Data-Driven Modeling for Different Stages of Pandemic Response
- PMID: 33223629
- PMCID: PMC7667282
- DOI: 10.1007/s41745-020-00206-0
Data-Driven Modeling for Different Stages of Pandemic Response
Abstract
Some of the key questions of interest during the COVID-19 pandemic (and all outbreaks) include: where did the disease start, how is it spreading, who are at risk, and how to control the spread. There are a large number of complex factors driving the spread of pandemics, and, as a result, multiple modeling techniques play an increasingly important role in shaping public policy and decision-making. As different countries and regions go through phases of the pandemic, the questions and data availability also change. Especially of interest is aligning model development and data collection to support response efforts at each stage of the pandemic. The COVID-19 pandemic has been unprecedented in terms of real-time collection and dissemination of a number of diverse datasets, ranging from disease outcomes, to mobility, behaviors, and socio-economic factors. The data sets have been critical from the perspective of disease modeling and analytics to support policymakers in real time. In this overview article, we survey the data landscape around COVID-19, with a focus on how such datasets have aided modeling and response through different stages so far in the pandemic. We also discuss some of the current challenges and the needs that will arise as we plan our way out of the pandemic.
© Indian Institute of Science 2020.
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Update of
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Data-driven modeling for different stages of pandemic response.ArXiv [Preprint]. 2020 Sep 21:arXiv:2009.10018v1. ArXiv. 2020. Update in: J Indian Inst Sci. 2020;100(4):901-915. doi: 10.1007/s41745-020-00206-0. PMID: 32995364 Free PMC article. Updated. Preprint.
References
-
- Adhikari B, Xu X, Ramakrishnan N, Prakash BA (2019) Epideep: exploiting embeddings for epidemic forecasting. In: Proceedings of the 25th ACM SIGKDD international conference on knowledge discovery & data mining, KDD’19, pp 577–586, New York, NY, USA, 2019. Association for Computing Machinery. 10.1145/3292500.3330917.
-
- Perone G (2020) An arima model to forecast the spread and the final size of covid-2019 epidemic in Italy (first version on SSRN 31 March). SSRN Electron J
-
- Reich NG, McGowan CJ, Yamana TK, Tushar A, Ray EL, Osthus D, Kandula S, Brooks LC, Crawford-Crudell W, Gibson GC, Moore E, Silva R, Biggerstaff M, Johansson MA, Rosenfeld R, Shaman JL (2019) Accuracy of real-time multi-model ensemble forecasts for seasonal influenza in the U.S. PLoS Comput Biol 15 - PMC - PubMed
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