Blueprint for Building and Sustaining a Cardiogenic Shock Program: Qualitative Survey of 12 US Programs
Journal of the Society for Cardiovascular Angiography & Interventions(2024)
Heart Hospital of New Mexico | Heart Recovery Center | Division of Cardiology | Virginia Heart | Inova Schar Heart and Vascular | Division of Cardiovascular Diseases | Heart & Vascular Center | Northside Hospital Heart Institute | Department of Cardiology | John Ochsner Heart and Vascular Institute | Department of Surgery | Mercy Health
Abstract
Background: Multidisciplinary cardiogenic shock (CS) programs have been associated with improved outcomes, yet practical guidance for developing a CS program is lacking. Methods: A survey on CS program development and operational best practices was administered to 12 institutions in diverse sociogeographic regions and practice settings. Common steps in program development were identified. Results: Key steps for program development were identified: measuring baseline outcomes; identifying subspecialty champions; gaining leadership and team buy-in; developing institution-specific CS protocols; educating staff and referring providers; consulting with external experts; and developing quality assessment and process improvement. Conclusions: An assessment of 12 US CS programs highlights a blueprint for establishing and maintaining a successful, multidisciplinary shock program.
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Key words
cardiogenic shock,protocol,shock teams
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