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用于检测儿科重症监护中呼吸机相关性肺炎发生情况的临床决策支持系统

Clinical Decision Support System to Detect the Occurrence of Ventilator-Associated Pneumonia in Pediatric Intensive Care.

作者信息

Rambaud Jerome, Sajedi Masoumeh, Al Omar Sally, Chomtom Maryline, Sauthier Michael, De Montigny Simon, Jouvet Philippe

机构信息

Pediatric Intensive Care Unit, Sainte-Justine Hospital, Montreal, QC H3T 1C5, Canada.

Pediatric and Neonatal Intensive Care Unit, Armand-Trousseau Hospital, Sorbonne University, 75012 Paris, France.

出版信息

Diagnostics (Basel). 2023 Sep 18;13(18):2983. doi: 10.3390/diagnostics13182983.

Abstract

OBJECTIVES

Ventilator-associated pneumonia (VAP) is a severe care-related disease. The Centers for Disease Control defined the diagnosis criteria; however, the pediatric criteria are mainly subjective and retrospective. Clinical decision support systems have recently been developed in healthcare to help the physician to be more accurate for the early detection of severe pathology. We aimed at developing a predictive model to provide early diagnosis of VAP at the bedside in a pediatric intensive care unit (PICU).

METHODS

We performed a retrospective single-center study at a tertiary-care pediatric teaching hospital. All patients treated by invasive mechanical ventilation between September 2013 and October 2019 were included. Data were collected in the PICU electronic medical record and high-resolution research database. Development of the clinical decision support was then performed using open-access R software (Version 3.6.1).

MEASUREMENTS AND MAIN RESULTS

In total, 2077 children were mechanically ventilated. We identified 827 episodes with almost 48 h of mechanical invasive ventilation and 77 patients who suffered from at least one VAP event. We split our database at the patient level in a training set of 461 patients free of VAP and 45 patients with VAP and in a testing set of 199 patients free of VAP and 20 patients with VAP. The Imbalanced Random Forest model was considered as the best fit with an area under the ROC curve from fitting the Imbalanced Random Forest model on the testing set being 0.82 (95% CI: (0.71, 0.93)). An optimal threshold of 0.41 gave a sensitivity of 79.7% and a specificity of 72.7%, with a positive predictive value (PPV) of 9% and a negative predictive value of 99%, and with an accuracy of 79.5% (95% CI: (0.77, 0.82)).

CONCLUSIONS

Using machine learning, we developed a clinical predictive algorithm based on clinical data stored prospectively in a database. The next step will be to implement the algorithm in PICUs to provide early, automatic detection of ventilator-associated pneumonia.

摘要

目的

呼吸机相关性肺炎(VAP)是一种与重症监护相关的疾病。疾病控制中心定义了诊断标准;然而,儿科标准主要是主观的且为回顾性的。临床决策支持系统最近在医疗保健领域得到了发展,以帮助医生更准确地早期发现严重病变。我们旨在开发一种预测模型,以便在儿科重症监护病房(PICU)床边对VAP进行早期诊断。

方法

我们在一家三级儿科教学医院进行了一项回顾性单中心研究。纳入了2013年9月至2019年10月期间接受有创机械通气治疗的所有患者。数据收集于PICU电子病历和高分辨率研究数据库。然后使用开源R软件(版本3.6.1)进行临床决策支持的开发。

测量指标和主要结果

共有2077名儿童接受了机械通气。我们确定了827例有近48小时有创机械通气的病例,以及77例至少发生过一次VAP事件的患者。我们在患者层面将数据库分为一个训练集,其中包括461例无VAP的患者和45例有VAP的患者,以及一个测试集,其中包括199例无VAP的患者和20例有VAP的患者。不均衡随机森林模型被认为是最佳拟合模型,在测试集上拟合不均衡随机森林模型得到的ROC曲线下面积为0.82(95%CI:(0.71,0.93))。最佳阈值为0.41时,敏感性为79.7%,特异性为72.7%,阳性预测值(PPV)为9%,阴性预测值为99%,准确率为79.5%(95%CI:(0.77,0.82))。

结论

通过机器学习,我们基于前瞻性存储在数据库中的临床数据开发了一种临床预测算法。下一步将是在PICU中实施该算法,以实现对呼吸机相关性肺炎的早期自动检测。

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