Chen Chien-Chou, Teng Yung-Chu, Lin Bo-Cheng, Fan I-Chun, Chan Ta-Chien
Center for Geographic Information Science, Research Center for Humanities and Social Sciences, Academia Sinica, 128 Academia Road, Section 2, Nankang, Taipei, 115, Taiwan, ROC.
Institute of History and Philology, Academia Sinica, 128 Academia Road, Section 2, Nankang, Taipei, 115, Taiwan, ROC.
Int J Health Geogr. 2016 Nov 25;15(1):43. doi: 10.1186/s12942-016-0072-6.
Cases of dengue fever have increased in areas of Southeast Asia in recent years. Taiwan hit a record-high 42,856 cases in 2015, with the majority in southern Tainan and Kaohsiung Cities. Leveraging spatial statistics and geo-visualization techniques, we aim to design an online analytical tool for local public health workers to prospectively identify ongoing hot spots of dengue fever weekly at the village level.
A total of 57,516 confirmed cases of dengue fever in 2014 and 2015 were obtained from the Taiwan Centers for Disease Control (TCDC). Incorporating demographic information as covariates with cumulative cases (365 days) in a discrete Poisson model, we iteratively applied space-time scan statistics by SaTScan software to detect the currently active cluster of dengue fever (reported as relative risk) in each village of Tainan and Kaohsiung every week. A village with a relative risk >1 and p value <0.05 was identified as a dengue-epidemic area. Assuming an ongoing transmission might continuously spread for two consecutive weeks, we estimated the sensitivity and specificity for detecting outbreaks by comparing the scan-based classification (dengue-epidemic vs. dengue-free village) with the true cumulative case numbers from the TCDC's surveillance statistics.
Among the 1648 villages in Tainan and Kaohsiung, the overall sensitivity for detecting outbreaks increases as case numbers grow in a total of 92 weekly simulations. The specificity for detecting outbreaks behaves inversely, compared to the sensitivity. On average, the mean sensitivity and specificity of 2-week hot spot detection were 0.615 and 0.891 respectively (p value <0.001) for the covariate adjustment model, as the maximum spatial and temporal windows were specified as 50% of the total population at risk and 28 days. Dengue-epidemic villages were visualized and explored in an interactive map.
We designed an online analytical tool for front-line public health workers to prospectively detect ongoing dengue fever transmission on a weekly basis at the village level by using the routine surveillance data.
近年来,东南亚地区登革热病例有所增加。台湾在2015年登革热病例达42856例,创历史新高,其中大部分病例集中在南部的台南和高雄市。利用空间统计和地理可视化技术,我们旨在设计一种在线分析工具,供当地公共卫生工作者每周在村一级前瞻性地识别登革热的持续热点地区。
从台湾疾病管制中心(TCDC)获取了2014年和2015年共57516例登革热确诊病例。在离散泊松模型中,将人口统计学信息作为协变量与累积病例数(365天)相结合,我们每周通过SaTScan软件迭代应用时空扫描统计,以检测台南和高雄每个村庄当前活跃的登革热聚集区(报告为相对风险)。相对风险>1且p值<0.05的村庄被确定为登革热流行区。假设正在进行的传播可能连续持续两周,我们通过将基于扫描的分类(登革热流行村与无登革热村)与TCDC监测统计中的真实累积病例数进行比较,估计了检测疫情的敏感性和特异性。
在台南和高雄的1648个村庄中,在总共92次每周模拟中,随着病例数的增加,检测疫情的总体敏感性也随之提高。与敏感性相比,检测疫情的特异性表现相反。对于协变量调整模型,当最大空间和时间窗口分别指定为高危总人口的50%和28天时,两周热点检测的平均敏感性和特异性分别为0.615和0.891(p值<0.001)。登革热流行村在交互式地图中进行了可视化展示和探索。
我们设计了一种在线分析工具,供一线公共卫生工作者利用常规监测数据,每周在村一级前瞻性地检测正在进行的登革热传播情况。