High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea
The Middle East respiratory syndrome coronavirus (MERS-CoV) was exported to Korea in 2015, resulting in a threat to neighboring nations. We evaluated the possibility of using a digital surveillance system based on web searches and social media data to monitor this MERS outbreak. We collected the num...
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sg-smu-ink.sis_research-63312020-10-23T07:43:51Z High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea SHIN, Soo-Yong SEO, Dong-Woo AN, Jisun KWAK, Haewoon KIM, Sung-Han GWACK, Jin JO, Min-Woo The Middle East respiratory syndrome coronavirus (MERS-CoV) was exported to Korea in 2015, resulting in a threat to neighboring nations. We evaluated the possibility of using a digital surveillance system based on web searches and social media data to monitor this MERS outbreak. We collected the number of daily laboratory-confirmed MERS cases and quarantined cases from May 11, 2015 to June 26, 2015 using the Korean government MERS portal. The daily trends observed via Google search and Twitter during the same time period were also ascertained using Google Trends and Topsy. Correlations among the data were then examined using Spearman correlation analysis. We found high correlations (>0.7) between Google search and Twitter results and the number of confirmed MERS cases for the previous three days using only four simple keywords: "MERS", ("MERS (in Korean)"), ("MERS symptoms (in Korean)"), and ("MERS hospital (in Korean)"). Additionally, we found high correlations between the Google search and Twitter results and the number of quarantined cases using the above keywords. This study demonstrates the possibility of using a digital surveillance system to monitor the outbreak of MERS. 2016-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/5327 info:doi/10.1038/srep32920 https://ink.library.smu.edu.sg/context/sis_research/article/6331/viewcontent/High_correlation_of_Middle_East_respiratory_syndro.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Databases and Information Systems International and Area Studies Software Engineering |
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Databases and Information Systems International and Area Studies Software Engineering SHIN, Soo-Yong SEO, Dong-Woo AN, Jisun KWAK, Haewoon KIM, Sung-Han GWACK, Jin JO, Min-Woo High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea |
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The Middle East respiratory syndrome coronavirus (MERS-CoV) was exported to Korea in 2015, resulting in a threat to neighboring nations. We evaluated the possibility of using a digital surveillance system based on web searches and social media data to monitor this MERS outbreak. We collected the number of daily laboratory-confirmed MERS cases and quarantined cases from May 11, 2015 to June 26, 2015 using the Korean government MERS portal. The daily trends observed via Google search and Twitter during the same time period were also ascertained using Google Trends and Topsy. Correlations among the data were then examined using Spearman correlation analysis. We found high correlations (>0.7) between Google search and Twitter results and the number of confirmed MERS cases for the previous three days using only four simple keywords: "MERS", ("MERS (in Korean)"), ("MERS symptoms (in Korean)"), and ("MERS hospital (in Korean)"). Additionally, we found high correlations between the Google search and Twitter results and the number of quarantined cases using the above keywords. This study demonstrates the possibility of using a digital surveillance system to monitor the outbreak of MERS. |
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SHIN, Soo-Yong SEO, Dong-Woo AN, Jisun KWAK, Haewoon KIM, Sung-Han GWACK, Jin JO, Min-Woo |
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SHIN, Soo-Yong SEO, Dong-Woo AN, Jisun KWAK, Haewoon KIM, Sung-Han GWACK, Jin JO, Min-Woo |
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SHIN, Soo-Yong |
title |
High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea |
title_short |
High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea |
title_full |
High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea |
title_fullStr |
High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea |
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High correlation of Middle East respiratory syndrome spread with Google search and Twitter trends in Korea |
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high correlation of middle east respiratory syndrome spread with google search and twitter trends in korea |
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Institutional Knowledge at Singapore Management University |
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2016 |
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https://ink.library.smu.edu.sg/sis_research/5327 https://ink.library.smu.edu.sg/context/sis_research/article/6331/viewcontent/High_correlation_of_Middle_East_respiratory_syndro.pdf |
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