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Algorithmic prediction of failure modes in healthcare
Author(s) -
Ayala Kobo-Greenhut,
Ortal Sharlin,
Y.D. Adler,
Nitza Peer,
Vered H. Eisenberg,
Merav Barbi,
Talia Levy,
Izhar Ben Shlomo,
Eyal Zimlichman
Publication year - 2020
Publication title -
international journal for quality in health care
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.769
H-Index - 94
eISSN - 1464-3677
pISSN - 1353-4505
DOI - 10.1093/intqhc/mzaa151
Subject(s) - failure mode and effects analysis , brainstorming , identification (biology) , health care , process (computing) , hazard , risk analysis (engineering) , resource (disambiguation) , hazard analysis , medicine , computer science , medical emergency , operations management , reliability engineering , engineering , artificial intelligence , computer network , economic growth , biology , organic chemistry , botany , chemistry , operating system , economics
Background Preventing medical errors is crucial, especially during crises like the COVID-19 pandemic. Failure Modes and Effects Analysis (FMEA) is the most widely used prospective hazard analysis in healthcare. FMEA relies on brainstorming by multi-disciplinary teams to identify hazards. This approach has two major weaknesses: significant time and human resource investments, and lack of complete and error-free results. Objectives To introduce the algorithmic prediction of failure modes in healthcare (APFMH) and to examine whether APFMH is leaner in resource allocation in comparison to the traditional FMEA and whether it ensures the complete identification of hazards. Methods The patient identification during imaging process at the emergency department of Sheba Medical Center was analyzed by FMEA and APFMH, independently and separately. We compared between the hazards predicted by APFMH method and the hazards predicted by FMEA method; the total participants’ working hours invested in each process and the adverse events, categorized as ‘patient identification’, before and after the recommendations resulted from the above processes were implemented. Results APFMH is more effective in identifying hazards (P < 0.0001) and is leaner in resources than the traditional FMEA: the former used 21 h whereas the latter required 63 h. Following the implementation of the recommendations, the adverse events decreased by 44% annually (P = 0.0026). Most adverse events were preventable, had all recommendations been fully implemented. Conclusion In light of our initial and limited-size study, APFMH is more effective in identifying hazards (P < 0.0001) and is leaner in resources than the traditional FMEA. APFMH is suggested as an alternative to FMEA since it is leaner in time and human resources, ensures more complete hazard identification and is especially valuable during crisis time, when new protocols are often adopted, such as in the current days of the COVID-19 pandemic.

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