Data quality assessment for comparative effectiveness research in distributed data networks.

View Abstract

BACKGROUND

Electronic health information routinely collected during health care delivery and reimbursement can help address the need for evidence about the real-world effectiveness, safety, and quality of medical care. Often, distributed networks that combine information from multiple sources are needed to generate this real-world evidence.

OBJECTIVE

We provide a set of field-tested best practices and a set of recommendations for data quality checking for comparative effectiveness research (CER) in distributed data networks.

METHODS

Explore the requirements for data quality checking and describe data quality approaches undertaken by several existing multi-site networks.

RESULTS

There are no established standards regarding how to evaluate the quality of electronic health data for CER within distributed networks. Data checks of increasing complexity are often used, ranging from consistency with syntactic rules to evaluation of semantics and consistency within and across sites. Temporal trends within and across sites are widely used, as are checks of each data refresh or update. Rates of specific events and exposures by age group, sex, and month are also common.

DISCUSSION

Secondary use of electronic health data for CER holds promise but is complex, especially in distributed data networks that incorporate periodic data refreshes. The viability of a learning health system is dependent on a robust understanding of the quality, validity, and optimal secondary uses of routinely collected electronic health data within distributed health data networks. Robust data quality checking can strengthen confidence in findings based on distributed data network.

Abbreviation
Med Care
Publication Date
2013-08
Volume
51
Issue
8 Suppl 3
Page Numbers
S22-9
Pubmed ID
23793049
Medium
Print
Full Title
Data quality assessment for comparative effectiveness research in distributed data networks.
Authors
Brown JS, Kahn M, Toh S