Peer-reviewed veterinary case report
How can natural language processing help find problems with pelvic
By Kelly TL et al.ยท2026ยทSchool of Pharmacy and Biomedical Science, AustraliaยทView original on Europe PMC โ
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Original publication title: Signal detection of adverse events in medical devices using natural language processing: a case study in pelvic mesh.
Plain-English summary
This study looked at how to better identify safety issues with medical devices, specifically pelvic mesh, by analyzing reports of problems that people experienced. Researchers used a method that combines computer analysis of written reports with statistical techniques to find patterns in the data. They found that "pain" was the most common issue reported with pelvic mesh, and their analysis detected a safety signal about this problem three years before the device was taken off the market in Australia. The method they used showed promise, but more work is needed to see if it can be applied to other medical devices and data sources.
Abstract
Disproportionality analysis is used to detect safety signals for post-market surveillance from adverse events reported to regulatory bodies but is challenging when reports contain unstructured free-text. We implemented a proof-of-concept system combining natural language processing of free-text data with disproportionality analysis, using a known safety signal from pelvic mesh. Free-text reports in an Australian spontaneous adverse event report database between 2012 and 2017 were classified using topic modelling. 'Pain' was the most frequent clinical topic and was a known adverse event from pelvic mesh. Signal detection with three different comparators (hernia mesh, hernia and other mesh and all other devices) was performed every quarter with three disproportionality methods (Proportional Reporting Ratio, Bayesian Confidence Propagation Neural Network and maximised Sequential Probability Ratio Test). All methods adjusted the Type I error threshold for multiple looks at the data. A safety signal for pelvic mesh compared with hernia and other mesh was detected by all three methods in 3rd quarter of 2014, three years before the device was withdrawn from Australia in November 2017. Bayesian Confidence Propagation Neural Network most reliably accounted for uncertainty in the pain classification. Further investigation is required with other devices and databases to validate our proof-of-concept system.
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Search related cases โOriginal publication on Europe PMC: https://europepmc.org/article/MED/42056377