Online patient feedback as a safety valve: An automated language analysis of unnoticed and unresolved safety incidents.
Alex GillespieTom W ReaderPublished in: Risk analysis : an official publication of the Society for Risk Analysis (2022)
Safety reporting systems are widely used in healthcare to identify risks to patient safety. But, their effectiveness is undermined if staff do not notice or report incidents. Patients, however, might observe and report these overlooked incidents because they experience the consequences, are highly motivated, and independent of the organization. Online patient feedback may be especially valuable because it is a channel of reporting that allows patients to report without fear of consequence (e.g., anonymously). Harnessing this potential is challenging because online feedback is unstructured and lacks demonstrable validity and added value. Accordingly, we developed an automated language analysis method for measuring the likelihood of patient-reported safety incidents in online patient feedback. Feedback from patients and families (n = 146,685, words = 22,191,427, years = 2013-2019) about acute NHS trusts (hospital conglomerates; n = 134) in England were analyzed. The automated measure had good precision (0.69) and excellent recall (0.98) in identifying incidents; was independent of staff-reported incidents (r = -0.04 to 0.19); and was associated with hospital-level mortality rates (z = 3.87; p < 0.001). The identified safety incidents were often reported as unnoticed (89%) or unresolved (21%), suggesting that patients use online platforms to give visibility to safety concerns they believe have been missed or ignored. Online stakeholder feedback is akin to a safety valve; being independent and unconstrained it provides an outlet for reporting safety issues that may have been unnoticed or unresolved within formal channels.
Keyphrases
- patient safety
- healthcare
- end stage renal disease
- ejection fraction
- newly diagnosed
- health information
- social media
- peritoneal dialysis
- systematic review
- prognostic factors
- quality improvement
- autism spectrum disorder
- emergency department
- cardiovascular disease
- risk factors
- liver failure
- aortic valve
- randomized controlled trial
- case report
- machine learning
- adverse drug
- aortic stenosis
- type diabetes
- intensive care unit
- high throughput
- left ventricular
- cardiovascular events