Counsell C, Dennis M, McDowall M
Department of Medicine and Therapeutics, University of Aberdeen, Aberdeen, UK.
J Neurol Neurosurg Psychiatry. 2004 Mar;75(3):401-5. doi: 10.1136/jnnp.2003.018085.
Statistical models that predict functional outcome after stroke using six simple variables (SSV) have recently been developed and validated.
To compare the accuracy of these models with other simple ways of predicting outcome soon after stroke.
The SSV model for being alive and independent (modified Rankin score < or =2) six months or one year after stroke was compared with predictions based on a model that included only age and Oxford community stroke project classification, with predictions based on conscious level and urinary continence, and with informal clinical predictions made by clinicians interested in stroke. Predictions were compared in an independent hospital based cohort of stroke patients using receiver operator characteristic (ROC) curves.
The SSV model at six months had a significantly greater area under the curve (0.84) than the model with only age and stroke classification (0.75). Predictions based on conscious level and urinary continence were no better than those of the SSV model and were unable to predict subjects with a high probability of good outcome. The sensitivity and specificity for informal clinical predictions at one year lay on or below the SSV model curve, implying that the SSV model was at least as good as clinical predictions.
The SSV models performed as well as or better than other simple predictive systems. These models will be useful in epidemiological studies but should not be used to guide clinical management until their impact on patient care and outcome has been evaluated.
最近已开发并验证了使用六个简单变量(SSV)预测中风后功能结局的统计模型。
将这些模型的准确性与中风后不久预测结局的其他简单方法进行比较。
将中风后六个月或一年存活且独立(改良Rankin评分≤2)的SSV模型与仅基于年龄和牛津社区中风项目分类的模型预测、基于意识水平和尿失禁的预测以及对中风感兴趣的临床医生的非正式临床预测进行比较。使用受试者操作特征(ROC)曲线在一个独立的基于医院的中风患者队列中比较预测结果。
六个月时的SSV模型曲线下面积(0.84)显著大于仅包含年龄和中风分类的模型(0.75)。基于意识水平和尿失禁的预测并不比SSV模型的预测更好,并且无法预测预后良好可能性高的受试者。一年时非正式临床预测的敏感性和特异性位于SSV模型曲线之上或之下,这意味着SSV模型至少与临床预测一样好。
SSV模型的表现与其他简单预测系统一样好或更好。这些模型在流行病学研究中将很有用,但在评估其对患者护理和结局的影响之前,不应将其用于指导临床管理。