| Literature DB >> 23514410 |
Gerard C Kelly1, Erick Hale, Wesley Donald, Willie Batarii, Hugo Bugoro, Johnny Nausien, John Smale, Kevin Palmer, Albino Bobogare, George Taleo, Andrew Vallely, Marcel Tanner, Lasse S Vestergaard, Archie C A Clements.
Abstract
BACKGROUND: A high-resolution surveillance-response system has been developed within a geographic information system (GIS) to support malaria elimination in the Pacific. This paper examines the application of a GIS-based spatial decision support system (SDSS) to automatically locate and map the distribution of confirmed malaria cases, rapidly classify active transmission foci, and guide targeted responses in elimination zones.Entities:
Mesh:
Year: 2013 PMID: 23514410 PMCID: PMC3618239 DOI: 10.1186/1475-2875-12-108
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Figure 1General location map of Solomon Islands and Vanuatu elimination provinces.
Summary of the technical components of the malaria elimination geospatial surveillance-response SDSS
| View / Map Positive Malaria Case Data | Automated synchronization between rapid case surveillance reporting database and GIS-based SDSS to geo-reference positive reported cases by household |
| | Positive case household mapping application to instantly view the spatial distribution of all geo-referenced positive reported cases via a GIS-based map |
| | Dialog window to enable SDSS-user to develop customized GIS maps of specific case data e.g. maps by species type, date range, and transmission mode to support epidemiological investigation |
| | Option to search, locate and access individual case data via a GIS-based map interface to support individual case investigation |
| Active Transmission Focus Mapping | GIS-based mapping application to automatically update, re-classify and map active transmission foci based on incoming reported positive cases; and epidemiological, entomological and environmental data |
| Current Area of Interest Focus Mapping | Interactive dialog window to enable SDSS-user to define the parameters to trigger current area of interests (AOI) i.e. The number of positive cases reported in a defined geographical radius of each other within a set time period |
| | Automated mapping application to generate current AOI maps to highlight current geographic locations to concentrate response actions based on user defined parameters |
| | Interactive map-based application to enable the SDSS-user to modify individual AOI regions automatically generated to adjust geographic areas based on local knowledge |
| | Automated GIS queries to extract specific data to support rapid response interventions within current AOI including general household and population summaries of all current AOIs; and historical case data, detailed household listings, and known larval site data by individual AOI |
| Health Facility Catchment Definition and Mapping | Interactive map-based application to draw and define health facility catchment boundaries via a graphical map interface |
| | Automated query to extract enumerated household lists and population data for individual catchment areas to support the geo-referencing at positive cases upon diagnosis and investigation |
| Automated queries to produce general health catchment summaries by total population and households; and detailed individual health catchment summaries by village, population, age breakdown and households |
Figure 2Spatial decision support system based malaria elimination surveillance-response framework. This schematic illustrates the SDSS-based framework adopted specifically for Isabel Province, Solomon Islands to guide surveillance-response operations. Key elements of the framework include: 1. Case detection and rapid notification via both passive and pro-active case detection methods; 2. Epidemiological case investigation and classification through automatic case mapping, and treatment and investigation of individual cases; 3. Focus investigation and classification via targeted re-active case detection and entomological assessment, historical case review, and automated GIS-based queries within the SDSS to classify and map transmission foci and generate response areas of interest (AOI); and 4. Focus specific targeted action based on identified AOI geographic areas and the classification of associated transmission foci (see Table 2).
Active and residual non-active transmission foci classification parameters and nominated response interventions adopted in Isabel province surveillance-response SDSS
| Residual active | - Transmission occurring in an area of ongoing transmission | All areas within a 3km geographical range of a positive case in an area that has had one or more additional positive recorded case within the last 3 months | Focal screening and treatment |
| | | | Larval source management |
| | - Effectively controlled with major reductions recorded after interventions | | Updated geographical reconnaissance |
| | | | Community Awareness |
| New active | - Transmission occurring in area that has had transmission for less than 2 years or has never had local transmission - 1st Degree: Only introduced cases present; 2nd Degree: Secondary and indigenous cases present | All areas within a 3km geographical range of a positive case in an area of known transmission but has not had an additional reported case within 3 months | Focal screening and treatment |
| | | | Focal indoor residual spraying Long lasting insecticidal net assessment and re-distribution as required Larval source management Updated geographical reconnaissance Community Awareness |
| New potential | - Isolated imported, induced or relapse cases occurring only | All areas within a 3km geographical range of an imported positive case in a known receptive area that has not had transmission for a period of 2 years | Focal screening and treatment |
| | | | Focal indoor residual spraying |
| | - Receptive area with no transmission for at least 2 years | | Long lasting insecticidal net assessment and re-distribution as required |
| | | | Larval source management |
| | | | Updated geographical reconnaissance |
| | | | Community Awareness |
| Residual Non-active | - History of local transmission however not within the last 2 years - Relapses or delayed primary infections with P. vivax or treatment failure of infection before transmission | All areas within a 3km geographical range of a relapsed case in a known receptive area that has not had transmission for a period of 2 years | Focal screening and treatment |
| Direct observed treatment and case follow-up Updated geographical reconnaissance Community Awareness |
Breakdown of 2011 case species type and suspected mode of transmission
| Isabel | 11 | 9 | 4 | 1 | 1 | 0 | 16 | 10 | 26 |
| Temotu | 125 | 5 | 8 | 2 | 1 | 0 | 134 | 7 | 141 |
| Tafea | 7 | 4 | 4 | 1 | 0 | 0 | 11 | 5 | 16 |
| Total | 143 | 18 | 16 | 4 | 2 | 0 | 161 | 22 | 183 |
1 Imported case is defined as an infection classified as being acquired outside of the respective elimination province.
Figure 3Malaria case distribution map, Isabel Province, Solomon Islands, 2011.
Figure 4Malaria case distribution map, Temotu Province, Solomon Islands, 2011.
Figure 5Malaria case distribution map, Tafea Province, Vanuatu, 2011.
Figure 6Current Area of Interest (AOI) map, Isabel Province, Solomon Islands, 31/12/2012. This map illustrates a “Current AOI map” generated using the Isabel Province surveillance-response SDSS for 31st December, 2011. The AOI area illustrated was automatically generated in the SDSS based on the AOI defined parameters of two or more malaria cases detected within a two kilometre radius of each other within the last 90 days of the current date (31/12/2012). Key elements of the automated map include: (i) the designation of the geographic AOI area to conduct response; (ii) the type of transmission focus the AOI is located within to guide the selection of nominated response interventions; (iii) the illustration and generation of household and population data within the AOI to support rapid resource allocation, costing, and field implementation of nominated interventions.
Proportion of cases detected and associated population and households located within SDSS generated areas of interest (AOI) of varying radius
| 26 | 141 | 16 | 183 | ||
| | 30167 | 21552 | 38635 | 90354 | |
| | 6410 | 5221 | 8850 | 20481 | |
| 69.23% | 75.89% | 18.75% | 69.95% | ||
| | | [ | [107] | [ | [128] |
| | 11.96% | 23.96% | 5.12% | 11.90% | |
| | | [3608] | [5163] | [1980] | [10751] |
| | 10.66% | 23.64% | 5.14% | 11.58% | |
| | | [683] | [1234] | [455] | [2372] |
| 80.77% | 75.89% | 31.25% | 72.13% | ||
| | | [ | [107] | [ | [132] |
| | 23.34% | 26.88% | 17.90% | 21.86% | |
| | | [7040] | [5793] | [6917] | [19750] |
| | 22.40% | 26.49% | 17.67% | 21.40% | |
| | | [1436] | [1383] | [1564] | [4383] |
| 92.31% | 75.89% | 50.00% | 75.41% | ||
| | | [ | [107] | [ | [138] |
| | 30.47% | 29.98% | 31.76% | 30.91% | |
| | | [9193] | [6461] | [12270] | [27924] |
| | 29.75% | 29.59% | 31.94% | 30.66% | |
| [1907] | [1545] | [2827] | [6279] |
(^Pop: Population; ^^HHs: Households; *2c1km90d AOI criteria: 2 or more cases within 1 km radius of each other within 90 days; **2c2km90d AOI criteria: 2 or more cases within 2 km radius of each other within 90 days; ***2c3km90d AOI criteria: 2 or more cases within 3 km radius of each other within 90 days).
Figure 7Proportion of positive case per month against detected AOI regions of varying geographic radius. Figure illustrates the temporal distribution of cases in each elimination province in relation to area of interests (AOI) of varying geographic radius 1 km, 2 km, 3 km. Figure shows the total number of cases reported by month and the proportion of those reported cases located within an active AOI geographical region based on the set parameters defined within the SDSS.
Time taken to report cases from health facility to Isabel provincial office during 2011
| Reported within 24 hours | 12 | 46.15% |
| Reported within 72 hours | 0 | 0% |
| Reported within 1 week | 9 | 34.62% |
| Reported within 1 month | 4 | 15.38% |
| Reported after 1 month | 1 | 3.85% |
Proportion of 2011 reported positive malaria cases successfully geo-located at the household level
| Isabel | 26 | 26 | 100.00 |
| Temotu | 141 | 110 | 78.01 |
| Tafea | 16 | 15 | 93.75 |
| Total | 183 | 151 | 82.51 |