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Published in: BMC Medical Informatics and Decision Making 1/2023

Open Access 01-12-2023 | Bronchial Asthma | Research Article

Development of a real-world database for asthma and COPD: The SingHealth-Duke-NUS-GSK COPD and Asthma Real-World Evidence (SDG-CARE) collaboration

Authors: Sean Shao Wei Lam, Andrew Hao Sen Fang, Mariko Siyue Koh, Sumitra Shantakumar, See-Hwee Yeo, David Bruce Matchar, Marcus Eng Hock Ong, Ken Mei Ting Poon, Liming Huang, Sudha Harikrishan, Dominique Milea, Des Burke, Dave Webb, Narayanan Ragavendran, Ngiap Chuan Tan, Chian Min Loo

Published in: BMC Medical Informatics and Decision Making | Issue 1/2023

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Abstract

Purpose

The SingHealth-Duke-GlaxoSmithKline COPD and Asthma Real-world Evidence (SDG-CARE) collaboration was formed to accelerate the use of Singaporean real-world evidence in research and clinical care. A centerpiece of the collaboration was to develop a near real-time database from clinical and operational data sources to inform healthcare decision making and research studies on asthma and chronic obstructive pulmonary disease (COPD).

Methods

Our multidisciplinary team, including clinicians, epidemiologists, data scientists, medical informaticians and IT engineers, adopted the hybrid waterfall-agile project management methodology to develop the SingHealth COPD and Asthma Data Mart (SCDM). The SCDM was developed within the organizational data warehouse. It pulls and maps data from various information systems using extract, transform and load (ETL) pipelines. Robust user testing and data verification was also performed to ensure that the business requirements were met and that the ETL pipelines were valid.

Results

The SCDM includes 199 data elements relevant to asthma and COPD. Data verification was performed and found the SCDM to be reliable. As of December 31, 2019, the SCDM contained 36,407 unique patients with asthma and COPD across the spectrum from primary to tertiary care in our healthcare system. The database updates weekly to add new data of existing patients and to include new patients who fulfil the inclusion criteria.

Conclusions

The SCDM was systematically developed and tested to support the use RWD for clinical and health services research in asthma and COPD. This can serve as a platform to provide research and operational insights to improve the care delivered to our patients.
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Metadata
Title
Development of a real-world database for asthma and COPD: The SingHealth-Duke-NUS-GSK COPD and Asthma Real-World Evidence (SDG-CARE) collaboration
Authors
Sean Shao Wei Lam
Andrew Hao Sen Fang
Mariko Siyue Koh
Sumitra Shantakumar
See-Hwee Yeo
David Bruce Matchar
Marcus Eng Hock Ong
Ken Mei Ting Poon
Liming Huang
Sudha Harikrishan
Dominique Milea
Des Burke
Dave Webb
Narayanan Ragavendran
Ngiap Chuan Tan
Chian Min Loo
Publication date
01-12-2023
Publisher
BioMed Central
Published in
BMC Medical Informatics and Decision Making / Issue 1/2023
Electronic ISSN: 1472-6947
DOI
https://doi.org/10.1186/s12911-022-02071-6

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