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成人长期机械通气气管切开术决策的驱动因素:一项定性研究

Drivers of Decision-Making for Adult Tracheostomy for Prolonged Mechanical Ventilation: A Qualitative Study.

作者信息

Mehta Anuj B, Lockhart Steven, Lange Allison V, Matlock Daniel D, Douglas Ivor S, Morris Megan A

出版信息

medRxiv. 2024 Jan 21:2024.01.20.24301492. doi: 10.1101/2024.01.20.24301492.

Abstract

BACKGROUND

Decision-making about tracheostomy and prolonged mechanical ventilation (PMV) is emotionally complex. Expectations of surrogate decision-makers and physicians rarely align. Little is known about what surrogates need to make goal-concordant decisions. We sought to identify drivers of tracheostomy and PMV decision-making.

METHODS

Using Grounded Theory, we performed a qualitative study with semi-structured interviews with surrogates of patients receiving mechanical ventilation (MV) being considered for tracheostomy and physicians routinely caring for patients receiving MV. Recruitment was stopped when thematic saturation was reached. Separate codebooks were created for surrogate and physician interviews. Themes and factors affecting decision-making were identified and a theoretical model tracheostomy decision-making was developed.

RESULTS

43 participants (23 surrogates and 20 physicians) completed interviews. A theoretical model of themes and factors driving decision-making emerged for the data. Hope, Lack of Knowledge & Data, and Uncertainty emerged as the three main themes all which were interconnected with one another and, at times, opposed each other. Patient Wishes, Past Activity/Medical History, Short and Long-Term Outcomes, and Meaningful Recovery were key factors upon which surrogates and physicians based decision-making. The themes were the lens through which the factors were viewed and decision-making existed as a balance between surrogate emotions and understanding and physician recommendations.

CONCLUSIONS

Tracheostomy and prolonged MV decision-making is complex. Hope and Uncertainty were conceptual themes that often battled with one another. Lack of Knowledge & Data plagued both surrogates and physicians. Multiple tangible factors were identified that affected surrogate decision-making and physician recommendations.

IMPLICATIONS

Understanding this complex decision-making process has the potential to improve the information provided to surrogates and, potentially, increase the goal concordant care and alignment of surrogate and physician expectations.

HIGHLIGHTS

Decision-making for tracheostomy and prolonged mechanical ventilation is a complex interactive process between surrogate decision-makers and providers.Using a Grounded Theory framework, a theoretical model emerged from the data with core themes of Hope, Uncertainty, and Lack of Knowledge & Data that was shared by both providers and surrogates.The core themes were the lenses through which the key decision-making factors of Patient Wishes, Past Activity/Medical History, Short and Long-Term Outcomes, and Meaningful Recovery were viewed.The theoretical model provides a roadmap to design a shared decision-making intervention to improve tracheostomy and prolonged mechanical ventilation decision-making.

摘要

背景

气管切开术和长期机械通气(PMV)的决策在情感上很复杂。替代决策者和医生的期望很少一致。对于替代者做出目标一致的决策需要什么知之甚少。我们试图确定气管切开术和PMV决策的驱动因素。

方法

采用扎根理论,我们进行了一项定性研究,对考虑进行气管切开术的接受机械通气(MV)患者的替代者以及常规护理接受MV患者的医生进行了半结构化访谈。当达到主题饱和时停止招募。为替代者和医生访谈创建了单独的编码手册。确定了影响决策的主题和因素,并开发了一个气管切开术决策的理论模型。

结果

43名参与者(23名替代者和20名医生)完成了访谈。从数据中得出了一个驱动决策的主题和因素的理论模型。希望、知识和数据的缺乏以及不确定性成为三个主要主题,它们相互关联,有时相互对立。患者意愿、过去的活动/病史、短期和长期结果以及有意义的康复是替代者和医生做出决策的关键因素。这些主题是看待这些因素的视角,决策是替代者的情感与理解和医生建议之间的平衡。

结论

气管切开术和长期MV决策很复杂。希望和不确定性是经常相互斗争的概念主题。知识和数据的缺乏困扰着替代者和医生。确定了多个影响替代者决策和医生建议的具体因素。

启示

理解这个复杂决策过程有可能改善向替代者提供的信息,并有可能增加目标一致的护理以及替代者和医生期望的一致性。

要点

气管切开术和长期机械通气的决策是替代决策者和提供者之间复杂的互动过程。使用扎根理论框架,从数据中得出了一个理论模型,其核心主题为希望、不确定性以及知识和数据的缺乏,这是提供者和替代者共有的。核心主题是看待患者意愿、过去的活动/病史、短期和长期结果以及有意义的康复等关键决策因素的视角。该理论模型为设计一种共享决策干预措施提供了路线图,以改善气管切开术和长期机械通气决策。

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