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从传统打字到智能洞察:谵妄靶向治疗方向的叙述性综述。

From Traditional Typing to Intelligent Insights: A Narrative Review of Directions Toward Targeted Therapies in Delirium.

机构信息

Center for Research, Investigation, and Systems Modeling of Acute Illness (CRISMA), University of Pittsburgh School of Medicine, Pittsburgh, PA.

Division of Pulmonary, Allergy, Critical Care and Sleep Medicine, Department of Medicine, University of Pittsburgh, Pittsburgh, PA.

出版信息

Crit Care Med. 2024 Aug 1;52(8):1285-1294. doi: 10.1097/CCM.0000000000006362. Epub 2024 Jul 15.

Abstract

Delirium is a heterogeneous syndrome characterized by an acute change in level of consciousness that is associated with inattention and disorganized thinking. Delirium affects most critically ill patients and is associated with poor patient-oriented outcomes such as increased mortality, longer ICU and hospital length of stay, and worse long-term cognitive outcomes. The concept of delirium and its subtypes has existed since nearly the beginning of recorded medical literature, yet robust therapies have yet to be identified. Analogous to other critical illness syndromes, we suspect the lack of identified therapies stems from patient heterogeneity and prior subtyping efforts that do not capture the underlying etiology of delirium. The time has come to leverage machine learning approaches, such as supervised and unsupervised clustering, to identify clinical and pathophysiological distinct clusters of delirium that will likely respond differently to various interventions. We use sedation in the ICU as an example of how precision therapies can be applied to critically ill patients, highlighting the fact that while for some patients a sedative drug may cause delirium, in another cohort sedation is the specific treatment. Finally, we conclude with a proposition to move away from the term delirium, and rather focus on the treatable traits that may allow precision therapies to be tested.

摘要

谵妄是一种异质性综合征,其特征为意识水平急性改变,伴有注意力不集中和思维紊乱。谵妄影响大多数重症患者,与不良的以患者为中心的结局相关,如死亡率增加、重症监护病房和住院时间延长、以及更差的长期认知结局。谵妄及其亚型的概念自有记录的医学文献开始就存在,但尚未确定有效的治疗方法。类似于其他危重病综合征,我们怀疑缺乏已确定的治疗方法源于患者的异质性和先前的亚组化努力,这些努力无法捕捉到谵妄的潜在病因。现在是利用机器学习方法(如监督和无监督聚类)的时候了,以识别出谵妄的临床和病理生理学上不同的亚群,这些亚群可能对各种干预措施有不同的反应。我们以重症监护病房中的镇静为例,说明了如何将精准治疗应用于重症患者,突出了这样一个事实,即对于一些患者来说,镇静药物可能会导致谵妄,而对于另一组患者来说,镇静是特定的治疗方法。最后,我们提出了一个建议,即不再使用“谵妄”一词,而是关注可能允许进行精准治疗的可治疗特征。

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