The relationship between electronic health records user interface features and data quality of patient clinical information: an integrative review

Author:

Madandola Olatunde O1ORCID,Bjarnadottir Ragnhildur I1ORCID,Yao Yingwei1ORCID,Ansell Margaret2ORCID,Dos Santos Fabiana1ORCID,Cho Hwayoung1ORCID,Dunn Lopez Karen3ORCID,Macieira Tamara G R1ORCID,Keenan Gail M1ORCID

Affiliation:

1. University of Florida College of Nursing , Gainesville, FL, United States

2. University of Florida Health Sciences Library , Gainesville, FL, United States

3. University of Iowa College of Nursing , Iowa City, IA, United States

Abstract

Abstract Objectives Electronic health records (EHRs) user interfaces (UI) designed for data entry can potentially impact the quality of patient information captured in the EHRs. This review identified and synthesized the literature evidence about the relationship of UI features in EHRs on data quality (DQ). Materials and methods We performed an integrative review of research studies by conducting a structured search in 5 databases completed on October 10, 2022. We applied Whittemore & Knafl’s methodology to identify literature, extract, and synthesize information, iteratively. We adapted Kmet et al appraisal tool for the quality assessment of the evidence. The research protocol was registered with PROSPERO (CRD42020203998). Results Eleven studies met the inclusion criteria. The relationship between 1 or more UI features and 1 or more DQ indicators was examined. UI features were classified into 4 categories: 3 types of data capture aids, and other methods of DQ assessment at the UI. The Weiskopf et al measures were used to assess DQ: completeness (n = 10), correctness (n = 10), and currency (n = 3). UI features such as mandatory fields, templates, and contextual autocomplete improved completeness or correctness or both. Measures of currency were scarce. Discussion The paucity of studies on UI features and DQ underscored the limited knowledge in this important area. The UI features examined had both positive and negative effects on DQ. Standardization of data entry and further development of automated algorithmic aids, including adaptive UIs, have great promise for improving DQ. Further research is essential to ensure data captured in our electronic systems are high quality and valid for use in clinical decision-making and other secondary analyses.

Funder

National Institute of Health

National Institute of Nursing Research

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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