A Machine Learning-enabled SIR Model for Adaptive and Dynamic Forecasting of COVID-19

Peter Mortensen, Katharina Lauer, Stefan Petrus Rautenbach, Marco Gallotta, Natasha Sharapova, Ioannis Takkides, Michael Wright, Matthew Linley
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Abstract

The COVID-19 pandemic has posed significant challenges to public health systems worldwide, necessitating accurate and adaptable forecasting models to manage and mitigate its impacts. This study presents a novel forecasting framework based on a Machine Learning-enabled Susceptible-Infected-Recovered (ML-SIR) model with time-varying parameters to predict COVID-19 dynamics across multiple geographies. The model incorporates emergent patterns from reported time-series data to estimate new hospitalisations, hospitalised patients, and new deaths. Our framework adapts to the evolving nature of the pandemic by dynamically adjusting the infection rate parameter over time and using a Fourier series to capture oscillating patterns in the data. This approach improves upon traditional SIR and forecasting models, which often fail to account for the complex and shifting dynamics of COVID-19 due to new variants, changing public health interventions, and varying levels of immunity. Validation of the model was conducted using historical data from the United States, Italy, the United Kingdom, Canada, and Japan. The model's performance was evaluated based on the Mean Absolute Percentage Error (MAPE) and Absolute Percentage Error of Cumulative values (CAPE) for three-month forecast horizons. Results indicated that the model achieved an average MAPE of 32.5% for new hospitalisations, 34.4% for patients, and 34.8% for new deaths, for three-month forecasts. Notably, the model demonstrated superior accuracy compared to existing forecasting models with like-for-like disease metrics, countries and forecast horizons. The proposed ML-SIR model offers a robust and adaptable tool for forecasting COVID-19 dynamics, capable of adjusting to new time-series data and varying geographical contexts. This adaptability makes it suitable for localised hospital capacity planning, scenario modelling, and for application to other respiratory infectious diseases with similar transmission dynamics, such as influenza and RSV. By providing reliable forecasts, the model supports informed public health decision-making and resource allocation, enhancing preparedness and response efforts.
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用于 COVID-19 自适应动态预测的机器学习 SIR 模型
COVID-19 大流行给全世界的公共卫生系统带来了重大挑战,因此需要准确且适应性强的预测模型来管理和减轻其影响。本研究提出了一种基于机器学习的易感-感染-康复(ML-SIR)模型的新型预测框架,该模型具有时变参数,可预测多个地区的 COVID-19 动态。该模型纳入了报告的时间序列数据中的新模式,以估计新的住院人数、住院病人和新的死亡人数。我们的框架通过随时间动态调整感染率参数,并使用傅立叶序列捕捉数据中的振荡模式,来适应大流行病不断变化的性质。传统的 SIR 和预测模型往往无法解释 COVID-19 因新变种、不断变化的公共卫生干预措施和不同的免疫水平而产生的复杂多变的动态变化,而这种方法改进了传统的 SIR 和预测模型。利用美国、意大利、英国、加拿大和日本的历史数据对该模型进行了验证。根据平均绝对百分比误差 (MAPE) 和累计值绝对百分比误差 (CAPE),对三个月预测范围内的模型性能进行了评估。结果表明,该模型在三个月的预测中,新增住院人数的平均绝对误差(MAPE)为 32.5%,新增病人的平均绝对误差(MAPE)为 34.4%,新增死亡人数的平均绝对误差(MAPE)为 34.8%。值得注意的是,与采用同类疾病指标、国家和预测范围的现有预测模型相比,该模型表现出更高的准确性。所提出的 ML-SIR 模型为 COVID-19 动态预测提供了一种稳健且适应性强的工具,能够根据新的时间序列数据和不同的地理环境进行调整。这种适应性使其适用于本地化医院能力规划、情景建模,并可应用于具有类似传播动态的其他呼吸道传染病,如流感和 RSV。通过提供可靠的预测,该模型可支持明智的公共卫生决策和资源分配,加强准备和应对工作。
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