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Predicting ICU mortality: a comparison of stationary and nonstationary temporal models.

机译:预测ICU死亡率:固定和非固定时间模型的比较。

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摘要

OBJECTIVE: This study evaluates the effectiveness of the stationarity assumption in predicting the mortality of intensive care unit (ICU) patients at the ICU discharge. DESIGN: This is a comparative study. A stationary temporal Bayesian network learned from data was compared to a set of (33) nonstationary temporal Bayesian networks learned from data. A process observed as a sequence of events is stationary if its stochastic properties stay the same when the sequence is shifted in a positive or negative direction by a constant time parameter. The temporal Bayesian networks forecast mortalities of patients, where each patient has one record per day. The predictive performance of the stationary model is compared with nonstationary models using the area under the receiver operating characteristics (ROC) curves. RESULTS: The stationary model usually performed best. However, one nonstationary model using large data sets performed significantly better than the stationary model. CONCLUSION: Results suggest that using a combination of stationary and nonstationary models may predict better than using either alone.
机译:目的:本研究评估了平稳性假设在预测重症监护病房出院时重症监护病房(ICU)患者死亡率方面的有效性。设计:这是一个比较研究。从数据中学到的固定时态贝叶斯网络与从数据中学到的一组(33)非平稳时态贝叶斯网络进行了比较。如果当事件序列在正或负方向上按恒定时间参数移动时,其随机性保持不变,则观察为事件序列的过程是平稳的。时空贝叶斯网络预测患者的死亡率,其中每个患者每天都有一个记录。使用接收器工作特性(ROC)曲线下的面积,将平稳模型的预测性能与非平稳模型进行比较。结果:固定模型通常表现最佳。但是,使用大数据集的一种非平稳模型的性能明显好于平稳模型。结论:结果表明,结合使用平稳模型和非平稳模型可能比单独使用两种模型更好。

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