利用机器学习预测危重病人的高氯血症。

Pete Yeh, Yiheng Pan, L Nelson Sanchez-Pinto, Yuan Luo
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引用次数: 2

摘要

血清氯化物水平升高(高氯化物血症)和高氯化物含量静脉输液均与某些亚组危重患者(如脓毒症患者)的发病率和死亡率增加有关。在这里,我们使用来自重症监护医学信息市场III (MIMIC-III)数据库的数据在普通重症监护病房(ICU)人群中证明了这种关联,并建议使用监督学习来预测危重患者的高氯血症。来自成人ICU住院前24小时记录的临床变量被表示为四个预测监督学习分类器的特征。表现最好的模型能够预测第2天高氯血症,AUC为0.80,每5个假警报比一个真警报,这是一个临床可操作的比率。我们的研究结果表明,临床医生可以有效地提醒患者有发生高氯血症的风险,为减轻这种风险提供机会,并有可能改善结果。
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Using Machine Learning to Predict Hyperchloremia in Critically Ill Patients.

Elevated serum chloride levels (hyperchloremia) and the administration of intravenous (IV) fluids with high chloride content have both been associated with increased morbidity and mortality in certain subgroups of critically ill patients, such as those with sepsis. Here, we demonstrate this association in a general intensive care unit (ICU) population using data from the Medical Information Mart for Intensive Care III (MIMIC-III) database and propose the use of supervised learning to predict hyperchloremia in critically ill patients. Clinical variables from records of the first 24h of adult ICU stays were represented as features for four predictive supervised learning classifiers. The best performing model was able to predict second-day hyperchloremia with an AUC of 0.80 and a ratio of 5 false alerts for every true alert, which is a clinically-actionable rate. Our results suggest that clinicians can be effectively alerted to patients at risk of developing hyperchloremia, providing an opportunity to mitigate this risk and potentially improve outcomes.

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