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Acute Hypertensive Episodes Prediction

机译:急性高血压剧集预测

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摘要

Predicting outbursts of hazardous medical conditions and its importance has arisen significantly in recent years, particularly in patients hospitalized in the Intensive Care Unit (ICU). In hospitals worldwide, patients are developing life-threatening complications, which might lead to organ dysfunctions and, if not treated properly, to death. In this study, we use patients' longitudinal vital signs data from the ICUs, focusing on predicting Acute Hypertensive Episodes (AHE). In this study, two approaches were used for prediction: predicting continuously whether a patient will experience an AHE in a pre-defined time period ahead using an observation sliding window, or predicting whether it will generally occur during the ICU admission, given a fixed time period from the admission. Temporal abstraction was employed to transform the heterogeneous multivariate temporal data into a uniform representation of symbolic time intervals, and frequent Time Intervals Related Patterns (TIRPs), which are used as features for classification. For comparison, Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) are used. Our results show that using frequent temporal patterns leads to a better AHE prediction.
机译:近年来,预测危险性病症的爆发及其重要性显着,特别是在重症监护股(ICU)住院患者的患者中。在全球医院,患者正在发展危及生命的并发症,这可能导致器官功能障碍,如果没有妥善处理,则为死亡。在这项研究中,我们使用患者的纵向生命符号数据来自ICU,重点是预测急性高血压发作(AHE)。在这项研究中,两种方法用于预测:连续预测患者是否在使用观察滑动窗口之前在前方预定时间段中经历AHE,或者预测在ICU入场期间是否通常发生在ICU入场期间从入场时期。使用时间抽象来将异构多变量时间数据转换为符号时间间隔的均匀表示,以及使用作为分类的特征的频繁时间间隔和频繁的时间间隔(tirps)。为了比较,使用卷积神经网络(CNN)和经常性神经网络(RNN)。我们的结果表明,使用频繁的时间模式导致更好的AHE预测。

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