International Journal for Quality in Health Care Advance Access originally published online on February 13, 2009
International Journal for Quality in Health Care 2009 21(2):145-150; doi:10.1093/intqhc/mzp005
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Improving data quality control in quality improvement projects
1 Division of Pulmonary and Critical Care Medicine, Johns Hopkins University, Baltimore, MD, USA
2 Department of Physical Medicine and Rehabilitation, Johns Hopkins University, Baltimore, MD, USA
3 Center for Innovation in Quality Patient Care, Johns Hopkins University, Baltimore, MD, USA
4 Carey Business School, Johns Hopkins University, Baltimore, MD, USA
5 Department of Anesthesiology/Critical Care Medicine, Johns Hopkins University, Baltimore, MD, USA
6 Keystone Center for Patient Safety and Quality, Michigan Health and Hospital Association, Lansing, MI, USA
Background. The results of many quality improvement (QI) projects are gaining wide-spread attention. Policy-makers, hospital leaders and clinicians make important decisions based on the assumption that QI project results are accurate. However, compared with clinical research, QI projects are typically conducted with substantially fewer resources, potentially impacting data quality. Our objective was to provide a primer on basic data quality control methods appropriate for QI efforts.
Methods. Data quality control methods should be applied throughout all phases of a QI project. In the design phase, project aims should guide data collection decisions, emphasizing quality (rather than quantity) of data and considering resource limitations. In the data collection phase, standardized data collection forms, comprehensive staff training and a well-designed database can help maximize the quality of the data. Clearly defined data elements, quality assurance reviews of both collection and entry and system-based controls reduce the likelihood of error. In the data management phase, missing data should be quickly identified and corrected with system-based controls to minimize the missing data. Finally, in the data analysis phase, appropriate statistical methods and sensitivity analysis aid in managing and understanding the effects of missing data and outliers, in addressing potential confounders and in conveying the precision of results.
Conclusion. Data quality control is essential to ensure the integrity of results from QI projects. Feasible methods are available and important to help ensure that stakeholder's decisions are based on accurate data.
Keywords: data quality, research design, data reporting, quality controls
Address reprint requests to: Dale M. Needham, Pulmonary and Critical Care, Johns Hopkins University, Baltimore, MD, USA. E-mail: dale.needham{at}jhmi.edu
Accepted for publication January 22, 2009.