Methods for Cleaning and Managing a Nurse-Led Registry

J Neurosci Nurs. 2020 Dec;52(6):328-332. doi: 10.1097/JNN.0000000000000542.

Abstract

Background: Clinical registries provide insight on the quality of patient care by providing data to identify associations and patterns in diagnosis, disease, and treatment. This has led to a push toward using large data sets in healthcare research. Nurse researchers are developing data registries, but most are unaware of how to manage a data registry. This article examines a neuroscience nursing registry to describe a quality control and data management process.

Data quality process: Our registry contains more than 90 000 rows of data from almost 5000 patients at 4 US hospitals. Data management is a continuous process that consists of 5 phases: screening, data organization, diagnostic, treatment, and missing data. These phases are repeated with each registry update.

Discussion: The interdisciplinary approach to data management resulted in high-quality data, which was confirmed by missing data analysis. Most technical errors could be systematically diagnosed and resolved using basic statistical outputs, and fixed in the source file.

Conclusion: The methods described provide a structured way for nurses and their collaborators to clean and manage registries.

MeSH terms

  • Data Collection / instrumentation
  • Data Collection / methods*
  • Humans
  • Nurse's Role / psychology
  • Nursing / instrumentation
  • Nursing / methods*
  • Registries / standards*
  • Registries / statistics & numerical data