| Literature DB >> 30741240 |
Zhan Wang1, Serhan Dagtas1, John Talburt1, Ahmad Baghal2, Meredith Zozus2.
Abstract
Measuring and managing data quality in healthcare has remained largely uncharted territory with few notable exceptions. A rules-based approach to data error identification was explored through compilation of over 6,000 data quality rules used with healthcare data. The rules were categorized based on topic and logic yielding twenty-two rule templates and associated knowledge tables used by the rule templates. This work provides a scalable framework with which data quality rules can be organized, shared among facilities and reused. The ten most frequent data quality problems based on the initial rules results are identified. While there is significant additional work to be done in this area, the exploration of the rule template and associated knowledge tables approach here shows rules-based data quality assessment and monitoring to be possible and scalable.Entities:
Keywords: Electronic health records; data quality; data quality assessment
Mesh:
Year: 2019 PMID: 30741240 PMCID: PMC6692115
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630