Literature DB >> 34010385

Evaluating resampling methods and structured features to improve fall incident report identification by the severity level.

Jiaxing Liu1,2, Zoie S Y Wong3, H Y So4, Kwok Leung Tsui2.   

Abstract

OBJECTIVE: This study aims to improve the classification of the fall incident severity level by considering data imbalance issues and structured features through machine learning.
MATERIALS AND METHODS: We present an incident report classification (IRC) framework to classify the in-hospital fall incident severity level by addressing the imbalanced class problem and incorporating structured attributes. After text preprocessing, bag-of-words features, structured text features, and structured clinical features were extracted from the reports. Next, resampling techniques were incorporated into the training process. Machine learning algorithms were used to build classification models. IRC systems were trained, validated, and tested using a repeated and randomly stratified shuffle-split cross-validation method. Finally, we evaluated the system performance using the F1-measure, precision, and recall over 15 stratified test sets.
RESULTS: The experimental results demonstrated that the classification system setting considering both data imbalance issues and structured features outperformed the other system settings (with a mean macro-averaged F1-measure of 0.733). Considering the structured features and resampling techniques, this classification system setting significantly improved the mean F1-measure for the rare class by 30.88% (P value < .001) and the mean macro-averaged F1-measure by 8.26% from the baseline system setting (P value < .001). In general, the classification system employing the random forest algorithm and random oversampling method outperformed the others.
CONCLUSIONS: Structured features provide essential information for categorizing the fall incident severity level. Resampling methods help rebalance the class distribution of the original incident report data, which improves the performance of machine learning models. The IRC framework presented in this study effectively automates the identification of fall incident reports by the severity level.
© The Author(s) 2021. Published by Oxford University Press on behalf of the American Medical Informatics Association. All rights reserved. For permissions, please email: journals.permissions@oup.com.

Entities:  

Keywords:  clinical incident reports; clinical text classification; falls; imbalanced learning; patient safety

Mesh:

Year:  2021        PMID: 34010385      PMCID: PMC8324236          DOI: 10.1093/jamia/ocab048

Source DB:  PubMed          Journal:  J Am Med Inform Assoc        ISSN: 1067-5027            Impact factor:   4.497


  26 in total

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3.  Multiple accountabilities in incident reporting and management.

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4.  Falls in the acute hospital setting--impact on resource utilisation.

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Review 7.  Detecting adverse events for patient safety research: a review of current methodologies.

Authors:  Harvey J Murff; Vimla L Patel; George Hripcsak; David W Bates
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8.  Trends in healthcare incident reporting and relationship to safety and quality data in acute hospitals: results from the National Reporting and Learning System.

Authors:  A Hutchinson; T A Young; K L Cooper; A McIntosh; J D Karnon; S Scobie; R G Thomson
Journal:  Qual Saf Health Care       Date:  2009-02

Review 9.  What can natural language processing do for clinical decision support?

Authors:  Dina Demner-Fushman; Wendy W Chapman; Clement J McDonald
Journal:  J Biomed Inform       Date:  2009-08-13       Impact factor: 6.317

10.  Falls in English and Welsh hospitals: a national observational study based on retrospective analysis of 12 months of patient safety incident reports.

Authors:  F Healey; S Scobie; D Oliver; A Pryce; R Thomson; B Glampson
Journal:  Qual Saf Health Care       Date:  2008-12
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