论文标题

时间序列方法和合奏模型,以在巴西州一级登革

Time Series Methods and Ensemble Models to Nowcast Dengue at the State Level in Brazil

论文作者

Kempfert, Katherine, Martinez, Kaitlyn, Siraj, Amir, Conrad, Jessica, Fairchild, Geoffrey, Ziemann, Amanda, Parikh, Nidhi, Osthus, David, Generous, Nicholas, Del Valle, Sara, Manore, Carrie

论文摘要

通过建议公共卫生干预措施和个人预防措施,预测传染病可以帮助减少其影响。据报道,新型数据流(例如互联网和社交媒体数据)有益于传染病预测。作为对巴西登革热的案例研究,我们在其27个州跨越了七年的27个州,将多个传统和非传统的,异质的数据流(卫星图像,互联网,天气和临床监视数据)结合在一起。对于每个状态,我们基于几个时间序列模型即将播放登革热,这些模型的复杂性和外源数据的包含都不同。表现最佳的模型因状态而有所不同,激发了我们对合奏方法的考虑,以自动将这些模型结合起来,从而在州一级更好地结合结果。模型比较表明,尽管仅包括一个外源数据流(无论是天气数据或新型卫星数据)而不是将所有数据组合在一起,但可以通过增加外源数据来改善预测,尽管可以实现相似的性能。我们的结果表明,可以以高准确性和信心在州层面进行凝聚,告知每个单独数据流的效用,并揭示潜在的地理贡献者的预测性能。我们的工作可以扩展到巴西的其他空间水平,媒介传播疾病和国家,以便可以更有效地抑制传染病的传播。

Predicting an infectious disease can help reduce its impact by advising public health interventions and personal preventive measures. Novel data streams, such as Internet and social media data, have recently been reported to benefit infectious disease prediction. As a case study of dengue in Brazil, we have combined multiple traditional and non-traditional, heterogeneous data streams (satellite imagery, Internet, weather, and clinical surveillance data) across its 27 states on a weekly basis over seven years. For each state, we nowcast dengue based on several time series models, which vary in complexity and inclusion of exogenous data. The top-performing model varies by state, motivating our consideration of ensemble approaches to automatically combine these models for better outcomes at the state level. Model comparisons suggest that predictions often improve with the addition of exogenous data, although similar performance can be attained by including only one exogenous data stream (either weather data or the novel satellite data) rather than combining all of them. Our results demonstrate that Brazil can be nowcasted at the state level with high accuracy and confidence, inform the utility of each individual data stream, and reveal potential geographic contributors to predictive performance. Our work can be extended to other spatial levels of Brazil, vector-borne diseases, and countries, so that the spread of infectious disease can be more effectively curbed.

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