Department of Development and Regeneration, KU Leuven, Leuven, Belgium.
2Bergen - Learning Centre Désiré Collen, KU Leuven Libraries, KU Leuven, Leuven, Belgium.
J Clin Epidemiol. 2023 Sep;161:127-139. doi: 10.1016/j.jclinepi.2023.07.019. Epub 2023 Aug 2.
To systematically review the risk of bias and applicability of published prediction models for risk of central line-associated bloodstream infection (CLA-BSI) in hospitalized patients.
Systematic review of literature in PubMed, Embase, Web of Science Core Collection, and Scopus up to July 10, 2023. Two authors independently appraised risk models using CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modelling Studies (CHARMS) and assessed their risk of bias and applicability using Prediction model Risk Of Bias ASsessment Tool (PROBAST).
Sixteen studies were included, describing 37 models. When studies presented multiple algorithms, we focused on the model that was selected as the best by the study authors. Eventually we appraised 19 models, among which 15 were regression models and four machine learning models. All models were at a high risk of bias, primarily due to inappropriate proxy outcomes, predictors that are unavailable at prediction time in clinical practice, inadequate sample size, negligence of missing data, lack of model validation, and absence of calibration assessment. 18 out of 19 models had a high concern for applicability, one model had unclear concern for applicability due to incomplete reporting.
We did not identify a prediction model of potential clinical use. There is a pressing need to develop an applicable model for CLA-BSI.
系统评价已发表的用于预测住院患者中心静脉相关血流感染(CLA-BSI)风险的预测模型的偏倚风险和适用性。
系统检索 PubMed、Embase、Web of Science Core Collection 和 Scopus 数据库中截至 2023 年 7 月 10 日的文献。两名作者独立使用 CHecklist for critical Appraisal and data extraction for systematic Reviews of prediction Modelling Studies (CHARMS) 评估风险模型,并使用 Prediction model Risk Of Bias ASsessment Tool (PROBAST) 评估其偏倚风险和适用性。
共纳入 16 项研究,描述了 37 个模型。当研究呈现多个算法时,我们重点关注研究作者选择的最佳模型。最终我们评估了 19 个模型,其中 15 个是回归模型,4 个是机器学习模型。所有模型都存在较高的偏倚风险,主要是由于替代结局不当、在临床实践中预测时不可用的预测因素、样本量不足、忽略缺失数据、缺乏模型验证以及缺乏校准评估。19 个模型中有 18 个存在较高的适用性问题,一个模型由于报告不完整,适用性问题存在不确定性。
我们没有发现具有潜在临床应用价值的预测模型。迫切需要开发一个适用于 CLA-BSI 的模型。