$\alpha$-Satellite: An AI-driven System and Benchmark Datasets for
Hierarchical Community-level Risk Assessment to Help Combat COVID-19
- URL: http://arxiv.org/abs/2003.12232v1
- Date: Fri, 27 Mar 2020 04:44:53 GMT
- Title: $\alpha$-Satellite: An AI-driven System and Benchmark Datasets for
Hierarchical Community-level Risk Assessment to Help Combat COVID-19
- Authors: Yanfang Ye, Shifu Hou, Yujie Fan, Yiyue Qian, Yiming Zhang, Shiyu Sun,
Qian Peng, Kenneth Laparo
- Abstract summary: coronavirus disease (COVID-19) has infected more than 531,000 people with more than 24,000 deaths in at least 171 countries.
A growing number of areas reporting local sub-national community transmission would represent a significant turn for the worse in the battle against the novel coronavirus.
We propose and develop an AI-driven system (named $alpha$-Satellite, as an initial offering) to provide hierarchical community-level risk assessment.
- Score: 24.774285634657787
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The novel coronavirus and its deadly outbreak have posed grand challenges to
human society: as of March 26, 2020, there have been 85,377 confirmed cases and
1,293 reported deaths in the United States; and the World Health Organization
(WHO) characterized coronavirus disease (COVID-19) - which has infected more
than 531,000 people with more than 24,000 deaths in at least 171 countries - a
global pandemic. A growing number of areas reporting local sub-national
community transmission would represent a significant turn for the worse in the
battle against the novel coronavirus, which points to an urgent need for
expanded surveillance so we can better understand the spread of COVID-19 and
thus better respond with actionable strategies for community mitigation. By
advancing capabilities of artificial intelligence (AI) and leveraging the
large-scale and real-time data generated from heterogeneous sources (e.g.,
disease related data from official public health organizations, demographic
data, mobility data, and user geneated data from social media), in this work,
we propose and develop an AI-driven system (named $\alpha$-Satellite}, as an
initial offering, to provide hierarchical community-level risk assessment to
assist with the development of strategies for combating the fast evolving
COVID-19 pandemic. More specifically, given a specific location (either user
input or automatic positioning), the developed system will automatically
provide risk indexes associated with it in a hierarchical manner (e.g., state,
county, city, specific location) to enable individuals to select appropriate
actions for protection while minimizing disruptions to daily life to the extent
possible. The developed system and the generated benchmark datasets have been
made publicly accessible through our website. The system description and
disclaimer are also available in our website.
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