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Evaluating Trauma Patients: Addressing Missing Covariates with Joint Optimization

机译:评估创伤患者:通过联合优化解决缺失的协变量

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Missing values are a common problem when applying classification algorithms to real-world medical data. This is especially true for trauma patients, where the emergent nature of the cases makes it difficult to collect all of the relevant data for each patient. Standard methods for handling missingness first learn a model to estimate missing data values, and subsequently train and evaluate a classifier using data imputed with this model. Recently, several proposed methods have demonstrated the benefits of jointly estimating the imputation model and classifier parameters. However, these methods make assumptions that limit their utility with many real-world medical datasets. For example, the assumption that data elements are missing at random is often invalid. We address this situation by exploring a novel approach for jointly learning the imputation model and classifier. Unlike previous algorithms, our approach makes no assumptions about the missingness of the data, can be used with arbitrary probabilistic data models and classification loss functions, and can be used when both the training and testing data have missing values. We investigate the utility of this approach on the prediction of several patient outcomes in a large national registry of trauma patients, and find that it significantly outperforms standard sequential methods.
机译:在将分类算法应用于现实世界的医疗数据时,缺失值是一个常见问题。对于创伤患者来说尤其如此,其中案例的紧急性质使得难以为每位患者收集所有相关数据。用于处理缺失的标准方法首先了解估计缺失数据值的模型,然后使用此模型归功的数据训练和评估分类器。最近,几种提出的方​​法已经证明了共同估计归纳模型和分类器参数的益处。但是,这些方法使假设限制了许多现实世界医疗数据集的实用程序。例如,数据元素随机缺少的假设通常是无效的。我们通过探索共同学习归纳模型和分类器的新方法来解决这种情况。与以前的算法不同,我们的方法没有关于数据缺失的假设,可以与任意概率数据模型和分类丢失功能一起使用,并且可以使用训练和测试数据缺失值时使用。我们调查了这种方法对创伤患者的大型国家注册表中几种患者结果的预测,并发现它显着优于标准顺序方法。

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