Department of Nephrology, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, 510080, Guangzhou, Guangdong, PR China.
Department of Critical Care Medicine, Guangdong Provincial People's Hospital, Guangdong Academy of Medical Sciences, 510080, Guangzhou, Guangdong Province, PR China.
BMC Nephrol. 2021 May 13;22(1):176. doi: 10.1186/s12882-021-02388-w.
Combining tubular damage and functional biomarkers may improve prediction precision of acute kidney injury (AKI). Serum cystatin C (sCysC) represents functional damage of kidney, while urinary N-acetyl-β-D-glucosaminidase (uNAG) is considered as a tubular damage biomarker. So far, there is no nomogram containing this combination to predict AKI in septic cohort. We aimed to compare the performance of AKI prediction models with or without incorporating these two biomarkers and develop an effective nomogram for septic patients in intensive care unit (ICU).
This was a prospective study conducted in the mixed medical-surgical ICU of a tertiary care hospital. Adults with sepsis were enrolled. The patients were divided into development and validation cohorts in chronological order of ICU admission. A logistic regression model for AKI prediction was first constructed in the development cohort. The contribution of the biomarkers (sCysC, uNAG) to this model for AKI prediction was assessed with the area under the receiver operator characteristic curve (AUC), continuous net reclassification index (cNRI), and incremental discrimination improvement (IDI). Then nomogram was established based on the model with the best performance. This nomogram was validated in the validation cohort in terms of discrimination and calibration. The decision curve analysis (DCA) was performed to evaluate the nomogram's clinical utility.
Of 358 enrolled patients, 232 were in the development cohort (69 AKI), while 126 in the validation cohort (52 AKI). The first clinical model included the APACHE II score, serum creatinine, and vasopressor used at ICU admission. Adding sCysC and uNAG to this model improved the AUC to 0.831. Furthermore, incorporating them significantly improved risk reclassification over the predictive model alone, with cNRI (0.575) and IDI (0.085). A nomogram was then established based on the new model including sCysC and uNAG. Application of this nomogram in the validation cohort yielded fair discrimination with an AUC of 0.784 and good calibration. The DCA revealed good clinical utility of this nomogram.
A nomogram that incorporates functional marker (sCysC) and tubular damage marker (uNAG), together with routine clinical factors may be a useful prognostic tool for individualized prediction of AKI in septic patients.
联合管损伤和功能生物标志物可以提高急性肾损伤(AKI)的预测精度。血清胱抑素 C(sCysC)代表肾脏的功能损伤,而尿 N-乙酰-β-D-氨基葡萄糖苷酶(uNAG)则被认为是肾小管损伤的生物标志物。到目前为止,还没有包含这两种生物标志物的列线图来预测脓毒症患者的 AKI。我们旨在比较包含或不包含这两种生物标志物的 AKI 预测模型的性能,并为重症监护病房(ICU)中的脓毒症患者开发一种有效的列线图。
这是一项在一家三级医院的混合内科-外科 ICU 进行的前瞻性研究。纳入了患有败血症的成年人。患者按 ICU 入院的时间顺序分为发展队列和验证队列。首先在发展队列中构建 AKI 预测的逻辑回归模型。使用受试者工作特征曲线下面积(AUC)、连续净重新分类指数(cNRI)和增量判别改善(IDI)评估生物标志物(sCysC、uNAG)对该模型的 AKI 预测的贡献。然后基于性能最佳的模型建立列线图。在验证队列中,通过判别和校准来验证该列线图。采用决策曲线分析(DCA)评估该列线图的临床实用性。
共纳入 358 例患者,其中 232 例进入发展队列(69 例 AKI),126 例进入验证队列(52 例 AKI)。第一个临床模型包括 ICU 入院时的急性生理和慢性健康状况评分 II(APACHE II)评分、血清肌酐和血管加压药的使用。在该模型中加入 sCysC 和 uNAG 后,AUC 提高至 0.831。此外,与预测模型相比,同时纳入它们可显著提高风险再分类,cNRI(0.575)和 IDI(0.085)。然后基于包含 sCysC 和 uNAG 的新模型建立了列线图。该列线图在验证队列中的应用具有良好的判别能力,AUC 为 0.784,校准良好。DCA 显示该列线图具有良好的临床实用性。
包含功能标志物(sCysC)和管损伤标志物(uNAG)以及常规临床因素的列线图可能是预测脓毒症患者 AKI 的个体化预后工具。