| Literature DB >> 33267886 |
Adrienne Epstein1, Jane Frances Namuganga2, Emmanuel Victor Kamya2, Joaniter I Nankabirwa2,3, Samir Bhatt4, Isabel Rodriguez-Barraquer5, Sarah G Staedke6, Moses R Kamya2,3, Grant Dorsey5, Bryan Greenhouse5,7.
Abstract
BACKGROUND: Accurate measures of malaria incidence are essential to track progress and target high-risk populations. While health management information system (HMIS) data provide counts of malaria cases, quantifying the denominator for incidence using these data is challenging because catchment areas and care-seeking behaviours are not well defined. This study's aim was to estimate malaria incidence using HMIS data by adjusting the population denominator accounting for travel time to the health facility.Entities:
Keywords: Health facility; Health management information system; Incidence; Malaria; Surveillance; Uganda
Year: 2020 PMID: 33267886 PMCID: PMC7709253 DOI: 10.1186/s12936-020-03514-z
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Fig. 1Map Malaria Reference Centers and their catchment areas in Kihihi and Nagongera sub-counties
Summary statistics from health facility-based and cohort surveillance studies; September 2011–August 2014
| Data source | Metric | Study site | |
|---|---|---|---|
| Kihihi | Nagongera | ||
| Malaria Reference Centres | Outpatient visits for children aged 6 months–< 11 years | 20,742 | 28,156 |
| Outpatient visits for children aged 6 months–< 11 years from catchment area (percent of total) | 9,555 (46.1%) | 13,985 (49.7%) | |
| Malaria suspected from catchment area (percent of total from catchment area) | 8,497 (88.9%) | 12,401 (88.7%) | |
| Diagnostic test performed (percent of malaria suspected from catchment area) | 8,493 (99.9%) | 12,238 (98.7%) | |
| Tested positive for malaria in catchment area (percent of tested from catchment area) | 4,247 (50.0%) | 5,358 (43.8%) | |
| Cohort Studies | Number of children observed | 353 | 333 |
| Person-years of observation | 848 | 780 | |
| Number of episodes of malaria | 1,474 | 2,304 | |
| Incidence of malaria (new episodes per person-year) | 1.7 | 3.0 | |
Fig. 2Modelled relationship between travel time to the health facility and probability of attending the health facility (top) and map of village-level probabilities of attendance (bottom). The modelled relationships (top) were derived from non-linear Poisson generalized additive models; 95% confidence intervals are shaded in green and points on bottom represent the distribution of villages in the catchment area. Greyed out villages (bottom) represent villages in the subcounty not included in the catchment area
Fig. 3Incidence of malaria over the 3-year observation period measured in cohorts and using health facility-based surveillance
Malaria incidence PPY measured at surveillance sites from September 2011–August 2014
| Kihihi | Nagongera | Nagongera (pre-November 2013 LLIN distribution) | ||||
|---|---|---|---|---|---|---|
| 6 months to < 5 years | 5 years to < 11 years | 6 months to < 5 years | 5 years to < 11 years | 6 months to < 5 years | 5 years to < 11 years | |
| Cohort incidence | 1.79 | 1.70 | 3.95 | 2.29 | 3.72 | 2.11 |
| HMIS Weighted incidence | 1.01 | 1.11 | 1.99 | 0.63 | 2.22 | 0.67 |
| HMIS Unweighted incidence | 0.50 | 0.55 | 0.43 | 0.12 | 0.50 | 0.13 |
Fig. 4Absolute and relative differences between weighted and cohort incidence