Dengue nowcasting in Brazil by combining official surveillance data and Google Trends information

Yang Xiao, Guilherme Soares, Leonardo Bastos, Rafael Izbicki, Paula Moraga
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Abstract

Dengue is a mosquito-borne viral disease that poses significant public health challenges in tropical and sub-tropical regions worldwide. Surveillance systems are essential for dengue prevention and control. However, traditional systems often rely on delayed data, limiting their effectiveness. To address this, nowcasting methods are needed to estimate underreported cases, enabling more timely decision-making. This study evaluates the value of using Google Trends indices of dengue-related keywords to complement official dengue data for nowcasting dengue in Brazil, a country frequently affected by this disease. We compare various nowcasting approaches that incorporate autoregressive features from official dengue cases, Google Trends data, and a combination of both, using a naive approach as a baseline. The performance of these methods is evaluated by nowcasting weekly dengue cases from March to June 2024 across Brazilian states. Error measures and 95% coverage probabilities reveal that models incorporating Google Trends data enhance the accuracy of weekly nowcasts across states and offer valuable insights into dengue activity levels. To support real-time decision-making, we also present Dengue Tracker, a website that displays weekly dengue nowcasts and trends to inform both decision-makers and the public, improving situational awareness of dengue activity. In conclusion, the study demonstrates the value of digital data sources in enhancing dengue nowcasting, and emphasizes the value of integrating alternative data streams into traditional surveillance systems for better-informed decision-making.
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结合官方监测数据和谷歌趋势信息对巴西登革热进行预测
登革热是一种由蚊子传播的病毒性疾病,对全球热带和亚热带地区的公共卫生构成重大挑战。监测系统对登革热的预防和控制至关重要。然而,传统系统往往依赖于延迟数据,从而限制了其有效性。为解决这一问题,需要采用预报方法来估计漏报病例,以便更及时地做出决策。巴西是登革热疫情高发国家,本研究评估了使用谷歌登革热相关关键词趋势指数来补充官方登革热数据的价值。我们比较了纳入官方登革热病例自回归特征、Google Trends 数据以及两者结合的各种即时预测方法,并以一种简单的方法作为基线。通过对巴西各州 2024 年 3 月至 6 月的每周登革热病例进行预测,对这些方法的性能进行了评估。误差测量和 95% 的覆盖概率显示,包含谷歌趋势数据的模型提高了各州每周即时预测的准确性,并为登革热活动水平提供了有价值的见解。为了支持实时决策,我们还推出了登革热追踪网站,该网站显示每周登革热预报和趋势,为决策者和公众提供信息,提高对登革热活动的态势感知。总之,这项研究证明了数字数据源在加强登革热即时预报方面的价值,并强调了将其他数据流整合到传统监测系统中以做出更明智决策的价值。
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