Objectives: The majority of pediatric patients with diabetic ketoacidosis (DKA) present to community emergency departments (CEDs) that are less prepared to care for acutely ill children owing to low pediatric volume and limited pediatric resources and guidelines. This has impacted the quality of care provided to pediatric patients in CEDs. We hypothesized that a simulation-based collaborative program would improve the quality of the care provided to simulated pediatric DKA patients presenting to CEDs.
Methods: This prospective interventional study measured adherence of multiprofessional teams caring for pediatric DKA patients preimplementation and postimplementation of an improvement program in simulated setting. The program consisted of (a) a postsimulation debriefing, (b) assessment reports, (c) distribution of educational materials and access to pediatric resources, and (d) ongoing communication with the academic medical center (AMC). All simulations were conducted in situ (in the CED resuscitation bay) and were facilitated by a collaborative team from the AMC. A composite adherence score was calculated using a critical action checklist. A mixed linear regression model was performed to examine the impact of CED and team-level variables on the scores.
Results: A total of 91 teams from 13 CEDs participated in simulated sessions. There was a 22-point improvement of overall adherence to the DKA checklist from the preintervention to the postintervention simulations. Six of 9 critical checklist actions showed statistically significant improvement. Community emergency departments with medium pediatric volume showed the most overall improvement. Teams from CEDs that are further from the AMC showed the least improvement from baseline.
Conclusions: This study demonstrated a significant improvement in adherence to pediatric DKA guidelines in CEDs across the state after execution of an in situ simulation-based collaborative improvement program.
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http://dx.doi.org/10.1097/PEC.0000000000001751 | DOI Listing |
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