Louie C. Rosencrans, Gerald E. Sume, Jean-Christian Kouontchou, Arend
Voorman, Yaw Anokwa, Maurice Fezeu, Vincent Y. Seaman
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Mapping for Health in Cameroon: Polio Legacy and
Beyond
The Journal of Infectious Diseases
SUPPLEMENT ARTICLE
Mapping for Health in Cameroon: Polio Legacy
and Beyond
Louie C. Rosencrans,1 Gerald E. Sume,2 Jean-Christian Kouontchou,2 Arend Voorman,3 Yaw Anokwa,4 Maurice Fezeu,5 and Vincent Y. Seaman3
1Global Immunization Division, Centers for Disease Control and Prevention, Atlanta, Georgia; 2World Health Organization Country Office for Cameroon, Yaoundé; 3Bill and Melinda
Gates Foundation, and 4Nafundi, Seattle, Washington; and 5Health Information Unit, Cameroon Ministry of Public Health, Yaoundé
Poliomyelitis is a paralytic disease which was targeted for eradication by the 1988 World Health Assembly. There have been
great strides made toward polio eradication in sub-Saharan
Africa, with cases of wild poliovirus detected only in northern
Nigeria between August 2014 and August 2016 [1, 2].
Cameroon is important to the historical epidemiology of infectious diseases in West and Central Africa, bordering 6 countries
in the region, including Nigeria, which is currently experiencing
a resurgence in circulation of WPV1 [1]. Cameroon has had a
history of several polio outbreaks following importation from
neighboring countries, such as from 2003 to 2009 [3]. After an
importation from Chad, Cameroon experienced an outbreak of
wild poliovirus type 1 (WPV1) with 9 laboratory-confirmed cases
detected from October 2013 to July 2014 [2]; the outbreak was
officially declared over in April 2015 [4]. In April 2014 the poliovirus outbreak spread from Cameroon into Equatorial Guinea [5].
Later international spread of WPV was declared a Public Health
Emergency of International Concern, and Cameroon was classified as an exporter of wild poliovirus [6, 7]. As such, the Global
Polio Eradication Initiative (GPEI) recommended “extraordinary
measures” to prevent continued international spread [8].
To safeguard polio elimination in the country and prevent
poliovirus spread in the region, the Expanded Program on
Immunization (EPI) must maintain high-quality polio surveillance
Correspondence: L. C. Rosencrans, PhD, Centers for Disease Control and Prevention, 1600
Clifton Rd NE, MS A-05, Atlanta, GA 30333 (
[email protected]).
The Journal of Infectious Diseases® 2017;216(S1):S337–42
© The Author 2017. Published by Oxford University Press for the Infectious Diseases Society of
America. This is an Open Access article distributed under the terms of the Creative Commons
Attribution 3.0 IGO (CC BY 3.0 IGO) License (https://creativecommons.org/licenses/by/3.0/igo/)
which permits unrestricted reuse, distribution, and reproduction in any medium, provided the
original work is properly cited.
DOI:10.1093/infdis/jix008
and vaccination programs. Program performance is monitored
using acute flaccid paralysis (AFP) surveillance data, routine
immunization coverage data, and polio mass campaign quality
data, among other sources. Accurate maps are required to visualize the geographic context of these data, which are crucial for both
program planning and evaluation. Accurate administrative boundaries are also needed to correctly attribute georeferenced data to
administrative areas. This is important as cellphones equipped with
the Global Positioning System (GPS) are increasingly being used
by health programs to collect georeferenced public health data.
Another use of base maps is for microplanning. Microplans
are documents which list all settlements, including total population and target population per settlement; the areas which
are difficult to access and the reasons for inaccessibility; and the
assets and resources needed to conduct high-quality immunization campaigns [9]. Most microplans in the African region, and
until recently in Cameroon, used hand-drawn maps which were
not geographically accurate [10].
In 2014, during the polio outbreak in Cameroon, there was
an urgent need to conduct epidemiological analysis of AFP surveillance and routine immunization coverage data at the health
district and health area levels. Unfortunately, the health district boundary map available at the time was marginally useful,
showing only 179 of the 189 health districts, because of the creation of new health districts over time. Furthermore, the existing health district boundaries were also inaccurately delineated
by multiple agencies over time.
After the success of detailed mapping efforts by the polio
program in Nigeria [10], the EPI program of the Cameroon
Ministry of Public Health (MOPH) requested technical support
from the US Centers for Disease Control and Prevention (CDC)
and the World Health Organization (WHO) Cameroon country
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During the poliovirus outbreak in Cameroon from October 2013 to April 2015, the Ministry of Public Health’s Expanded Program
on Immunization requested technical support to improve mapping of health district boundaries and health facility locations for
more effective planning and analysis of polio program data. In December 2015, teams collected data on settlements, health facilities,
and other features using smartphones. These data, combined with high-resolution satellite imagery, were used to create new health
area and health district boundaries, providing the most accurate health sector administrative boundaries to date for Cameroon.
The new maps are useful to and used by the polio program as well as other public health programs within Cameroon such as the
District Health Information System and the Emergency Operations Center, demonstrating the value of the Global Polio Eradication
Initiative’s legacy.
Keywords. Cameroon; EPI; poliomyelitis; GIS; mapping; smartphones.
METHODS
Satellite Imagery and Feature Extraction
High-resolution satellite imagery (Advanced Country
Coverage, OR2A, 50 cm panchromatic) was procured from
DigitalGlobe as a mosaicked (cached) file. The raw imagery (8
band, panchromatic) was sent to the Geographic Information
Science and Technology (GIST) Team at Oak Ridge National
Laboratories for the extraction of building and settlement features using a semiautomated algorithm. This feature extraction
layer was used to identify settlement locations in 26 health districts considered to be of high programmatic priority because
of the risk for polio transmission. Unfortunately, <20% of the
feature extraction was processed in time for the initial mapping
effort described herein.
A GIS expert was hired in-country to provide technical expertise, along with 13 other cartographers under his
supervision. The MOPH Health Information Unit (HIU) was
selected as the office to conduct the activity, host the cartographers, and maintain the collected data, in part because the GIS
mapping results were to be integrated into the District Health
Information System (DHIS2) hosted by the HIU.
The GIS mapping in Cameroon was inspired by a similar project in neighboring Nigeria. In 2013–2014, Nigeria’s polio program
produced highly detailed GIS maps to support polio microplanning and vaccination team tracking [10]. In early October 2015,
the data manager from the WHO Cameroon country office EPI
program visited the eHealth Africa offices in Kano, Nigeria, to
learn from their experiences and apply those experiences in the
Cameroon context. Novel-T also provided remote technical support from Geneva, Switzerland, when there were technical issues
related to the smartphones’ connectivity to satellites.
Data Collection
Approximately 495 GPS-enabled Huawei Y320 smartphones
were donated by BMGF to be used for data collection. The use
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of smartphones for public health data collection has been well
documented as an affordable and useful tool for public health
programs in developing countries [11]. In November 2015,
technical consultants from CDC, BMGF, and Nafundi provided technical support for the pilot project and programmed
the smartphones. The Nafundi technical expert taught the core
mapping team (MOPH, WHO, CDC, BMGF, Nafundi, and the
GIS expert) how to use Open Data Kit (ODK) which is a free,
open-source mobile data collection software. Specifically, the
Nafundi consultant taught how to design a form, how to validate and send the form to a server, how to download the forms
to smartphones, and how to use the ODK Collect smartphone
application.
A data collection process was created by the mapping
group, to be used by teams in the field to collect GPS locations of points of interest (eg, boundaries, health facilities,
settlements, markets, churches and mosques, schools) along
with relevant metadata. The process was then coded as an
ODK form (Figure 1) that would run on smartphones. A list
of health districts, areas, settlements, neighborhoods, and
points of interest from the microplans were used to populate
a drop-down list for data entry on the smartphones. The primary goal of this project was to map these known features in
the microplans of each health area. However, surveyors were
also able to add additional points of interest if not on this list.
Collected data were sent to a cloud-based ODK Aggregate
server. Standard operating procedures were developed by the
core technical mapping team for the GPS teams to conduct
the activity.
A pilot project was conducted over 2 days in November
2015 to map Soa Health District of Centre region. Soa Health
District was selected for the pilot due to its mix of urban
and rural areas and its proximity to Yaoundé, the capital of
Cameroon. In addition, Soa was one of the few health districts
in Cameroon whose health areas had been digitally mapped
in the past, and thus provided reference and validation for
the new procedure. Because of a delay in the automated feature extraction, manual feature extraction was conducted
to mark all settlements to be visited by the data collection
teams in Soa Health District. Teams were sent with a local
guide to each health area within Soa Health District, and the
guides directed the teams to all settlements and other points
of interest.
The main data collection activity was conducted in December
2015. A training of trainers was conducted in Yaoundé by staff
from MOPH-HIU, EPI, WHO, BMGF, Nafundi, and CDC; the
trainees included the 13 local GIS experts and staff from each
of the 10 regional MOPH offices. After the training, technical
experts including CDC, WHO, and MOPH staff were sent to
each of Cameroon’s 10 regions to conduct the 2-day regional-level training for local staff and supervise the data collection activities. Local field activities were planned in part using
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office to update the maps and shapefiles using geographic information systems (GIS) to reflect all 189 health districts, as well
as to create for the first time a map showing the boundaries of
all 1798 health areas, the administrative level below health districts. The MOPH also requested to include locations of health
facilities, schools, churches, mosques, and markets to facilitate
polio immunization campaigns and other health interventions
that make use of these sites.
Importantly, nonpolio programs will also be able to access
and use these GIS base maps for their own epidemiological
data, illustrating the broader, lasting benefits from the polio
eradication program. Funding and technical support was provided by the Bill and Melinda Gates Foundation (BMGF), with
further technical support from the WHO Cameroon country
office, CDC, Nafundi, eHealth Africa (Nigeria), and Novel-T
(Geneva).
Example of Open Data Kit (ODK) data entry screens used by data collection teams.
available satellite imagery. Local MOPH staff were trained on
the use of the standard operating procedures and smartphones
for data collection.
The data collection field work was conducted during 15–20
December 2015. Each of the 189 health districts was visited by
a team of 2 surveyors comprised of a government health system employee and a data collector. In each health area, teams
were accompanied by a local guide with strong knowledge of
locations of settlements, health facilities, and other points of
interest. The data were automatically uploaded to the server, as
soon as the surveyor was in an area with cellphone network or
Wi-Fi reception.
During this process the WHO data manager in Yaoundé
monitored the submitted data in real time each day of the activity and provided timely feedback to surveyors who were having
technical issues. In addition, the HIU distributed a hard-copy
questionnaire to the health facilities visited by the data collection teams to collect more detailed information data for entry
into the DHIS2 system.
GIS Map Construction
Data consolidation and cleaning were conducted by GIS technicians and WHO and MOPH EPI data management staff during
January and February 2016, and then the GIS technicians at
HIU determined the borders of health areas based on GPS
points and local knowledge of the guides from the December
data collection. Thus, if the guide had indicated the location of
a health area border, the data collection team would take the
coordinates and any relevant notes regarding the border type
(such as being marked by a river, road, or other type of feature).
If a river or a road was listed as the border for a certain section
of the health area boundary, then the GPS points were taken
by the data collection team. Subsequently, those features were
traced from the satellite imagery using ArcGIS software by
the GIS consultants and were used to delineate the boundary
shapefile.
RESULTS
The pilot activity in Soa Health District was completed in 2 days,
and the results showed that the older map had been inaccurate
with significant differences between the old and new health area
boundaries, as seen in Figure 2. This illustrated the potential for
nationwide improvement of border accuracy through the process of data collection and redigitizing borders.
A total of 77 778 points of interest were visited from the 15
to 20 December 2015, and data with GPS coordinates were collected. After deleting incomplete or inaccurate data in Yaoundé,
75 809 were used in the map-making process. These included
20 741 settlements; 19 564 churches and mosques; 18 086
schools (nursery, primary, secondary, and university); 4775
health facilities (public, private, nongovernmental organization,
religion-affiliated); 3037 markets; and 9606 health area boundary points.
Compared to the microplan reference, 76.7% of settlements
were visited by the survey teams, as well as 65.2% of markets,
70.1% of schools, and 72.8% of churches and mosques. Some
missed settlements are in areas of Cameroon difficult to access,
for example, in the Far North Region with security challenges.
On the other hand, more health facilities were visited than
were registered; these extra facilities were comprised of unofficial or unregistered health facilities, pharmacies, and private
laboratories.
Using the methods described above, borders were drawn (or
redrawn if any digitized health area borders already existed) for
all 1798 health areas (Figure 3).
Figure 4 compares the old and new Cameroon health district borders. Distances between the old and new borders are
as large as 101 km as seen in Yoko health district in Centre
Region. There was a mean absolute change of 96% in the
area in square kilometers between the old and new health
districts. Health districts with a change in area of 200% or
more were all because of reductions, with the largest being
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Figure 1.
Soa health district health area boundaries, before (left) and after (right) pilot.
in Logbaba health district of Littoral region, which went
from 289 km2 in the old health district map to 13 km2 in the
new map.
As seen in Figure 5, there are areas of Cameroon such as in
the Far North in which accessibility was difficult, while in other
areas there was a relatively low density of settlements.
An example of the old hand-drawn microplan maps and new
digitally generated map can be seen in Figure 6, showing Belel
Health Area of Ngaoundéré Rural Health District. With the new
map district and health area, managers will have more accurate
tools for planning polio immunization campaigns and other
public health activities.
After the creation of the new maps, a cascade training on
their use was conducted, starting at the national level in March
2016. The training focused on mapping immunization data (ie,
Figure 3.
Figure 4.
Cameroon health area boundaries.
S340 • JID 2017:216 (Suppl 1) • Rosencrans et al
Cameroon health district borders.
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Figure 2.
Settlements located by data collection teams during 15–20 December
polio surveillance data, routine immunization coverage data,
postimmunization campaign survey data) using Quantum GIS
version 2.12 (QGIS).
Discussion
In this article, we described how the GPEI partners and the
government of Cameroon collaborated to create detailed health
area and health district maps for use in polio program planning, monitoring, and evaluation, as well as for use by nonpolio
health programs. We used satellite imagery and GPS-enabled
Figure 6.
Belel health area microplan maps, old (left) and new (right).
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Figure 5.
2015.
smartphones to delineate the 189 health districts and 1798
health areas used by the polio program, in addition to >75 000
geographic points of interest. We found that the new health district maps differed substantially from those used previously.
The WHO and MOPH are now using smartphones with
ODK mobile data collection software for several purposes,
including conducting postvaccination campaign quality
assessment surveys, AFP case investigations, supportive
supervision, and active surveillance visits to health facilities.
These and other health staff activities are now geolocated
to ensure that human resources are being deployed in the
expected geographic areas.
An important benefit of the upgraded GIS maps is their
use by other disease control programs within the Cameroon
Ministry of Public Health. The EPI routine immunization program used the maps and smartphones to monitor the April 2016
switch from trivalent to bivalent oral polio vaccine. The maps
are now based in the HIU, which is responsible for hosting and
maintaining the DHIS2, processing health statistics, and publishing and disseminating health data. DHIS2 contains data
from various programs such as Integrated Disease Surveillance
and Response (IDSR), EPI, Maternal Health, and Malaria [12].
IDSR and other disease control programs will be able to use the
GIS maps, increasing their analytic capability (O. Pasi, personal
communication).
The Cameroon MOPH’s newly formed Emergency Operations
Center (EOC) is planning to incorporate these GIS maps for use
in outbreak response. The EOC is housed within the Directorate
for the Fight Against Disease, Epidemics and Pandemics,
and data from DHIS2 will feed into an epidemiological data
S342 • JID 2017:216 (Suppl 1) • Rosencrans et al
these important tools for other disease control programs. The
improved GIS maps and the expansion of the use of smartphones with data collection capability throughout the MOPH
and WHO is an important example of the legacy of polio.
Notes
Acknowledgments. We thank the Cameroon Ministry of Public Health,
the Cameroon WHO Office, the MOPH Health Information Unit, the GIS
technician Joachim Etouna, GIS consultants, and the hundreds of data collectors and guides who made this project possible.
Financial support. Funding for this project was provided by the Bill
and Melinda Gates Foundation.
Supplement sponsorship. This work is part of a supplement coordinated by the Task Force for Global Health with funding provided by The
Bill and Melinda Gates Foundation and the Centers for Disease Control
and Prevention.
Potential conflicts of interest. All authors: No reported conflicts.
All authors have submitted the ICMJE Form for Disclosure of Potential
Conflicts of Interest. Conflicts that the editors consider relevant to the content of the manuscript have been disclosed.
References
1. World Health Organization. Government of Nigeria reports 2 wild polio cases,
first since July 2014. Geneva, Switzerland: WHO, 2016.
2. Hagan JE, Wassilak SG, Craig AS, et al; Centers for Disease Control and Prevention
(CDC). Progress toward polio eradication—worldwide, 2014-2015. MMWR
Morb Mortal Wkly Rep 2015; 64:527–31.
3. Endegue-Zanga MC, Sadeuh-Mba SA, Iber J, et al. Importation and outbreak
of wild polioviruses from 2000 to 2014 and interruption of transmission in
Cameroon. J Clin Virol 2016; 79:18–24.
4. Global Polio Eradication Initiative. Evaluation Independante de Fin de Flambee
Epidemique de Poliomyelite au Cameroun. Geneva, Switzerland: GPEI, 2015.
5. World Health Organization. Update on polio in central Africa—polio confirmed in
Equatorial Guinea, linked to outbreak in Cameroon. Geneva, Switzerland: WHO, 2014.
6. World Health Organization. WHO statement on the meeting of the International
Health Regulations Emergency Committee concerning the international spread
of wild poliovirus. http://www.who.int/mediacentre/news/statements/2014/polio20140505/en/. Accessed 4 August 2016.
7. Andre M, Wolff CG, Tangermann RH, et al; Centers for Disease Control and
Prevention. Assessing and mitigating the risks for polio outbreaks in polio-free
countries—Africa, 2013-2014. MMWR Morb Mortal Wkly Rep 2014; 63:756–61.
8. World Health Organization. Poliovirus in Cameroon—update. http://www.who.
int/csr/don/2014_09_06_polio/en/. Accessed 4 August 2016.
9. World Health Organization. Microplanning for immunization service delivery using
the Reaching Every District (RED) strategy. Geneva, Switzerland: WHO, 2009.
10. Barau I, Zubairu M, Mwanza MN, Seaman VY. Improving polio vaccination coverage in Nigeria through the use of geographic information system technology. J
Infect Dis 2014; 210(suppl 1):S102–10.
11. Agarwal S, Perry HB, Long LA, Labrique AB. Evidence on feasibility and effective
use of mHealth strategies by frontline health workers in developing countries: systematic review. Trop Med Int Health 2015; 20:1003–14.
12. Cameroon Ministry of Public Health. National Health Information System web
portal. http://cis-minsante.cm/. Accessed 6 August 2016.
Downloaded from https://academic.oup.com/jid/article/216/suppl_1/S337/3935058 by guest on 14 August 2022
dashboard at the EOC (O. Pasi, personal communication). Use
of the national GIS maps will greatly enhance the ability of the
EOC to analyze data and respond to outbreaks.
There is now a team of MOPH staff who have been trained on
the use of GIS software for epidemiological analysis of program
data. The HIU has uploaded new map images in PDF format
from this mapping project at region, health district, and health
area levels to the Cameroon MOPH website (https://www.
dhis-minsante-cm.org/portal/).
Future work will identify remaining missed settlements
through comparison with the villages identified through feature
extraction to determine which settlements had been missed
during the December 2015 fieldwork. These settlements can
then be targeted for visits by GPS teams, which will also visit
and collect data on previously missed health facilities, schools,
churches and mosques, and markets. Missed settlements can
also be visited and GPS coordinates attained during visits by
other means such as district or health area health staff visiting to
conduct postimmunization campaign surveys, or case investigations, as those activities are now conducted using GPS-enabled
smartphones. In addition, since the maps were distributed
nationwide, feedback has been gathered from each of the health
areas regarding the new maps. For example, personnel from a
few health areas and health districts have noted that the boundaries are in need of further modification, and this feedback will
be incorporated into the next phase of map editing.
This work shows how the technology and lessons learned
from polio eradication activities in Nigeria can be rapidly
applied and scaled up in other contexts. In Cameroon, field
activities took only 6 days, followed by only 2 months of desk
work to prepare maps. This relatively short exercise provides a
valuable resource for both the polio program and the MOPH
of Cameroon. This experience also shows how strong leadership and commitment from the MOPH can yield high-impact
results in a context of limited financial resources.
The existence of accurately geolocated features allows for
stronger program coordination and evaluation in Cameroon by
public health programs. While other disease control programs
in Cameroon have used GIS and smartphones in the past, the
expanded use of these tools for polio eradication has reinforced
and increased the capability of the Cameroon MOPH to use