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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Dec 20, 2020
Date Accepted: Apr 16, 2021
Date Submitted to PubMed: Jun 4, 2021

The final, peer-reviewed published version of this preprint can be found here:

Engagement With COVID-19 Public Health Measures in the United States: A Cross-sectional Social Media Analysis from June to November 2020

Massey D, Huang C, Lu Y, Cohen A, Oren Y, Moed T, Matzner P, Mahajan S, Caraballo C, Kumar N, Xue Y, Ding Q, Dreyer R, Roy B, Krumholz H

Engagement With COVID-19 Public Health Measures in the United States: A Cross-sectional Social Media Analysis from June to November 2020

J Med Internet Res 2021;23(6):e26655

DOI: 10.2196/26655

PMID: 34086593

PMCID: 8218897

Engagement with COVID-19 Public Health Measures in the United States: A Cross-Sectional Social Media Analysis from June to November 2020

  • Daisy Massey; 
  • Chenxi Huang; 
  • Yuan Lu; 
  • Alina Cohen; 
  • Yahel Oren; 
  • Tali Moed; 
  • Pini Matzner; 
  • Shiwani Mahajan; 
  • Cesar Caraballo; 
  • Navin Kumar; 
  • Yuchen Xue; 
  • Qinglan Ding; 
  • Rachel Dreyer; 
  • Brita Roy; 
  • Harlan Krumholz

ABSTRACT

Background:

The coronavirus disease 2019 (COVID-19) has continued to spread in the US and globally. Closely monitoring public engagement and perception of COVID-19 and preventive measures using social media data could provide important information for understanding the progress of current interventions and planning future programs.

Objective:

To measure the public’s behaviors and perceptions regarding COVID-19 and its daily life effects during the recent 5 months of the pandemic.

Methods:

Natural language processing (NLP) algorithms were used to identify COVID-19 related and unrelated topics in over 300 million online data sources from June 15 to November 15, 2020. Posts in the sample were geotagged, and sensitivity and specificity were both calculated to validate the classification of posts. The prevalence of discussion regarding these topics was measured over this time period and compared to daily case rates in the US.

Results:

The final sample size included 9,065,733 posts, 70% of which were sourced from the US. In October and November, discussion including mentions of COVID-19 and related health behaviors did not increase as it had from June to September, despite an increase in COVID-19 daily cases in the US beginning in October. Additionally, counter to reports from March and April, discussion was more focused on daily life topics (69%), compared with COVID-19 in general (37%) and COVID-19 public health measures (20%).

Conclusions:

There was a decline in COVID-19-related social media discussion sourced mainly from the US, even as COVID-19 cases in the US have increased to the highest rate since the beginning of the pandemic. Targeted public health messaging may be needed to ensure engagement in public health prevention measures until a vaccine is widely available to the public.


 Citation

Please cite as:

Massey D, Huang C, Lu Y, Cohen A, Oren Y, Moed T, Matzner P, Mahajan S, Caraballo C, Kumar N, Xue Y, Ding Q, Dreyer R, Roy B, Krumholz H

Engagement With COVID-19 Public Health Measures in the United States: A Cross-sectional Social Media Analysis from June to November 2020

J Med Internet Res 2021;23(6):e26655

DOI: 10.2196/26655

PMID: 34086593

PMCID: 8218897

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