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Prediction using patient comparison vs. modeling: A case study for mortality prediction

机译:使用患者比较和模型进行预测:死亡率预测的案例研究

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Information in Electronic Medical Records (EMRs) can be used to generate accurate predictions for the occurrence of a variety of health states, which can contribute to more pro-active interventions. The very nature of EMRs does make the application of off-the-shelf machine learning techniques difficult. In this paper, we study two approaches to making predictions that have hardly been compared in the past: (1) extracting high-level (temporal) features from EMRs and building a predictive model, and (2) defining a patient similarity metric and predicting based on the outcome observed for similar patients. We analyze and compare both approaches on the MIMIC-II ICU dataset to predict patient mortality and find that the patient similarity approach does not scale well and results in a less accurate model (AUC of 0.68) compared to the modeling approach (0.84). We also show that mortality can be predicted within a median of 72 hours.
机译:电子病历(EMR)中的信息可用于为各种健康状况的发生生成准确的预测,从而有助于采取更积极的干预措施。 EMR的本质确实使现成的机器学习技术难以应用。在本文中,我们研究了过去很难进行比较的两种预测方法:(1)从EMR中提取高级(时间)特征并建立预测模型,以及(2)定义患者相似性指标并进行预测基于观察到的类似患者的结局。我们分析和比较了MIMIC-II ICU数据集上的两种方法,以预测患者的死亡率,并发现患者相似性方法无法很好地扩展,因此与建模方法(0.84)相比,模型的准确性较低(AUC为0.68)。我们还表明,可以在72小时的中位数内预测死亡率。

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