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Prognostic Physiology: Modeling Patient Severity in Intensive Care Units Using Radial Domain Folding

机译:预后生理:使用径向域折叠在重症监护病房中模拟患者严重程度

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摘要

Real-time scalable predictive algorithms that can mine big health data as the care is happening can become the new “medical tests” in critical care. This work describes a new unsupervised learning approach, radial domain folding, to scale and summarize the enormous amount of data collected and to visualize the degradations or improvements in multiple organ systems in real time. Our proposed system is based on learning multi-layer lower dimensional abstractions from routinely generated patient data in modern Intensive Care Units (ICUs), and is dramatically different from most of the current work being done in ICU data mining that rely on building supervised predictive models using commonly measured clinical observations. We demonstrate that our system discovers abstract patient states that summarize a patient’s physiology. Further, we show that a logistic regression model trained exclusively on our learned layer outperforms a customized SAPS II score on the mortality prediction task.
机译:实时可扩展的预测算法可以在护理过程中挖掘重要的健康数据,从而成为重症监护中的新“医学测试”。这项工作描述了一种新的无监督学习方法,即径向域折叠,以缩放和汇总所收集的大量数据,并实时可视化多个器官系统的退化或改进。我们提出的系统基于在现代重症监护病房(ICU)中从例行生成的患者数据中学习多层较低维度的抽象,并且与目前依靠构建监督性预测模型的ICU数据挖掘中正在进行的大多数工作截然不同使用通常测量的临床观察结果。我们证明了我们的系统发现了抽象的患者状态,这些状态概括了患者的生理状况。此外,我们显示了在我们的学习层上专门训练的逻辑回归模型在死亡率预测任务上胜过定制的SAPS II评分。

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