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Mortality prediction for ICU patients using just-in-time learning and extreme learning machine

机译:使用即时学习和极限学习机预测ICU患者的死亡率

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Many types of severity or prognostic scoring systems have been developed for patients in intensive care units (ICUs). They provide evaluation of patients' status so that they can get the best distribution of the intensive care. However, the accuracy and reliability of the existing systems is still not ideal. A new combination of just-in-time learning (JITL) and extreme learning machine (ELM) was proposed, aiming at improving mortality prediction accuracy. JITL was utilized to gather the most relevant data samples for patient-specific modeling while ELM was chosen for fast model building. In this study, 4000 records of ICU patients from PhysioNet database were selected, including 554 dead and 3446 survival records in which physiological parameters values were used for mortality prediction. In terms of the area under receiver-operating curve (AUC), JITL-ELM achieved the best performance, compared with ELM, BP neural network, logistic regression model and traditional score models.
机译:已经为重症监护病房(ICU)的患者开发了多种类型的严重程度或预后评分系统。他们提供对患者状况的评估,以便他们可以得到最佳的重症监护服务。但是,现有系统的准确性和可靠性仍然不是理想的。为了提高死亡率预测的准确性,提出了一种实时学习(JITL)和极限学习机(ELM)的新组合。 JITL用于收集最相关的数据样本以进行特定于患者的建模,而ELM被选择用于快速建模。在这项研究中,从PhysioNet数据库中选择了4000例ICU患者记录,包括554例死亡和3446例存活记录,其中生理参数值用于死亡率预测。就接收器工作曲线(AUC)之下的面积而言,JITL-ELM与ELM,BP神经网络,逻辑回归模型和传统评分模型相比,表现最佳。

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