Litcius/Paper detail

DeepCOVID: An Operational Deep Learning-driven Framework for Explainable Real-time COVID-19 Forecasting

Alexander Rodríguez, Anika Tabassum, Jiaming Cui, Jiajia Xie, Javen Ho, Pulak Agarwal, Bijaya Adhikari, B. Aditya Prakash

2021Proceedings of the AAAI Conference on Artificial Intelligence48 citationsDOIOpen Access PDF

Abstract

How do we forecast an emerging pandemic in real time in a purely data-driven manner? How to leverage rich heterogeneous data based on various signals such as mobility, testing, and/or disease exposure for forecasting? How to handle noisy data and generate uncertainties in the forecast? In this paper, we present DeepCOVID, an operational deep learning framework designed for real-time COVID-19 forecasting. DeepCOVID works well with sparse data and can handle noisy heterogeneous data signals by propagating the uncertainty from the data in a principled manner resulting in meaningful uncertainties in the forecast. The deployed framework also consists of modules for both real-time and retrospective exploratory analysis to enable interpretation of the forecasts. Results from real-time predictions (featured on the CDC website and FiveThirtyEight.com) since April 2020 indicates that our approach is competitive among the methods in the COVID-19 Forecast Hub, especially for short-term predictions.

Topics & Concepts

Leverage (statistics)Computer scienceCoronavirus disease 2019 (COVID-19)Real-time dataDeep learningExploratory data analysisArtificial intelligenceData miningMachine learningInfectious disease (medical specialty)MedicineWorld Wide WebDiseasePathologyAnomaly Detection Techniques and ApplicationsCOVID-19 diagnosis using AIMachine Learning in Healthcare