Opportunities and Challenges for the Next Phase of Enhanced Recovery After Surgery

Olle Ljungqvist(Örebro University), Hans D. de Boer(Martini Ziekenhuis), Angie Balfour(NHS Lothian), William Fawcett(Royal Surrey County Hospital), Dileep N. Lobo(Nottingham University Hospitals NHS Trust), Gregg Nelson(University of Calgary), Michael J. Scott(University of Pennsylvania), Thomas W. Wainwright(Dorset HealthCare University NHS Foundation Trust), Nicolas Demartines(University Hospital of Lausanne)
JAMA Surgery
April 21, 2021
Cited by 283Open Access
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Abstract

Importance: Enhanced Recovery After Surgery (ERAS) is a global surgical quality improvement initiative now firmly entrenched within the field of perioperative care. Although ERAS is associated with significant clinical outcome improvements and cost savings in numerous surgical specialties, several opportunities and challenges deserve further discussion. Observations: Uptake and implementation of ERAS Society guidelines, together with ERAS-related research, have increased exponentially since the inception of the ERAS movement. Opportunities to further improve patient outcomes include addressing frailty, optimizing nutrition, prehabilitation, correcting preoperative anemia, and improving uptake of ERAS worldwide, including in low- and middle-income countries. Challenges facing enhanced recovery today include implementation, carbohydrate loading, reversal of neuromuscular blockade, and bowel preparation. The COVID-19 pandemic poses both a challenge and an opportunity for ERAS. Conclusions and Relevance: To date, ERAS has achieved significant benefit for patients and health systems; however, improvements are still needed, particularly in the areas of patient optimization and systematic implementation. During this time of global crisis, the ERAS method of delivering care is required to take surgery and anesthesia to the next level and bring improvements in outcomes to both patients and health systems.


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