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Forecasting influenza outbreak dynamics in Melbourne from Internet search query surveillance data

机译:通过互联网搜索查询监测数据预测墨尔本流感爆发的动态

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摘要

BACKGROUND: Accurate forecasting of seasonal influenza epidemics is of great concern to healthcare providers in temperate climates, as these epidemics vary substantially in their size, timing and duration from year to year, making it a challenge to deliver timely and proportionate responses. Previous studies have shown that Bayesian estimation techniques can accurately predict when an influenza epidemic will peak many weeks in advance, using existing surveillance data, but these methods must be tailored both to the target population and to the surveillance system. OBJECTIVES: Our aim was to evaluate whether forecasts of similar accuracy could be obtained for metropolitan Melbourne (Australia). METHODS: We used the bootstrap particle filter and a mechanistic infection model to generate epidemic forecasts for metropolitan Melbourne (Australia) from weekly Internet search query surveillance data reported by Google Flu Trends for 2006-14. RESULTS AND CONCLUSIONS: Optimal observation models were selected from hundreds of candidates using a novel approach that treats forecasts akin to receiver operating characteristic (ROC) curves. We show that the timing of the epidemic peak can be accurately predicted 4-6 weeks in advance, but that the magnitude of the epidemic peak and the overall burden are much harder to predict. We then discuss how the infection and observation models and the filtering process may be refined to improve forecast robustness, thereby improving the utility of these methods for healthcare decision support.
机译:背景:在温带气候下,对季节性流感流行的准确预测是医疗服务提供者极为关注的问题,因为这些流行的规模,时间和持续时间逐年大不相同,这使得及时,按比例地应对是一项挑战。先前的研究表明,贝叶斯估计技术可以使用现有的监视数据准确预测流感流行何时提前数周达到高峰,但是这些方法必须针对目标人群和监视系统进行调整。目的:我们的目的是评估是否可以为大都会墨尔本(澳大利亚)获得类似准确性的预测。方法:我们使用引导程序粒子过滤器和机制感染模型,根据Google Flu Trends在2006-14年度报告的每周互联网搜索查询监视数据生成了大都会墨尔本(澳大利亚)的流行病预测。结果与结论:使用一种新颖的方法来从数百名候选人中选择最佳观察模型,该方法可以处理类似于接收器工作特征(ROC)曲线的预测。我们显示,可以提前4-6周准确预测流行高峰的时间,但是难以预测流行高峰的大小和总体负担。然后,我们讨论如何完善感染和观察模型以及过滤过程以提高预测的鲁棒性,从而提高这些方法在医疗保健决策支持中的效用。

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