| Literature DB >> 26416075 |
Tom L Drake1,2, Shwe Sin Kyaw3, Myat Phone Kyaw4, Frank M Smithuis5,6, Nicholas P J Day7,8, Lisa J White9,10, Yoel Lubell11,12.
Abstract
BACKGROUND: Funding for malaria control and elimination in Myanmar has increased markedly in recent years. While there are various malaria control tools currently available, two interventions receive the majority of malaria control funding in Myanmar: (1) insecticide-treated bed nets and (2) early diagnosis and treatment through malaria community health workers. This study aims to provide practical recommendations on how to maximize impact from investment in these interventions.Entities:
Mesh:
Year: 2015 PMID: 26416075 PMCID: PMC4587798 DOI: 10.1186/s12936-015-0886-x
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1Probability tree model of cost and impact for malaria community health workers and bed nets
Parameter list and values for decision tree models
| Model parameter | Symbol | Default value | Lower estimate | Upper estimate | Source | |
|---|---|---|---|---|---|---|
| Setting | Baseline access to treatment (% of cases receiving ACT) |
| 30 % | 1 % | 95 % | 2011 MARC survey indicates low availability, but recently survey by PSI indicates a substantial increase |
| Cost of treatment |
| $3 | 1 | 10 | Wholesale price of diagnosis and treatment, consumables only.3MDG | |
| Proportion of malaria cases that die in absence of treatment |
| 1 % | 0.1 % | 10 % | Expert opinion [ | |
| Probability of getting malaria |
| 5 % | 0.1 % | 30 % | Probability of malaria is highly variable but changes do not affect comparative analysis between intervention options | |
| Probability that a person with malaria uses a CHW (where available) |
| 30 % | 1 % | 95 % | Community survey by Department of Medical Research in Myanmar finds 19 % of surveyed first seek treatment at CHW (unpublished). Community survey in Cambodia finds low utilisation of CHW in villages with a CHW (Yeung et al. unpublished) | |
| Mean number of disability adjusted life years lost per death |
| 30 | 15 | 45 | Assumed based on life expectancy of 65 years and knowing that most malaria deaths in Myanmar are adults | |
| Village population |
| 500 | – | – | Village size is based on unpublished unicef data. At the time of the study the village level census data was unavailable | |
| Intervention | Annual cost of ITN per person |
| $0.70 | $0.50 | $1.5 | Estimated |
| Annual cost of CHW per person |
| $2 | $1.10 | $4.50 | Kyaw et al. under review | |
| ITN protective efficacy |
| 30 % | 0 % | 50 % | [ | |
| Reduction in mortality after treatment with ACT or ACT + PQ |
| 90 % | 50 % | 99 % | Expert opinion |
Parameter values for four remoteness scenarios
| Parameter | Symbol | Remoteness scenario | |||
|---|---|---|---|---|---|
| Easily accessible | Accessible | Difficult to access | Very difficult to access | ||
| Annual cost of VHW per person |
| 1.10 | 2.00 | 3.20 | 4.50 |
| Annual cost of LLIN per person |
| 0.5 | 0.70 | 1.2 | 1.5 |
| Probability that a person with malaria utilises a VHW (where available) |
| 0.15 | 0.3 | 0.45 | 0.6 |
| Baseline access to treatment (% of cases receiving ACT) |
| 0.5 | 0.3 | 0.15 | 0 |
Cost-consequence summary of insecticide treated nets and malaria community health workers in Myanmar
| ITN | CHW | |
|---|---|---|
| Direct costs | One off purchase and distribution costs are annualised over the lifespan of the net | Annual costs include: training, patient services, monitoring and supervision, programme management and CHW remuneration or incentives. |
| Direct consequences | Modest impact on malaria disease in Myanmar due to crepuscular and exophagic biting | High impact on malaria disease if there is good utilisation of the CHW by people who have malaria |
| Indirect consequences | Modest impact on malaria transmission in Myanmar due to crepuscular and exophagic biting | High impact on malaria transmission if there is good utilisation of the CHW by people who have malaria |
| Direct effects of ITN result in use of fewer diagnostics and treatment and therefore save some costs (included in analysis) | CHW can be used to provide other health services, feedback valuable information on malaria burden, provide information and educational messages to the community (not included in analysis) |
Costs and effects of malaria interventions in four remoteness scenarios
| Remoteness | ||||
|---|---|---|---|---|
| Easily accessible | Accessible | Difficult to access | Very difficult to access | |
| ITN | ||||
| Cost (US$) | 238 | 343 | 596 | 750 |
| Effect (YLLs averted) | 1.24 | 1.64 | 1.95 | 2.25 |
| CER* | 193 | 209 | 306 | 333 |
| CHW | ||||
| Cost (US$) | 556 | 1016 | 1629 | 2295 |
| Effect (YLLs averted) | 0.51 | 1.42 | 2.58 | 4.05 |
| CER* | 1089 | 715 | 631 | 567 |
| ICER** | Abs dominated | Abs dominated | Ext dominated | Ext dominated |
| CHW and ITN | ||||
| Cost (US$) | 792 | 1354 | 2216 | 3031 |
| Effect (YLLs averted) | 1.59 | 2.63 | 3.75 | 5.08 |
| CER* | 499 | 515 | 591 | 597 |
| ICER** | 1583 | 1021 | 503 | 715 |
* CER here compares costs and effects of an intervention compared with no intervention
** ICER compares costs and effects of an intervention compared with the next most effective undominated option
Fig. 2Costs and effects of malaria control in different accessibility scenarios. Circle indicates a dominated intervention. E easily accessible, M moderately accessible, D difficult to access, V very difficult to access
Fig. 3Change in CHW cost effectiveness: univariate sensitivity analysis of all relevant parameters
Fig. 4Change in bed net cost effectiveness: univariate sensitivity analysis of all relevant parameters
Fig. 5Township allocation of malaria interventions in the MARC region, Myanmar. Legends: Maps indicate allocation of US$ 10 million to bed nets and malaria community health workers in the MARC region, Myanmar. a Allocation using default parameter values detailed in Table 1. b Allocation assuming a lower bed net protective effect of 5 %. c Allocation assuming a higher uptake of community health workers; 95 % of malaria infections. d Allocation assuming 50 % cost-sharing for community health workers. For panels (b–d) all parameters other than the specified variation are the default values outlined in Table 1