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Seasonality in Infection Predictions Using Interpretable Models for High Dimensional Imbalanced Datasets

机译:利用高维不平衡数据集的可解释模型进行感染预测的季节性

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Seasonality plays a significant role in the prevalence of infectious diseases. We evaluate the performance of different approaches used to deal with seasonality in clinical prediction models, including a new proposal based on sliding windows. Class imbalance, high dimensionality and interpretable models are also considered since they are common traits of clinical datasets. We tested these approaches with four datasets: two created synthetically and two extracted from the MIMIC-Ⅲ database. Our results corroborate that clinical prediction models for infections can be improved by considering the effect of seasonality. However, the techniques employed to obtain the best results are highly dependent on the dataset.
机译:季节性在传染病的患病率中起着重要作用。 我们评估用于处理临床预测模型中季节性的不同方法的性能,包括基于滑动窗口的新提案。 由于它们是临床数据集的常见性状,因此也考虑了类别不平衡,高维度和可解释模型。 我们用四个数据集测试了这些方法:综合创建的两种方法,并从模拟-Ⅲ数据库中提取两个。 我们的结果证实了通过考虑季节性的影响,可以改善感染的临床预测模型。 然而,用于获得最佳结果的技术高度依赖于数据集。

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