Merkord Christopher L, Liu Yi, Mihretie Abere, Gebrehiwot Teklehaymanot, Awoke Worku, Bayabil Estifanos, Henebry Geoffrey M, Kassa Gebeyaw T, Lake Mastewal, Wimberly Michael C
Geospatial Sciences Center of Excellence, South Dakota State University, Brookings, SD, USA.
Department of Electrical Engineering and Computer Science, South Dakota State University, Brookings, SD, USA.
Malar J. 2017 Feb 23;16(1):89. doi: 10.1186/s12936-017-1735-x.
Early indication of an emerging malaria epidemic can provide an opportunity for proactive interventions. Challenges to the identification of nascent malaria epidemics include obtaining recent epidemiological surveillance data, spatially and temporally harmonizing this information with timely data on environmental precursors, applying models for early detection and early warning, and communicating results to public health officials. Automated web-based informatics systems can provide a solution to these problems, but their implementation in real-world settings has been limited.
The Epidemic Prognosis Incorporating Disease and Environmental Monitoring for Integrated Assessment (EPIDEMIA) computer system was designed and implemented to integrate disease surveillance with environmental monitoring in support of operational malaria forecasting in the Amhara region of Ethiopia. A co-design workshop was held with computer scientists, epidemiological modelers, and public health partners to develop an initial list of system requirements. Subsequent updates to the system were based on feedback obtained from system evaluation workshops and assessments conducted by a steering committee of users in the public health sector.
The system integrated epidemiological data uploaded weekly by the Amhara Regional Health Bureau with remotely-sensed environmental data freely available from online archives. Environmental data were acquired and processed automatically by the EASTWeb software program. Additional software was developed to implement a public health interface for data upload and download, harmonize the epidemiological and environmental data into a unified database, automatically update time series forecasting models, and generate formatted reports. Reporting features included district-level control charts and maps summarizing epidemiological indicators of emerging malaria outbreaks, environmental risk factors, and forecasts of future malaria risk.
Successful implementation and use of EPIDEMIA is an important step forward in the use of epidemiological and environmental informatics systems for malaria surveillance. Developing software to automate the workflow steps while remaining robust to continual changes in the input data streams was a key technical challenge. Continual stakeholder involvement throughout design, implementation, and operation has created a strong enabling environment that will facilitate the ongoing development, application, and testing of the system.
新兴疟疾疫情的早期迹象可为积极干预提供契机。识别新出现的疟疾疫情面临诸多挑战,包括获取近期的流行病学监测数据、在空间和时间上使这些信息与环境先兆的及时数据相协调、应用早期检测和预警模型以及将结果传达给公共卫生官员。基于网络的自动化信息系统可为这些问题提供解决方案,但其在实际环境中的应用一直有限。
设计并实施了疾病与环境监测综合评估的疫情预测(EPIDEMIA)计算机系统,以整合疾病监测与环境监测,支持埃塞俄比亚阿姆哈拉地区的疟疾业务预测。与计算机科学家、流行病学建模人员和公共卫生合作伙伴举办了一次联合设计研讨会,以制定系统需求的初始清单。系统的后续更新基于从系统评估研讨会以及公共卫生部门用户指导委员会进行的评估中获得的反馈。
该系统将阿姆哈拉地区卫生局每周上传的流行病学数据与可从在线档案中免费获取的遥感环境数据进行整合。环境数据由EASTWeb软件程序自动获取和处理。还开发了额外的软件来实现数据上传和下载的公共卫生接口,将流行病学和环境数据整合到一个统一的数据库中,自动更新时间序列预测模型,并生成格式化报告。报告功能包括区级控制图和地图,总结新出现的疟疾疫情的流行病学指标、环境风险因素以及未来疟疾风险预测。
成功实施和使用EPIDEMIA是在利用流行病学和环境信息系统进行疟疾监测方面向前迈出的重要一步。开发软件以自动化工作流程步骤,同时对输入数据流的持续变化保持稳健性是一项关键技术挑战。在设计、实施和运营的整个过程中,利益相关者的持续参与营造了一个强大的支持环境,将有助于系统的持续开发、应用和测试。