' organ donation system could help bridge the supply and demand gap for donor organs. This research aims to estimate the cost-effectiveness and budget impact of implementing a 'soft opt-out' organ donation system for kidney donation.Entities:
Mesh:
Year: 2022 PMID: 35843996 PMCID: PMC9385789 DOI: 10.1007/s40258-022-00747-8
Source DB: PubMed Journal: Appl Health Econ Health Policy ISSN: 1175-5652 Impact factor: 3.686
Fig. 1Markov model with the health states and possible transitions. ESKD end-stage kidney disease
Parameter estimates used in the model and sensitivity analysis
| Parameter | Baseline estimate | Values for sensitivity analysis | Source | ||
|---|---|---|---|---|---|
| Mean | SEM | Distribution | |||
| Death while on dialysis | |||||
| Lambda (λ) | 0.1248 | 0.1248 | 0.0018 | Weibull | ANZDATA |
| Gamma (ϒ) | 1.0736 | 1.0736 | 0.0078 | ||
| Being waitlisted while on dialysis | Model generated parameter# | ||||
| Being transplanted from waitlisted patients | Model generated parameter$ | ||||
| Death from all waitlisted patients | 0.0184 | 0.0184 | 0.0036 | Normal | ANZDATA |
| Death from all transplanted people | |||||
| Lambda (λ) | 0.0240 | 0.0240 | 0.0013 | Weibull | ANZDATA |
| Gamma (ϒ) | 0.8693 | 0.8693 | 0.0259 | ||
| Graft failure from all transplanted patients | |||||
| Lambda (λ) | 0.0419 | 0.0419 | 0.0018 | Weibull | ANZDATA |
| Gamma (ϒ) | 0.5315 | 0.5315 | 0.0171 | ||
| Death from all graft failure patients | 0.1091 | 0.1091 | 0.0006 | Normal | ANZDATA |
| Transplant | 0.82 | 0.82 | 0.0408 | Beta | [ |
| Dialysis | 0.70 | 0.70 | 0.0408 | Beta | [ |
| Transplant (1st year) | 105,965 (± 15%) | Uniform | [ | ||
| Transplant (2nd year onwards) | 14,751 (± 15%) | Uniform | [ | ||
| Dialysis | 86,590 (± 15%) | Uniform | [ | ||
A$ Australian dollars
#Total annual transplants divided by total population in kidney failure health state
$Total annual transplants divided by total population in waitlisted health state
Cost-effectiveness results related to renal care after implementing a 'soft opt-out' organ donation system: base case for 20-year time horizon
| Scenario | Donation method | Cost (2021 A$ in millions) | Incremental cost (2021 A$ in millions) | Effectiveness | Incremental effectiveness | ICER |
|---|---|---|---|---|---|---|
| 20% increment | Soft opt-out | 37,559 | −508 | 434,375 | 12,217 | Dominant |
| Opt-in | 38,066 | 422,158 | ||||
| 30% increment | Soft opt-out | 37,305 | −762 | 440,483 | 18,325 | Dominant |
| Opt-in | 38,066 | 422,158 | ||||
| 40% increment | Soft opt-out | 37,051 | −1016 | 446,591 | 24,433 | Dominant |
| Opt-in | 38,066 | 422,158 |
A$ Australian dollars, ICER incremental cost-effectiveness ratio
Budget impact analysis results related to renal care after implementing a 'soft opt-out' organ donation system: 5-year time horizon
| Scenario | Cost saving: total cost (2021 A$ in millions)# | Cost saving: transplant cost (2021 A$ in millions)$ | Cost saving: dialysis cost (2021 A$ in millions)## |
|---|---|---|---|
| 20% increment | 53.0 | −95.3 | 148.2 |
| 30% increment | 79.5 | −142.9 | 222.4 |
| 40% increment | 106.0 | −190.5 | 296.5 |
A$ Australian dollars
#Incremental total cost = total cost of 'opt-in' system − total cost of ‘soft opt-out’ system
$Incremental transplant cost = transplant cost of 'opt-in' system − transplant cost of 'soft opt-out' system
##Incremental dialysis cost = dialysis cost of 'opt-in' system − dialysis cost of 'soft opt-in' system
Fig. 2Different cost-saving categories (total, transplant, and dialysis) according to three different organ increment scenarios. AUD Australian dollars
Fig. 3Incremental cost, QALY and NMB for 'soft opt-out' organ donation system compared to the current (‘opt-in’) system. Each dot in all three graphs indicates the values generated from the 10,000 iterations in PSA. Negative incremental cost indicates a cost saving compared to current practice. Positive incremental QALY indicates more effectiveness compared to the current practice. Positive incremental NMB indicates the 'soft opt-out' system is cost-effective compared to current practice. A$/AUD Australian dollars, NMB net monetary benefit, PSA probabilistic sensitivity analysis, QALY quality-adjusted life-year
| Our modelling indicates that even a conservative 20% increase in organ donation rates in a 'soft opt-out' organ allocation system in Australia may result in a significant cost saving, a gain in quality-adjusted life-years (QALYs), and a significant number of lives being saved. |
| Evidence indicates that higher deceased donation rates may reduce living donation rates in comparison to current ‘opt-in’ systems. However, our sensitivity analysis found that a 'soft opt-out' system remains cost-effective until live donation rates are reduced by 50%. If the live donation rates are less than 50% of current rates, the 'soft opt-out' system becomes more costly and less effective. |