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使用简单临床和实验室变量预测重度颅脑损伤后结局的分类与回归树分析

Classification and regression tree for prediction of outcome after severe head injury using simple clinical and laboratory variables.

作者信息

Rovlias A, Kotsou S

机构信息

Department of Neurosurgery, Asclepeion General Hospital, Athens, Greece.

出版信息

J Neurotrauma. 2004 Jul;21(7):886-93. doi: 10.1089/0897715041526249.

Abstract

Many previous studies have constructed several predictive models for outcome after severe head injury, but these have often used expensive, time consuming, or highly specialized measurements. The goal of this study was to develop a simple, easy to use a model involving only variables that are rapidly and easily achievable in daily routine practice. To this end, a classification and regression tree (CART) technique was employed in the analysis of data from 345 patients with isolated severe brain injury who were admitted to Asclepeion General Hospital of Athens from January, 1993, to December, 2000. A total of 16 prognostic indicators were examined to predict neurological outcome at 6 months after head injury. Our results indicated that Glasgow Coma Scale was the best predictor of outcome. With regard to the other data, not only the most widely examined variables such as age, pupillary reactivity, or computed tomographic findings proved again to be strong predictors, but less commonly applied parameters, indirectly associated with brain damage, such as hyperglycemia and leukocytosis, were found to correlate significantly with prognosis too. The overall cross-validated predictive accuracy of CART model for these data was 86.84%, with a cross-validated relative error of 0.308. All variables included in this tree have been shown previously to be related to outcome. Methodologically, however, CART is quite different from the more commonly used statistical methods, with the primary benefit of illustrating the important prognostic variables as related to outcome. This technique may prove useful in developing new therapeutic strategies and approaches for patients with severe brain injury.

摘要

许多先前的研究已经构建了多个预测严重颅脑损伤后预后的模型,但这些模型通常使用昂贵、耗时或高度专业化的测量方法。本研究的目的是开发一种简单、易于使用的模型,该模型仅涉及日常临床实践中能够快速、轻松获得的变量。为此,采用分类回归树(CART)技术分析了1993年1月至2000年12月期间入住雅典阿斯克勒庇俄斯综合医院的345例单纯性严重脑损伤患者的数据。共检查了16项预后指标,以预测颅脑损伤后6个月的神经功能预后。我们的结果表明,格拉斯哥昏迷量表是预后的最佳预测指标。关于其他数据,不仅年龄、瞳孔反应性或计算机断层扫描结果等最常检查的变量再次被证明是强有力的预测指标,而且与脑损伤间接相关的较少应用的参数,如高血糖和白细胞增多症,也被发现与预后显著相关。CART模型对这些数据的总体交叉验证预测准确率为86.84%,交叉验证相对误差为0.308。该树中包含的所有变量先前已被证明与预后相关。然而,从方法学上讲,CART与更常用的统计方法有很大不同,其主要优点是能够阐明与预后相关的重要预后变量。该技术可能对制定严重脑损伤患者的新治疗策略和方法有用。

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