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Logistic regression with missing covariates-Parameter estimation, model selection and prediction within a joint-modeling framework

机译:具有缺失的协变量参数估计,联合建模框架内的模型选择和预测的逻辑回归

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Logistic regression is a common classification method in supervised learning. Surprisingly, there are very few solutions for performing logistic regression with missing values in the covariates. A complete approach based on a stochastic approximation version of the EM algorithm is proposed in order to perform statistical inference with missing values, including the estimation of the parameters and their variance, derivation of confidence intervals, and also a model selection procedure. The problem of prediction for new observations on a test set with missing covariate data is also tackled. Supported by a simulation study in which the method is compared to previous ones, it has proved to be computationally efficient, and has good coverage and variable selection properties. The approach is then illustrated on a dataset of severely traumatized patients from Paris hospitals by predicting the occurrence of hemorrhagic shock, a leading cause of early preventable death in severe trauma cases. The aim is to improve the current red flag procedure, a binary alert identifying patients with a high risk of severe hemorrhage. The method is implemented in the R package misaem. (C) 2020 Elsevier B.V. All rights reserved.
机译:Logistic回归是监督学习的常见分类方法。令人惊讶的是,很少有很少的解决方案,用于在协变者中执行具有缺失值的逻辑回归。提出了一种基于EM算法的随机逼近版本的完整方法,以便对缺失值进行统计推断,包括参数的估计及其方差,置信区间的推导,以及模型选择过程。还解决了对缺失协变量数据的测试集的新观测预测问题。通过仿真研究支持,其中将方法与以前的方法进行比较,已经证明是计算有效的,并且具有良好的覆盖范围和可变选择属性。然后通过预测出血休克发生的发生,从巴黎医院的严重创伤患者的数据集中说明了这种方法,这是严重创伤病例中早期可预防死亡的主要原因。目的是改善目前的红旗程序,是二进制警报鉴定严重出血风险高的患者。该方法是在R包错误中实现的。 (c)2020 Elsevier B.V.保留所有权利。

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