Yang Lin, Lu Guangyu, Diao Haiqing, Zhang Yang, Wang Zhiyao, Liu Xiaoguang, Ma Qiang, Yu Hailong, Li Yuping
Department of Neurosurgery, Yizheng People's Hospital, Yizheng, Jiangsu Province, China.
School of Public Health, Medical College of Yangzhou University, Yangzhou University, Yangzhou, Jiangsu, China.
Microbiol Spectr. 2025 Jun 3;13(6):e0246024. doi: 10.1128/spectrum.02460-24. Epub 2025 May 15.
Hospital-acquired pneumonia (HAP) is prevalent in the neuro-intensive care unit (NICU), significantly increasing susceptibility to infections with multidrug-resistant organisms (MDROs), which result in high mortality rates and substantial healthcare burdens. Recognition and intervention are paramount. This study aimed to build a prediction model for MDRO infections among NICU patients with HAP. Clinical and laboratory data were collected from the NICU of a grade-A tertiary hospital. Five machine learning models (logistic regression, classification tree, support vector machine, random forest, and K-nearest neighbor) were evaluated based on sensitivity, specificity, accuracy, and receiver operating characteristic curves. A nomogram was developed using the model that performed best in MDRO infection prediction. The performance and clinical utility were assessed using the calibration curve, Brier score, and decision curve analysis. Among 791 neurocritical care patients with HAP, 172 (21.7%) were diagnosed with MDRO infections. The prediction model established by logistic regression exhibited the best performance, with an area under the curve of 0.805. Length of NICU stay (odds ratio [OR] 1.078; 95% confidence interval [CI], 1.070-1.141; < 0.000), number of antibiotics used (OR 1.391; 95% CI, 1.138-1.700; = 0.001), diabetes (OR 1.775; 95% CI, 1.006-3.133; = 0.048), and carbamide (OR 1.038; 95% CI, 1.003-1.074; = 0.035) were significantly correlated with MDRO infections and incorporated into the nomogram. The model demonstrated good calibration (Brier score 0.137). This model can provide clinicians with a tool for prevention and management of MDRO infections in NICU patients with HAP.IMPORTANCEPatients with hospital-acquired pneumonia (HAP) in the neuro-intensive care unit (NICU) are at a high risk of developing multidrug-resistant organism (MDRO) infections owing to complex conditions, critical illness, and frequent invasive procedures. However, studies focused on constructing prediction models for assessing the risk of MDRO infections in neurocritically ill patients with HAP are lacking at present. Therefore, this study aims to establish a reliable and easy-to-use nomogram for predicting the risk of MDRO infections in patients with HAP admitted to the NICU. Four easily accessed variables were included in the model, including length of NICU stay, number of antibiotics used, diabetes, and carbamide. This nomogram might help in the prediction and implementation of targeted interventions against infections with MDRO among patients with HAP in the NICU.
医院获得性肺炎(HAP)在神经重症监护病房(NICU)中很常见,显著增加了感染多重耐药菌(MDRO)的易感性,这导致了高死亡率和巨大的医疗负担。识别和干预至关重要。本研究旨在建立一个预测NICU中HAP患者发生MDRO感染的模型。从一家三级甲等医院的NICU收集临床和实验室数据。基于敏感性、特异性、准确性和受试者工作特征曲线,对五个机器学习模型(逻辑回归、分类树、支持向量机、随机森林和K近邻)进行了评估。使用在MDRO感染预测中表现最佳的模型开发了一个列线图。使用校准曲线、Brier评分和决策曲线分析评估该模型的性能和临床实用性。在791例患有HAP的神经重症监护患者中,172例(21.7%)被诊断为MDRO感染。通过逻辑回归建立的预测模型表现最佳,曲线下面积为0.805。NICU住院时间(比值比[OR]1.078;95%置信区间[CI],1.070 - 1.141;<0.000)、使用的抗生素数量(OR 1.391;95%CI,1.138 - 1.700;=0.001)、糖尿病(OR 1.775;95%CI,1.006 - 3.133;=0.048)和尿素(OR 1.038;95%CI,1.003 - 1.074;=0.035)与MDRO感染显著相关,并纳入列线图。该模型显示出良好的校准(Brier评分为0.137)。该模型可以为临床医生提供一种工具,用于预防和管理NICU中患有HAP的患者的MDRO感染。重要性神经重症监护病房(NICU)中患有医院获得性肺炎(HAP)的患者由于病情复杂、危重病和频繁的侵入性操作,发生多重耐药菌(MDRO)感染的风险很高。然而,目前缺乏针对评估患有HAP的神经重症患者发生MDRO感染风险构建预测模型的研究。因此,本研究旨在建立一个可靠且易于使用的列线图,用于预测入住NICU的HAP患者发生MDRO感染的风险。该模型纳入了四个易于获取的变量,包括NICU住院时间、使用的抗生素数量、糖尿病和尿素。该列线图可能有助于预测并实施针对NICU中患有HAP的患者的MDRO感染的靶向干预措施。