1 |
Sherrard-Smith et al. [17] |
Tanzania, Uganda |
Pyrethroid-only ITNs; Pyrethroid-PBO ITNs; IRS |
National |
Children under 5 years |
3 |
Dynamic mathematical model (MINT tool); Scenario-based |
P. falciparum |
Minimum budget |
Peer-reviewed literature (RCT) |
Reducing annual cost per case averted |
Stochastic programming |
No |
2 |
Njau et al. [32] |
South Africa |
Passive case detection; IRS; Active case detection; Proactive case detection; Border surveillance |
Subnational (Province) |
General population |
11 |
Dynamic mathematical transmission model; Scenario-based |
P. falciparum |
Maximum budget |
Local data (DHIS) |
Achieve malaria elimination within a 10-year period |
Stochastic programming |
Yes, Malaria Surveillance Agents (MSAs) |
3 |
Shretta et al. [28] |
Ghana |
Passive case detection; LLINs; IRS; Health system strengthening; Social and behavioural change; SMC; IPTp |
National |
General population |
10 |
Dynamic compartmental transmission model; Scenario-based |
P. falciparum |
Minimum and maximum budget |
Local data; World Malaria Reports; Peer-reviewed literature; Expert opinion |
Provide economic evidence on risks of withdrawing financing as a strategy for resource mobilization |
Metaheuristic method (Particle swarm optimization) |
No |
4 |
Shretta et al. [29] |
Asia Pacific (22 countries) |
LLINs; IRS; MDA; Treatment; Surveillance |
Multi-national; National |
General population |
12 |
Dynamic compartmental transmission model; Scenario-based (METCAP) |
P. falciparum; P. vivax |
Minimum budget |
World Malaria Reports; Peer-reviewed literature |
Malaria elimination by 2030 |
Stochastic programming |
No |
5 |
Winskill et al. [25] |
Sub-Saharan Africa |
Treatment; LLINs; SMC; IPTi (PMC); RTS,S vaccine |
Multi-national |
General population |
Not specified |
Individual-based model |
P. falciparum |
Minimum and maximum budget |
Peer-reviewed literature; Country level reports; WHO-CHOICE framework; Global Fund Price Reference Report |
Maximise reduction in malaria transmission, case incidence and mortality with the least marginal cost |
Non-linear programming |
No |
6 |
Sudathip et al. [36] |
Thailand |
Treatment; IRS; ITNs |
National |
General population |
20 |
Two epidemiological models. Model A: Log-normal generalised linear regression model; Model B:; Scenario-based |
P. falciparum; P. vivax |
Minimum and maximum budget |
Historical data; Expert opinion; Privately shared data |
To measure the cost–benefit of a complete implementation of the NMES and thus assess the justification to invest in malaria elimination in Thailand |
Linear programming |
No |
7 |
Drake et al. [10] |
Myanmar |
ITNs; CHWs |
National; Subnational |
General population |
1 |
Geographically targeted resource allocation framework; Scenario-based |
P. falciparum |
Minimum budget |
Local data; Reports |
Using a geographic budget allocation network to maximise health benefits |
Linear programming (knapsack) |
Yes, Community Health Workers (CHWs) |
8 |
Scott et al. [16] |
Nigeria |
LLINs; IRS; IPTp; SMC; Larval source management; MDA; Behavioural change communication |
National; Subnational |
General population |
5 |
Geospatial epidemic (dynamic transmission) model; Optimization algorithm (Optima Malaria model); Scenario-based |
P. falciparum |
Maximum and minimum budget |
Malaria Atlas Project (MAP); UN Population Division |
Optimizing the allocation of scarce funding in targeted geographical regions to maximize reductions in malaria morbidity and mortality |
Stochastic programming |
No |
9 |
Winskill et al. [33] |
Sub-Saharan Africa |
LLINs; IRS, SMC; RTS,S vaccine |
Multi-national |
General population |
10 |
Individual-based model |
P. falciparum |
Cost-effectiveness threshold |
Peer-reviewed literature; PMI, CHAI, MSF estimates |
To derive the most cost-effective pathways for scaling-up malaria interventions in order to inform decisions about the introduction of the RTS,S malaria vaccine |
Non-linear programming (gradient descent) |
No |
10 |
Winskill et al. [35]) |
Sub-Saharan Africa (19 countries); Greater Mekong Subregion |
LLINs; IRS; ACTs |
Multi-national; Subnational |
General population |
15 |
Individual-based model; Scenario-based |
P. falciparum |
Maximum and minimum budget |
PMI reports; WHO World Malaria Reports; NMCPs; DHS; MICS; Peer-reviewed literature |
To estimate the impact of PMI investments to date in reducing malaria burden and to explore the potential negative impact on malaria burden should a proposed 44% reduction in PMI funding occur |
Linear programming |
No |
11 |
Patouillard et al. [37] |
Global (All 97 malaria endemic countries) |
All control interventions recommended by the WHO* |
Multi-national; Subnational |
General population |
15 |
Individual-based model |
P. falciparum |
Maximum budget |
World Malaria Reports; Global Rural–Urban Mapping Project; DHS; Procurement databases; Peer-reviewed literature; National malaria strategic plans; NMCP reports; WHO-CHOICE project; Key informant interviews |
To estimate the financing required for malaria control and elimination over the 2016–2030 period |
Stochastic programming |
No |
12 |
Walker et al. [18] |
Sub-Saharan Africa |
LLINs; IRS; SMC; MDA; Mass screen and treatment (MSAT) |
Multi-national; Subnational; Pixel (Fine-scale) |
General population |
20 |
Individual-based model; Scenario-based |
P. falciparum |
Minimum budget |
WHO Pesticide Evaluation Scheme (WHOPES); Peer-reviewed literature; PMI reports; Malaria Atlas Project (MAP) |
To estimate the most cost-efficient strategies to achieve goals for reducing burden and transmission |
Non-linear programming |
No |
13 |
Dudley et al. [38] |
NA |
LLINs; IRS; IPT; ACT; RTS,S vaccine |
Multi-national; Subnational |
General population |
5 |
Integer linear program and compartment model; Scenario-based |
P. falciparum |
Maximum and minimum budget |
Peer-reviewed literature; Country specific data; WHO Pesticide Evaluation Scheme (WHOPES) |
Minimise person-days of malaria infection |
Integer linear programming |
No |
14 |
Drake et al. [11] |
Myanmar |
ITNs; CHWs |
National; Subnational |
General population |
1 |
Decision tree; Spatially explicit resource allocation model; Scenario-based |
P. falciparum |
Minimum budget |
Three Millenium Development Goal (3MDG); Peer-reviewed literature; Routine health system surveillance records |
To maximize impact from investment in ITN use and early diagnosis and treatment through malaria CHWs |
Linear programming |
Yes, Community Health Workers (CHWs) |
15 |
Stuckey et al. [34] |
Kenya |
LLINs; IRS; Intermittent screen and treat (IST) |
Subnational |
General population |
5 |
Microsimulation individual-based model (OpenMalaria); Scenario-based |
P. falciparum |
Cost-effectiveness threshold |
Local survey data (MTC); WHO-CHOICE; Global Fund to Fight AIDS, Tuberculosis and Malaria Price and Quality Reporting Tool; Peer-reviewed literature |
To address the cost effectiveness of feasible malaria control interventions |
Stochastic programming |
No |