Telehealth Utilization in Trauma Care: The Effects on Emergency Department Length of Stay and Associated Outcomes

AMERICAN SURGEON(2023)

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摘要
Introduction Since the onset of the Covid-19 Pandemic, Telehealth utilization has grown rapidly; however, little is known about its efficacy in specific areas of healthcare, including trauma care in the emergency department. We aim to evaluate telehealth utilization in the care of adult trauma patients within United States emergency departments and associated outcomes over the past decade. Methods PubMed, Google Scholar, EMBASE, ProQuest, and Cochrane were searched for relevant articles published from database conception to Dec 12th, 2022. Our review includes studies that assessed the utilization of telehealth practices within a United States emergency department for the treatment of adult (age >= 18) trauma patients. Evaluated outcomes included emergency department length of stay, transfer rates, cost incurred to patients and telehealthimplementing hospitals, patient satisfaction, and rates of left without being seen. Results A total of 11 studies, evaluating 59,319 adult trauma patients, were included in this review. Telehealth practices resulted in comparable or reduced emergency department length of stay for trauma patients admitted to the emergency department. Costs incurred to the patient and rates of leaving without being seen were significantly reduced following telehealth implementation. There was no difference in transfer rates or patient satisfaction for telehealth practices compared to in-person treatment. Conclusion Emergency department telehealth utilization significantly reduced trauma patient care-related costs, emergency department length of stay, and rates of leaving without being seen. No significant differences were found in patient transfer rates, patient satisfaction rates, or mortality rates following emergency department telehealth utilization.
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关键词
telehealth, trauma, emergency department, healthcare costs, patient satisfaction
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