Estimating the spatial distribution of acute undifferentiated fever (AUF) and associated risk factors using emergency call data in India. A symptom-based approach for public health surveillance

B. Kauhl*, E. Pilot, R. Rao, O. Gruebner, J. Schweikart, T. Krafft

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

The System for Early-warning based on Emergency Data (SEED) is a pilot project to evaluate the use of emergency call data with the main complaint acute undifferentiated fever (AUF) for syndromic surveillance in India. While spatio-temporal methods provide signals to detect potential disease outbreaks, additional information about socio-ecological exposure factors and the main population at risk is necessary for evidence-based public health interventions and future preparedness strategies. The goal of this study is to investigate whether a spatial epidemiological analysis at the ecological level provides information on urban-rural inequalities, socio-ecological exposure factors and the main population at risk for AUF. Our results displayed higher risks in rural areas with strong local variation. Household industries and proximity to forests were the main socio-ecological exposure factors and scheduled tribes were the main population at risk for AUF. These results provide additional information for syndromic surveillance and could be used for evidence-based public health interventions and future preparedness strategies.
Original languageEnglish
Pages (from-to)111-119
Number of pages9
JournalHealth & Place
Volume31
DOIs
Publication statusPublished - 1 Jan 2015

Keywords

  • Acute undifferentiated fever (AUF)
  • Infectious diseases
  • Geographic information systems (GIS)
  • Spatial regression
  • India
  • MALARIA RISK
  • DENGUE
  • BANGLADESH
  • COMMUNITY
  • DETERMINANTS
  • TRANSMISSION
  • INFORMATION
  • COVERAGE
  • CASTE
  • GIS

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