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基于微分方程的动态增长过程预测的集成引导方法:在疫情爆发中的应用。

Ensemble bootstrap methodology for forecasting dynamic growth processes using differential equations: application to epidemic outbreaks.

机构信息

Department of Population Heath Sciences, School of Public Health, Georgia State University, Atlanta, GA, USA.

Division of International Epidemiology and Population Studies, Fogarty International Center, National Institutes of Health, Bethesda, MD, USA.

出版信息

BMC Med Res Methodol. 2021 Feb 14;21(1):34. doi: 10.1186/s12874-021-01226-9.

Abstract

BACKGROUND

Ensemble modeling aims to boost the forecasting performance by systematically integrating the predictive accuracy across individual models. Here we introduce a simple-yet-powerful ensemble methodology for forecasting the trajectory of dynamic growth processes that are defined by a system of non-linear differential equations with applications to infectious disease spread.

METHODS

We propose and assess the performance of two ensemble modeling schemes with different parametric bootstrapping procedures for trajectory forecasting and uncertainty quantification. Specifically, we conduct sequential probabilistic forecasts to evaluate their forecasting performance using simple dynamical growth models with good track records including the Richards model, the generalized-logistic growth model, and the Gompertz model. We first test and verify the functionality of the method using simulated data from phenomenological models and a mechanistic transmission model. Next, the performance of the method is demonstrated using a diversity of epidemic datasets including scenario outbreak data of the Ebola Forecasting Challenge and real-world epidemic data outbreaks of including influenza, plague, Zika, and COVID-19.

RESULTS

We found that the ensemble method that randomly selects a model from the set of individual models for each time point of the trajectory of the epidemic frequently outcompeted the individual models as well as an alternative ensemble method based on the weighted combination of the individual models and yields broader and more realistic uncertainty bounds for the trajectory envelope, achieving not only better coverage rate of the 95% prediction interval but also improved mean interval scores across a diversity of epidemic datasets.

CONCLUSION

Our new methodology for ensemble forecasting outcompete component models and an alternative ensemble model that differ in how the variance is evaluated for the generation of the prediction intervals of the forecasts.

摘要

背景

集成建模旨在通过系统地整合个体模型的预测准确性来提高预测性能。在这里,我们介绍了一种简单而强大的集成方法,用于预测由非线性微分方程系统定义的动态增长过程的轨迹,该方法可应用于传染病传播。

方法

我们提出并评估了两种具有不同参数引导程序的集成建模方案的性能,用于轨迹预测和不确定性量化。具体来说,我们进行了序贯概率预测,以使用具有良好记录的简单动力增长模型(包括 Richards 模型、广义 logistic 增长模型和 Gompertz 模型)来评估其预测性能。我们首先使用来自现象学模型和机械传播模型的模拟数据测试和验证该方法的功能。接下来,使用各种流行数据集(包括 Ebola 预测挑战赛的情景暴发数据和流感、鼠疫、寨卡病毒和 COVID-19 的真实世界流行数据暴发)演示该方法的性能。

结果

我们发现,对于流行轨迹的每个时间点,从个体模型集中随机选择一个模型的集成方法经常胜过个体模型以及基于个体模型加权组合的替代集成方法,并为轨迹包络产生更广泛和更现实的不确定性边界,不仅实现了更好的 95%预测区间覆盖率,而且提高了各种流行数据集的平均区间得分。

结论

我们的新集成预测方法在生成预测区间时如何评估方差方面与个体模型和替代集成模型不同,竞争优势明显。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f40c/7883439/72178af505b0/12874_2021_1226_Fig1_HTML.jpg

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