A text mining approach to categorize patient safety event reports by medication error type.

MedStar author(s):
Citation: Scientific Reports. 13(1):18354, 2023 10 26.PMID: 37884577Institution: MedStar Health Research Institute | MedStar Institute for InnovationDepartment: MedStar St Mary's Hospital | National Center for Human Factors in HealthcareForm of publication: Journal ArticleMedline article type(s): Journal Article | Research Support, U.S. Gov't, P.H.S.Subject headings: *Medication Errors | *Patient Safety | Data Mining | Humans | Logistic Models | Research ReportYear: 2023ISSN:
  • 2045-2322
Name of journal: Scientific reportsAbstract: Patient safety reporting systems give healthcare provider staff the ability to report medication related safety events and errors; however, many of these reports go unanalyzed and safety hazards go undetected. The objective of this study is to examine whether natural language processing can be used to better categorize medication related patient safety event reports. 3,861 medication related patient safety event reports that were previously annotated using a consolidated medication error taxonomy were used to develop three models using the following algorithms: (1) logistic regression, (2) elastic net, and (3) XGBoost. After development, models were tested, and model performance was analyzed. We found the XGBoost model performed best across all medication error categories. 'Wrong Drug', 'Wrong Dosage Form or Technique or Route', and 'Improper Dose/Dose Omission' categories performed best across the three models. In addition, we identified five words most closely associated with each medication error category and which medication error categories were most likely to co-occur. Machine learning techniques offer a semi-automated method for identifying specific medication error types from the free text of patient safety event reports. These algorithms have the potential to improve the categorization of medication related patient safety event reports which may lead to better identification of important medication safety patterns and trends. Copyright © 2023. The Author(s).All authors: Boxley C, Fujimoto M, Ratwani RM, Fong AFiscal year: FY2024Digital Object Identifier: Date added to catalog: 2024-01-16
Holdings
Item type Current library Collection Call number Status Date due Barcode
Journal Article MedStar Authors Catalog Article 37884577 Available 37884577

Patient safety reporting systems give healthcare provider staff the ability to report medication related safety events and errors; however, many of these reports go unanalyzed and safety hazards go undetected. The objective of this study is to examine whether natural language processing can be used to better categorize medication related patient safety event reports. 3,861 medication related patient safety event reports that were previously annotated using a consolidated medication error taxonomy were used to develop three models using the following algorithms: (1) logistic regression, (2) elastic net, and (3) XGBoost. After development, models were tested, and model performance was analyzed. We found the XGBoost model performed best across all medication error categories. 'Wrong Drug', 'Wrong Dosage Form or Technique or Route', and 'Improper Dose/Dose Omission' categories performed best across the three models. In addition, we identified five words most closely associated with each medication error category and which medication error categories were most likely to co-occur. Machine learning techniques offer a semi-automated method for identifying specific medication error types from the free text of patient safety event reports. These algorithms have the potential to improve the categorization of medication related patient safety event reports which may lead to better identification of important medication safety patterns and trends. Copyright © 2023. The Author(s).

English

Powered by Koha