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首页> 外文期刊>BMC Medical Informatics and Decision Making >Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data
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Hyperchloremia in critically ill patients: association with outcomes and prediction using electronic health record data

机译:危重病患者的高氯血症:使用电子健康记录数据与结果和预测相关联

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Increased chloride in the context of intravenous fluid chloride load and serum chloride levels (hyperchloremia) have previously been associated with increased morbidity and mortality in select subpopulations of intensive care unit (ICU) patients (e.g patients with sepsis). Here, we study the general ICU population of the Medical Information Mart for Intensive Care III (MIMIC-III) database to corroborate these associations, and propose a supervised learning model for the prediction of hyperchloremia in ICU patients. We assessed hyperchloremia and chloride load and their associations with several outcomes (ICU mortality, new acute kidney injury [AKI] by day 7, and multiple organ dysfunction syndrome [MODS] on day 7) using regression analysis. Four predictive supervised learning classifiers were trained to predict hyperchloremia using features representative of clinical records from the first 24h of adult ICU stays. Hyperchloremia was shown to have an independent association with increased odds of ICU mortality, new AKI by day 7, and MODS on day 7. High chloride load was also associated with increased odds of ICU mortality. Our best performing supervised learning model predicted second-day hyperchloremia with an AUC of 0.76 and a number needed to alert (NNA) of 7—a clinically-actionable rate. Our results support the use of predictive models to aid clinicians in monitoring for and preventing hyperchloremia in high-risk patients and offers an opportunity to improve patient outcomes.
机译:在静脉内氯化物载荷和血清氯化物水平(高氯化血症)的背景下增加了氯化物,先前已经与选择的强化护理单位(ICU)患者的亚群(E.G患者患者)的发病率和死亡率增加有关。在这里,我们研究了医疗信息MART的一般ICU人口为重症监护III(MIMIC-III)数据库,以证实这些协会,并提出了ICU患者高氯血症预测的监督学习模型。我们评估了高氯血症和氯化物载荷及其与几种结果(ICU死亡率,新急性肾脏损伤[AKI]的协会,使用回归分析,第7天的多器官功能障碍综合征[MODS])。使用来自成年ICU的前24小时的临床记录的特征,培训了四种预测监督学习分类剂以预测高氯血症。高氯血症被证明与ICU死亡率的增加,新的AKI在第7天的增加,第7天的MODS也有一个独立的关联。高氯化物负荷也与ICU死亡率的增加有关。我们最好的监督学习模型预测二日高氯血症,AUC为0.76,并在临床上可操作的速率提醒(NNA)。我们的结果支持使用预测模型来帮助临床医生在高危患者中监测和预防高氯血症,并提供改善患者结果的机会。

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