Analysis of Critical Incident Reports Using Natural Language Processing

Denecke, Kerstin; Paula, Helmut (2024). Analysis of Critical Incident Reports Using Natural Language Processing In: Hayn, Dieter; Pfeiffer, Bernhard; Schreier, Günter; Baumgartner, Martin (eds.) Proceedings of the 18th: Health Informatics Meets Digital Health Conference. Studies in Health Technology and Informatics: Vol. 313 (pp. 1-6). Amsterdam: IOS Press 10.3233/SHTI240002

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A Critical Incident Reporting System (CIRS) collects anecdotal reports from employees, which serve as a vital source of information about incidents that could potentially harm patients. Objectives: To demonstrate how natural language processing (NLP) methods can help in retrieving valuable information from such incident data. Methods: We analyzed frequently occurring terms and sentiments as well as topics in data from the Swiss National CIRRNET database from 2006 to 2023 using NLP and BERTopic modelling. Results: We grouped the topics into 10 major themes out of which 6 are related to medication. Overall, they reflect the global trends in adverse events in healthcare (surgical errors, venous thromboembolism, falls). Additionally, we identified errors related to blood testing, COVID-19, handling patients with diabetes and pediatrics. 40-50% of the messages are written in a neutral tone, 30-40% in a negative tone. Conclusion: The analysis of CIRS messages using text analysis tools helped in getting insights into common sources of critical incidents in Swiss healthcare institutions. In future work, we want to study more closely the relations, for example between sentiment and topics.

Item Type:

Book Section (Book Chapter)

Division/Institute:

School of Engineering and Computer Science > Institute for Patient-centered Digital Health
School of Engineering and Computer Science > Institute for Patient-centered Digital Health > AI for Health
School of Engineering and Computer Science

Name:

Denecke, Kerstin0000-0001-6691-396X;
Paula, Helmut;
Hayn, Dieter;
Pfeiffer, Bernhard;
Schreier, Günter and
Baumgartner, Martin

Subjects:

Q Science > Q Science (General)
T Technology > T Technology (General)

ISBN:

9781643685168

Series:

Studies in Health Technology and Informatics

Publisher:

IOS Press

Language:

English

Submitter:

Kerstin Denecke

Date Deposited:

13 May 2024 14:47

Last Modified:

13 May 2024 14:47

Publisher DOI:

10.3233/SHTI240002

Uncontrolled Keywords:

Text mining, Critical incident reporting system, Text analysis, Natural language processing

ARBOR DOI:

10.24451/arbor.21871

URI:

https://arbor.bfh.ch/id/eprint/21871

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