The outburst of COVID-19 in late 2019 was the start of a health crisis that shook the world and took millions of lives in the ensuing years. Many governments and health officials failed to arrest the rapid circulation of infection in their communities. The long incubation period and the large proportion of asymptomatic cases made COVID-19 particularly elusive to track. However, wastewater monitoring soon became a promising data source in addition to conventional indicators such as confirmed daily cases, hospitalizations, and deaths. Despite the consensus on the effectiveness of wastewater viral load data, there is a lack of methodological approaches that leverage viral load to improve COVID-19 forecasting. This paper proposes using deep learning to automatically discover the relationship between daily confirmed cases and viral load data. We trained one Deep Temporal Convolutional Networks (DeepTCN) and one Temporal Fusion Transformer (TFT) model to build a global forecasting model. We supplement the daily confirmed cases with viral loads and other socio-economic factors as covariates to the models. Our results suggest that TFT outperforms DeepTCN and learns a better association between viral load and daily cases. We demonstrated that equipping the models with the viral load improves their forecasting performance significantly. Moreover, viral load is shown to be the second most predictive input, following the containment and health index. Our results reveal the feasibility of training a location-agnostic deep-learning model to capture the dynamics of infection diffusion when wastewater viral load data is provided.
翻译:2019年后期,COVID-19的爆发是一场健康危机的开始,这场危机震撼了世界,在随后几年中夺走了数百万人的生命。许多政府和卫生官员未能阻止传染病在其社区迅速传播。长期的孕育期和大量无症状病例使得COVID-19特别难以追踪。然而,废水监测很快成为有希望的数据来源,除了常规指标外,如每日确诊病例、住院和死亡。尽管对废水病毒负荷数据的有效性达成了共识,但缺乏利用病毒负荷改进COVID-19预报的方法。本文提议利用深层次的学习来自动发现每日确诊病例和病毒负荷数据之间的关系。我们训练了一个深时热电动网络(DeptTCN)和热气变压变压变压器(TFTTTT)模型来建立一个全球预测模型。我们用病毒负荷和其他社会经济因素来补充每日确诊病例,作为模型的易变数。我们的结果表明,TFFPD超越了DeeptTCN的传播速度,并学习了病毒负荷和日存数据数据数据之间的更好联系。我们展示了病毒负荷和病毒预测。我们展示了数据,我们展示了数据,我们展示了它。我们的数据是用来改进了病毒预测。我们的数据。我们用来改进了病毒负荷和病毒预测。