| Literature DB >> 23902668 |
Hongmei Yang1, Susan Duvall, Amy Ratcliffe, David Jeffries, Warren Stevens.
Abstract
BACKGROUND: Global health implementing organizations benefit most from health impact estimation models that isolate the individual effects of distributed products and services - a feature not typically found in intervention impact models, but which allow comparisons across interventions and intervention settings. Population Services International (PSI), a social marketing organization, has developed a set of impact models covering seven health program areas, which translate product/service distribution data into impact estimates. Each model's primary output is the number of disability-adjusted life-years (DALYs) averted by an intervention within a specific country and population context. This paper aims to describe the structure and inputs for two types of DALYs averted models, considering the benefits and limitations of this methodology.Entities:
Mesh:
Year: 2013 PMID: 23902668 PMCID: PMC3684543 DOI: 10.1186/1471-2458-13-S2-S3
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Data sources of key DALYs averted model parameters
| Parameter | Data Source |
|---|---|
| Burden (macro models) | |
| Risk of Infection (micro models) | ■ Published literature |
| Efficacy/Effectiveness | ■ Published randomized controlled trials, community randomized trials |
| Attrition, or Wastage | ■ PSI supply chain studies (as of 2011) |
| Utilization (including adherence) | |
| Time frame | Defined as one year. For products/services with lifespans longer than one year, all years of impact are counted in the year of distribution. |
| Disability Weight | Global Burden of Disease and Risk Factors [ |
| Duration of Disease or Disability | Published literature |
| Age at Death due to Disease or Disability | ■ Age distribution data of age at death |
| Life Expectancy | WHO, 2011 (for Japanese life expectancy data) [ |
Country-specific parameters and data sources in the Water Chlorination Model for children under five
| Parameter | Input | Source |
|---|---|---|
| Diarrhea morbidity rate in children under five, by country | Varies by country | DHS |
| Diarrhea mortality rate in children under five, by country | Varies by country | DHS |
| Demographic data (population size, proportion of children under five) | Varies by country | UNPD [ |
Fixed parameters and data sources in the Water Chlorination Model for children under five
| Parameter | Input | Source |
|---|---|---|
| Protective effectiveness of chlorinated, point-of-use water treatment products | 47% | Clasen et al., 2006 [ |
| Wastage rate of household water treatment products | 15% | Communication with PSI water treatment technical experts |
| Liters of water treated per unit of product: | Product usage guidelines | |
| • Safe water solution (various brand names) | 1000 | |
| | 10 | |
| | 20 | |
| Liters of water per person per day for drinking and cooking in households with unpiped water | 3 | Tumwine et al., 2002 [ |
| Duration of diarrhea episodes (years) | 0.03 | Lopez et al., 2006 [ |
| Disability weight of diarrhea episodes | 0.105 | Mathers et al., 2006 [ |
| Age at death from diarrheal disease for children under five (years) | 1.8 | Calculated based on IMR, U5MR and proportion of under-five deaths due to diarrhea from: |
| Life expectancy (years) | 83.1 | WHO, 2011 [ |
Country-specific parameters and data sources used in the HIV Condom Model
| Parameter | Input | Source |
|---|---|---|
| Country-specific sexual behavior data: | Varies by country | PSI population-based TRaC surveys*[ |
| • Number of sexual partners by relationship in past year | ||
| • Number of sexual contacts with each type of partner in past year | ||
| • Use of any brand of condom with each type of partner | ||
| • Use of PSI condom with each type of partner | ||
| Country-specific HIV prevalence among general adults | Varies by country | UNAIDS, 2010 [ |
| Country-specific male circumcision rate | Varies by country | Williams et al., 2006 [ |
| HIV prevalence among female commercial partners | Varies by country | Calculated** |
| STI prevalence among general adults | Varies by country | Calculated** |
| STI prevalence among female sex workers (FSWs) | Varies by country | UNAIDS, 2010 or calculated when unavailable** |
*When country-specific sexual behavior data are unavailable from either published sources or PSI population-based surveys in the country of interest, we use combined data from three population-based surveys conducted by PSI in Angola, Zambia, and Zimbabwe among adults aged 15-49 years.
**When data are not readily available from published sources, we calculate HIV prevalence among commercial sex workers and STI prevalence in both the adult population and FSWs, adjusting data for FSW HIV prevalence from WHO/UNAIDS Epidemiological Fact Sheets on HIV/AIDS and STIs (2008), data for STI prevalence in general adult population from WHO (2001) and data for HIV prevalence in the general adult population by region from UNAIDS/WHO (2006). (Adjustment calculations shown in Additional file 2.) STI prevalence among commercial sex partners is set at 80% for PSI platforms lacking available data.
Fixed parameters and data sources used in the HIV Condom Model
| Parameter | Input | Source |
|---|---|---|
| Per-act infectivity of HIV when index partner has no symptom and both partners are negative for other STIs | 0.0005 | Gray et al., 2001 [ |
| Per-act infectivity of HIV when index partner has acute infection of HIV and both partners are negative for other STIs | 0.0047 | Pilcher et al., 2004 [ |
| Effect of STI on HIV transmission | 5 | Satten et al., 1994 [ |
| Protective efficacy of male condoms | 90% | Pinkerton et al., 1997 [ |
| Protective efficacy of male circumcision | 60% | Auvert et al., 2005 [ |
| Acute period of HIV infection (days) | 54 | Pilcher et al., 2004 [ |
| Duration of HIV and AIDS when left untreated (years) | 10 for HIV; | Todd et al., 2007 [ |
| Disability weight of HIV | 0.135 for HIV; 0.505 for AIDS | Mathers et al., 2006 [ |
| Age at infection of HIV (years) | 26 | Assumed based on the fact that most sero-conversions occur within the 25-29 year-old age group (Todd et al., 2007 [ |
| Wastage of condoms | 10% | Communication with PSI programmers |
| Life expectancy at birth (years) | 83.1 | WHO, 2011 [ |
Figure 1Risk factors for HIV infection through heterosexual transmission, determined for each type of partner and each risk group.
Model outputs from Water Chlorination DALYs Averted Model for PUR intervention in Cambodia and Cameroon
| Country | Product | All-age Episodes Averted per Unit | All-age Deaths Averted per Unit | All-age DALYs Averted per Unit (Model Coefficient) | Product Distribution Volume | All-age Episodes Averted | All-age Deaths Averted | All-age DALYs Averted |
|---|---|---|---|---|---|---|---|---|
| Cambodia | 0.001723 | 1.61E-6 | 5.48E-5 | 1,000,000 | 1,723 | 1.61 | 54.8 | |
| Cameroon | 0.003367 | 5.42E-6 | 1.76E-4 | 1,000,000 | 3,367 | 5.42 | 176 | |
DALYs averted for PUR by PSI programs in 2012*, by country
| Country | All-age DALYs Averted Coefficient for | 2012 | All-age DALYs Averted by |
|---|---|---|---|
| Congo-Kinshasa | 0.000195 | 3,729,019 | 728 |
| Dominican Republic | 0.000032 | 758,640 | 24 |
| Ethiopia | 0.000150 | 5,665,462 | 847 |
| Kenya | 0.000120 | 7,374,447 | 885 |
| Panama Warehouse** | 0.000041 | 2,411,040 | 99 |
| Malawi | 0.000137 | 12,017,029 | 1,648 |
| Namibia | 0.000087 | 1,104,352 | 96 |
| Nigeria | 0.000169 | 9,360 | 2 |
| Rwanda | 0.000183 | 1,799,146 | 329 |
| South Sudan | 0.000118 | 1,457,588 | 171 |
| Tanzania | 0.000143 | 4,261,200 | 610 |
| Uganda | 0.000137 | 3,759,394 | 515 |
*Only those countries implementing a PSI PUR intervention in 2012 are shown.
**Panama Warehouse serves Columbia, Dominican Republic, Haiti, and Panama
Model outputs from HIV Condom DALYs Averted Model intervention in Thailand and Zimbabwe
| Country | Risk Group | Condoms per Infection Averted | Condoms per Death Averted | DALYs Averted per Unit (model coefficient) | Product Distribution Volume in One Year* | New Infections Averted in One Year* | Deaths Averted in One Year* | DALYs Averted in One Year* |
|---|---|---|---|---|---|---|---|---|
| Thailand | Only 1 partner | 167,224 | 167,224 | 1.14E-4 | ||||
| 2 partners | 33,784 | 33,784 | 5.65E-4 | |||||
| 3-4 partners | 11,862 | 11,862 | 1.61E-3 | |||||
| 5-9 partners | 5,263 | 5,263 | 3.65E-3 | |||||
| ≥10 partners | 3,817 | 3,817 | 5.10E-3 | |||||
| All risk groups | 8,000 | 8,000 | 2.43E-3 | 1,000,000 | 125 | 125 | 2,430 | |
| Zimbabwe | Only 1 partner | 10,417 | 10,417 | 1.83E-3 | ||||
| 2 partners | 7,463 | 7,463 | 2.56E-3 | |||||
| 3-4 partners | 4,484 | 4,484 | 4.25E-3 | |||||
| 5-9 partners | 2,577 | 2,577 | 7.48E-3 | |||||
| ≥10 partners | 2,183 | 2,183 | 8.91E-3 | |||||
| All risk groups | 3,690 | 3,690 | 5.24E-3 | 1,000,000 | 271 | 271 | 5,240 | |
*Values for each individual risk group are not shown because product distribution data are only collected for all risk groups and cannot be disaggregated.
HIV DALYs averted for male condoms by selected PSI programs in 2012*, by country
| Country | HIV DALYs Averted Coefficients for Male Condoms | Male Condom Distribution, 2012 | HIV DALYs Averted by Male Condoms, 2012 |
|---|---|---|---|
| Angola | 0.002793 | 7,722,752 | 21,567 |
| Benin | 0.002315 | 9,474,758 | 21,930 |
| Botswana | 0.006008 | 3,222,809 | 19,362 |
| Cambodia | 0.000970 | 19,011,469 | 18,435 |
| Cameroon | 0.003683 | 21,427,386 | 78,923 |
| China | 0.000210 | 262,482 | 55 |
| Costa Rica | 0.000127 | 1,092,387 | 138 |
| Cote d'Ivoire (+AIMAS**) | 0.003391 | 22,174,988 | 75,194 |
| Guatemala | 0.000468 | 10,211,611 | 4,781 |
| Haiti | 0.001742 | 2,124,288 | 3,700 |
| India | 0.000510 | 221,303,250 | 112,900 |
| Madagascar | 0.001962 | 9,070,108 | 17,799 |
| Mexico | 0.000127 | 25,578 | 3 |
| Myanmar | 0.001158 | 21,993,848 | 25,475 |
| Nicaragua | 0.000078 | 5,159,547 | 402 |
| Nigeria | 0.003018 | 213,739,536 | 645,122 |
| Pakistan | 0.000132 | 103,110,124 | 13,589 |
| Romania | 0.000956 | 4,335,875 | 4,145 |
| South Africa | 0.004907 | 70,367,916 | 345,290 |
| South Sudan | 0.003243 | 1,288,580 | 4,179 |
| Swaziland | 0.006132 | 1,642,992 | 10,075 |
| Tanzania | 0.003862 | 68,724,288 | 265,423 |
*Countries were selected to show a range of results from the diverse geographical regions where PSI implemented a male condom intervention in 2012.
**AIMAS is l'Agence Ivorienne de Marketing Social, a local NGO in Côte d'Ivoire that PSI works closely with to implement male condom interventions.
^These totals do not reflect the distribution and DALYs averted for male condoms from the sample of countries presented here. Instead, it shows the totals for all PSI countries with male condom interventions in 2012. See additional file 4 for the complete list of results from all countries.