Establishing Data Warehouse to Improve Standardize Health Care Delivery:
A Protocol Development in Jakarta City
- URL: http://arxiv.org/abs/2108.09736v1
- Date: Sun, 22 Aug 2021 14:33:16 GMT
- Title: Establishing Data Warehouse to Improve Standardize Health Care Delivery:
A Protocol Development in Jakarta City
- Authors: Verry Adrian, Intan Rachmita Sari and Hardya Gustada Hikmahrachim
- Abstract summary: We planned to construct a data warehouse to provide a single integrated data center.
Data should be input to both the DHIS-2 system by Jakarta and the National Ministry of Health system.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Jakarta is a metropolitan city and among the most dense city in Indonesia.
Jakarta has 12 major indicators of standardize health care delivery (Standard
Pelayanan Minimum or SPM) derivates from Ministry of Health consists of
services related to maternal and neonatal health, school-aged population,
working-age population, elderly population, some specific conditions
(hypertension, diabetes, tuberculosis, HIV), and also mental health. We planned
to construct a data warehouse to provide a single integrated data center. In
the first phase (2021), we improve the system by giving responsibility to the
health Sub Department of Health of Administrative City for direct data input
into a data warehouse. This period also let an introduction and adaptation to
new data collection schemes by using a single entry for the first time. The
basic platform use for this system is District Health Information System 2
(DHIS-2), an open-source platform that has been used worldwide, including
Ministry of Health Republic of Indonesia. The major advantage of this data
warehouse is the simplicity and convenience to collect a wide data from a
different source and presenting it faster than using the conventional system.
Less data contradiction was also found between health programs with
intersecting data. During this transition phase, a double-work is made as data
should be input to both the DHIS-2 system by Jakarta and the National Ministry
of Health system, but an integration process is ongoing, and hopefully that in
2022 single data entry can be established.
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