Faculty of Geography, Yunnan Normal University, Kunming 650500, China.
GIS Technology Engineering Research Centre for West-China Resources and Environment of Educational Ministry, Yunnan Normal University, Kunming 650500, China.
Int J Environ Res Public Health. 2022 Aug 31;19(17):10877. doi: 10.3390/ijerph191710877.
The main purposes of this study were to explore the spatial distribution characteristics of H7N9 human infections during 2013-2017, and to construct a neural network risk simulation model of H7N9 outbreaks in China and evaluate their effects. First, ArcGIS 10.6 was used for spatial autocorrelation analysis, and cluster patterns ofH7N9 outbreaks were analyzed in China during 2013-2017 to detect outbreaks' hotspots. During the study period, the incidence of H7N9 outbreaks in China was high in the eastern and southeastern coastal areas of China, with a tendency to spread to the central region. Moran's I values of global spatial autocorrelation of H7N9 outbreaks in China from 2013 to 2017 were 0.080128, 0.073792, 0.138015, 0.139221 and 0.050739, respectively ( < 0.05) indicating a statistically significant positive correlation of the epidemic. Then, SPSS 20.0 was used to analyze the correlation between H7N9 outbreaks in China and population, livestock production, the distance between the case and rivers, poultry farming, poultry market, vegetation index, etc. Statistically significant influencing factors screened out by correlation analysis were population of the city, average vegetation of the city, and the distance between the case and rivers ( < 0.05), which were included in the neural network risk simulation model of H7N9 outbreaks in China. The simulation accuracy of the neural network risk simulation model of H7N9 outbreaks in China from 2013 to 2017 were 85.71%, 91.25%, 91.54%, 90.49% and 92.74%, and the AUC were 0.903, 0.976, 0.967, 0.963 and 0.970, respectively, showing a good simulation effect of H7N9 epidemics in China. The innovation of this study lies in the epidemiological study of H7N9 outbreaks by using a variety of technical means, and the construction of a neural network risk simulation model of H7N9 outbreaks in China. This study could provide valuable references for the prevention and control of H7N9 outbreaks in China.
本研究的主要目的是探讨 2013-2017 年 H7N9 人间感染的空间分布特征,并构建中国 H7N9 暴发的神经网络风险模拟模型并评估其效果。首先,使用 ArcGIS 10.6 进行空间自相关分析,分析 2013-2017 年中国 H7N9 暴发的聚集模式,以检测暴发热点。研究期间,中国东部和东南部沿海地区 H7N9 暴发的发病率较高,有向中部地区蔓延的趋势。2013 年至 2017 年,中国 H7N9 暴发的全局空间自相关 Morans I 值分别为 0.080128、0.073792、0.138015、0.139221 和 0.050739(<0.05),表明疫情呈统计学显著正相关。然后,使用 SPSS 20.0 分析中国 H7N9 暴发与人口、畜牧业生产、病例与河流的距离、家禽养殖、家禽市场、植被指数等之间的相关性。通过相关性分析筛选出具有统计学意义的影响因素,包括城市人口、城市平均植被和病例与河流的距离(<0.05),将其纳入中国 H7N9 暴发的神经网络风险模拟模型。2013-2017 年中国 H7N9 暴发的神经网络风险模拟模型的模拟准确率分别为 85.71%、91.25%、91.54%、90.49%和 92.74%,AUC 分别为 0.903、0.976、0.967、0.963 和 0.970,对中国 H7N9 疫情具有较好的模拟效果。本研究的创新之处在于运用多种技术手段对 H7N9 暴发进行流行病学研究,并构建中国 H7N9 暴发的神经网络风险模拟模型。本研究可为中国 H7N9 暴发的防控提供有价值的参考。