| Literature DB >> 32604591 |
Michelle Odlum1, Hwayoung Cho2, Peter Broadwell3, Nicole Davis4, Maria Patrao5, Deborah Schauer, Michael E Bales6, Carmela Alcantara7, Sunmoo Yoon8.
Abstract
We randomly extracted publicly available Tweets mentioning COVID-19 related terms (n=2,558,474 Tweets) from Tweet corpora collected daily using an API from Jan 21st to May 3rd, 2020. We applied a clustering algorithm to publicly available Tweets authored by African Americans (n=1,763) to detect topics and sentiment applying natural language processing (NLP). We visualized fifteen topics (four themes) using network diagrams (Newman modularity 0.74). Compared to the COVID-19 related Tweets authored by others, positive sentiments, cohesively encouraging online discussions (e.g., Black strong 27.1%, growing up Blacks 22.8%, support Black business 17.0%, how to build resilience 7.8%), and COVID-19 prevention behaviors (e.g., masks 4.7%, encouraging social distancing 9.4%) were uniquely observed in African American Twitter communities. Application of topic modeling techniques to streaming social media Twitter provides the foundation for research team insights regarding information and future virtual based intervention and social media based health disparity research for COVID-19.Entities:
Keywords: health disparities; pandemic; social media; virtual intervention
Mesh:
Year: 2020 PMID: 32604591 PMCID: PMC7728402 DOI: 10.3233/SHTI200484
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630