医学
多学科方法
大流行
医疗急救
2019年冠状病毒病(COVID-19)
患者安全
梅德林
重症监护医学
护理部
医疗保健
重症监护
法学
病理
疾病
经济增长
经济
社会学
传染病(医学专业)
社会科学
政治学
作者
Brendan McGrath,Nichola Ashby,Martin Birchall,Paul Dean,C. Doherty,K. Ferguson,J. Gimblett,Michael P. W. Grocott,Tony Jacob,Cyrus Kerawala,Peter Macnaughton,Patrick Magennis,Ramani Moonesinghe,Paul Twose,Sarah Wallace,A. Higgs
出处
期刊:Anaesthesia
[Wiley]
日期:2020-05-12
卷期号:75 (12): 1659-1670
被引量:83
摘要
Summary The COVID‐19 pandemic is causing a significant increase in the number of patients requiring relatively prolonged invasive mechanical ventilation and an associated surge in patients who need a tracheostomy to facilitate weaning from respiratory support. In parallel, there has been a global increase in guidance from professional bodies representing staff who care for patients with tracheostomies at different points in their acute hospital journey, rehabilitation and recovery. Of concern are the risks to healthcare staff of infection arising from tracheostomy insertion and caring for patients with a tracheostomy. Hospitals are also facing extraordinary demands on critical care services such that many patients who require a tracheostomy will be managed outside established intensive care or head and neck units and cared for by staff with little tracheostomy experience. These concerns led NHS England and NHS Improvement to expedite the National Patient Safety Improvement Programme’s ‘Safe Tracheostomy Care’ workstream as part of the NHS COVID‐19 response. Supporting this workstream, UK stakeholder organisations involved in tracheostomy care were invited to develop consensus guidance based on: expert opinion; the best available published literature; and existing multidisciplinary guidelines. Topics with direct relevance for frontline staff were identified. This consensus guidance includes: infectivity of patients with respect to tracheostomy indications and timing; aerosol‐generating procedures and risks to staff; insertion procedures; and management following tracheostomy.
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