Department of Vascular & Cardiology Ruijin Hospital Shanghai Jiaotong University School of Medicine Shanghai China.
Department of Cardiac Surgery State Key Laboratory of Cardiovascular Disease Fuwai Hospital National Center for Cardiovascular Diseases Chinese Academy of Medical Sciences and Peking Union Medical College Beijing China.
J Am Heart Assoc. 2020 Nov 17;9(22):e018004. doi: 10.1161/JAHA.120.018004. Epub 2020 Nov 2.
Background Alterations in serum creatinine levels delay the identification of severe cardiac surgery-associated acute kidney injury. To provide timely diagnosis, novel predictive tools should be investigated. Methods and Results This prospective observational study consists of a screening cohort (n=204) and a validation cohort (n=198) from 2 centers from our hospital. Thirty-two inflammatory cytokines were measured via a multiplex cytokine assay. Least absolute shrinkage and selection operator regression was conducted to select the cytokine signatures of severe cardiac surgery-associated acute kidney injury. Afterwards, the significant candidates including interferon-γ, interleukin-16, and MIP-1α (macrophage inflammatory protein-1 alpha) were integrated into the logistic regression model to construct a predictive model. The predictive accuracy of the model was evaluated in these 2 cohorts. The cytokine-based model yielded decent performance in both the screening (C-statistic: 0.87, Brier 0.10) and validation cohorts (C-statistic: 0.86, Brier 0.11). Decision curve analysis revealed that the cytokine-based model had a superior net benefit over both the clinical factor-based model and the established plasma biomarker-based model for predicting severe acute kidney injury. In addition, elevated concentrations of each cytokine were associated with longer mechanical ventilation times, intensive care unit stays, and hospital stays. They strongly predicted the risk of composite events (defined as treatment with renal replacement therapy and/or in-hospital death) (OR of the fourth versus the first quartile [95% CI]: interferon-γ, 27.78 [3.61-213.84], interleukin-16, 38.07 [4.98-291.07], and MIP-1α, 9.13 [2.84-29.33]). Conclusions Our study developed and validated a promising blood cytokine-based model for predicting severe acute kidney injury after cardiac surgery and identified prognostic biomarkers for assisting in outcome risk stratification.
血清肌酐水平的变化会延迟严重心脏手术相关急性肾损伤的诊断。为了提供及时的诊断,应该研究新的预测工具。
这项前瞻性观察性研究由我们医院的 2 个中心的筛查队列(n=204)和验证队列(n=198)组成。通过多重细胞因子检测法测量了 32 种炎症细胞因子。采用最小绝对收缩和选择算子回归来选择严重心脏手术相关急性肾损伤的细胞因子特征。然后,将干扰素-γ、白细胞介素-16 和 MIP-1α(巨噬细胞炎症蛋白-1α)等显著候选物整合到逻辑回归模型中,构建预测模型。在这 2 个队列中评估了该模型的预测准确性。该模型在筛查(C 统计量:0.87,Brier 0.10)和验证队列(C 统计量:0.86,Brier 0.11)中均表现出良好的性能。决策曲线分析表明,与基于临床因素的模型和基于现有血浆生物标志物的模型相比,基于细胞因子的模型在预测严重急性肾损伤方面具有更高的净获益。此外,每种细胞因子浓度的升高均与更长的机械通气时间、重症监护病房停留时间和住院时间相关。它们强烈预测了复合事件(定义为接受肾脏替代治疗和/或院内死亡)的风险(第四与第一四分位数的比值比[95%置信区间]:干扰素-γ,27.78[3.61-213.84],白细胞介素-16,38.07[4.98-291.07],MIP-1α,9.13[2.84-29.33])。
本研究开发并验证了一种有前途的心脏手术后严重急性肾损伤预测的血液细胞因子模型,并确定了预后生物标志物,以协助进行预后风险分层。