Wang Chen, Liu Xiaohang, Zhang Chao, Yan Ruohua, Li Yuchuan, Peng Xiaoxia
Center for Clinical Epidemiology and Evidence-based Medicine Beijing Children's Hospital, Capital Medical University, National Center for Children's Health Beijing China.
Outpatient Department Beijing Children's Hospital, Capital Medical University, National Center for Children's Health Beijing China.
Pediatr Investig. 2024 Dec 11;9(1):70-81. doi: 10.1002/ped4.12458. eCollection 2025 Mar.
Acute kidney injury (AKI) is common in hospitalized children which could rapidly progress into chronic kidney disease if not timely diagnosed. Prognostic prediction models for AKI were established to identify AKI early and improve children's prognosis.
To appraise prognostic prediction models for pediatric AKI.
Four English and four Chinese databases were systematically searched from January 1, 2010, to June 6, 2022. Articles describing prognostic prediction models for pediatric AKI were included. The data extraction was based on the CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modelling Studies checklist. The risk of bias (ROB) was assessed according to the Prediction model Risk of Bias Assessment Tool guideline. The quantitative synthesis of the models was not performed due to the lack of methods regarding the meta-analysis of prediction models.
Eight studies with 16 models were included. There were significant deficiencies in reporting and all models were considered at high ROB. The area under the receiver operating characteristic curve to predict AKI ranged from 0.69 to 0.95. However, only about one-third of models have completed internal or external validation. The calibration was provided only in four models. Three models allowed easy bedside calculation or electronic automation, and two models were evaluated for their impacts on clinical practice.
Besides the modeling algorithm, the challenges for developing prediction models for pediatric AKI reflected by the reporting deficiencies included ways of handling baseline serum creatinine and age-dependent blood biochemical indexes. Moreover, few prediction models for pediatric AKI were performed for external validation, let alone the transformation in clinical practice. Further investigation should focus on the combination of prediction models and electronic automatic alerts.
急性肾损伤(AKI)在住院儿童中很常见,如果不及时诊断,可能会迅速发展为慢性肾病。建立AKI的预后预测模型以早期识别AKI并改善儿童预后。
评估儿童AKI的预后预测模型。
系统检索了2010年1月1日至2022年6月6日的四个英文数据库和四个中文数据库。纳入描述儿童AKI预后预测模型的文章。数据提取基于预测模型系统评价的关键评估和数据提取清单。根据预测模型偏倚风险评估工具指南评估偏倚风险(ROB)。由于缺乏预测模型荟萃分析的方法,未对模型进行定量综合。
纳入了八项研究中的16个模型。报告存在显著缺陷,所有模型均被认为具有高ROB。预测AKI的受试者工作特征曲线下面积范围为0.69至0.95。然而,只有约三分之一的模型完成了内部或外部验证。仅在四个模型中提供了校准。三个模型允许床边简易计算或电子自动化,两个模型评估了其对临床实践的影响。
除建模算法外,报告缺陷所反映的儿童AKI预测模型开发面临的挑战包括基线血清肌酐和年龄相关血液生化指标的处理方式。此外,很少有儿童AKI预测模型进行外部验证,更不用说在临床实践中的转化了。进一步的研究应侧重于预测模型与电子自动警报的结合。