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Large-Scale Methodological Comparison of Acute Hypotensive Episode Forecasting Using MIMIC2 Physiological Waveforms

机译:使用MIMIC2生理波形进行急性低血压发作预测的大规模方法学比较

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We compare the dynamic Bayesian network and k-nearest neighbor-based predictors for the occurrence of acute hypotensive episodes (AHE) with respect to various data conditions (size, class balance ratio) and problem definition settings (lag, lead time). From our dataset extracted from the large ICU physiological waveform repository of MIMIC2 database, we find that both models are effective for predicting AHE and their performances improve with increasing training dataset size. We also empirically demonstrate that the nearest neighbor method has a better performance for larger datasets in terms of both prediction result and computational time, but it severely degrades for class imbalanced data while the Bayesian network remains robust.
机译:我们比较了动态贝叶斯网络和基于k近邻的预测因子对各种数据条件(大小,类平衡比)和问题定义设置(滞后,提前期)的急性降血压发作(AHE)的发生。从我们从MIMIC2数据库的大型ICU生理波形存储库中提取的数据集中,我们发现这两个模型都可以有效预测AHE,并且随着训练数据集大小的增加,它们的性能也会提高。我们还从经验上证明,就预测结果和计算时间而言,最近邻方法对于较大的数据集具有更好的性能,但对于类不平衡数据,它会严重退化,而贝叶斯网络仍保持健壮性。

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