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识别脑卒中后早期谵妄:重症监护病房的一种新预测工具。

Identifying Delirium Early after Stroke: A New Prediction Tool for the Intensive Care Unit.

机构信息

The Johns Hopkins University School of Medicine, Department of Neurology, 600 N Wolfe St., Phipps Suite 446, Baltimore MD, United States.

出版信息

J Stroke Cerebrovasc Dis. 2020 Nov;29(11):105219. doi: 10.1016/j.jstrokecerebrovasdis.2020.105219. Epub 2020 Aug 12.

Abstract

BACKGROUND

Delirium is common after stroke and associated with poor functional outcomes and mortality. It is unknown whether delirium is a modifiable risk factor, or simply an indicator of prognosis, but in order to intervene successfully, those at greatest risk must be identified early. We created a tool to predict the development of delirium in patients admitted to the intensive care unit for stroke, focusing on factors present on hospital admission.

METHODS

Charts of 102 patients admitted to the ICU or IMC after ischemic stroke or intracranial hemorrhage with symptom onset within 72 hours were reviewed. Delirium was identified using the Confusion Assessment Method for the ICU (CAM-ICU). Factors significantly associated with delirium were included in a multivariable logistic regression analysis to create a predictive model. The model was validated in a unique inpatient cohort.

RESULTS

In regression analyses, the variables present on admission most strongly associated with the development of delirium after stroke included: age greater than 64 years; intraventricular hemorrhage; intubation; presence of either cognitive dysfunction, aphasia, or neglect; and acute kidney injury. Using these variables in our predictive model, an ROC analysis resulted in an area under the curve of 0.90, and 0.82 in our validation cohort.

CONCLUSIONS

Factors available on admission can be used to accurately predict risk of delirium following stroke. Our model can be used to implement more rigorous screening paradigms, allowing for earlier detection and timely treatment. Futures studies will focus on determining if prevention can mitigate the poor outcomes with which delirium is associated.

摘要

背景

谵妄在中风后很常见,与不良功能结局和死亡率相关。目前尚不清楚谵妄是可改变的危险因素,还是仅仅是预后的指标,但为了成功干预,必须尽早识别出风险最大的患者。我们创建了一种工具,以预测因中风入住重症监护病房或中间护理病房的患者发生谵妄的情况,重点关注入院时存在的因素。

方法

对 102 例缺血性中风或颅内出血后症状发作在 72 小时内入住 ICU 或 IMC 的患者的病历进行了回顾。使用重症监护谵妄评估方法(CAM-ICU)来识别谵妄。将与谵妄显著相关的因素纳入多变量逻辑回归分析,以创建预测模型。该模型在一个独特的住院患者队列中进行了验证。

结果

在回归分析中,与中风后发生谵妄最相关的入院时变量包括:年龄大于 64 岁;脑室内出血;插管;存在认知功能障碍、失语症或忽视;以及急性肾损伤。在我们的预测模型中使用这些变量,ROC 分析得出的曲线下面积为 0.90,在验证队列中为 0.82。

结论

入院时可用的因素可用于准确预测中风后谵妄的风险。我们的模型可用于实施更严格的筛查方案,从而更早地发现并及时治疗。未来的研究将集中于确定预防是否可以减轻谵妄带来的不良结局。

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