医学
重症监护医学
德尔菲法
鼻插管
临床试验
随机对照试验
循证医学
麻醉学
梅德林
替代医学
套管
外科
病理
统计
数学
政治学
法学
作者
Jie Li,Kai Liu,Shan Lyu,Guoqiang Jing,Bing Dai,Rajiv Dhand,Hui-Ling Lin,Paolo Pelosi,Ariel Berlinski,Jordi Rello,Antoni Torres,Charles‐Édouard Luyt,Jean-Bernard Michotte,Qin Lü,Grégory Reychler,Laurent Vecellio,Armèle Dornelas de Andrade,Jean‐Jacques Rouby,James B. Fink,Stéphan Ehrmann
标识
DOI:10.1186/s13613-023-01147-4
摘要
Clinical practice of aerosol delivery in conjunction with respiratory support devices for critically ill adult patients remains a topic of controversy due to the complexity of the clinical scenarios and limited clinical evidence.To reach a consensus for guiding the clinical practice of aerosol delivery in patients receiving respiratory support (invasive and noninvasive) and identifying areas for future research.A modified Delphi method was adopted to achieve a consensus on technical aspects of aerosol delivery for adult critically ill patients receiving various forms of respiratory support, including mechanical ventilation, noninvasive ventilation, and high-flow nasal cannula. A thorough search and review of the literature were conducted, and 17 international participants with considerable research involvement and publications on aerosol therapy, comprised a multi-professional panel that evaluated the evidence, reviewed, revised, and voted on recommendations to establish this consensus.We present a comprehensive document with 20 statements, reviewing the evidence, efficacy, and safety of delivering inhaled agents to adults needing respiratory support, and providing guidance for healthcare workers. Most recommendations were based on in-vitro or experimental studies (low-level evidence), emphasizing the need for randomized clinical trials. The panel reached a consensus after 3 rounds anonymous questionnaires and 2 online meetings.We offer a multinational expert consensus that provides guidance on the optimal aerosol delivery techniques for patients receiving respiratory support in various real-world clinical scenarios.
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