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A Weighted Similarity Measure Approach to Predict Intensive Care Unit Transfers

机译:预测重症监护单元转移的加权相似度测量方法

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Classification models have proven useful for predicting clinical interventions and patient outcomes. One of the key issues that affect the predictive ability of supervised learning frameworks in the healthcare scenario is imbalance in data sets. In addition, non-uniform data collection processes in clinical scenarios lead to poor quality data sets. We designed a novel approach to predict Intensive Care Unit (ICU) transfers based on a weighted-similarity measure for patients outside of ICUs. The approach uses similarity between patient vital signs as input features for training the model. To address the data quality issues, we demonstrate the use of various up-sampling and down-sampling techniques to handle imbalanced data sets and train a classifier on a re-sampled data set. The data set used for testing the approach is derived from the MIMIC III database. We compare our results with the clinically accepted methodology to capture patient's health state, assisting in clinical decision making. Our model outperforms the standard methodology used in clinical decision making in standard scoring metrics such as F1-score, False Positive Rate and Mathew's Correlation Coefficient [MCC].
机译:分类模型已经证明有助于预测临床干预和患者结果。影响医疗环境中监督学习框架的预测能力的关键问题之一是数据集的不平衡。此外,临床情景中的非统一数据收集过程导致质量差的数据集。我们设计了一种新的方法来预测基于ICU以外的患者的加权相似性度量的重症监护单元(ICU)转移。该方法使用患者生命体征之间的相似性作为培训模型的输入特征。为了解决数据质量问题,我们演示了使用各种上采样和下采样技术来处理不平衡数据集并在重新采样的数据集上培训分类器。用于测试方法的数据集是从模拟III数据库中导出的。我们将结果与临床接受的方法进行比较,以捕捉患者的健康状况,协助临床决策。我们的模型优于标准评分指标中临床决策中使用的标准方法,例如F1分数,假阳性率和Mathew的相关系数[MCC]。

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