Li Yuping, Gao Xianru, Diao Haiqing, Shi Tian, Zhang Jingyue, Liu Yuting, Zeng Qingping, Ding JiaLi, Chen Juan, Yang Kai, Ma Qiang, Liu Xiaoguang, Yu Hailong, Lu Guangyu
Department of Neurosurgery, Neuro-Intensive Care Unit, Clinical Medical College, Yangzhou, 225001, China.
Neuro-Intensive Care Unit, Department of Neurosurgery, Northern Jiangsu People's Hospital Affiliated to Yangzhou University, 225001, China.
Antimicrob Resist Infect Control. 2024 Jun 13;13(1):62. doi: 10.1186/s13756-024-01420-6.
This study aimed to develop and apply a nomogram with good accuracy to predict the risk of CRAB infections in neuro-critically ill patients. In addition, the difficulties and expectations of application such a tool in clinical practice was investigated.
A mixed methods sequential explanatory study design was utilized. We first conducted a retrospective study to identify the risk factors for the development of CRAB infections in neuro-critically ill patients; and further develop and validate a nomogram predictive model. Then, based on the developed predictive tool, medical staff in the neuro-ICU were received an in-depth interview to investigate their opinions and barriers in using the prediction tool during clinical practice. The model development and validation is carried out by R. The transcripts of the interviews were analyzed by Maxqda.
In our cohort, the occurrence of CRAB infections was 8.63% (47/544). Multivariate regression analysis showed that the length of neuro-ICU stay, male, diabetes, low red blood cell (RBC) count, high levels of procalcitonin (PCT), and number of antibiotics ≥ 2 were independent risk factors for CRAB infections in neuro-ICU patients. Our nomogram model demonstrated a good calibration and discrimination in both training and validation sets, with AUC values of 0.816 and 0.875. Additionally, the model demonstrated good clinical utility. The significant barriers identified in the interview include "skepticism about the accuracy of the model", "delay in early prediction by the indicator of length of neuro-ICU stay", and "lack of a proper protocol for clinical application".
We established and validated a nomogram incorporating six easily accessed indicators during clinical practice (the length of neuro-ICU stay, male, diabetes, RBC, PCT level, and the number of antibiotics used) to predict the risk of CRAB infections in neuro-ICU patients. Medical staff are generally interested in using the tool to predict the risk of CRAB, however delivering clinical prediction tools in routine clinical practice remains challenging.
本研究旨在开发并应用一种准确性良好的列线图,以预测神经危重症患者发生耐碳青霉烯类鲍曼不动杆菌(CRAB)感染的风险。此外,还调查了在临床实践中应用此类工具的困难和期望。
采用混合方法序贯解释性研究设计。我们首先进行了一项回顾性研究,以确定神经危重症患者发生CRAB感染的危险因素;并进一步开发和验证列线图预测模型。然后,基于所开发的预测工具,对神经重症监护病房(Neuro-ICU)的医护人员进行深入访谈,以调查他们在临床实践中使用该预测工具的意见和障碍。模型开发和验证通过R软件进行。访谈记录通过Maxqda软件进行分析。
在我们的队列中,CRAB感染的发生率为8.63%(47/544)。多因素回归分析显示,Neuro-ICU住院时间、男性、糖尿病、低红细胞(RBC)计数、高降钙素原(PCT)水平以及使用抗生素数量≥2种是Neuro-ICU患者发生CRAB感染的独立危险因素。我们的列线图模型在训练集和验证集中均显示出良好的校准和区分能力,AUC值分别为0.816和0.875。此外,该模型还显示出良好的临床实用性。访谈中确定的主要障碍包括“对模型准确性的怀疑”、“Neuro-ICU住院时间指标早期预测延迟”以及“缺乏临床应用的适当方案”。
我们建立并验证了一种列线图,该列线图纳入了临床实践中六个易于获取的指标(Neuro-ICU住院时间、男性、糖尿病、RBC、PCT水平以及使用的抗生素数量),以预测Neuro-ICU患者发生CRAB感染的风险。医护人员普遍对使用该工具预测CRAB风险感兴趣,然而在常规临床实践中提供临床预测工具仍然具有挑战性。