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Disease surveillance based on Internet-based linear models: an Australian case study of previously unmodeled infection diseases

机译:基于基于互联网的线性模型的疾病监测:以前未建模的感染性疾病的澳大利亚案例研究

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Effective disease surveillance is critical to the functioning of health systems. Traditional approaches are, however, limited in their ability to deliver timely information. Internet-based surveillance systems are a promising approach that may circumvent many of the limitations of traditional health surveillance systems and provide more intelligence on cases of infection, including cases from those that do not use the healthcare system. Infectious disease surveillance systems built on Internet search metrics have been shown to produce accurate estimates of disease weeks before traditional systems and are an economically attractive approach to surveillance; they are, however, also prone to error under certain circumstances. This study sought to explore previously unmodeled diseases by investigating the link between Google Trends search metrics and Australian weekly notification data. We propose using four alternative disease modelling strategies based on linear models that studied the length of the training period used for model construction, determined the most appropriate lag for search metrics, used wavelet transformation for denoising data and enabled the identification of key search queries for each disease. Out of the twenty-four diseases assessed with Australian data, our nowcasting results highlighted promise for two diseases of international concern, Ross River virus and pneumococcal disease.
机译:有效的疾病监测对于卫生系统的运转至关重要。但是,传统方法在传递及时信息方面的能力有限。基于Internet的监视系统是一种有前途的方法,可以绕开传统健康监视系统的许多局限性,并提供有关感染病例(包括不使用医疗保健系统的病例)的更多情报。研究表明,基于互联网搜索指标的传染病监测系统可以在传统系统之前数周就得出准确的疾病估计值,并且在经济上具有吸引力。但是,它们在某些情况下也容易出错。这项研究旨在通过调查Google趋势搜索指标与澳大利亚每周通知数据之间的联系来探索以前无法建模的疾病。我们建议使用基于线性模型的四种替代疾病建模策略,这些策略研究用于模型构建的训练周期的长度,确定最合适的搜索指标滞后,使用小波变换去噪数据,并能够识别每个关键搜索查询疾病。在根据澳大利亚数据评估的24种疾病中,我们的临近预报结果突显了国际关注的两种疾病-罗斯河病毒和肺炎球菌疾病的前景。

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