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一种用于预测COVID-19疫情期间瑞士重症监护病房占用情况的混合神经网络-SEIR模型。

A hybrid Neural Network-SEIR model for forecasting intensive care occupancy in Switzerland during COVID-19 epidemics.

作者信息

Delli Compagni Riccardo, Cheng Zhao, Russo Stefania, Van Boeckel Thomas P

机构信息

Health Geography and Policy Group, ETH Zürich, Zürich, Switzerland.

Ecovision Lab, Photogrammetry and Remote Sensing, ETH Zürich, Zürich, Switzerland.

出版信息

PLoS One. 2022 Mar 3;17(3):e0263789. doi: 10.1371/journal.pone.0263789. eCollection 2022.

Abstract

Anticipating intensive care unit (ICU) occupancy is critical in supporting decision makers to impose (or relax) measures that mitigate COVID-19 transmission. Mechanistic approaches such as Susceptible-Infected-Recovered (SIR) models have traditionally been used to achieve this objective. However, formulating such models is challenged by the necessity to formulate equations for plausible causal mechanisms between the intensity of COVID-19 transmission and external epidemic drivers such as temperature, and the stringency of non-pharmaceutical interventions. Here, we combined a neural network model (NN) with a Susceptible-Exposed-Infected-Recovered model (SEIR) in a hybrid model and attempted to increase the prediction accuracy of existing models used to forecast ICU occupancy. Between 1st of October, 2020 - 1st of July, 2021, the hybrid model improved performances of the SEIR model at different geographical levels. At a national level, the hybrid model improved, prediction accuracy (i.e., mean absolute error) by 74%. At the cantonal and hospital levels, the reduction on the forecast's mean absolute error were 46% and 50%, respectively. Our findings illustrate those predictions from hybrid model can be used to anticipate occupancy in ICU, and support the decision-making for lifesaving actions such as the transfer of patients and dispatching of medical personnel and ventilators.

摘要

预测重症监护病房(ICU)的占用情况对于支持决策者实施(或放宽)减轻新冠病毒传播的措施至关重要。传统上,诸如易感-感染-康复(SIR)模型等机制方法被用于实现这一目标。然而,要制定这样的模型面临着挑战,即需要为新冠病毒传播强度与诸如温度等外部疫情驱动因素以及非药物干预措施的严格程度之间合理的因果机制制定方程。在此,我们将神经网络模型(NN)与易感-暴露-感染-康复模型(SEIR)相结合,构建了一个混合模型,并试图提高用于预测ICU占用情况的现有模型的预测准确性。在2020年10月1日至2021年7月1日期间,该混合模型在不同地理层面上提高了SEIR模型的性能。在国家层面,混合模型将预测准确性(即平均绝对误差)提高了74%。在州和医院层面,预测的平均绝对误差分别降低了46%和50%。我们的研究结果表明,混合模型的预测可用于预测ICU的占用情况,并支持诸如患者转运、医务人员和呼吸机调配等救生行动的决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6a8e/8893679/e9996e99f05c/pone.0263789.g001.jpg

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