| Literature DB >> 29652100 |
Robyn M Stuart1,2, Laura Grobicki3, Hassan Haghparast-Bidgoli3, Jasmina Panovska-Griffiths4,5,6, Jolene Skordis3, Olivia Keiser7,8, Janne Estill7,8,9, Zofia Baranczuk7,8,10, Sherrie L Kelly2,11, Iyanoosh Reporter2, David J Kedziora2,11,12, Andrew J Shattock13, Janka Petravic2, S Azfar Hussain2, Kelsey L Grantham11, Richard T Gray13, Xiao F Yap2, Rowan Martin-Hughes2, Clemens J Benedikt14, Nicole Fraser-Hurt14, Emiko Masaki14, David J Wilson14, Marelize Gorgens14, Elizabeth Mziray14, Nejma Cheikh14, Zara Shubber14, Cliff C Kerr2,12, David P Wilson2,11.
Abstract
INTRODUCTION: With limited funds available, meeting global health targets requires countries to both mobilize and prioritize their health spending. Within this context, countries have recognized the importance of allocating funds for HIV as efficiently as possible to maximize impact. Over the past six years, the governments of 23 countries in Africa, Asia, Eastern Europe and Latin America have used the Optima HIV tool to estimate the optimal allocation of HIV resources.Entities:
Keywords: HIV modeling; allocative efficiency; cost-effectiveness; optimal HIV investment; resource allocation; resource needs
Mesh:
Year: 2018 PMID: 29652100 PMCID: PMC5898225 DOI: 10.1002/jia2.25097
Source DB: PubMed Journal: J Int AIDS Soc ISSN: 1758-2652 Impact factor: 5.396
Steps in an allocative efficiency study, as followed for each of the countries considered in this review
| Step | Rationale | Processes followed | Difficulties encountered and steps taken to overcome them |
|---|---|---|---|
| 1. Identify the population groups and HIV programmes suitable for inclusion in the analysis. | The burden of HIV varies considerably within countries according to factors such as geography, behavioural tendencies, age and sex. The population groups included in an allocative efficiency study should be selected to capture this heterogeneity. | In all 23 studies, the entire national population was stratified according to age, sex and risk behaviour. In addition, the population was further stratified according to geographical region in Moldova and Cote d'Ivoire. | The desire to capture the particulars of the epidemic dynamics must be weighed up against the practical constraints around data availability. Criteria were defined to guide the decision on whether to include a population: the population should (a) be clearly defined, (b) play a substantial role in the country's epidemic, (c) currently or could be targeted with HIV programmes, and (d) have a minimum amount of data or reliable estimates on population size and HIV prevalence. |
| 2. Collect and validate the data required for the analysis. | A determination of how to optimally target an HIV response must be data‐driven. Demographic, behavioural and epidemiological data for each population group must be collected, as well as programmatic data including unit costs, expenditure and historical levels of coverage (particularly important for antiretroviral therapy programmes) for each programme and service delivery modality. | All available data were collected and validated by the analytic teams. | In several contexts, there were data gaps in the epidemiological, behavioural and programmatic data. Often, this step and the first step were conducted iteratively, with populations being first considered for inclusion and then later removed if insufficient data were available. |
| 3. Calibrate the model to available data. | The calibration process involves adjusting a subset of the model's parameters in order to minimize the mean absolute percentage error between the model's estimates and the observed data, and then subjecting the projections produced by the model to a process of scrutiny and validation by the district, province and national health departments. | Typically, the model was calibrated to historical data on HIV prevalence, the number of HIV diagnoses, and the number of people receiving antiretroviral therapy, as well as (where requested) the outputs of other models that the country had previously used. | Attaining a realistic calibration relies on having good data to input to the model. When difficulties were experienced with calibrations, this would often indicate issues with the underlying data. In this sense, the process of model calibration is conducted synchronously with the process of data validation. |
| 4. Establish cost functions. | Cost functions define a relationship between spending on an HIV service and the expected coverage and outcome of that service amongst the target population. | Each analytic team agreed on realistic assumptions on both the maximal attainable coverage for each programme/modality and the behavioural outcome expected to prevail under that maximal coverage level. | Data to inform cost functions is difficult to obtain. In most cases, the cost functions were partially informed by data and partially be expert opinion. |
| 5. Calculate the optimal allocation of available funds. | The allocation of funds that would deliver the outcome closest to national strategic targets can be calculated using Optima's mathematical optimization algorithm. | National strategic targets were identified by the analytic teams, usually in consultation with ministries of health or other responsible bodies. | In some cases, the initial optimization produced a recommendation that the country deemed politically or programmatically infeasible. In such cases, there was an option to rerun the optimization with additional constraints. |
| 6. Produce epidemic trajectories. | The future evolution of the HIV epidemic depends on the future of the HIV response. The previous analytic steps defined the nature of this dependency, and determined the response that would lead to the best epidemic outcomes. The final step translates these responses into epidemic outcomes. | We projected the future evolution of the epidemic assuming that the future HIV budget was allocated (i) as per the last reported HIV spending pattern and (ii) as per the optimal allocation of funds calculated in the previous step. | The future of HIV funding is uncertain. To account for this uncertainty, epidemic projections were produced under a range of different assumptions about future budget availability. |
Summary of results from 23 allocative efficiency studies
| Key data | Optimization results under the current budget | Funding required for NSP targets | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Country | Year | Epidemic | PLHIV | ART coverage (% of PLHIV) | Budget (US$m) | US$/PLHIV | Programme priority areas | Optimal ART coverage (% of PLHIV) | % reduction in infections | % reduction in deaths | Funds required as a % of current budget |
| Eastern Europe and Central Asia | |||||||||||
| Armenia | 2013 | Concentrated | 3600 | 65% | 4.5 | 1259 |
↑ Scale‐up ART, OST, programmes for PWID & FSW | 94% | 17% | 29% | 265% |
| Belarus | 2013 | Concentrated | 35,000 | 32% | 20.5 | 586 |
↑ Scale‐up ART, OST, programmes for PWID | 46% | 7% | 25% | 125% |
| Bulgaria | 2014 | Concentrated | 6000 | 21% | 8.6 | 1437 |
↑ Scale‐up OST, programmes for PWID, MSM & prisoners | 21% | 21% | 7% | 264% |
| Georgia | 2014 | Concentrated | 8900 | 32% | 14.7 | 1657 |
↑ Scale‐up ART, HTC for KPs, programmes for MSM | 59% | 16% | 36% | 140% |
| Kazakhstan | 2013 | Concentrated | 23,000 | 22% | 34.0 | 1478 |
↑ Scale‐up ART, HTC, programmes for PWID & MSM | 30% | 6% | 22% | 137% |
| Kyrgyz Republic | 2013 | Concentrated | 7500 | 13% | 16.0 | 2130 |
↑ Scale‐up ART, HTC, programmes for PWID & MSM | 41% | 28% | 53% | 190% |
| Macedonia | 2013 | Concentrated | 900 | 22% | 6.5 | 7209 |
↑ Scale‐up ART, HTS for KPs, programmes for MSM | 63% | 85% | 87% | 100% |
| Moldova | 2013 | Concentrated | 15,000 | 24% | 0.8 | 51 |
↑ Scale‐up ART, programmes for FSW, PWID & MSM | 38% | 20% | 16% | 233% |
| Tajikistan | 2013 | Concentrated | 15,000 | 10% | 14.1 | 940 |
↑ Scale‐up ART, all KP programmes | 15% | 5% | Not incl. | Not incl. |
| Ukraine | 2013 | Concentrated | 210,000 | 30% | 85.2 | 406 |
↑ Scale‐up ART, lab monitoring | 41% | 3% | 9% | Not incl. |
| Uzbekistan | 2011 to 2012 | Concentrated | 42,000 | 16% | 21.1 | 502 |
↑ Scale‐up ART, HTC | 17% | 44% | Not incl. | Not incl. |
| Latin America and the Caribbean | |||||||||||
| Argentina | 2012 | Concentrated | 100,000 | 41% | 501.9 | 5020 | – Maintain response | 41% | 0% | 0% | Not incl. |
| Colombia | 2012 | Concentrated | 130,000 | 45% | 60.0 | 545 |
↑ Scale‐up ART, programmes for MSM & homeless | 53% | 28% | 24% | Not incl. |
| Mexico | 2011 | Concentrated | 170,000 | 52% | 432.4 | 2298.5 |
↑ Scale‐up ART | 56% | 4% | 7% | 125% |
| Peru | 2014 | Concentrated | 88,000 | 57% | 91.8 | 1044 |
↑ Scale‐up ART | 57% | 38% | 33% | Not incl. |
| Sub‐Saharan Africa | |||||||||||
| Zambia | 2012 | Mixed | 1,100,000 | 55% | 284.2 | 258 |
↑ Scale‐up ART, programmes for FSW | 60% | 5% | 36% | 133% |
| East Asia and the Pacific | |||||||||||
| Indonesia | 2012 | Mixed | 590,000 | 9% | 87.0 | 147 |
↑ Scale‐up OST, programmes for PWID, MSM, FSW | Not incl. | 5% | 2% | Not incl. |
| Vietnam | 2012 | Concentrated | 250,000 | Not incl. | 136.1 | 544 |
↑ Scale‐up HTC, programmes for FSW, MSM | Not incl. | 16% | 1% | Not incl. |
| West and Central Africa | |||||||||||
| Cote d'Ivoire | 2013 | Mixed | 470,000 | 29% | 106.0 | 226 |
↑ Scale‐up ART, HTC, FSW programmes | 32% | 5% | 6% | 283% |
| Niger | 2012 | Concentrated | 54,000 | 24% | 16.1 | 298 |
↑ Scale‐up ART, PMTCT, FSW programmes | 43% | 30% | 19% | Not incl. |
| Senegal | 2013 | Concentrated | 48,000 | 33% | 24.3 | 505 |
↑ Scale‐up ART, PMTCT, programmes for FSW & MSM | 50% | 31% | 28% | Not incl. |
| Sudan | 2013 | Concentrated | 56,000 | 6% | 12.3 | 220 |
↑ Scale‐up ART, programmes for FSW & clients & MSM | 12% | 36% | Not incl. | 134% |
| Togo | 2014 | Mixed | 110,000 | 31% | 20.1 | 183 | – Maintain response | 31% | 0% | 0% | 155% |
|
| |||||||||||
| 30% | 1285 | 42% |
18% to 2020 |
22% to 2020 | 176% | ||||||
ART, antiretroviral therapy; OST, opiate substitution therapy; PWID, people who inject drugs; FSW, female sex workers; PMTCT, prevention of mother‐to‐child transmission; MSM, men who have sex with men; GP, general population; SBCC, social and behaviour change communication; HTC, HIV testing and counselling; OVC, orphans and vulnerable children; KP, key population; VL, viral load; PEP, post‐exposure prophylaxis; Not incl., indicator not requested for this study.
Percentage increase over the total expenditure at the last NASA that would be required to meet the National Strategic Plan (NSP) targets, assuming that funds were optimally allocated.
Year for which latest National AIDS Spending Accounts were available at the time study was conducted, and estimate of the number of PLHIV in that year as published in the country reports.
Percentage reduction in cumulative infections/deaths over the years until 2020 that could be obtained via optimally allocating resources.
Percentage reduction in cumulative infections/deaths over the years until 2030 that could be obtained via optimally allocating resources.
In Vietnam, and Indonesia, ART was not considered as part of the pool of funding available for reallocation but rather as required resources earmarked as an essential expense. Therefore, we did not estimate optimal coverage levels for these two countries.
Percentage reduction in cumulative infections/deaths over 2006 to 2010 that could be obtained via optimally allocating resources.
Percentage reduction in cumulative infections/deaths over the years until 2025 that could be obtained via optimally allocating resources.
Figure 1The relationship between the share of infections in a particular population/district, and the share of the HIV budget for prevention programmes. Results pertain to the year for which latest National AIDS Spending Accounts were available at the time study was conducted – these years are presented in Table 2. The share of infections by sub‐population was not available for Peru, Mexico, Colombia, Argentina, Tajikistan or Ukraine. (a) PWID across 17 countries, (b) FSW across 17 countries, (c) MSM across 17 countries.
Figure 2Allocations of HIV budgets prior to Optima HIV study (left bars), the mathematically optimal allocation recommended by the Optima HIV analysis (middle bars) and the allocation that was adopted by the country after the budgeting process was complete (right bars). (a) Sudan (b) Belarus. Note that in Sudan, the total budget envelope was decreased from US$12.3 m to US$9.9 m.