2021
DOI: 10.1038/s41598-021-97207-5
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Spatiotemporal tracing of pandemic spread from infection data

Abstract: COVID-19, a global pandemic caused by the Severe Acute Respiratory Syndrome Coronavirus 2 virus, has claimed millions of lives worldwide. Amid soaring contagion due to newer strains of the virus, it is imperative to design dynamic, spatiotemporal models to contain the spread of infection during future outbreaks of the same or variants of the virus. The reliance on existing prediction and contact tracing approaches on prior knowledge of inter- or intra-zone mobility renders them impracticable. We present a spat… Show more

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Cited by 10 publications
(4 citation statements)
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References 27 publications
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“…These new data resources have shown the potential to increase spatio-temporal resolution and scale [31]. For this reason, human mobility analysis based on LBS data has been widely used during the pandemic to predict the spread of transmission [32], detect or monitor human behavior [33] and model risk [34] and mortality rate [35].…”
Section: Literature Reviewmentioning
confidence: 99%
“…These new data resources have shown the potential to increase spatio-temporal resolution and scale [31]. For this reason, human mobility analysis based on LBS data has been widely used during the pandemic to predict the spread of transmission [32], detect or monitor human behavior [33] and model risk [34] and mortality rate [35].…”
Section: Literature Reviewmentioning
confidence: 99%
“…Such as case prediction according to historical data ( 120 ), predicting the likelihood of an individual contracting an infectious disease according to personal and behavioral characteristics, using pathogen genetic makeup to identify the most likely sources of an outbreak, identifying or anticipating an epidemic by analyzing massive data; it can be used for early warning systems, hot spot detection, forecasting, and improving the recourses allocation at a country and a global level ( 68–72 ). After the exposure or presence of a potential outbreak, AI can advance in diagnostic approaches and differentiate various pathogens by using the pathogen genetic makeup, such as its ability to distinguish between COVID-19 and other circulating respiratory viruses with COVID-like symptoms ( 121 , 122 ).…”
Section: Ai In Infectious Diseasesmentioning
confidence: 99%
“…Roy et al introduce a spatiotemporal network-inference approach that uses a sliding window to scan daily infection numbers. The resultant temporal networks quantify the potential of inter-zone infection spread and help identify zones with a high outflow of link weights as ones acting as disease hotspots [103]. Zhang et al introduced a minimization formulation that determines the extent of intervention over a period of 𝐽 days in terms of the population size 𝑁 [104], measured as:…”
Section: Pandemic Prediction and Travel Policymentioning
confidence: 99%
“…Human behavior is another factor influencing the prediction of these modules, since the level of adherence to lockdown restrictions affects how promptly contagion can be mitigated [101]. Latest information on the number of hotspots and severity of outbreaks in them is necessary in drawing up public policies related to the pandemic [103].…”
Section: Details Of Intelligent Computation Modulesmentioning
confidence: 99%