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Natural Language Processing of Clinical Notes for Improved Early Prediction of Septic Shock in the ICU

机译:临床笔记的自然语言处理可改善ICU中败血性休克的早期预测

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Sepsis and septic shock are major concerns in public health as the leading contributors to hospital mortality and cost of treatment in the United States. Early treatment is instrumental for improving patient outcome; to this end, algorithmic methods for early prediction of septic shock have been developed using electronic health record data, with the goal of decreasing treatment delay. We extend a previously-developed method, using a gradient boosting algorithm (XG-Boost) to compute a time-evolving risk of impending transition into septic shock, by combining physiological data from the electronic health record with features obtained from natural language processing of clinical note data. We compare two different methods for generating natural language processing features, with the best method obtaining improved performance of 0.92 AUC, 84% sensitivity, 82% specificity, 49% positive predictive value, and a median early warning time of 7.0 hours. This degree of early warning is sufficient to enable intervention many hours in advance of septic shock onset, with the improved prediction performance of this method resulting in fewer false alarms and thus more actionable predictions.
机译:败血症和败血性休克是公共卫生中的主要问题,是美国医院死亡率和治疗费用的主要来源。早期治疗有助于改善患者预后。为此,已经开发了使用电子健康记录数据来早期预测败血性休克的算法方法,目的是减少治疗延迟。我们扩展了以前开发的方法,使用梯度增强算法(XG-Boost)将电子健康记录中的生理数据与临床自然语言处理中获得的特征相结合,从而计算出即将过渡到败血性休克的时间演变风险笔记数据。我们比较了两种用于生成自然语言处理功能的方法,其中最好的方法获得了0.92 AUC,84%的敏感性,82%的特异性,49%的阳性预测值和7.0小时的中位预警时间的改进性能。这种预警程度足以在败血性休克发作之前进行许多小时的干预,该方法的改进的预测性能可减少虚警,从而提高预测的准确性。

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