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首页> 外文期刊>BMC Emergency Medicine >Prospective evaluation of an automated method to identify patients with severe sepsis or septic shock in the emergency department
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Prospective evaluation of an automated method to identify patients with severe sepsis or septic shock in the emergency department

机译:对急诊科中识别出严重败血症或败血性休克的自动方法的前瞻性评估

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Background Sepsis is an often-fatal syndrome resulting from severe infection. Rapid identification and treatment are critical for septic patients. We therefore developed a probabilistic model to identify septic patients in the emergency department (ED). We aimed to produce a model that identifies 80?% of sepsis patients, with no more than 15 false positive alerts per day, within one hour of ED admission, using routine clinical data. Methods We developed the model using retrospective data for 132,748 ED encounters (549 septic), with manual chart review to confirm cases of severe sepsis or septic shock from January 2006 through December 2008. A na?ve Bayes model was used to select model features, starting with clinician-proposed candidate variables, which were then used to calculate the probability of sepsis. We evaluated the accuracy of the resulting model in 93,733 ED encounters from April 2009 through June 2010. Results The final model included mean blood pressure, temperature, age, heart rate, and white blood cell count. The area under the receiver operating characteristic curve (AUC) for the continuous predictor model was 0.953. The binary alert achieved 76.4?% sensitivity with a false positive rate of 4.7?%. Conclusions We developed and validated a probabilistic model to identify sepsis early in an ED encounter. Despite changes in process, organizational focus, and the H1N1 influenza pandemic, our model performed adequately in our validation cohort, suggesting that it will be generalizable.
机译:背景败血症是一种由严重感染引起的致命性综合症。快速鉴定和治疗对于败血症患者至关重要。因此,我们开发了一种概率模型来识别急诊科(ED)中的败血症患者。我们的目标是使用常规临床数据,建立一种模型,该模型能够识别出80%的败血症患者,每天入院一小时内假阳性警报不超过15次。方法我们使用回顾性数据对132,748例ED遭遇(549例败血症)进行了开发,并通过手动图表审查来确认2006年1月至2008年12月发生严重败血症或败血症休克的病例。采用朴素贝叶斯模型选择模型特征,从临床医生建议的候选变量开始,然后将其用于计算败血症的可能性。我们在2009年4月至2010年6月的93,733次ED遭遇中评估了所得模型的准确性。结果最终模型包括平均血压,体温,年龄,心率和白细胞计数。连续预测器模型的接收器工作特征曲线(AUC)下的面积为0.953。二进制警报的灵敏度为76.4%,误报率为4.7%。结论我们开发并验证了一种概率模型,以在ED遭遇早期识别败血症。尽管过程,组织重点和H1N1流感大流行有所变化,但我们的模型在我们的验证队列中仍能充分发挥作用,这表明该模型可以推广。

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