2022
DOI: 10.1016/j.scs.2022.103772
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Data-driven multiscale modelling and analysis of COVID-19 spatiotemporal evolution using explainable AI

Abstract: To quantificationally identify the optimal control measures for regulators to best minimize COVID-19’s growth (G-rate) and death (D-rate) rates in today's context, this paper develops a top-down multiscale engineering approach which encompasses a series of systematic analyses, namely: (global scale) predictive modelling of G-rate and D-rate due to COVID-19 globally, followed by determining the most effective control factors which can best minimize both parameters over time via explainable AI with SHAP (SHapley… Show more

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Cited by 8 publications
(12 citation statements)
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References 51 publications
(56 reference statements)
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“…The overwhelming majority of these were transmission model-based studies, with only 25 empirical studies meeting our criteria of reporting the real-world impact of testing and/or contact tracing together with some adjustments for confounding factors such as changes to other control measures or population characteristics. Of these 25 studies, 11 adopted a broad statistical approach and attempted to link coarse classification of control measures in multiple countries to their epidemiological dynamics [56,57,60,63,64,66,[70][71][72]75,78]; five considered detailed contact tracing data from either England [65,74,76] or Colombia [59,73]; four considered strategies for isolation after testing or notification as contacts [61,[67][68][69]; two considered within-country stringency of TTI-type controls in China [58] and South Korea [62]; with other papers focusing on the impact of mass-testing [10,77] and weekly testing of people without symptoms [20].…”
Section: Discussionmentioning
confidence: 99%
See 3 more Smart Citations
“…The overwhelming majority of these were transmission model-based studies, with only 25 empirical studies meeting our criteria of reporting the real-world impact of testing and/or contact tracing together with some adjustments for confounding factors such as changes to other control measures or population characteristics. Of these 25 studies, 11 adopted a broad statistical approach and attempted to link coarse classification of control measures in multiple countries to their epidemiological dynamics [56,57,60,63,64,66,[70][71][72]75,78]; five considered detailed contact tracing data from either England [65,74,76] or Colombia [59,73]; four considered strategies for isolation after testing or notification as contacts [61,[67][68][69]; two considered within-country stringency of TTI-type controls in China [58] and South Korea [62]; with other papers focusing on the impact of mass-testing [10,77] and weekly testing of people without symptoms [20].…”
Section: Discussionmentioning
confidence: 99%
“…(ii) Testing strategies (12 papers) Nine papers performed statistical analyses across multiple countries to assess the impact of changing patterns of control [57,63,64,66,[70][71][72]75,78], while three examined testing strategies in single countries [10,20,77]. Many of the cross-country studies used the OxCGRT [83] to inform the type and strength of epidemic controls in each country over time.…”
Section: (I) Contact Tracing (Seven Papers)mentioning
confidence: 99%
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“…Through learning the introduced data and improving the algorithms that are embedded in AI-based technologies, a fundamental transformation in the modelling and simulation mindset was reached. There have been various applications of AI used in different industries, such as energy [64][65][66][67][68][69][70], transportation [71], medicine [72][73][74][75], and various other natural sciences [76][77][78]. Furthermore, the use and implementation of traditional modelling methods have been enhanced by collaborating with AI-based machine learning tools [79][80][81].…”
Section: Artificial Intelligence (Ai) and Machine Learning (Ml)mentioning
confidence: 99%