Application of Executive Information System for COVID-19 Reporting
System and Management: An Example from DKI Jakarta, Indonesia
- URL: http://arxiv.org/abs/2108.09738v1
- Date: Sun, 22 Aug 2021 14:36:36 GMT
- Title: Application of Executive Information System for COVID-19 Reporting
System and Management: An Example from DKI Jakarta, Indonesia
- Authors: Verry Adrian, Intan Rachmita Sari and Hardya Gustada Hikmahrachim
- Abstract summary: Jakarta Department of Health built a data management system called Executive Information System of COVID-19 Reporting.
Main idea of EIS is to provide valid and actual information to stakeholders, which can then be presented in the form of a dashboard.
This could be the first time in Indonesia that a system reports near-actual data of nearly half a million people daily.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: SARS CoV-2 infection and transmission are problematic in developing countries
such as Indonesia. Due to the lack of an information system, Provinces must be
able to innovate in developing information systems related to surveillance of
SARS CoV-2 infection. Jakarta Department of Health built a data management
system called Executive Information System (EIS) of COVID-19 Reporting. EIS
aimed to provide actual data so that current epidemiological analysis is
accurate. The main idea of EIS is to provide valid and actual information to
stakeholders, which can then be presented in the form of a dashboard. EIS is
utilized to push data flow and management for rapid surveillance purposes. This
could be the first time in Indonesia that a system reports near-actual data of
nearly half a million people daily using an integrated system through a
transparent system. The main data presented is important to monitor and
evaluate COVID-19 transmission is the cumulative case dan daily case number.
Data in EIS also can offer data geographically so that a more detailed analysis
could be done. EIS's data and the dashboard help the government in pandemic
control by presenting actual data on bed occupancy and availability across
hospitals, especially isolation wards. Stakeholders, academic institutions
should utilize EIS data and other elements to help Indonesia fight COVID-19.
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