Several institutions have implemented phenobarbital-based pathways for the treatment of alcohol withdrawal syndrome (AWS). However, little is known about the care processes, effectiveness, and safety of phenobarbital-based pathways for intensive care unit (ICU) patients. To examine clinician acceptability and feasibility and patient outcomes after the implementation of a phenobarbital-based pathway for medical ICU (MICU) patients with severe AWS. We conducted a mixed-method study of a quality-improvement intervention designed to improve the workflow without deleterious effects on outcomes. We used semistructured, qualitative interviews and surveys of clinicians to assess the acceptability and feasibility of the phenobarbital-based pathway and a previous benzodiazepine-based pathway. We used a noninferiority interrupted-time-series analysis to compare mechanical ventilation rates before and after implementation among MICU patients within an urban safety-net hospital who were admitted with severe alcohol withdrawal. We explored several secondary outcomes, including physical restraint use and hospital length of stay. Four themes related to clinician acceptability and feasibility of the phenobarbital-based pathway emerged: ) designing a pathway that balanced standardization with clinical judgment promoted acceptability, ) pathway simplicity promoted feasibility, ) implementing pathway-driven care streamlined the workflow, and ) implementation strategies facilitated new pathway uptake. Two hundred thirty-three and 252 patients were initiated on the benzodiazepine- and phenobarbital-based pathways, respectively. The rate of mechanical ventilation decreased from 17.1% to 12.9% after implementation of the phenobarbital-based pathway, and an adjusted mean difference of -4.9% (95% upper confidence interval [CI]: 0.7%) corresponding to relative change in the 95% upper limit of 4%, which was below the noninferiority margin, was shown. After implementation, use of physical restraints decreased from 51.6% to 32.4% (mean difference, -18.0%; 95% CI: -26.4% to -9.7%), and the hospital length of stay was shorter (8.6-6.8 d; mean difference, -1.8 d; 95% CI: -3.4 to -0.2 d). Clinicians believed that the phenobarbital-based pathway was more efficient and simpler to use, and patient mechanical ventilation rates were noninferior compared with the previous benzodiazepine-based pathway for the treatment of severe AWS.

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http://dx.doi.org/10.1513/AnnalsATS.202102-121OCDOI Listing

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Article Synopsis
  • - Alcohol use disorder is prevalent in the U.S., and while benzodiazepines are typically recommended for alcohol withdrawal syndrome (AWS), there’s a growing trend to use phenobarbital, especially for patients at high risk of severe AWS.
  • - A quality improvement study at a medical institution evaluated the effectiveness of a phenobarbital-based treatment protocol for AWS, measuring rates of protocol adherence and clinical outcomes before and after implementation.
  • - Results showed a significant increase in the administration of phenobarbital, a decrease in the combined use of benzodiazepines, and a reduction in total benzodiazepine dosage, with improved safety outcomes such as fewer days in the ICU for those transferred.
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Several institutions have implemented phenobarbital-based pathways for the treatment of alcohol withdrawal syndrome (AWS). However, little is known about the care processes, effectiveness, and safety of phenobarbital-based pathways for intensive care unit (ICU) patients. To examine clinician acceptability and feasibility and patient outcomes after the implementation of a phenobarbital-based pathway for medical ICU (MICU) patients with severe AWS.

View Article and Find Full Text PDF

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