Internal Medicine Department, Hospital de Poniente, El Ejido, 04700 Almería, Spain.
Department of Neurology and Stroke Unit, Hospital Universitario Torrecárdenas, 04009 Almería, Spain.
Int J Environ Res Public Health. 2022 Mar 8;19(6):3182. doi: 10.3390/ijerph19063182.
Stroke is the second cause of mortality worldwide and the first in women. The aim of this study is to develop a predictive model to estimate the risk of mortality in the admission of patients who have not received reperfusion treatment.
A retrospective cohort study was conducted of a clinical-administrative database, reflecting all cases of non-reperfused ischaemic stroke admitted to Spanish hospitals during the period 2008-2012. A predictive model based on logistic regression was developed on a training cohort and later validated by the "hold-out" method. Complementary machine learning techniques were also explored.
The resulting model had the following nine variables, all readily obtainable during initial care. Age (OR 1.069), female sex (OR 1.202), readmission (OR 2.008), hypertension (OR 0.726), diabetes (OR 1.105), atrial fibrillation (OR 1.537), dyslipidaemia (0.638), heart failure (OR 1.518) and neurological symptoms suggestive of posterior fossa involvement (OR 2.639). The predictability was moderate (AUC 0.742, 95% CI: 0.737-0.747), with good visual calibration; Pearson's chi-square test revealed non-significant calibration. An easily consulted risk score was prepared.
It is possible to create a predictive model of mortality for patients with ischaemic stroke from which important advances can be made towards optimising the quality and efficiency of care. The model results are available within a few minutes of admission and would provide a valuable complementary resource for the neurologist.
卒中是全球第二大致死原因,也是女性的首要死因。本研究旨在建立一个预测模型,以评估未接受再灌注治疗的患者入院时的死亡风险。
本研究采用回顾性队列研究设计,对 2008 年至 2012 年期间在西班牙医院住院的未经再灌注治疗的缺血性卒中患者的临床-行政数据库进行了分析。在训练队列中建立基于逻辑回归的预测模型,然后通过“保留”方法进行验证。还探索了补充的机器学习技术。
该模型包含 9 个变量,均易于在初始治疗中获得。这些变量分别是年龄(OR1.069)、女性(OR1.202)、再入院(OR2.008)、高血压(OR0.726)、糖尿病(OR1.105)、心房颤动(OR1.537)、血脂异常(OR0.638)、心力衰竭(OR1.518)和提示后颅窝受累的神经症状(OR2.639)。该模型具有中等的预测能力(AUC0.742,95%CI:0.737-0.747),且具有良好的视觉校准;Pearson's 卡方检验显示校准不显著。我们还制定了一个易于查阅的风险评分。
可以为缺血性卒中患者建立一个预测死亡的模型,从而为优化治疗质量和效率做出重要贡献。该模型的结果可在入院后几分钟内获得,为神经科医生提供了有价值的补充资源。