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A Novel Technique for Identifying Patients with ICU Needs Using Hemodynamic Features

机译:利用血液动力学特征识别ICU需求患者的新技术

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Identification of patients requiring intensive care is a critical issue in clinical treatment. The objective of this study is to develop a novel methodology using hemodynamic features for distinguishing such patients requiring intensive care from a group of healthy subjects. In this study, based on the hemodynamic features, subjects are divided into three groups: healthy, risky and patient. For each of the healthy and patient subjects, the evaluated features are based on the analysis of existing differences between hemodynamic variables: Blood Pressure and Heart Rate. Further, four criteria from the hemodynamic variables are introduced: circle criterion, estimation error criterion, Poincare plot deviation, and autonomic response delay criterion. For each of these criteria, three fuzzy membership functions are defined to distinguish patients from healthy subjects. Furthermore, based on the evaluated criteria, a scoring method is developed. In this scoring method membership degree of each subject is evaluated for the three classifying groups. Then, for each subject, the cumulative sum of membership degree of all four criteria is calculated. Finally, a given subject is classified with the group which has the largest cumulative sum. In summary, the scoring method results in 86% sensitivity, 94.8% positive predictive accuracy and 82.2% total accuracy.
机译:识别需要重症监护的患者是临床治疗中的关键问题。这项研究的目的是开发一种利用血液动力学特征的新方法,以将此类需要重症监护的患者与一组健康受试者区分开。在这项研究中,根据血液动力学特征,将受试者分为三类:健康人群,高危人群和患者。对于每个健康受试者和患者受试者,所评估的特征均基于对血液动力学变量之间的现有差异的分析:血压和心率。此外,从血液动力学变量引入了四个标准:圆标准,估计误差标准,庞加莱图偏差和自主反应延迟标准。对于这些标准中的每一个,定义了三个模糊隶属函数以区分患者与健康受试者。此外,根据评估的标准,开发了一种评分方法。在该评分方法中,针对三个分类组评估每个主题的隶属度。然后,针对每个主题,计算所有四个条件的隶属度的累积总和。最后,将给定的主题与具有最大累计和的组进行分类。总而言之,评分方法可得出86%的灵敏度,94.8%的阳性预测准确率和82.2%的总准确率。

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