Department of Pediatrics, Northwestern Feinberg School of Medicine.
Divisions of Hospital-Based Medicine.
Hosp Pediatr. 2023 Sep 1;13(9):760-767. doi: 10.1542/hpeds.2022-006964.
Early recognition and treatment of pediatric sepsis remain mainstay approaches to improve outcomes. Although most children with sepsis are diagnosed in the emergency department, some are admitted with unrecognized sepsis or develop sepsis while hospitalized. Our objective was to develop and validate a prediction model of pediatric sepsis to improve recognition in the inpatient setting.
Patients with sepsis were identified using intention-to-treat criteria. Encounters from 2012 to 2018 were used as a derivation to train a prediction model using variables from an existing model. A 2-tier threshold was determined using a precision-recall curve: an "Alert" tier with high positive predictive value to prompt bedside evaluation and an "Aware" tier with high sensitivity to increase situational awareness. The model was prospectively validated in the electronic health record in silent mode during 2019.
A total of 55 980 encounters and 793 (1.4%) episodes of sepsis were used for derivation and prospective validation. The final model consisted of 13 variables with an area under the curve of 0.96 (95% confidence interval 0.95-0.97) in the validation set. The Aware tier had 100% sensitivity and the Alert tier had a positive predictive value of 14% (number needed to alert of 7) in the validation set.
We derived and prospectively validated a 2-tiered prediction model of inpatient pediatric sepsis designed to have a high sensitivity Aware threshold to enable situational awareness and a low number needed to Alert threshold to minimize false alerts. Our model was embedded in our electronic health record and implemented as clinical decision support, which is presented in a companion article.
早期识别和治疗儿科脓毒症仍然是改善预后的主要方法。尽管大多数脓毒症患儿是在急诊科诊断出来的,但有些患儿是在未被识别的脓毒症或住院期间发生脓毒症时被收治入院的。我们的目的是开发和验证一个儿科脓毒症预测模型,以提高住院环境中的识别能力。
采用意向治疗标准识别脓毒症患者。使用现有模型中的变量,从 2012 年至 2018 年的就诊记录中提取数据进行模型训练。使用精度-召回曲线确定了两级阈值:一个具有高阳性预测值以提示床边评估的“警报”级,一个具有高灵敏度以提高情境意识的“知晓”级。该模型在 2019 年以静默模式在电子病历中进行前瞻性验证。
共使用 55980 次就诊记录和 793 次(1.4%)脓毒症发作数据进行推导和前瞻性验证。最终模型由 13 个变量组成,在验证集中的曲线下面积为 0.96(95%置信区间 0.95-0.97)。在验证集中,“知晓”级的灵敏度为 100%,“警报”级的阳性预测值为 14%(需要警报的数量为 7)。
我们推导并前瞻性验证了一个用于住院儿科脓毒症的两级预测模型,旨在具有高灵敏度的“知晓”阈值以实现情境意识,以及低“警报”阈值以最小化假警报。我们的模型被嵌入到我们的电子病历中,并作为临床决策支持实施,相关内容在一篇配套文章中介绍。