有删减生存数据的歧视度量的高效非参数估计器

Marie S. Breum, Torben Martinussen
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引用次数: 0

摘要

医学文献中广泛使用的判别指标包括一致性统计量(如 c 指数或一致性概率)和 ROC 曲线下的累积-动态-时间相关区域(AUC),用于评估评分规则的预测准确性。通常,根据判别能力评估的评分规则是生存回归模型(如 Cox 比例危险模型)的线性预测因子。这有一个不可取的特点,即当模型被错误地指定时,评分规则取决于补偿分布。在这项工作中,我们将重点放在系数向量为非参数估计的评分规则上,并在没有删减的情况下进行定义。我们针对这类评分规则提出了上述区分度的所谓偏差估计器。所提出的估计器允许使用数据自适应方法进行模态拟合,从而有效地利用了数据并最大限度地减少了偏差。此外,估计器不依赖于对评分模型的正确规范来产生一致的估计结果。我们在一项模拟研究中将这些估计方法与现有方法进行了比较,并将其应用于一项脑癌研究,以说明该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient nonparametric estimators of discriminationmeasures with censored survival data
Discrimination measures such as concordance statistics (e.g. the c-index or the concordance probability) and the cumulative-dynamic time-dependent area under the ROC-curve (AUC) are widely used in the medical literature for evaluating the predictive accuracy of a scoring rule which relates a set of prognostic markers to the risk of experiencing a particular event. Often the scoring rule being evaluated in terms of discriminatory ability is the linear predictor of a survival regression model such as the Cox proportional hazards model. This has the undesirable feature that the scoring rule depends on the censoring distribution when the model is misspecified. In this work we focus on linear scoring rules where the coefficient vector is a nonparametric estimand defined in the setting where there is no censoring. We propose so-called debiased estimators of the aforementioned discrimination measures for this class of scoring rules. The proposed estimators make efficient use of the data and minimize bias by allowing for the use of data-adaptive methods for model fitting. Moreover, the estimators do not rely on correct specification of the censoring model to produce consistent estimation. We compare the estimators to existing methods in a simulation study, and we illustrate the method by an application to a brain cancer study.
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