School of Geography and Environment, Jiangxi Normal University, Nanchang, 330022, China.
State Key Laboratory of Resources and Environmental Information System, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing, 100101, China.
BMC Public Health. 2020 Apr 10;20(1):479. doi: 10.1186/s12889-020-08607-7.
Hand, foot and mouth disease (HFMD) is a common infectious disease whose mechanism of transmission continues to remain a puzzle for researchers. The measurement and prediction of the HFMD incidence can be combined to improve the estimation accuracy, and provide a novel perspective to explore the spatiotemporal patterns and determinant factors of an HFMD epidemic.
In this study, we collected weekly HFMD incidence reports for a total of 138 districts in Shandong province, China, from May 2008 to March 2009. A Kalman filter was integrated with geographically weighted regression (GWR) to estimate the HFMD incidence. Spatiotemporal variation characteristics were explored and potential risk regions were identified, along with quantitatively evaluating the influence of meteorological and socioeconomic factors on the HFMD incidence.
The results showed that the average error covariance of the estimated HFMD incidence by district was reduced from 0.3841 to 0.1846 compared to the measured incidence, indicating an overall improvement of over 50% in error reduction. Furthermore, three specific categories of potential risk regions of HFMD epidemics in Shandong were identified by the filter processing, with manifest filtering oscillations in the initial, local and long-term periods, respectively. Amongst meteorological and socioeconomic factors, the temperature and number of hospital beds per capita, respectively, were recognized as the dominant determinants that influence HFMD incidence variation.
The estimation accuracy of the HFMD incidence can be significantly improved by integrating a Kalman filter with GWR and the integration is effective for exploring spatiotemporal patterns and determinants of an HFMD epidemic. Our findings could help establish more accurate HFMD prevention and control strategies in Shandong. The present study demonstrates a novel approach to exploring spatiotemporal patterns and determinant factors of HFMD epidemics, and it can be easily extended to other regions and other infectious diseases similar to HFMD.
手足口病(HFMD)是一种常见的传染病,其传播机制仍然是研究人员的一个难题。HFMD 发病率的测量和预测可以结合起来提高估计的准确性,并为探索 HFMD 流行的时空模式和决定因素提供新的视角。
本研究收集了 2008 年 5 月至 2009 年 3 月中国山东省共 138 个区的每周 HFMD 发病率报告。利用卡尔曼滤波与地理加权回归(GWR)相结合来估计 HFMD 发病率。探讨了时空变化特征,并确定了潜在的风险区域,同时定量评估了气象和社会经济因素对 HFMD 发病率的影响。
与实测发病率相比,各区估计的 HFMD 发病率的平均误差协方差从 0.3841 降低到 0.1846,表明误差减少了 50%以上。此外,通过滤波处理确定了山东省 HFMD 流行的三个特定的潜在风险区域类别,分别表现出初始、局部和长期的明显滤波波动。在气象和社会经济因素中,温度和人均病床数分别被认为是影响 HFMD 发病率变化的主要决定因素。
通过将卡尔曼滤波与 GWR 相结合,可以显著提高 HFMD 发病率的估计精度,并且这种结合对于探索 HFMD 流行的时空模式和决定因素是有效的。我们的研究结果有助于在山东省建立更准确的 HFMD 防控策略。本研究展示了一种探索 HFMD 流行的时空模式和决定因素的新方法,并且可以很容易地推广到其他地区和其他类似于 HFMD 的传染病。