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DOT: a crowdsourcing Mobile application for disease outbreak detection and surveillance in Mauritius.
Khedo, Kavi; Baichoo, Shakuntala; Nagowah, Soulakshmee Devi; Mungloo-Dilmohamud, Zahra; Cadersaib, Zarine; Cheerkoot-Jalim, Sudha; Nagowah, Leckraj; Sookha, Lownish.
Afiliação
  • Khedo K; Department of Digital Technologies, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Baichoo S; Department of Digital Technologies, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Nagowah SD; Department of Software and Information Systems, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Mungloo-Dilmohamud Z; Department of Digital Technologies, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Cadersaib Z; Department of Software and Information Systems, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Cheerkoot-Jalim S; Department of Information and Communication Technologies, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Nagowah L; Department of Software and Information Systems, FoICDT, University of Mauritius, Réduit, Mauritius.
  • Sookha L; Department of Digital Technologies, FoICDT, University of Mauritius, Réduit, Mauritius.
Health Technol (Berl) ; 10(5): 1115-1127, 2020.
Article em En | MEDLINE | ID: mdl-32837807
ABSTRACT
Early detection of disease outbreaks is crucial and even small improvements in detection can significantly impact on a country's public health. In this work, we investigate the use of a crowdsourcing application and a real-time disease outbreak surveillance system for five diseases; Influenza, Gastroenteritis, Upper Respiratory Tract Infection (URTI), Scabies and Conjunctivitis, that are closely monitored in Mauritius. We also analyze and correlate the collected data with past statistics. A crowdsourcing mobile application known as Disease Outbreak Tracker (DOT) was implemented and made public. A real-time disease surveillance system using the Early Aberration Reporting System algorithm (EARS) for analysis of the collected data was also implemented. The collected data were correlated to historical data for 2017. Data were successfully collected and plotted on a daily basis. The results show that a few cases of Flu and Scabies were reported in some districts. The EARS methods C1, C2 and C3 also depicted spikes above the set threshold on some days. The study covers data collected over a period of one month. Once symptoms data were collected using DOT, probabilistic methods were used to find the disease or diseases that the user was suffering from. The data were further processed to find the extent of the disease outbreak district-wise, per disease. These data were represented graphically for a rapid understanding of the situation in each district. Our findings concur with existing data for the same period for previous years showing that the crowdsourcing application can aid in the detection of disease outbreaks.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2020 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2020 Tipo de documento: Article