Literature DB >> 33486527

STAN: spatio-temporal attention network for pandemic prediction using real-world evidence.

Junyi Gao1,2, Rakshith Sharma3, Cheng Qian1, Lucas M Glass1,4, Jeffrey Spaeder1, Justin Romberg3, Jimeng Sun2, Cao Xiao1.   

Abstract

OBJECTIVE: We aim to develop a hybrid model for earlier and more accurate predictions for the number of infected cases in pandemics by (1) using patients' claims data from different counties and states that capture local disease status and medical resource utilization; (2) utilizing demographic similarity and geographical proximity between locations; and (3) integrating pandemic transmission dynamics into a deep learning model.
MATERIALS AND METHODS: We proposed a spatio-temporal attention network (STAN) for pandemic prediction. It uses a graph attention network to capture spatio-temporal trends of disease dynamics and to predict the number of cases for a fixed number of days into the future. We also designed a dynamics-based loss term for enhancing long-term predictions. STAN was tested using both real-world patient claims data and COVID-19 statistics over time across US counties.
RESULTS: STAN outperforms traditional epidemiological models such as susceptible-infectious-recovered (SIR), susceptible-exposed-infectious-recovered (SEIR), and deep learning models on both long-term and short-term predictions, achieving up to 87% reduction in mean squared error compared to the best baseline prediction model.
CONCLUSIONS: By combining information from real-world claims data and disease case counts data, STAN can better predict disease status and medical resource utilization.
© The Author(s) 2021. Published by Oxford University Press on behalf of the American Medical Informatics Association.

Entities:  

Keywords:  deep learning; graph attention network, real world evidence; pandemic prediction

Mesh:

Year:  2021        PMID: 33486527      PMCID: PMC7928935          DOI: 10.1093/jamia/ocaa322

Source DB:  PubMed          Journal:  J Am Med Inform Assoc        ISSN: 1067-5027            Impact factor:   4.497


  9 in total

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Review 8.  An evaluation of prospective COVID-19 modelling studies in the USA: from data to science translation.

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9.  COUnty aggRegation mixup AuGmEntation (COURAGE) COVID-19 prediction.

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  9 in total

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