Appl Clin Inform 2019; 10(05): 981-990
DOI: 10.1055/s-0039-3402714
Research Article
Georg Thieme Verlag KG Stuttgart · New York

Formative Usability Testing Reduces Severe Blood Product Ordering Errors

Evan W. Orenstein
1   Department of Pediatrics, Emory University School of Medicine, Atlanta, Georgia, United States
2   Division of Hospital Medicine, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Jeanne Boudreaux
1   Department of Pediatrics, Emory University School of Medicine, Atlanta, Georgia, United States
3   Aflac Cancer and Blood Disorders Program, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Margo Rollins
3   Aflac Cancer and Blood Disorders Program, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
4   Department of Pathology and Laboratory Medicine, Center for Transfusion and Cellular Therapies, Emory University School of Medicine, Atlanta, Georgia, United States
,
Jennifer Jones
3   Aflac Cancer and Blood Disorders Program, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Christy Bryant
5   Information Services and Technology, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Dean Karavite
6   Department of Biomedical and Health Informatics, Children's Hospital of Philadelphia, Philadelphia, Pennsylvania, United States
,
Naveen Muthu
6   Department of Biomedical and Health Informatics, Children's Hospital of Philadelphia, Philadelphia, Pennsylvania, United States
,
Jessica Hike
5   Information Services and Technology, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Herb Williams
5   Information Services and Technology, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Tania Kilgore
5   Information Services and Technology, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Alexis B. Carter
7   Department of Pathology and Laboratory Medicine, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
,
Cassandra D. Josephson
1   Department of Pediatrics, Emory University School of Medicine, Atlanta, Georgia, United States
3   Aflac Cancer and Blood Disorders Program, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
4   Department of Pathology and Laboratory Medicine, Center for Transfusion and Cellular Therapies, Emory University School of Medicine, Atlanta, Georgia, United States
7   Department of Pathology and Laboratory Medicine, Children's Healthcare of Atlanta, Atlanta, Georgia, United States
› Author Affiliations
Funding None.
Further Information

Publication History

18 August 2019

09 November 2019

Publication Date:
25 December 2019 (online)

Abstract

Background Medical errors in blood product orders and administration are common, especially for pediatric patients. A failure modes and effects analysis in our health care system indicated high risk from the electronic blood ordering process.

Objectives There are two objectives of this study as follows:

(1) To describe differences in the design of the original blood product orders and order sets in the system (original design), new orders and order sets designed by expert committee (DEC), and a third-version developed through user-centered design (UCD).

(2) To compare the number and type of ordering errors, task completion rates, time on task, and user preferences between the original design and that developed via UCD.

Methods A multidisciplinary expert committee proposed adjustments to existing blood product order sets resulting in the DEC order set. When that order set was tested with front-line users, persistent failure modes were detected, so orders and order sets were redesigned again via formative usability testing. Front-line users in their native clinical workspaces were observed ordering blood in realistic simulated scenarios using a think-aloud protocol. Iterative adjustments were made between participants. In summative testing, participants were randomized to use the original design or UCD for five simulated scenarios. We evaluated differences in ordering errors, time on task, and users' design preference with two-sample t-tests.

Results Formative usability testing with 27 providers from seven specialties led to 18 changes made to the DEC to produce the UCD. In summative testing, error-free task completion for the original design was 36%, which increased to 66% in UCD (30%, 95% confidence interval [CI]: 3.9–57%; p = 0.03). Time on task did not vary significantly.

Conclusion UCD led to substantially different blood product orders and order sets than DEC. Users made fewer errors when ordering blood products for pediatric patients in simulated scenarios when using the UCD orders and order sets compared with the original design.

Protection of Human and Animal Subjects

This work was felt to be primarily focused on quality improvement and therefore deemed nonhuman subjects research by the Institutional Review Board of Children's Healthcare of Atlanta.


Supplementary Material

 
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