Department of Internal Medicine, Mayo Clinic, Rochester, USA.
Department of Emergency Critical Care, Abbott Northwestern, Minneapolis, USA.
Biomol Biomed. 2023 Nov 3;23(6):1108-1117. doi: 10.17305/bb.2023.9344.
Digital twin technology is a virtual depiction of a physical product and has been utilized in many fields. Digital twin patient model in healthcare is a virtual patient that provides opportunities to test the outcomes of various interventions virtually without subjecting an actual patient to possible harm. This can serve as a decision aid in the complex environment of the intensive care unit (ICU). Our objective is to develop consensus among a multidisciplinary expert panel on statements regarding respiratory pathophysiology contributing to respiratory failure in the medical ICU. We convened a panel of 34 international critical care experts. Our group modeled elements of respiratory failure pathophysiology using directed acyclic graphs (DAGs) and derived expert statements describing associated ICU clinical practices. The experts participated in three rounds of modified Delphi to gauge agreement on 78 final questions (13 statements with 6 substatements for each) using a Likert scale. A modified Delphi process achieved agreement for 62 of the final expert rule statements. Statements with the highest degree of agreement included the physiology, and management of airway obstruction decreasing alveolar ventilation and ventilation-perfusion matching. The lowest agreement statements involved the relationship between shock and hypoxemic respiratory failure due to heightened oxygen consumption and dead space. Our study proves the utility of a modified Delphi method to generate consensus to create expert rule statements for further development of a digital twin-patient model with acute respiratory failure. A substantial majority of expert rule statements used in the digital twin design align with expert knowledge of respiratory failure in critically ill patients.
数字孪生技术是物理产品的虚拟表示,已在许多领域得到应用。医疗保健中的数字孪生患者模型是一个虚拟患者,可以在不使实际患者受到可能伤害的情况下,对各种干预措施的结果进行虚拟测试。这可以作为重症监护病房(ICU)复杂环境下的决策辅助工具。我们的目标是在多学科专家小组中就导致 ICU 中呼吸衰竭的呼吸病理生理学相关陈述达成共识。我们召集了 34 名国际重症监护专家组成一个小组。我们的小组使用有向无环图(DAG)对呼吸衰竭病理生理学的各个元素进行建模,并得出描述相关 ICU 临床实践的专家陈述。专家们参与了三轮修改后的德尔菲法,使用李克特量表对 78 个最终问题(13 个陈述,每个陈述有 6 个子陈述)进行了评估,以衡量对最终专家规则陈述的一致程度。修改后的德尔菲法过程达成了 62 项最终专家规则陈述的一致意见。具有最高一致性的陈述包括降低肺泡通气和通气-灌注匹配的气道阻塞的生理学和管理。最低一致的陈述涉及休克与低氧性呼吸衰竭的关系,这是由于耗氧量和死腔增加所致。我们的研究证明了修改后的德尔菲法在生成用于急性呼吸衰竭数字孪生患者模型进一步开发的专家规则陈述方面的实用性。在数字孪生设计中使用的绝大多数专家规则陈述都与重症患者呼吸衰竭的专家知识一致。