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使用风险分层表评估风险预测的价值。

Assessing the value of risk predictions by using risk stratification tables.

作者信息

Janes Holly, Pepe Margaret S, Gu Wen

机构信息

Fred Hutchinson Cancer Research Center, Seattle, Washington 98109, USA.

出版信息

Ann Intern Med. 2008 Nov 18;149(10):751-60. doi: 10.7326/0003-4819-149-10-200811180-00009.

DOI:10.7326/0003-4819-149-10-200811180-00009
PMID:19017593
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC3091826/
Abstract

The recent epidemiologic and clinical literature is filled with studies evaluating statistical models for predicting disease or some other adverse event. Risk stratification tables are a new way to evaluate the benefit of adding a new risk marker to a risk prediction model that includes an established set of markers. This approach involves cross-tabulating risk predictions from models with and without the new marker. In this article, the authors use examples to show how risk stratification tables can be used to compare 3 important measures of model performance between the models with and those without the new marker: the extent to which the risks calculated from the models reflect the actual fraction of persons in the population with events (calibration); the proportions in which the population is stratified into clinically relevant risk categories (stratification capacity); and the extent to which participants with events are assigned to high-risk categories and those without events are assigned to low-risk categories (classification accuracy). They detail common misinterpretations and misuses of the risk stratification method and conclude that the information that can be extracted from risk stratification tables is an enormous improvement over commonly reported measures of risk prediction model performance (for example, c-statistics and Hosmer-Lemeshow tests) because it describes the value of the models for guiding medical decisions.

摘要

近期的流行病学和临床文献充斥着评估用于预测疾病或其他不良事件的统计模型的研究。风险分层表是一种新的方法,用于评估在包含一组既定标志物的风险预测模型中添加新的风险标志物的益处。这种方法涉及对有新标志物和无新标志物的模型的风险预测进行交叉制表。在本文中,作者通过实例展示了如何使用风险分层表来比较有新标志物和无新标志物的模型之间模型性能的三个重要指标:从模型计算出的风险反映人群中实际发生事件的人群比例的程度(校准);人群被分层到临床相关风险类别的比例(分层能力);以及发生事件的参与者被分配到高风险类别且未发生事件的参与者被分配到低风险类别的程度(分类准确性)。他们详细阐述了风险分层方法常见的误解和误用,并得出结论,从风险分层表中可以提取的信息比通常报告的风险预测模型性能指标(例如,c统计量和Hosmer-Lemeshow检验)有了巨大改进,因为它描述了模型在指导医疗决策方面的价值。

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