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Outcome Prediction for Patients with Severe Traumatic Brain Injury Using Permutation Entropy Analysis of Electronic Vital Signs Data

机译:使用电子生命体征数据的置换熵分析对严重颅脑损伤患者的结果预测

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摘要

Permutation entropy is computationally efficient, robust to noise, and effective to measure complexity. We used this technique to quantify the complexity of continuous vital signs recorded from patients with traumatic brain injury (TBI). Using permutation entropy calculated from early vital signs (initial 10~20% of patient hospital stay time), we built classifiers to predict in-hoepital mortality, and mobility measured by 3-month Extended Glasgow Outcome Score (GOSE). Sixty patients with severe TBI produced a skewed dataset that we evaluated for accuracy, sensitivity and specificity. With early vital signs data, the overall prediction accuracy achieved 91.67% for mortality, and 76.67% for 3-month GOSE in testing datasets, using the leave-one-out cross validation. We also applied Receiver Operating Characteristic analysis, to compare classifiers built from different learning methods. Those results support the applicability of permutation entropy in analyzing the dynamic behavior of biomedical time series for early prediction of mortality and long-term patient outcomes.
机译:置换熵在计算上是有效的,对于噪声是鲁棒的,并且对于测量复杂度是有效的。我们使用这种技术来量化从脑外伤(TBI)病人记录的连续生命体征的复杂性。利用从早期生命体征(最初住院时间的10%到20%)计算出的置换熵,我们建立了分类器来预测-内死亡率,并通过3个月的格拉斯哥预后评分(GOSE)衡量活动性。 60名重度TBI患者产生了偏斜的数据集,我们对其准确性,敏感性和特异性进行了评估。使用早期生命体征数据,使用留一法交叉验证,在测试数据集中,整体死亡率预测准确率达到91.67%,三个月G​​OSE达到76.67%。我们还应用了接收器操作特性分析,以比较根据不同学习方法构建的分类器。这些结果支持置换熵在分析生物医学时间序列动态行为以早期预测死亡率和长期患者预后方面的适用性。

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  • 会议地点 Berlin(DE)
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    Department of Computer Science and Electrical Engineering, University of Maryland, Baltimore County, 1000 Hilltop Circle, Baltimore, MD 21250;

    Department of Computer Science and Electrical Engineering, University of Maryland, Baltimore County, 1000 Hilltop Circle, Baltimore, MD 21250;

    R Adams Cowley Shock Trauma Center Shock Trauma and Anesthesiology Research Center, University of Maryland School of Medicine, Baltimore, MD 21201;

    R Adams Cowley Shock Trauma Center Shock Trauma and Anesthesiology Research Center, University of Maryland School of Medicine, Baltimore, MD 21201;

    R Adams Cowley Shock Trauma Center Shock Trauma and Anesthesiology Research Center, University of Maryland School of Medicine, Baltimore, MD 21201;

    R Adams Cowley Shock Trauma Center Shock Trauma and Anesthesiology Research Center, University of Maryland School of Medicine, Baltimore, MD 21201;

    R Adams Cowley Shock Trauma Center Shock Trauma and Anesthesiology Research Center, University of Maryland School of Medicine, Baltimore, MD 21201;

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