Kauhl Boris, Pilot Eva, Rao Ramana, Gruebner Oliver, Schweikart Jürgen, Krafft Thomas
Department of International Health, CAPHRI School of Public Health and Primary Care, Faculty of Health, Medicine and Life Sciences. Maastricht University, The Netherlands.
Department of Health, Ethics & Society, CAPHRI School of Public Health and Primary Care, Maastricht University, The Netherlands.
Health Place. 2015 Jan;31:111-9. doi: 10.1016/j.healthplace.2014.11.002. Epub 2014 Dec 5.
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.
基于应急数据的早期预警系统(SEED)是一个试点项目,旨在评估在印度将以急性未分化发热(AUF)为主诉的急救电话数据用于症状监测的情况。虽然时空方法能提供信号以检测潜在的疾病爆发,但对于循证公共卫生干预措施和未来的防范策略而言,还需要有关社会生态暴露因素以及主要风险人群的更多信息。本研究的目的是调查生态层面的空间流行病学分析是否能提供有关城乡不平等、社会生态暴露因素以及AUF主要风险人群的信息。我们的结果显示农村地区风险较高且存在很大的局部差异。家庭工业和靠近森林是主要的社会生态暴露因素,在册部落是AUF的主要风险人群。这些结果为症状监测提供了更多信息,可用于循证公共卫生干预措施和未来的防范策略。