| Literature DB >> 31644577 |
Naren Kumar Surendra1, Mohd Rizal Abdul Manaf1, Lai Seong Hooi2, Sunita Bavanandan3, Fariz Safhan Mohamad Nor4, Shahnaz Shah Firdaus Khan5, Ong Loke Meng6, Abdul Halim Abdul Gafor7.
Abstract
OBJECTIVES: In Malaysia, there is exponential growth of patients on dialysis. Dialysis treatment consumes a considerable portion of healthcare expenditure. Comparative assessment of their cost effectiveness can assist in providing a rational basis for preference of dialysis modalities.Entities:
Year: 2019 PMID: 31644577 PMCID: PMC6808325 DOI: 10.1371/journal.pone.0218422
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Sources of data.
| Data | Data Type | Source |
|---|---|---|
| Cost | Primary data | Surendra et al. 2018 [ |
| Utilities (EQ-5D) | Primary data | Surendra et al. 2019 [ |
| Life years (LY) | Secondary data | MDTR |
| Transitional probabilities | Secondary data | MDTR |
*MDTR-Malaysia Dialysis and Transplant Registry
Fig 1Markov model transition diagram.
Parameter inputs for Markov model cohort simulation.
| Parameter | Tornado diagram input labels | Value (Mean) | Range | Parameter distribution |
|---|---|---|---|---|
| Gamma (Alpha, Lambda) | ||||
| Outpatienta | cCAPD_outpatient | 4482.61 | 1842.79–12,401.07 | |
| Access surgeries | cCAPD_access | 477.26 | 199.80–1257.33 | |
| Building and land | cCAPD_building_land | 68.57 | 30.44–111.90 | |
| Equipment | cCAPD_equipment | 417.73 | 146.20–888.35 | |
| Staff | cCAPD_staffing | 3815.55 | 3011.47–4761.59 | |
| Overheads | cCAPD_overheads | 223.72 | 90.12–540.42 | |
| Dialysis consumables | cCAPD_consumables | 26486.05 | 25826.99–27171.01 | |
| Hospitalization | cCAPD_hosp | 1604.55 | 0.00–17838.78 | |
| Outpatient | cHD_outpatient | 5316.41 | 1993.95–11,399.97 | |
| Access surgeries | cHD _access | 1209.24 | 337.07–4865.86 | |
| Building and land | cHD _building_land | 783.95 | 162.94–2214.31 | |
| Equipment | cHD _equipment | 3299.05 | 2591.24–4424.78 | |
| Staff | cHD_staffing | 14818.36 | 11420.38–17499.80 | |
| Overheads | cHD_overheads | 1775.30 | 568.67–2914.41 | |
| Dialysis consumables | cHD _consumables | 11700.99 | 10803.51–12530.71 | |
| Hospitalization | cHD _hosp | 887.28 | 0.00–18171.19 | |
| Beta (Alpha, Beta) | ||||
| HD | uHD | 0.854 | 0.290,1.000 | |
| CAPD | uCAPD | 0.905 | 0.564,1.000 |
a = Outpatient costs include medications (including EPO), laboratory, radiology and clinic visits/referrals
b = Hospitalization costs include medications, blood products, referrals, laboratory investigations, imaging and procedures
c = Input labels for the one-way sensitivity analysis in the Markov model
d = Distribution used for the probabilistic sensitivity analysis in the Markov model
Unadjusted patient survival by dialysis modality.
| Interval | CAPD | HD | All | ||||||
|---|---|---|---|---|---|---|---|---|---|
| n | %survival | SE | n | %survival | SE | n | %survival | SE | |
| 0 | 3954 | 100 | 5614 | 100 | 9568 | 100 | |||
| 6 | 3579 | 94 | 0.001 | 5213 | 94 | 0.001 | 8792 | 94 | 0.001 |
| 12 | 3191 | 87 | 0.001 | 4830 | 87 | 0.001 | 8021 | 87 | 0.001 |
| 24 | 1759 | 73 | 0.001 | 3218 | 76 | 0.001 | 4977 | 75 | 0.001 |
| 36 | 893 | 60 | 0.001 | 2092 | 67 | 0.001 | 2985 | 64 | 0.001 |
| 48 | 405 | 48 | 0.001 | 1215 | 60 | 0.001 | 1620 | 56 | 0.001 |
| 60 | 132 | 39 | 0.001 | 516 | 53 | 0.001 | 648 | 48 | 0.001 |
| 72 | 238 | 46 | 284 | ||||||
Cost effectiveness and cost utility analysis.
| Costs and outcomes | HD | CAPD |
|---|---|---|
| Life year (LY) | 4.15 | 3.70 |
| Quality adjusted life year (QALY)a | 3.544 | 3.348 |
| Cost per Life year (RM)b | 39,791 | 37,576 |
| Cost per QALY (RM) | 46,595 | 41,527 |
a = Mean utility index for HD (0.854) and CAPD (0.905) [15]
b = Mean cost per patient per year, RM39,791 for HD and RM37,576 for CAPD [14]
Transitional probabilities.
| Parameter | Tornado diagram input labels | Rate | Range | Parameter distribution |
|---|---|---|---|---|
| Beta (Alpha, Beta) | ||||
| CAPD-HD | pCAPD_HD | 0.067 | 0.058,0.081 | |
| CAPD-death | pCAPD_death | 0.134 | 0.105,0.151 | |
| HD-CAPD | pHD_CAPD | 0.007 | 0.002,0.011 | |
| HD-death | pHD_death | 0.125 | 0.119,0.136 |
a = Input labels for the one-way sensitivity analysis in the Markov model
b = Rates were converted to probability using the formula: 1-e (-rt), where t = time, and r = rate.
The conversion was done automatically in the TreeAge Pro software.
c = Distribution used for the probabilistic sensitivity analysis in the Markov model
Costs, outcome and cost effectiveness.
| Costs and outcomes | Base case | Scenario 1 | Scenario 2 | Scenario 3 |
|---|---|---|---|---|
| HD:CAPD ratio | 60:40 | 55:45 | 50:50 | 70:30 |
| Undiscounted | ||||
| Projected cost, RM | 313,412 | 308,032 | 307,014 | 311,086 |
| Total LYs | 8.005 | 7.910 | 7.902 | 7.933 |
| Total QALYs | 7.113 | 7.037 | 7.041 | 7.025 |
| Discounted (3%) | ||||
| Projected cost, RM | 94,425 | 93,517 | 93,236 | 94,361 |
| LYs | 2.417 | 2.407 | 2.407 | 2.410 |
| QALYs | 2.150 | 2.145 | 2.148 | 2.136 |
| Cost effectiveness | ||||
| Cost per LY (discounted) | 39,074 | 38,844 | 38,740 | 39,156 |
| Cost per QALY (discounted) | 43,919 | 43,591 | 43,399 | 44,172 |
| Cost per LY (undiscounted) | 39,151 | 38,943 | 38,852 | 39,214 |
| Cost per QALY (undiscounted) | 44,059 | 43,774 | 43,606 | 44,281 |
| ICER | ||||
| Per LY (discounted) | 120,160 | 355,207 | - | 355,207 |
| Per QALY (discounted) | 734,979 | -92,909 | - | -92,909 |
| Per LY (undiscounted) | 62,090 | 132,108 | - | 132,108 |
| Per QALY (undiscounted) | 87,864 | -264,922 | - | -264,922 |
ICER-incremental cost effectiveness ratio, QALY-quality-adjusted life year, LY-life Year
*”dominated” (worse outcomes, higher costs)
Fig 2Tornado diagram (discounted).
*Cost effectiveness threshold = RM120,000.
Fig 3Tornado diagram (undiscounted).
*Cost effectiveness threshold = RM120,000.
Fig 4Cost effectiveness acceptability curve (discounted and undiscounted).