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首页> 外文期刊>Malaria Journal >Development of temporal modelling for forecasting and prediction of malaria infections using time-series and ARIMAX analyses: A case study in endemic districts of Bhutan
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Development of temporal modelling for forecasting and prediction of malaria infections using time-series and ARIMAX analyses: A case study in endemic districts of Bhutan

机译:利用时间序列和ARIMAX分析发展预测和预测疟疾感染的时间模型:以不丹流行地区为例

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Background Malaria still remains a public health problem in some districts of Bhutan despite marked reduction of cases in last few years. To strengthen the country's prevention and control measures, this study was carried out to develop forecasting and prediction models of malaria incidence in the endemic districts of Bhutan using time series and ARIMAX. Methods This study was carried out retrospectively using the monthly reported malaria cases from the health centres to Vector-borne Disease Control Programme (VDCP) and the meteorological data from Meteorological Unit, Department of Energy, Ministry of Economic Affairs. Time series analysis was performed on monthly malaria cases, from 1994 to 2008, in seven malaria endemic districts. The time series models derived from a multiplicative seasonal autoregressive integrated moving average (ARIMA) was deployed to identify the best model using data from 1994 to 2006. The best-fit model was selected for each individual district and for the overall endemic area was developed and the monthly cases from January to December 2009 and 2010 were forecasted. In developing the prediction model, the monthly reported malaria cases and the meteorological factors from 1996 to 2008 of the seven districts were analysed. The method of ARIMAX modelling was employed to determine predictors of malaria of the subsequent month. Results It was found that the ARIMA (p, d, q) (P, D, Q)s model (p and P representing the auto regressive and seasonal autoregressive; d and D representing the non-seasonal differences and seasonal differencing; and q and Q the moving average parameters and seasonal moving average parameters, respectively and s representing the length of the seasonal period) for the overall endemic districts was (2,1,1)(0,1,1)12; the modelling data from each district revealed two most common ARIMA models including (2,1,1)(0,1,1)12 and (1,1,1)(0,1,1)12. The forecasted monthly malaria cases from January to December 2009 and 2010 varied from 15 to 82 cases in 2009 and 67 to 149 cases in 2010, where population in 2009 was 285,375 and the expected population of 2010 to be 289,085. The ARIMAX model of monthly cases and climatic factors showed considerable variations among the different districts. In general, the mean maximum temperature lagged at one month was a strong positive predictor of an increased malaria cases for four districts. The monthly number of cases of the previous month was also a significant predictor in one district, whereas no variable could predict malaria cases for two districts. Conclusions The ARIMA models of time-series analysis were useful in forecasting the number of cases in the endemic areas of Bhutan. There was no consistency in the predictors of malaria cases when using ARIMAX model with selected lag times and climatic predictors. The ARIMA forecasting models could be employed for planning and managing malaria prevention and control programme in Bhutan.
机译:背景疟疾在不丹一些地区仍然是一个公共卫生问题,尽管最近几年病例数明显减少。为了加强该国的预防和控制措施,本研究使用时间序列和ARIMAX建立了不丹流行区疟疾发病率的预测和预测模型。方法这项研究是使用卫生部每月报告的疟疾病例和媒介传播疾病控制计划(VDCP)以及经济部能源部气象部门的气象数据进行的回顾性研究。对1994年至2008年期间七个疟疾流行区的每月疟疾病例进行了时间序列分析。使用从1994年至2006年的数据,从可乘季节性自回归综合移动平均值(ARIMA)得出的时间序列模型来确定最佳模型。为每个地区选择了最合适的模型,并为整个地方病流行区域开发了模型。预测了2009年1月至12月和2010年的月度病例。在建立预测模型的过程中,分析了七个地区1996年至2008年每月报告的疟疾病例和气象因素。 ARIMAX建模方法用于确定下个月疟疾的预测指标。结果发现ARIMA(p,d,q)(P,D,Q)s模型(p和P代表自回归和季节自回归; d和D代表非季节差异和季节差异;以及q和Q分别为整体流行地区的移动平均参数和季节性移动平均参数,s表示季节性流行区的长度,分别为(2,1,1)(0,1,1)12;每个地区的建模数据揭示了两个最常见的ARIMA模型,包括(2,1,1)(0,1,1)12和(1,1,1)(0,1,1)12。预测的2009年1月至2009年12月以及2010年的每月疟疾病例在2009年的15至82例,2010年的67至149例之间变化,2009年的人口为285,375,2010年的预期人口为289,085。 ARIMAX月度病例和气候因素模型显示了不同地区之间的巨大差异。通常,一个月的平均最高气温滞后是四个地区疟疾病例增加的有力的积极预测因素。前一个月的每月病例数也是一个地区的重要预测指标,而没有变量可以预测两个地区的疟疾病例。结论ARIMA时间序列分析模型可用于预测不丹流行地区的病例数。当使用带有选定滞后时间和气候预测因素的ARIMAX模型时,疟疾病例的预测因素之间并不一致。 ARIMA预测模型可用于不丹的疟疾预防和控制计划的规划和管理。

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