Zimmerman Jack E, Kramer Andrew A
Anesthesia and Critical Care Medicine, The George Washington University, Washington, District of Columbia, USA.
Curr Opin Crit Care. 2008 Oct;14(5):491-7. doi: 10.1097/MCC.0b013e32830864c0.
A new generation of predictive models for critically ill patients was described between 2005 and 2008. This review will give details of the latest version of the Acute Physiology and Chronic Health Evaluation (APACHE) predictive models, and discuss it in relation to recent critical care outcome studies. We also compare APACHE IV with other systems and address the issue of model complexity.
APACHE IV required the remodeling of over 40 equations. These new models calibrate better to contemporary data than older versions of APACHE and there is good predictive accuracy within diagnostic subgroups. Physiology accounts for 66% and diagnosis for 17% of the APACHE IV mortality model's predictive power. Thus, physiology and diagnosis account for 83% of the accuracy of APACHE IV.
Predictive models have a modest window of applicability, and therefore must be revalidated frequently. This was shown to be true for APACHE III, and hence a major reestimation of models was carried out to generate APACHE IV. Although overall model accuracy is important, it is also imperative that predictive models work well within diagnostic subgroups.
2005年至2008年间描述了新一代危重症患者预测模型。本综述将详细介绍急性生理学与慢性健康状况评估(APACHE)预测模型的最新版本,并结合近期危重症结局研究进行讨论。我们还将APACHE IV与其他系统进行比较,并探讨模型复杂性问题。
APACHE IV需要对40多个方程进行重塑。这些新模型比旧版APACHE能更好地校准当代数据,并且在诊断亚组内具有良好的预测准确性。生理学因素在APACHE IV死亡率模型的预测能力中占66%,诊断因素占17%。因此,生理学和诊断因素占APACHE IV准确性的83%。
预测模型的适用范围有限,因此必须经常重新验证。APACHE III就是如此,因此对模型进行了重大重新评估以生成APACHE IV。虽然总体模型准确性很重要,但预测模型在诊断亚组内也必须表现良好。