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An electronic trigger based on care escalation to identify preventable adverse events in hospitalised patients. | LitMetric

AI Article Synopsis

  • Researchers enhanced the Global Trigger Tool (GTT) method to better detect preventable adverse events using electronic health record (EHR) data.
  • They focused on hospitalizations linked to care escalation (ICU transfers or rapid response) from 2010 to 2015, identifying a specific group at risk through modified criteria.
  • The refined approach resulted in a 44.6% detection rate for preventable events, uncovering various issues like diagnostic errors and care management problems, many of which could cause temporary harm.

Article Abstract

Background: Methods to identify preventable adverse events typically have low yield and efficiency. We refined the methods of Institute of Healthcare Improvement's Global Trigger Tool (GTT) application and leveraged electronic health record (EHR) data to improve detection of preventable adverse events, including diagnostic errors.

Methods: We queried the EHR data repository of a large health system to identify an 'index hospitalization' associated with care escalation (defined as transfer to the intensive care unit (ICU) or initiation of rapid response team (RRT) within 15 days of admission) between March 2010 and August 2015. To enrich the record review sample with unexpected events, we used EHR clinical data to modify the GTT algorithm and limited eligible patients to those at risk for care escalation based on younger age and presence of minimal comorbid conditions. We modified the GTT review methodology; two physicians independently reviewed eligible 'e-trigger' positive records to identify preventable diagnostic and care management events.

Results: Of 88 428 hospitalisations, 887 were associated with care escalation (712 ICU transfers and 175 RRTs), of which 92 were flagged as trigger-positive and reviewed. Preventable adverse events were detected in 41 cases, yielding a trigger positive predictive value of 44.6% (reviewer agreement 79.35%; Cohen's kappa 0.573). We identified 7 (7.6%) diagnostic errors and 34 (37.0%) care management-related events: 24 (26.1%) adverse drug events, 4 (4.3%) patient falls, 4 (4.3%) procedure-related complications and 2 (2.2%) hospital-associated infections. In most events (73.1%), there was potential for temporary harm.

Conclusion: We developed an approach using an EHR data-based trigger and modified review process to efficiently identify hospitalised patients with preventable adverse events, including diagnostic errors. Such e-triggers can help overcome limitations of currently available methods to detect preventable harm in hospitalised patients.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5867429PMC
http://dx.doi.org/10.1136/bmjqs-2017-006975DOI Listing

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