This document summarizes a participatory mapping exercise conducted in Iringa and Njombe regions of Tanzania to identify HIV prevention and treatment service coverage gaps at local levels. Key findings from the mapping included higher than national HIV prevalence rates in the regions, with truck stops frequented mainly by migrant workers having low condom availability. The mapping data was then used by local decision-makers to advocate for additional HIV care and treatment sites in underserved areas. The document promotes engaging local stakeholders in data collection and sharing findings in accessible formats like maps to encourage use of local data for local health decisions.
Empowering Local Decision Makers in Iringa, Tanzania:PLACE Lite and the Iringa Participatory Mapping Exercise
1. Marc Cunningham, MPH
MEASURE Evaluation
John Snow, Inc. (JSI)
10 June 2015
Measurement for Accountability
for Results in Health Summit
Washington, DC USA
Empowering Local Decision
Makers in Iringa,
Tanzania:
PLACE Lite and the Iringa
Participatory Mapping Exercise
2. Better data are local data…
…that are used for local decisions
5. Priorities for Local AIDS
Control Efforts (PLACE)
Lite Iringa, Tanzania
Iringa Participatory
Mapping Exercise:
Service Catchment Areas
6. “Truck stops are usually visited by sex
workers in the evenings, when more than
70 trucks are parked before heading to
their eventual destinations.”
Qualitative
Quantitative
(Iringa Urban)
PLACE Lite
7.
8.
9. Patron characteristics (%)
Attended by migrant workers 89.5
Attended by truck drivers 81.5
Attended by road workers
70.8
Attended by plantation workers 63.1
Attended by miners 0.0
Prevention activities (%)
Condoms available at venue 21.5
Condoms available within 10 min walk 47.7
10.
11. “Several times [when] we
allocate [implementing
partners] to some area,
especially the distant
areas they say they cannot
go there because they do
not have enough fund to
operate to that area. ....
This results to some areas
being well served while
others underserved.”
Iringa Participatory Mapping Exercise
13. Facility Based Services
•Prevention of mother to child
transmission
•Voluntary Counselling and
Testing
•Care and Treatment
•Voluntary Male Medical
Circumcision
Community Based Services
•Prevention and outreach
•Home based care
•Orphans and vulnerable
children
16. • Guide the comprehensive response to HIV
in Iringa (MOHSW, USAID and Partners)
• Identify gaps in coverage (Ludewa District)
• Advocate for additional services (Mufindi
District)
How Were the Data Used?
19. “I used coverage maps to argue that we
needed to add coverage of CTC sites in
the areas where no CTC existed, funding
was allocated for four existing health
facilities to begin offering care and
treatment sites.”
“Maps provide comprehensive visual
data which is easy to access and
interpret.”
20. Two ways we can
encourage the
use of local data:
Better data are local data…
…that are used for local decisions
• Participatory data
collection efforts
• Provision of local
data to local actors
in accessible
formats—such as
maps
21. District, community and facility staff who
provided support during data collection
Collaborative effort
•PLACE team based at UNC Chapel Hill
•Futures Group Tanzania field office
•GIS team at John Snow, Inc.
Acknowledgements
22. MEASURE Evaluation is funded by the U.S. Agency for International
Development (USAID) under terms of Cooperative Agreement AID-OAA-L-14-
00004 and implemented by the Carolina Population Center, University of North
Carolina at Chapel Hill in partnership with Futures Group, ICF International,
John Snow, Inc., Management Sciences for Health, and Tulane University. The
views expressed in this presentation do not necessarily reflect the views of
USAID or the United States government.
http://measureevaluation.com/
Notas del editor
In this presentation, we are going to look at two MEASURE Evaluation activities in Iringa Region, Tanzania, which were designed help local actors understand local HIV prevention activities, as well as existing HIV/AIDS service coverage, in preparation for an expansion in comprehensive HIV prevention and treatment services.
This morning, Dr Rosling started off his presentation with the thesis better data means local data. I will (quite humbly), expand that statement a little to say “better data arelocal data that are used for local decisions”. In the following slides we will review the local data collected during the PLACE Lite study and the Iringa Participatory Mapping Exercise, and share illustrative examples on how the data have been used.
But first a little context.
Iringa and Njombe Regions are located on the southern border of Tanzania, and have among the highest HIV prevalence in the area.
Together, they have a population of 1.6 million persons. The two largest population centers are Iringa and Njombe towns here and here.
Due to the high HIV prevalence, the USAID-funded MEASURE Evaluation project was asked to conduct two data gathering and data use initiatives, in preparation for scale-up of biomedical and general prevention activities
In the first activity, a Priority for Local AIDS Control Efforts, or PLACE study was conducted. In this study, quantiative and qualitative data on HIV transmission dynamics, including the locations of hotspots and demographics of patrons attending those hotspots, are collected.
This information gets summarized for each district and shared with local health authorities through reports
And maps
In the second activity, MEASURE Evaluation piloted a novel, low-cost approach using easily replicable methods to identify catchment areas and estimate coverage patterns for facility-based and outreach HIV services. The approach used combination of key informant interviews, printed maps, and open source GIS software to produce computer-generated, district-level maps of catchment and coverage patterns.
The Iringa Participatory Mapping Exercise involved collecting GPS coordinates for all facilities and HQs of community groups providing HIV/AIDS services in the region, working with facility managers or community group leaders to identify catchment areas for services, digitizing those service areas, and … leveraging existing demographic data and service statistics to estimate service coverage in these catchment areas.
… leveraging existing demographic data and service statistics to estimate service coverage in these catchment areas. Services examined included facility based and community based services.
So, how did all this data get shared, and who were they shared with? The primary audiences for the data were the USAID mission in Tanzania, the Ministry of Health and Social Welfare, and Community based HIV prevention organizations. The data were shared through reports (show report), through online maps (online maps), and through a workshop setting (workshop).
Identifying potential gaps in coverage: At the regional workshop, the Njombe regional medical officer and the Ludewa district council health management team identified a gap in care and treatment centers near the center of the district in an area with increased mining activity and high population growth.
Advocating for additional services: DHMT members in Mufindi noted that the existing care and treatment centers provided insufficient coverage and included over-burdened facilities. With this and other information, they lobbied for and obtained funding to offer care and treatment at additional facilities.
Service coverage maps were well received by district and regional health authorities. District and regional staff returned to their offices from the workshop and hung the maps in clear view, where they were used for planning supportive supervision visits and identifying gaps in service for the annual planning process. One participant said “quote 1”. Another, “quote 2”.
We’ve mentioned how Mufundi and Ludewa districts used the maps. Another district used the HIV maps to illustrate the power of geographic data to leverage funding from donors for mapping environmental and sanitation issues.
So, to wrap it all up and bring it all together:
We used highly participatory data collection methods, which kept costs to a minimum, and encouraged local actors to think about the data as it was collected.
We combined existing data-set both routine health statistics and population estimates, with digitized maps to generate local coverage estimates.
We involved decision makers at multiple levels
The maps were well received—one stakeholder said “…” Another stated: “…”
So we started with the question, “what does better data mean”
I would answer: better data are data which are used.
And I would further answer: Two ways we can encourage data use are participatory data collection efforts, and provision of information in clear, readily accessed formats—such as maps.
We started with the question, “what does better data mean”
I would answer: better data are data which are used at local levels to improve health services.
And I would further answer: Two ways we can encourage use of local data are participatory data collection efforts, and provision of information in clear, readily accessed formats—such as maps.