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首页> 外文期刊>International Journal of Biometeorology: Journal of the International Society of Biometeorology >Using big data to predict pertussis infections in Jinan city, China: a time series analysis
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Using big data to predict pertussis infections in Jinan city, China: a time series analysis

机译:利用大数据预测济南市百日咳的感染:时间序列分析

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摘要

This study aims to use big data (climate data, internet query data and school calendar patterns (SCP)) to improve pertussis surveillance and prediction, and develop an early warning model for pertussis epidemics. We collected weekly pertussis notifications, SCP, climate and internet search query data (Baidu index (BI)) in Jinan, China between 2013 and 2017. Time series decomposition and temporal risk assessment were used for examining the epidemic features in pertussis infections. A seasonal autoregressive integrated moving average (SARIMA) model and regression tree model were developed to predict pertussis occurrence using identified predictors. Our study demonstrates clear seasonal patterns in pertussis epidemics, and pertussis activity was most significantly associated with BI at 2-week lag (r(BI) = 0.73, p < 0.05), temperature at 1-week lag (r(temp) = 0.19, p < 0.05) and rainfall at 2-week lag (r(rainfall) = 0.27, p < 0.05). No obvious relationship between pertussis peaks and school attendance was found in the study. Pertussis cases were more likely to be temporally concentrated throughout the epidemics during the study period. SARIMA models with 2-week-lagged BI and 1-week-lagged temperature had better predictive performance (beta(search query) = 0.06, p = 0.02; beta(temp) = 0.16, p = 0.03) with large correlation coefficients (r = 0.67, p < 0.01) and low root mean squared error (RMSE) value (r = 3.59). The regression tree model identified threshold values of potential predictors (search query, climate and SCP) for pertussis epidemics. Our results showed that internet query in conjunction with social and climatic data can predict pertussis epidemics, which is a foundation of using such data to develop early warning systems.
机译:本研究旨在使用大数据(气候数据,互联网查询数据和学校日历模式(SCP))来改善Pertussis监视和预测,并为Pertussis流行病制定早期预警模型。 2013年至2017年间,我们收集了每周百日咳通知,SCP,气候和互联网搜索查询数据(百度指数(BI))2013年至2017年间。时间序列分解和时间风险评估用于检查百日咳患者的流行病。开发了一种季节性自回归综合移动平均(Sarima)模型和回归树模型,以预测使用所识别的预测器的百日咳发生。我们的研究表明,Pertussis流行病中的清晰季节性模式,并且在2周滞后(R(BI)= 0.73,P <0.05),温度下,百日咳活动与BI,在1周滞后(R(TEMP)= 0.19 ,P <0.05)和2周LAG的降雨(R(降雨)= 0.27,P <0.05)。在该研究中发现了Pertussis Peaks和学校出勤之间没有明显的关系。在研究期间,百日咳病例更有可能在整个流行病中逐时集中。 Sarima模型具有2周滞后的BI和1周滞后的温度具有更好的预测性能(Beta(搜索查询)= 0.06,p = 0.02;β(TEMP)= 0.16,p = 0.03),具有大的相关系数(R = 0.67,p <0.01)和低根均方误差(RMSE)值(R = 3.59)。回归树模型确定了Pertussis流行病的潜在预测器(搜索查询,气候和SCP)的阈值。我们的结果表明,互联网查询与社会和气候数据结合可以预测Pertussis流行病,这是使用此类数据开发预警系统的基础。

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