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The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis

BACKGROUND: XBB.1.5 is a new subvariant of the SARS-CoV-2 Omicron variant with increased transmissibility and immune escape potential. Twitter has been used to share information and assess this subvariant. OBJECTIVES: This study aims to investigate the channel graph, key influencers, top sources, mo...

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Autores principales: Yuda Kusuma, Ikhwan, Pratiwi, Hening, Fitri Khairunnisa, Shafa, Ayu Eka Pitaloka, Dian, Arizandi Kurnianto, Arie
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10245456/
https://www.ncbi.nlm.nih.gov/pubmed/37317688
http://dx.doi.org/10.1016/j.jvacx.2023.100322
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author Yuda Kusuma, Ikhwan
Pratiwi, Hening
Fitri Khairunnisa, Shafa
Ayu Eka Pitaloka, Dian
Arizandi Kurnianto, Arie
author_facet Yuda Kusuma, Ikhwan
Pratiwi, Hening
Fitri Khairunnisa, Shafa
Ayu Eka Pitaloka, Dian
Arizandi Kurnianto, Arie
author_sort Yuda Kusuma, Ikhwan
collection PubMed
description BACKGROUND: XBB.1.5 is a new subvariant of the SARS-CoV-2 Omicron variant with increased transmissibility and immune escape potential. Twitter has been used to share information and assess this subvariant. OBJECTIVES: This study aims to investigate the channel graph, key influencers, top sources, most trends, and pattern discussion, as well as sentiment measures related to Covid-19 XBB.1.5 variant, by using social network analysis (SNA). METHODS: This experiment involved the collection of Twitter data through the keywords, “XBB.1.5″, and NodeXL, with the obtained information subsequently cleaned to remove duplication and irrelevant tweets. SNA was also performed by using analytical metrics to identify influential users and understand the patterns of connectivity among those discussing XBB.1.5. on Twitter. Moreover, the results were visualized through Gephi software, with sentiment analysis performed by using Azure Machine Learning to categorize tweets into three categories, namely positive, negative, and neutral. RESULTS: A total of 43,394 XBB.1.5-based tweets were identified, with five key users observed with the highest betweenness centrality score (BCS), namely “ojimakohei”(red), mikito_777 (blue), “nagunagumomo” (green), “erictopol” (orange), w2skwn3 (yellow). The other hand, the in-degree, out-degree, betweenness, closeness, and eigenvector centrality scores of the top 10 Twitter users to explain various patterns and trends and “ojimakohei” was highly central in the network. Most of the top domains (sources) used in XBB.1.5 discourse originated from Twitter, Japanese websites (co.jp and or.jp), and scientific analysis links (biorxiv.org and cdc.gov). This analysis indicated that most of the tweets (61.35 %) were positively classified, accompanied by neutral (22.44 %) and negative (16.20 %) sentiments. CONCLUSION: Japan was actively engaged in evaluating the XBB.1.5 variant, with influential users playing a crucial role. The preference for sharing verified sources and the positive sentiment demonstrated a commitment to health awareness. We recommend fostering collaborations between health organizations, the government, and Twitter influencers to address COVID-19-related misinformation and its variants.
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spelling pubmed-102454562023-06-07 The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis Yuda Kusuma, Ikhwan Pratiwi, Hening Fitri Khairunnisa, Shafa Ayu Eka Pitaloka, Dian Arizandi Kurnianto, Arie Vaccine X Regular paper BACKGROUND: XBB.1.5 is a new subvariant of the SARS-CoV-2 Omicron variant with increased transmissibility and immune escape potential. Twitter has been used to share information and assess this subvariant. OBJECTIVES: This study aims to investigate the channel graph, key influencers, top sources, most trends, and pattern discussion, as well as sentiment measures related to Covid-19 XBB.1.5 variant, by using social network analysis (SNA). METHODS: This experiment involved the collection of Twitter data through the keywords, “XBB.1.5″, and NodeXL, with the obtained information subsequently cleaned to remove duplication and irrelevant tweets. SNA was also performed by using analytical metrics to identify influential users and understand the patterns of connectivity among those discussing XBB.1.5. on Twitter. Moreover, the results were visualized through Gephi software, with sentiment analysis performed by using Azure Machine Learning to categorize tweets into three categories, namely positive, negative, and neutral. RESULTS: A total of 43,394 XBB.1.5-based tweets were identified, with five key users observed with the highest betweenness centrality score (BCS), namely “ojimakohei”(red), mikito_777 (blue), “nagunagumomo” (green), “erictopol” (orange), w2skwn3 (yellow). The other hand, the in-degree, out-degree, betweenness, closeness, and eigenvector centrality scores of the top 10 Twitter users to explain various patterns and trends and “ojimakohei” was highly central in the network. Most of the top domains (sources) used in XBB.1.5 discourse originated from Twitter, Japanese websites (co.jp and or.jp), and scientific analysis links (biorxiv.org and cdc.gov). This analysis indicated that most of the tweets (61.35 %) were positively classified, accompanied by neutral (22.44 %) and negative (16.20 %) sentiments. CONCLUSION: Japan was actively engaged in evaluating the XBB.1.5 variant, with influential users playing a crucial role. The preference for sharing verified sources and the positive sentiment demonstrated a commitment to health awareness. We recommend fostering collaborations between health organizations, the government, and Twitter influencers to address COVID-19-related misinformation and its variants. Elsevier 2023-06-07 /pmc/articles/PMC10245456/ /pubmed/37317688 http://dx.doi.org/10.1016/j.jvacx.2023.100322 Text en © 2023 The Author(s) https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Regular paper
Yuda Kusuma, Ikhwan
Pratiwi, Hening
Fitri Khairunnisa, Shafa
Ayu Eka Pitaloka, Dian
Arizandi Kurnianto, Arie
The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis
title The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis
title_full The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis
title_fullStr The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis
title_full_unstemmed The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis
title_short The assessment of Twitter discourse on the new COVID-19 variant, XBB.1.5, through social network analysis
title_sort assessment of twitter discourse on the new covid-19 variant, xbb.1.5, through social network analysis
topic Regular paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10245456/
https://www.ncbi.nlm.nih.gov/pubmed/37317688
http://dx.doi.org/10.1016/j.jvacx.2023.100322
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