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Sensitivity to imputation models and assumptions in receiver operating characteristic analysis with incomplete data

机译:不完整数据的接收机工作特性分析中对插补模型和假设的敏感性

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摘要

Modern statistical methods using incomplete data have been increasingly applied in a wide variety of substantive problems. Similarly, receiver operating characteristic (ROC) analysis, a method used in evaluating diagnostic tests or biomarkers in medical research, has also been increasingly popular problem in both its development and application. While missing-data methods have been applied in ROC analysis, the impact of model mis-specification and/or assumptions (e.g. missing at random) underlying the missing data has not been thoroughly studied. In this work, we study the performance of multiple imputation (MI) inference in ROC analysis. Particularly, we investigate parametric and non-parametric techniques for MI inference under common missingness mechanisms. Depending on the coherency of the imputation model with the underlying data generation mechanism, our results show that MI generally leads to well-calibrated inferences under ignorable missingness mechanisms.
机译:使用不完整数据的现代统计方法已越来越广泛地应用于各种实质性问题。类似地,在医学研究中用于评估诊断测试或生物标记物的一种方法,即接收器工作特性(ROC)分析,在其开发和应用中也越来越受到人们的欢迎。尽管在ROC分析中使用了缺失数据方法,但尚未充分研究缺失数据背后的模型错误指定和/或假设(例如随机缺失)的影响。在这项工作中,我们研究了ROC分析中多重插补(MI)推理的性能。特别是,我们研究了常见缺失机制下用于MI推理的参数和非参数技术。根据归因模型与基础数据生成机制的一致性,我们的结果表明,在可忽略的缺失机制下,MI通常会导致校准良好的推断。

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