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A novel cohort analysis approach to determining the case fatality rate of COVID-19 and other infectious diseases

机译:一种新的群组分析方法,用于确定Covid-19和其他传染病的病例死亡率

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As the Coronavirus contagion develops, it is increasingly important to understand the dynamics of the disease. Its severity is best described by two parameters: its ability to spread and its lethality. Here, we combine a mathematical model with a cohort analysis approach to determine the range of case fatality rates (CFR). We use a logistical function to describe the exponential growth and subsequent flattening of COVID-19 CFR that depends on three parameters: the final CFR (L), the CFR growth rate (k), and the onset-to-death interval (t 0 ). Using the logistic model with specific parameters (L, k and t 0 ), we calculate the number of deaths each day for each cohort. We build an objective function that minimizes the root mean square error between the actual and predicted values of cumulative deaths and run multiple simulations by altering the three parameters. Using all of these values, we find out which set of parameters returns the lowest error when compared to the number of actual deaths. We were able to predict the CFR much closer to reality at all stages of the viral outbreak compared to traditional methods. This model can be used far more effectively than current models to estimate the CFR during an outbreak, allowing for better planning. The model can also help us better understand the impact of individual interventions on the CFR. With much better data collection and labeling, we should be able to improve our predictive power even further.
机译:随着冠状病毒传染的发展,了解疾病的动态越来越重要。其严重程度最好用两个参数描述:它传播的能力及其致命。在这里,我们将数学模型与群组分析方法相结合,以确定病例死亡率(CFR)的范围。我们使用物流功能来描述Covid-19 CFR的指数增长和随后的平坦化,这取决于三个参数:最终CFR(L),CFR生长速率(K)和发作到死亡间隔(T 0 )。使用具有特定参数的逻辑模型(L,K和T 0),我们计算每个队列每天的死亡人数。我们构建一个目标函数,最小化累积死亡的实际和预测值之间的根均方误差,并通过改变三个参数来运行多个模拟。使用所有这些值,我们发现与实际死亡数量相比,我们发现哪一组参数返回最低错误。与传统方法相比,我们能够预测病毒爆发的所有阶段的CFR更接近现实。该模型可以比当前模型更有效地使用,以估计爆发过程中的CFR,允许更好的规划。该模型还可以帮助我们更好地了解个人干预措施对CFR的影响。通过更好的数据收集和标签,我们应该能够进一步提高预测力。

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