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An Improved Patient-Specific Mortality Risk Prediction in ICU in a Random Forest Classification Framework

机译:在随机林分类框架中改善ICU的患者特异性死亡率风险预测

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Dynamic and automatic patient specific prediction of the risk associated with ICU mortality may facilitate timely and appropriate intervention of health professionals in hospitals. In this work, patient information and time series measurements of vital signs and laboratory results from the first 48 hours of ICU stays of 4000 adult patients from a publicly available dataset are used to design and validate a mortality prediction system. An ensemble of decision trees are used to simultaneously predict and associate a risk score against each patient in a k-fold validation framework. Risk assessment prediction accuracy of 87% is achieved with our model and the results show significant improvement over a baseline algorithm of SAPS-I that is commonly used for mortality prediction in ICU. The performance of our model is further compared to other state-of-the-art algorithms evaluated on the same dataset.
机译:动态和自动患者对与ICU死亡率相关的风险的具体预测可能会促进医院健康专业人员的及时和适当干预。在这项工作中,患者信息和时间序列测量的生命体征和实验室结果来自公开数据集的4000名成年患者的ICU住院的第一个48小时,用于设计和验证死亡率预测系统。决策树的集合用于同时预测并将风险分数与K折叠验证框架中的每个患者联系起来。风险评估预测准确性为87%,我们的模型实现了87%,结果显示出对ICU中的死亡率预测的基线算法显着改善。与在同一数据集上评估的其他最新的算法相比,我们的模型的性能进一步相比。

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