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Nursing Approaches for Use and Sustainability of Barcode Medication Administration Technology

Approximately 43.4% of medication errors occur at the time of administration despite the use of bar code medication administration (BCMA) System. This trend has prompted a national effort to mitigate this problem in the United States. Implementing BCMA in health care settings is one of those efforts. Studies focusing on the approaches employed by nurses when using this system are scant. The purpose of this qualitative case study was to investigate strategies nurses and their leaders use to ensure BCMA is implemented, maximized, and sustained. The technology acceptance model was used to guide the study. The 2 research questions addressed nurses' perceptions regarding the use and optimization of BCMA, and approaches of clinical nurses and their leaders to ensure that BCMA technology is properly used, optimized, and sustained in acute care units. Data collection included semistructured interviews with 8 participants. Thematic data analysis generated themes including ease of use, reduce errors, time saving, old technology, overreliance on technology, paper backups, and hope for future development. Common barriers to system effectiveness were system errors and inadequate training; intragroup and self-monitoring were important strategies to sustain use of the system. Study results may be used by health care leadership to reduce medication errors by adopting easy to use technology, change policies regarding training of BCMA end users in hospitals, increase the culture of patient safety among nurses, and prompt technology redesign within health care settings that meets the national patient safety goals.

Identiferoai:union.ndltd.org:waldenu.edu/oai:scholarworks.waldenu.edu:dissertations-5645
Date01 January 2017
CreatorsNjeru, Jackson Ngigi
PublisherScholarWorks
Source SetsWalden University
LanguageEnglish
Detected LanguageEnglish
Typetext
Formatapplication/pdf
SourceWalden Dissertations and Doctoral Studies

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