Optimisation of Non-Pharmaceutical Measures in COVID-19 Growth via Neural Networks

IEEE Trans Emerg Top Comput Intell. 2021 Jan 21;5(1):79-91. doi: 10.1109/TETCI.2020.3046012. eCollection 2021 Feb.

Abstract

On [Formula: see text] March, the World Health Organisation declared a pandemic. Through this global spread, many nations have witnessed exponential growth of confirmed cases brought under control by severe mass quarantine or lockdown measures. However, some have, through a different timeline of actions, prevented this exponential growth. Currently as some continue to tackle growth, others attempt to safely lift restrictions whilst avoiding a resurgence. This study seeks to quantify the impact of government actions in mitigating viral transmission of SARS-CoV-2 by a novel soft computing approach that makes concurrent use of a neural network model, to predict the daily slope increase of cumulative infected, and an optimiser, with a parametrisation of the government restriction time series, to understand the best set of mitigating actions. Data for two territories, Italy and Taiwan, have been gathered to model government restrictions in travelling, testing and enforcement of social distance measures as well as people connectivity and adherence to government actions. It is found that a larger and earlier testing campaign with tighter entry restrictions benefit both regions, resulting in significantly less confirmed cases. Interestingly, this scenario couples with an earlier but milder implementation of nationwide restrictions for Italy, thus supporting Taiwan's lack of nationwide lockdown, i.e. earlier government actions could have contained the growth to a degree that a widespread lockdown would have been avoided, or at least delayed. The results, found with a purely data-driven approach, are in line with the main findings of mathematical epidemiological models, proving that the proposed approach has value and that the data alone contains valuable knowledge to inform decision makers.

Keywords: BiLSTM; CNN; Covid-19; ELM; SARS-CoV-2; data gathering; epidemiology; optimisation.

Grants and funding

Research at Perimeter Institute is supported in part by the Government of Canada through the Department of Innovation, Science and Economic Development Canada and in part by the Province of Ontario through the Ministry of Colleges and Universities. The work of A. Riccardi was supported by SFC Scottish Funding Council. The work of J. Gemignani was supported by the ERC Consolidator under Grant 773202 ERC-2017-COG BabyRhythm. The work of F.-F. Navarro was supported by the Spanish Ministry of Science under Project ENE2017-88889-C2-1-R. The work of A. Heffernan was supported by the Natural Sciences and Engineering Research Council of Canada.