Benders P M B, Schouten J, Vena A, Buil J B, Bronkhorst E, Bassetti M
Department of Anesthesiology, Radboudumc, Nijmegen, The Netherlands.
Department of Intensive Care Medicine, Radboudumc, Nijmegen, The Netherlands.
BMC Infect Dis. 2025 May 4;25(1):655. doi: 10.1186/s12879-025-10644-9.
Invasive candidiasis (IC) has a high attributable morbidity and mortality in patients in the intensive care unit (ICU). Current diagnostic tools lack sensitivity, introduce delay or have not been validated for regular use. As early treatment has proven vital for survival, multiple prediction models have been proposed but have not been validated for multinational implementation. In this study we propose to find factors predisposing the ICU patient to develop IC. We hope to develop an alternative prediction model using a large international dataset.
Using ICU-acquired IC as primary endpoint we retrieved retrospective information about 285 cases and 285 matched controls from the EUCANDICU database. Data about comorbidities, severity of illness and known risk factors for IC were available. We identified 31 independent risk factors using univariate analysis. A random subset of 80% of the observations were used to find the optimal prediction model. The selection of predictors was done using the LASSO technique, using λ = 1SE as regularization parameter. This choice for λ implies that a small amount of precision of the prediction is sacrificed to improve the external validity. The remaining 20% of cases were used to assess the predictive performance of the model.
Among other factors SAPS II score, SOFA score, past infection, renal impairment and the presence of multiple Candida colonization sites were all independently associated with an increased risk of developing IC. We incorporated 22 of 31 variables in a LASSO regression analysis which showed an AUROC of 0.7433.
Predicting which ICU patient will develop invasive candidiasis remains challenging, despite using an alternative methodology in a large multinational database. The performance of this prediction model is not good enough to be used in clinical practice.
侵袭性念珠菌病(IC)在重症监护病房(ICU)患者中具有较高的归因发病率和死亡率。当前的诊断工具缺乏敏感性,会导致诊断延迟或尚未经过常规使用验证。由于早期治疗已被证明对生存至关重要,因此已经提出了多种预测模型,但尚未经过跨国实施验证。在本研究中,我们旨在找出使ICU患者易发生IC的因素。我们希望使用大型国际数据集开发一种替代预测模型。
以ICU获得性IC作为主要终点,我们从EUCANDICU数据库中检索了285例病例和285例匹配对照的回顾性信息。可获得有关合并症、疾病严重程度和已知IC危险因素的数据。我们通过单变量分析确定了31个独立危险因素。使用80%的观察值随机子集来寻找最佳预测模型。预测变量的选择使用LASSO技术,使用λ = 1SE作为正则化参数。选择该λ意味着为提高外部有效性而牺牲少量预测精度。其余20%的病例用于评估模型的预测性能。
在其他因素中,序贯器官衰竭评估(SOFA)评分、既往感染、肾功能损害以及多个念珠菌定植部位的存在均与发生IC的风险增加独立相关。我们在LASSO回归分析中纳入了31个变量中的22个,其曲线下面积(AUROC)为0.7433。
尽管在大型跨国数据库中使用了替代方法,但预测哪些ICU患者会发生侵袭性念珠菌病仍然具有挑战性。该预测模型的性能不足以用于临床实践。