Literature DB >> 33786985

Nurse's Achilles Heel: Using Big Data to Determine Workload Factors That Impact Near Misses.

Amy A Campbell1, Todd Harlan2, Matt Campbell3, Madhuri S Mulekar4, Bin Wang5.   

Abstract

PURPOSE: To explore how big data can be used to identify the contribution or influence of six specific workload variables: patient count, medication count, task count call lights, patient sepsis score, and hours worked on the occurrence of a near miss (NM) by individual nurses.
DESIGN: A correlational and cross-section research design was used to collect over 82,000 useable data points of historical workload data from the three unique systems on a medical-surgical unit in a midsized hospital in the southeast United States over a 60-day period. Data were collected prior to the start of the Covid-19 pandemic in the United States.
METHODS: Combined data were analyzed using JMP Pro version 12. Mean responses from two groups were compared using a t-test and those from more than two groups using analysis of variance. Logistic regression was used to determine the significance of impact each workload variable had on individual nurses' ability to administer medications successfully as measured by occurrence of NMs.
FINDINGS: The mean outcome of each of the six workload factors measured differed significantly (p < .0001) among nurses. The mean outcome for all workload factors except the hours worked was found to be significantly higher (p < .0001) for those who committed an NM compared to those who did not. At least one workload variable was observed to be significantly associated (p < .05) with the occurrence or nonoccurrence of NMs in 82.6% of the nurses in the study.
CONCLUSIONS: For the majority of the nurses in our study, the occurrence of an NM was significantly impacted by at least one workload variable. Because the specific variables that impact performance are different for each individual nurse, decreasing only one variable, such as patient load, will not adequately address the risk for NMs. Other variables not studied here, such as education and experience, might be associated with the occurrence of NMs. CLINICAL RELEVANCE: In the majority of nurses, different workload variables increase their risk for an NM, suggesting that interventions addressing medication errors should be implemented based on the individual's risk profile.
© 2021 Sigma Theta Tau International.

Entities:  

Keywords:  Big data; medication errors; near miss; safety; workload factors

Mesh:

Year:  2021        PMID: 33786985      PMCID: PMC8221452          DOI: 10.1111/jnu.12652

Source DB:  PubMed          Journal:  J Nurs Scholarsh        ISSN: 1527-6546            Impact factor:   3.176


  32 in total

1.  Nurse perceptions of medication errors: what we need to know for patient safety.

Authors:  Ann M Mayo; Denise Duncan
Journal:  J Nurs Care Qual       Date:  2004 Jul-Sep       Impact factor: 1.597

Review 2.  Research needs and opportunities for reducing the adverse safety consequences of fatigue.

Authors:  William J Horrey; Y Ian Noy; Simon Folkard; Stephen M Popkin; Heidi D Howarth; Theodore K Courtney
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3.  Situation Awareness and Interruption Handling During Medication Administration.

Authors:  Mary Cathryn Sitterding; Patricia Ebright; Marion Broome; Emily S Patterson; Staci Wuchner
Journal:  West J Nurs Res       Date:  2014-05-12       Impact factor: 1.967

Review 4.  Barriers to reporting medication errors and near misses among nurses: A systematic review.

Authors:  Dominika Vrbnjak; Suzanne Denieffe; Claire O'Gorman; Majda Pajnkihar
Journal:  Int J Nurs Stud       Date:  2016-09-01       Impact factor: 5.837

5.  Medication administration errors and related deviations from safe practice: an observational study.

Authors:  Alwiena J Blignaut; Siedine K Coetzee; Hester C Klopper; Suria M Ellis
Journal:  J Clin Nurs       Date:  2017-03-22       Impact factor: 3.036

6.  Medication Administration Errors in a University Hospital.

Authors:  Mahi al Tehewy; Hoda Fahim; Nanees Isamil Gad; Maha El Gafary; Shady Abdel Rahman
Journal:  J Patient Saf       Date:  2016-03       Impact factor: 2.844

7.  Nursing Needs Big Data and Big Data Needs Nursing.

Authors:  Patricia Flatley Brennan; Suzanne Bakken
Journal:  J Nurs Scholarsh       Date:  2015-08-19       Impact factor: 3.176

8.  The Relationships of Nurse Staffing Level and Work Environment With Patient Adverse Events.

Authors:  Eunhee Cho; Dal Lae Chin; Sinhye Kim; OiSaeng Hong
Journal:  J Nurs Scholarsh       Date:  2015-12-07       Impact factor: 3.176

9.  What are incident reports telling us? A comparative study at two Australian hospitals of medication errors identified at audit, detected by staff and reported to an incident system.

Authors:  Johanna I Westbrook; Ling Li; Elin C Lehnbom; Melissa T Baysari; Jeffrey Braithwaite; Rosemary Burke; Chris Conn; Richard O Day
Journal:  Int J Qual Health Care       Date:  2015-01-12       Impact factor: 2.038

10.  'Care left undone' during nursing shifts: associations with workload and perceived quality of care.

Authors:  Jane E Ball; Trevor Murrells; Anne Marie Rafferty; Elizabeth Morrow; Peter Griffiths
Journal:  BMJ Qual Saf       Date:  2013-07-29       Impact factor: 7.035

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