| Literature DB >> 26738936 |
Jessie Pinchoff1, David A Larsen2,3, Silvia Renn4, Derek Pollard5, Christen Fornadel6, Mark Maire7, Chadwick Sikaala8, Chomba Sinyangwe9, Benjamin Winters10,11, Daniel J Bridges12, Anna M Winters13,14.
Abstract
BACKGROUND: In Zambia and other sub-Saharan African countries affected by ongoing malaria transmission, indoor residual spraying (IRS) for malaria prevention has typically been implemented over large areas, e.g., district-wide, and targeted to peri-urban areas. However, there is a recent shift in some countries, including Zambia, towards the adoption of a more strategic and targeted IRS approach, in coordination with increased emphasis on universal coverage of long-lasting insecticidal nets (LLINs) and effective insecticide resistance management. A true targeted approach would deliver IRS to sub-district areas identified as high-risk, with the goal of maximizing the prevention of malaria cases and deaths.Entities:
Mesh:
Substances:
Year: 2016 PMID: 26738936 PMCID: PMC4704423 DOI: 10.1186/s12936-015-1073-9
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Comparison of planning processes for IRS pre- and post-targeted approach
| Prior to targeted approach | Targeted approach | |
|---|---|---|
| IRS commodity planning | Commodities needed are estimated by multiplying the number of houses sprayed the previous year by an estimate of population growth | Commodities needed are calculated based on households mapped and targeted |
| IRS identification of structures | One month spent conducting a ground based census; stickers on doors identify households for spraying | One week spent enumerating structures from freely available satellite imagery through a desktop exercise |
| IRS targeting | Clusters of households identified for spraying based on geographic proximity to district health facilities and roads, and risk according to local knowledge | All households mapped, clusters of 25 or more households created, monthly health facility incidence calculated, clusters selected based on household density and clinical malaria incidence |
| IRS planning | Largely based on accessibility for spray teams and local knowledge/perception of malaria burden | Based on malaria incidence reported to health centers and population density, then subjected to local review |
| IRS implementation | Paper-based data recording | Mapped houses guide implementation. During IRS, all geographic positioning system (GPS) coordinates recorded in real-time allowing for ‘mop up’ of missed households |
| IRS surveillance | Malaria indicator survey (MIS) provides data on whether houses were sprayed. This survey occurs once every 3 years | All GPS coordinates for sprayed and unsprayed houses recorded for analysis |
Fig. 1A targeting methodology to define target areas and assign ranking based on population and malaria incidence. a Health facility incidence is calculated from the confirmed and unconfirmed incidence data. b Target areas are defined as clusters of ≥25 structures that all lie within a contiguous area generated using 50-m buffers around each structure. c The malaria incidence per target area is generated using the estimated population and nearest facility incidence. d Target areas are ranked with final inclusion/exclusion based on local knowledge