https://scholars.lib.ntu.edu.tw/handle/123456789/559520
標題: | Containing COVID-19 among 627,386 persons in contact with the diamond princess cruise ship passengers who disembarked in Taiwan: Big data analytics Chen C.-M. Jyan H.-W. Chien S.-C. Jen H.-H. Hsu C.-Y. Lee P.-C. Lee C.-F. Yang Y.-T. Chen M.-Y. Chen L.-S. Chen H.-H. CHANG-CHUAN CHAN |
作者: | Chen C.-M. Jyan H.-W. Chien S.-C. Jen H.-H. Hsu C.-Y. Lee P.-C. Lee C.-F. Yang Y.-T. Chen M.-Y. Chen L.-S. Chen, Tony Hsiu Hsi CHANG-CHUAN CHAN |
公開日期: | 2020 | 出版社: | JMIR Publications Inc. | 卷: | 22 | 期: | 5 | 來源出版物: | Journal of Medical Internet Research | 摘要: | Background: Low infection and case-fatality rates have been thus far observed in Taiwan. One of the reasons for this major success is better use of big data analytics in efficient contact tracing and management and surveillance of those who require quarantine and isolation. Objective: We present here a unique application of big data analytics among Taiwanese people who had contact with more than 3000 passengers that disembarked at Keelung harbor in Taiwan for a 1-day tour on January 31, 2020, 5 days before the outbreak of coronavirus disease (COVID-19) on the Diamond Princess cruise ship on February 5, 2020, after an index case was identified on January 20, 2020. Methods: The smart contact tracing-based mobile sensor data, cross-validated by other big sensor surveillance data, were analyzed by the mobile geopositioning method and rapid analysis to identify 627,386 potential contact-persons. Information on self-monitoring and self-quarantine was provided via SMS, and severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) tests were offered for symptomatic contacts. National Health Insurance claims big data were linked, to follow-up on the outcome related to COVID-19 among those who were hospitalized due to pneumonia and advised to undergo screening for SARS-CoV-2. Results: As of February 29, a total of 67 contacts who were tested by reverse transcription-polymerase chain reaction were all negative and no confirmed COVID-19 cases were found. Less cases of respiratory syndrome and pneumonia were found after the follow-up of the contact population compared with the general population until March 10, 2020. Conclusions: Big data analytics with smart contact tracing, automated alert messaging for self-restriction, and follow-up of the outcome related to COVID-19 using health insurance data could curtail the resources required for conventional epidemiological contact tracing. ? 2020 Chi-Mai Chen, Hong-Wei Jyan, Shih-Chieh Chien, Hsiao-Hsuan Jen, Chen-Yang Hsu, Po-Chang Lee, Chun-Fu Lee, Yi-Ting Yang, Meng-Yu Chen, Li-Sheng Chen, Hsiu-Hsi Chen, Chang-Chuan Chan. |
URI: | https://www.scopus.com/inward/record.uri?eid=2-s2.0-85084276365&doi=10.2196%2f19540&partnerID=40&md5=38377f2422196e8e490f09bd469787ba https://scholars.lib.ntu.edu.tw/handle/123456789/559520 |
ISSN: | 1438-8871 | DOI: | 10.2196/19540 | SDG/關鍵字: | Article; big data; contact examination; coronavirus disease 2019; cross validation; disease surveillance; follow up; human; major clinical study; pneumonia; quarantine; retrospective study; reverse transcription polymerase chain reaction; screening test; self monitoring; Severe acute respiratory syndrome coronavirus 2; ship; Taiwan; Taiwanese; Betacoronavirus; contact examination; coronavirus disease 2019; Coronavirus infection; epidemic; geographic information system; health survey; isolation and purification; pandemic; procedures; social distance; Taiwan; virus pneumonia; Betacoronavirus; Big Data; Contact Tracing; Coronavirus Infections; Disease Outbreaks; Geographic Information Systems; Humans; Pandemics; Pneumonia, Viral; Public Health Surveillance; Quarantine; Retrospective Studies; Ships; Social Distance; Taiwan |
顯示於: | 環境與職業健康科學研究所 |
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