Wang Ling-Ying, Feng Mei, Luo Yu-Lan, Wang Chun-Xia, Wang Heng, Li Li, Zhang Yuan, Huang Xiu-Ling, Huang Min-Jie, Tian Yong-Ming
Department of Critical Care Medicine, West China Hospital, Sichuan University/West China School of Nursing, Sichuan University, Chengdu, China.
Nursing Department, West China Hospital, Sichuan University/West China School of Nursing, Sichuan University, Chengdu, China.
Front Pediatr. 2025 Sep 10;13:1636580. doi: 10.3389/fped.2025.1636580. eCollection 2025.
Nosocomial infections (NIs) pose a substantial global health challenge, affecting an estimated 7%-10% of hospitalized patients worldwide. Neonatal intensive care units (NICUs) are particularly vulnerable, with NIs representing a leading cause of infant morbidity and mortality. Similarly, pediatric intensive care units (PICUs) report that 28% of admitted children acquire NIs during hospitalization. Although prediction models offer a promising approach to identifying high-risk individuals, a systematic evaluation of existing models for ICU-ill children remains lacking.
This review systematically synthesizes and critically evaluates published prediction models for assessing NI risk in ill children in the ICU.
We conducted a comprehensive search of PubMed, Embase, Web of Science, CNKI, VIP, and Wanfang from inception through December 31, 2024. Study quality, risk of bias, and applicability were assessed using the PROBAST tool. Model performance metrics were extracted and summarized.
Three studies involving 1,632 participants were included. Frequency analysis identified antibiotic use, birth weight, and indwelling catheters as the most consistently incorporated predictors. All models employed traditional logistic regression, with two undergoing external validation. However, critical limitations were observed across studies: inadequate sample sizes, omission of key methodological details, insufficient model specification, and a universally high risk of bias per PROBAST assessment.
Current NI prediction models for ill children in the ICU exhibit significant methodological shortcomings, limiting their clinical applicability. No existing model demonstrates sufficient rigor for routine implementation. High-performance predictive models can assist clinical nursing staff in the early identification of high-risk populations for NIs, enabling proactive interventions to reduce infection rates. Future research should prioritize (1) methodological robustness in model development, (2) external validation in diverse settings, and (3) exploration of advanced modeling techniques to optimize predictor selection. We strongly advocate adherence to TRIPOD guidelines to enhance predictive models' transparency, reproducibility, and clinical utility in this vulnerable population.
PROSPERO CRD420251019763.
医院感染(NI)是一项重大的全球健康挑战,估计影响全球7%-10%的住院患者。新生儿重症监护病房(NICU)尤其脆弱,医院感染是婴儿发病和死亡的主要原因。同样,儿科重症监护病房(PICU)报告称,28%的入院儿童在住院期间发生医院感染。尽管预测模型为识别高危个体提供了一种有前景的方法,但对现有的针对重症监护病房患病儿童的模型仍缺乏系统评估。
本综述系统地综合并批判性地评估已发表的用于评估重症监护病房患病儿童医院感染风险的预测模型。
我们对PubMed、Embase、Web of Science、CNKI、维普和万方进行了全面检索,检索时间从数据库建立至2024年12月31日。使用PROBAST工具评估研究质量、偏倚风险和适用性。提取并总结模型性能指标。
纳入了三项涉及1632名参与者的研究。频率分析确定抗生素使用、出生体重和留置导管是最常纳入的预测因素。所有模型均采用传统逻辑回归,其中两项进行了外部验证。然而,各项研究均存在严重局限性:样本量不足、关键方法细节遗漏、模型规格不充分,以及根据PROBAST评估普遍存在较高的偏倚风险。
目前针对重症监护病房患病儿童的医院感染预测模型存在显著的方法学缺陷,限制了其临床适用性。现有模型均未表现出足够的严谨性以供常规应用。高性能预测模型可协助临床护理人员早期识别医院感染的高危人群,从而采取积极干预措施降低感染率。未来研究应优先考虑:(1)模型开发中的方法学稳健性;(2)在不同环境中的外部验证;(3)探索先进建模技术以优化预测因素选择。我们强烈主张遵循TRIPOD指南,以提高预测模型在这一弱势群体中的透明度、可重复性和临床实用性。
PROSPERO CRD420251019763