General Intensive Care Unit, Second Affiliated Hospital of Zhejiang University School of Medicine, Hangzhou, China.
College of Engineering and Computer Science, Australian National University, Canberra, ACT, Australia.
J Glob Antimicrob Resist. 2022 Jun;29:225-231. doi: 10.1016/j.jgar.2022.03.019. Epub 2022 Mar 26.
This study constructed a carbapenem-resistant Gram-negative bacteria (CR-GNB) carriage prediction model to predict the CR-GNB incidence in a week.
We used our database to select patients with complete CR-GNB screening records between the years 2015 and 2019 and constructed the model using multivariable logistic regression and three machine learning algorithms. Then we chose the optimal model and verified the accuracy by daily prediction and recorded the occurrence of CR-GNB in all intensive care unit patients admitted for 4 months.
There were 1385 patients with positive CR-GNB cultures and 1535 negative patients in this study. Forty-five variables had statistically significant differences. We included 16 variables in the multivariable logistic regression model and built three machine learning models for all variables. In terms of accuracy and the area under the receiver operating characteristic (AUROC) curve, random forest was better than XGBoost and decision tree and better than a multivariable logistic regression model (accuracy: 84%>82%>81%>72%, AUROC: 0.91>0.89=0.89>0.78). In a 4-month prospective study, 74 cases were predicted to have positive CR-GNB culture within 7 days, 132 cases were predicted to be negative, 86 cases were positive, and 120 cases were negative, with an overall accuracy of 85.92% and AUROC of 92.02%.
Machine learning prediction models can predict the occurrence of CR-GNB colonisation or infection within a one-week period and can guide medical staff in real time to identify high-risk groups more accurately.
本研究构建了一种耐碳青霉烯类革兰阴性菌(CR-GNB)携带预测模型,以预测一周内 CR-GNB 的发生率。
我们使用数据库选择了 2015 年至 2019 年间具有完整 CR-GNB 筛查记录的患者,并使用多变量逻辑回归和三种机器学习算法构建了模型。然后,我们选择了最优模型,并通过每日预测验证了准确性,并记录了所有重症监护病房患者在 4 个月内的 CR-GNB 发生情况。
本研究中有 1385 例 CR-GNB 培养阳性患者和 1535 例阴性患者。有 45 个变量具有统计学差异。我们将 16 个变量纳入多变量逻辑回归模型,并为所有变量构建了三个机器学习模型。在准确性和接受者操作特征曲线(AUROC)下面积方面,随机森林优于 XGBoost 和决策树,而优于多变量逻辑回归模型(准确性:84%>82%>81%>72%,AUROC:0.91>0.89=0.89>0.78)。在 4 个月的前瞻性研究中,预测在 7 天内有 74 例 CR-GNB 培养阳性,132 例预测为阴性,86 例阳性,120 例阴性,总体准确性为 85.92%,AUROC 为 92.02%。
机器学习预测模型可以预测一周内 CR-GNB 定植或感染的发生,并能实时指导医务人员更准确地识别高危人群。