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External Validity of Risk Models: Use of Benchmark Values to Disentangle a Case-Mix Effect From Incorrect Coefficients

机译:风险模型的外部有效性:使用基准值从错误的系数中区分案例混合效应

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摘要

Various performance measures related to calibration and discrimination are available for the assessment of risk models. When the validity of a risk model is assessed in a new population, estimates of the model's performance can be influenced in several ways. The regression coefficients can be incorrect, which indeed results in an invalid model. However, the distribution of patient characteristics (case mix) may also influence the performance of the model. Here the authors consider a number of typical situations that can be encountered in external validation studies. Theoretical relations between differences in development and validation samples and performance measures are studied by simulation. Benchmark values for the performance measures are proposed to disentangle a case-mix effect from incorrect regression coefficients, when interpreting the model's estimated performance in validation samples. The authors demonstrate the use of the benchmark values using data on traumatic brain injury obtained from the International Tirilazad Trial and the North American Tirilazad Trial (1991–1994).
机译:与校准和歧视有关的各种绩效指标可用于评估风险模型。当在新的人群中评估风险模型的有效性时,可以通过多种方式影响对该模型性能的估计。回归系数可能不正确,这实际上会导致模型无效。但是,患者特征(病例混合)的分布也可能影响模型的性能。在这里,作者考虑了外部验证研究中可能遇到的许多典型情况。通过仿真研究了开发样本和验证样本之间差异以及性能度量之间的理论关系。当解释模型在验证样本中的估计性能时,建议使用性能指标的基准值来区分不正确的回归系数与案例混合效果。作者利用从国际Tirilazad试验和北美Tirilazad试验(1991-1994年)获得的脑外伤数据证明了基准值的使用。

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