College of Geomatics, Shandong University of Science and Technology, Qingdao, 266590, China.
Geospatial Health, Ingerod, Brastad, Sweden.
BMC Infect Dis. 2021 Nov 22;21(1):1171. doi: 10.1186/s12879-021-06854-6.
"Schistosomiasis" is a highly recurrent parasitic disease that affects a wide range of areas and a large number of people worldwide. In China, schistosomiasis has seriously affected the life and safety of the people and restricted the economic development. Schistosomiasis is mainly distributed along the Yangtze River and in southern China. Anhui Province is located in the Yangtze River Basin of China, with dense water system, frequent floods and widespread distribution of Oncomelania hupensis that is the only intermediate host of schistosomiasis, a large number of cattle, sheep and other livestock, which makes it difficult to control schistosomiasis. It is of great significance to monitor and analyze spatiotemporal risk of schistosomiasis in Anhui Province, China. We compared and analyzed the optimal spatiotemporal interpolation model based on the data of schistosomiasis in Anhui Province, China and the spatiotemporal pattern of schistosomiasis risk was analyzed.
In this study, the root-mean-square-error (RMSE) and absolute residual (AR) indicators were used to compare the accuracy of Bayesian maximum entropy (BME), spatiotemporal Kriging (STKriging) and geographical and temporal weighted regression (GTWR) models for predicting the spatiotemporal risk of schistosomiasis in Anhui Province, China.
The results showed that (1) daytime land surface temperature, mean minimum temperature, normalized difference vegetation index, soil moisture, soil bulk density and urbanization were significant factors affecting the risk of schistosomiasis; (2) the spatiotemporal distribution trends of schistosomiasis predicted by the three methods were basically consistent with the actual trends, but the prediction accuracy of BME was higher than that of STKriging and GTWR, indicating that BME predicted the prevalence of schistosomiasis more accurately; and (3) schistosomiasis in Anhui Province had a spatial autocorrelation within 20 km and a temporal correlation within 10 years when applying the optimal model BME.
This study suggests that BME exhibited the highest interpolation accuracy among the three spatiotemporal interpolation methods, which could enhance the risk prediction model of infectious diseases thereby providing scientific support for government decision making.
“血吸虫病”是一种高度流行的寄生虫病,在全球范围内影响着广泛的地区和大量人群。在中国,血吸虫病严重影响了人民的生命安全和经济发展。血吸虫病主要分布在长江流域和中国南方。安徽省地处中国长江流域,水系密集,洪涝频繁,是唯一的血吸虫病中间宿主钉螺分布广泛,大量牛、羊等牲畜,血吸虫病难以控制。监测和分析安徽省血吸虫病的时空风险具有重要意义。我们比较和分析了基于中国安徽省血吸虫病数据的最优时空插值模型,并分析了血吸虫病风险的时空格局。
本研究采用均方根误差(RMSE)和绝对残差(AR)指标,比较了贝叶斯最大熵(BME)、时空克里金(STKriging)和地理时空加权回归(GTWR)模型预测中国安徽省血吸虫病时空风险的精度。
结果表明:(1)日间地表温度、平均最低温度、归一化植被指数、土壤水分、土壤容重和城市化是影响血吸虫病风险的显著因素;(2)三种方法预测的血吸虫病时空分布趋势与实际趋势基本一致,但 BME 的预测精度高于 STKriging 和 GTWR,表明 BME 对血吸虫病的流行程度预测更为准确;(3)应用最优模型 BME 时,安徽省血吸虫病在 20km 范围内具有空间自相关,在 10 年内具有时间相关。
本研究表明,BME 在三种时空插值方法中表现出最高的插值精度,能够增强传染病风险预测模型,为政府决策提供科学依据。