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识别重症监护病房获得性真菌感染的风险因素:来自机器学习应用的临床证据

Identifying the risk factors of ICU-acquired fungal infections: clinical evidence from using machine learning.

作者信息

Zhao Yi-Si, Lai Qing-Pei, Tang Hong, Luo Ren-Jie, He Zhi-Wei, Huang Wei, Wang Liu-Yang, Zhang Zheng-Tao, Lin Shi-Hui, Qin Wen-Jian, Xu Fang

机构信息

Department of Critical Care Medicine, The First Affiliated Hospital of Chongqing Medical University, Chongqing, China.

Medical Data Science Academy, Chongqing Medical University, Chongqing, China.

出版信息

Front Med (Lausanne). 2024 May 9;11:1386161. doi: 10.3389/fmed.2024.1386161. eCollection 2024.

Abstract

BACKGROUND

Fungal infections are associated with high morbidity and mortality in the intensive care unit (ICU), but their diagnosis is difficult. In this study, machine learning was applied to design and define the predictive model of ICU-acquired fungi (ICU-AF) in the early stage of fungal infections using Random Forest.

OBJECTIVES

This study aimed to provide evidence for the early warning and management of fungal infections.

METHODS

We analyzed the data of patients with culture-positive fungi during their admission to seven ICUs of the First Affiliated Hospital of Chongqing Medical University from January 1, 2015, to December 31, 2019. Patients whose first culture was positive for fungi longer than 48 h after ICU admission were included in the ICU-AF cohort. A predictive model of ICU-AF was obtained using the Least Absolute Shrinkage and Selection Operator and machine learning, and the relationship between the features within the model and the disease severity and mortality of patients was analyzed. Finally, the relationships between the ICU-AF model, antifungal therapy and empirical antifungal therapy were analyzed.

RESULTS

A total of 1,434 cases were included finally. We used lasso dimensionality reduction for all features and selected six features with importance ≥0.05 in the optimal model, namely, times of arterial catheter, enteral nutrition, corticosteroids, broadspectrum antibiotics, urinary catheter, and invasive mechanical ventilation. The area under the curve of the model for predicting ICU-AF was 0.981 in the test set, with a sensitivity of 0.960 and specificity of 0.990. The times of arterial catheter ( = 0.011, OR = 1.057, 95% CI = 1.053-1.104) and invasive mechanical ventilation ( = 0.007, OR = 1.056, 95%CI = 1.015-1.098) were independent risk factors for antifungal therapy in ICU-AF. The times of arterial catheter ( = 0.004, OR = 1.098, 95%CI = 0.855-0.970) were an independent risk factor for empirical antifungal therapy.

CONCLUSION

The most important risk factors for ICU-AF are the six time-related features of clinical parameters (arterial catheter, enteral nutrition, corticosteroids, broadspectrum antibiotics, urinary catheter, and invasive mechanical ventilation), which provide early warning for the occurrence of fungal infection. Furthermore, this model can help ICU physicians to assess whether empiric antifungal therapy should be administered to ICU patients who are susceptible to fungal infections.

摘要

背景

真菌感染与重症监护病房(ICU)的高发病率和死亡率相关,但对其诊断较为困难。在本研究中,运用机器学习方法,采用随机森林算法设计并定义真菌感染早期阶段的ICU获得性真菌(ICU-AF)预测模型。

目的

本研究旨在为真菌感染的早期预警和管理提供依据。

方法

我们分析了2015年1月1日至2019年12月31日期间重庆医科大学附属第一医院7个ICU中培养阳性真菌患者的数据。将入住ICU后首次真菌培养阳性时间超过48小时的患者纳入ICU-AF队列。使用最小绝对收缩和选择算子及机器学习方法获得ICU-AF的预测模型,并分析模型内特征与患者疾病严重程度和死亡率之间的关系。最后,分析ICU-AF模型、抗真菌治疗和经验性抗真菌治疗之间的关系。

结果

最终共纳入1434例病例。我们对所有特征进行lasso降维,并在最优模型中选择重要性≥0.05的6个特征,即动脉导管使用次数、肠内营养、糖皮质激素、广谱抗生素、导尿管和有创机械通气。预测ICU-AF模型在测试集中的曲线下面积为0.981,灵敏度为0.960,特异度为0.990。动脉导管使用次数(P = 0.011,OR = 1.057,95%CI = 1.053 - 1.104)和有创机械通气(P = 0.007,OR = 1.056,95%CI = 1.015 - 1.098)是ICU-AF患者接受抗真菌治疗的独立危险因素。动脉导管使用次数(P = 0.004,OR = 1.098,95%CI = 0.855 - 0.970)是经验性抗真菌治疗的独立危险因素。

结论

ICU-AF最重要的危险因素是临床参数的6个与时间相关的特征(动脉导管、肠内营养、糖皮质激素、广谱抗生素、导尿管和有创机械通气),这些特征可为真菌感染的发生提供早期预警。此外,该模型可帮助ICU医生评估是否应对易发生真菌感染的ICU患者进行经验性抗真菌治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4b99/11112035/91674e5d4cb2/fmed-11-1386161-g001.jpg

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