UK Centre for Ecology and Hydrology, Wallingford, United Kingdom.
Department of Health and Family Welfare Services, Government of Karnataka, Shivamogga, India.
PLoS Negl Trop Dis. 2020 Apr 7;14(4):e0008179. doi: 10.1371/journal.pntd.0008179. eCollection 2020 Apr.
Zoonotic diseases affect resource-poor tropical communities disproportionately, and are linked to human use and modification of ecosystems. Disentangling the socio-ecological mechanisms by which ecosystem change precipitates impacts of pathogens is critical for predicting disease risk and designing effective intervention strategies. Despite the global "One Health" initiative, predictive models for tropical zoonotic diseases often focus on narrow ranges of risk factors and are rarely scaled to intervention programs and ecosystem use. This study uses a participatory, co-production approach to address this disconnect between science, policy and implementation, by developing more informative disease models for a fatal tick-borne viral haemorrhagic disease, Kyasanur Forest Disease (KFD), that is spreading across degraded forest ecosystems in India. We integrated knowledge across disciplines to identify key risk factors and needs with actors and beneficiaries across the relevant policy sectors, to understand disease patterns and develop decision support tools. Human case locations (2014-2018) and spatial machine learning quantified the relative role of risk factors, including forest cover and loss, host densities and public health access, in driving landscape-scale disease patterns in a long-affected district (Shivamogga, Karnataka State). Models combining forest metrics, livestock densities and elevation accurately predicted spatial patterns in human KFD cases (2014-2018). Consistent with suggestions that KFD is an "ecotonal" disease, landscapes at higher risk for human KFD contained diverse forest-plantation mosaics with high coverage of moist evergreen forest and plantation, high indigenous cattle density, and low coverage of dry deciduous forest. Models predicted new hotspots of outbreaks in 2019, indicating their value for spatial targeting of intervention. Co-production was vital for: gathering outbreak data that reflected locations of exposure in the landscape; better understanding contextual socio-ecological risk factors; and tailoring the spatial grain and outputs to the scale of forest use, and public health interventions. We argue this inter-disciplinary approach to risk prediction is applicable across zoonotic diseases in tropical settings.
人畜共患病不成比例地影响资源匮乏的热带社区,并且与人对生态系统的使用和改造有关。理清生态系统变化引发病原体影响的社会生态机制对于预测疾病风险和设计有效的干预策略至关重要。尽管有全球“同一健康”倡议,但热带人畜共患病的预测模型通常侧重于狭窄范围的风险因素,并且很少扩展到干预计划和生态系统使用。本研究使用参与式、共同制定的方法来解决科学、政策和实施之间的这种脱节,为一种在印度退化森林生态系统中传播的致命蜱传病毒性出血热疾病 Kyasanur 森林病 (KFD) 开发更具信息性的疾病模型。我们整合了跨学科的知识,以确定与相关政策部门的利益相关者和受益人的关键风险因素和需求,以了解疾病模式并开发决策支持工具。人类病例地点(2014-2018 年)和空间机器学习量化了风险因素(包括森林覆盖和损失、宿主密度和公共卫生获取)在驱动长期受影响地区(卡纳塔克邦 Shivamogga 区)景观尺度疾病模式方面的相对作用。结合森林指标、牲畜密度和海拔的模型准确预测了人类 KFD 病例的空间模式(2014-2018 年)。与 KFD 是一种“生态过渡”疾病的说法一致,人类 KFD 风险较高的景观包含多样化的森林-种植园镶嵌体,具有高比例的湿润常绿森林和种植园、高密度的本土牛和低比例的干燥落叶林。模型预测了 2019 年新的暴发热点,表明它们对干预措施的空间定位具有价值。共同制定对于:收集反映景观中暴露地点的暴发数据;更好地了解背景社会生态风险因素;以及根据森林使用和公共卫生干预的规模调整空间粒度和输出至关重要。我们认为,这种跨学科的风险预测方法适用于热带地区的人畜共患病。