| Literature DB >> 30843455 |
Huw Prosser Evans1, Athanasios Anastasiou2, Adrian Edwards1, Peter Hibbert3, Meredith Makeham4, Saturnino Luz, Aziz Sheikh5, Liam Donaldson6, Andrew Carson-Stevens7.
Abstract
Learning from patient safety incident reports is a vital part of improving healthcare. However, the volume of reports and their largely free-text nature poses a major analytic challenge. The objective of this study was to test the capability of autonomous classifying of free text within patient safety incident reports to determine incident type and the severity of harm outcome. Primary care patient safety incident reports (n=31333) previously expert-categorised by clinicians (training data) were processed using J48, SVM and Naïve Bayes.The SVM classifier was the highest scoring classifier for incident type (AUROC, 0.891) and severity of harm (AUROC, 0.708). Incident reports containing deaths were most easily classified, correctly identifying 72.82% of reports. In conclusion, supervised ML can be used to classify patient safety incident report categories. The severity classifier, whilst not accurate enough to replace manual processing, could provide a valuable screening tool for this critical aspect of patient safety.Entities:
Keywords: incident reporting; machine learning; natural language processing; patient safety; quality improvement
Mesh:
Year: 2019 PMID: 30843455 DOI: 10.1177/1460458219833102
Source DB: PubMed Journal: Health Informatics J ISSN: 1460-4582 Impact factor: 2.681