Publication | Open Access
Epidemiological and time series analysis of haemorrhagic fever with renal syndrome from 2004 to 2017 in Shandong Province, China
20
Citations
29
References
2019
Year
Renal PathologyEpidemiological DynamicDiagnosisDisease OutbreakRenal SyndromeComputational EpidemiologyCovid-19Infectious Disease ModellingClinical EpidemiologyGeneralised Additive ModelHfrs IncidencePublic HealthChronic Kidney DiseaseInfectious Disease EpidemiologyKidney FailureShandong ProvinceDisease SurveillanceTime Series AnalysisEpidemiologyGlobal HealthInternational HealthMedicineNephrology
Shandong Province is an area of China with a high incidence of haemorrhagic fever with renal syndrome (HFRS); however, the general epidemic trend of HFRS in Shandong remains unclear. Therefore, we established a mathematical model to predict the incidence trend of HFRS and used Joinpoint regression analysis, a generalised additive model (GAM), and other methods to evaluate the data. Incidence data from the first half of 2018 were included in a range predicted by a modified sum autoregressive integrated moving average-support vector machine (ARIMA-SVM) combination model. The highest incidence of HFRS occurred in October and November, and the annual mortality rate decreased by 7.3% (p < 0.05) from 2004 to 2017. In cold months, the incidence of HFRS increased by 4%, -1%, and 0.8% for every unit increase in temperature, relative humidity, and rainfall, respectively; in warm months, this incidence changed by 2%, -3%, and 0% respectively. Overall, HFRS incidence and mortality in Shandong showed a downward trend over the past 10 years. In both cold and warm months, the effects of temperature, relative humidity, and rainfall on HFRS incidence varied. A modified ARIMA-SVM combination model could effectively predict the occurrence of HFRS.
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