The change in area under the curve (âAUC), the integrated discrimination improvement (IDI), and net reclassification index (NRI) are commonly used measures of risk prediction model performance. Some authors have reported good validity of associated methods of estimating their standard errors (SE) and construction of confidence intervals, whereas others have questioned their performance. To address these issues, we unite the âAUC, IDI, and three versions of the NRI under the umbrella of the U-statistics family. We rigorously show that the asymptotic behavior of âAUC, NRIs, and IDI fits the asymptotic distribution theory developed for U-statistics. We prove that the âAUC, NRIs, and IDI are asymptotically normal, unless they compare nested models under the null hypothesis. In the latter case, asymptotic normality and existing SE estimates cannot be applied to âAUC, NRIs, or IDI. In the former case, SE formulas proposed in the literature are equivalent to SE formulas obtained from U-statistics theory if we ignore adjustment for estimated parameters. We use Sukhatme-Randles-deWet condition to determine when adjustment for estimated parameters is necessary. We show that adjustment is not necessary for SEs of the âAUC and two versions of the NRI when added predictor variables are significant and normally distributed. The SEs of the IDI and three-category NRI should always be adjusted for estimated parameters. These results allow us to define when existing formulas for SE estimates can be used and when resampling methods such as the bootstrap should be used instead when comparing nested models. We also use the U-statistic theory to develop a new SE estimate of âAUC. Copyright © 2017 John Wiley & Sons, Ltd.
Asymptotic distribution of âAUC, NRIs, and IDI based on theory of U-statistics.
基于 U 统计理论的 AUC、NRI 和 IDI 的渐近分布
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作者:Demler Olga V, Pencina Michael J, Cook Nancy R, D'Agostino Ralph B Sr
| 期刊: | Statistics in Medicine | 影响因子: | 1.800 |
| 时间: | 2017 | 起止号: | 2017 Sep 20; 36(21):3334-3360 |
| doi: | 10.1002/sim.7333 | ||
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