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The Integrated Calibration Index (ICI) and related metrics for quantifying the calibration of logistic regression models

机译:用于量化逻辑回归模型校准的集成校准指标(ICI)和相关指标

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摘要

Assessing the calibration of methods for estimating the probability of the occurrence of a binary outcome is an important aspect of validating the performance of risk‐prediction algorithms. Calibration commonly refers to the agreement between predicted and observed probabilities of the outcome. Graphical methods are an attractive approach to assess calibration, in which observed and predicted probabilities are compared using loess‐based smoothing functions. We describe the Integrated Calibration Index (ICI) that is motivated by Harrell's E max index, which is the maximum absolute difference between a smooth calibration curve and the diagonal line of perfect calibration. The ICI can be interpreted as weighted difference between observed and predicted probabilities, in which observations are weighted by the empirical density function of the predicted probabilities. As such, the ICI is a measure of calibration that explicitly incorporates the distribution of predicted probabilities. We also discuss two related measures of calibration, E50 and E90, which represent the median and 90th percentile of the absolute difference between observed and predicted probabilities. We illustrate the utility of the ICI, E50, and E90 by using them to compare the calibration of logistic regression with that of random forests and boosted regression trees for predicting mortality in patients hospitalized with a heart attack. The use of these numeric metrics permitted for a greater differentiation in calibration than was permissible by visual inspection of graphical calibration curves.
机译:评估估计二元结果的发生方法的校准是验证风险预测算法性能的重要方面。校准通常是指预测和观察结果的概率之间的协议。图形方法是评估校准的有吸引力的方法,其中使用基于黄土的平滑功能进行比较观察和预测的概率。我们描述了由Harrell的E Max Index激励的集成校准指数(ICI),这是平滑校准曲线和完美校准的对角线之间的最大绝对差异。 ICI可以被解释为观察和预测概率之间的加权差异,其中观察结果被预测概率的经验密度函数加权。因此,ICI是校准的衡量标准,明确地包含预测概率的分布。我们还讨论了两种相关校准措施,E50和E90,其代表了观察和预测概率之间绝对差异的中位数和第90百分位数。我们通过使用它们来比较逻辑回归与随机森林的校准和提升回归树的校准来说明ICI,E50和E90的效用,以预测心脏病患者的患者死亡率。使用这些数值测量标准在校准中允许更大的分化,而不是通过视觉检查图形校准曲线允许的校准。

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