Wetterstrand Vicky Jenny Rebecka, Kallemose Thomas, Larsen Jesper Juul, Friis-Hansen Lennart Jan, Brandi Lisbet
Department of Endocrinology and Nephrology, North Zealand University Hospital, 3400 Hillerød, Denmark.
Department of Clinical Research, Copenhagen University Hospital Amager and Hvidovre, 2650 Hvidovre, Denmark.
J Clin Med. 2025 Apr 9;14(8):2572. doi: 10.3390/jcm14082572.
Acute kidney injury (AKI) is a significant global health issue with a high morbidity and mortality. The Kidney Disease: Improving Global Outcomes (KDIGO) guidelines identify various exposures and susceptibilities as risk factors for AKI. However, the predictive significance of these factors in heterogeneous emergency department (ED) populations remains unclear. We hypothesized that assessing KDIGO-listed exposures and susceptibilities for AKI, alone and in combination, would provide an insight into their predictive value for AKI. Furthermore, we investigated whether adding biomarkers, plasma neutrophil gelatinase-associated lipocalin (pNGAL) and C-reactive protein (CRP), could enhance AKI risk prediction. Data were analyzed from the prospective longitudinal "NGAL study" conducted at North Zealand University Hospital in Denmark. A total of 344 ED patients were included, with AKI diagnosed using KDIGO's creatinine-based criteria. Patient data, including medical history, exposures, and susceptibilities, were extracted and analyzed. Predictive performance was evaluated using a receiver operating characteristic (ROC) analysis on individual and combined risk factors. Additional models incorporated pNGAL and CRP to assess their impact on prediction accuracy. Individual exposures and susceptibilities showed a poor predictive performance, with nephrotoxic drugs and advanced age demonstrating the highest sensitivity but a low positive predictive value (PPV). Combining multiple risk factors improved AKI prediction, with models clustering into those optimizing sensitivity or PPV. The inclusion of pNGAL significantly enhanced predictive performance, achieving the highest combined sensitivity and PPV. Although less than pNGAL, CRP also improved prediction, while requiring fewer variables than pNGAL-inclusive models. No individual KDIGO-listed exposure or susceptibility could reliably predict AKI in the ED setting. Combining multiple exposures and susceptibilities improved the predictive accuracy, but the models excelled either at screening or confirmation, not both. The addition of pNGAL and CRP significantly enhanced AKI prediction, emphasizing the need for biomarker integration in risk stratification models. These findings highlight the limitations of clinical parameters alone and underscore the importance of a multifaceted approach to AKI risk assessment.
急性肾损伤(AKI)是一个重大的全球健康问题,发病率和死亡率都很高。改善全球肾脏病预后组织(KDIGO)的指南确定了各种暴露因素和易感性为AKI的危险因素。然而,这些因素在异质性急诊科(ED)人群中的预测意义仍不明确。我们假设,单独或联合评估KDIGO列出的AKI暴露因素和易感性,将有助于深入了解它们对AKI的预测价值。此外,我们还研究了添加生物标志物——血浆中性粒细胞明胶酶相关脂质运载蛋白(pNGAL)和C反应蛋白(CRP)——是否能提高AKI风险预测能力。我们分析了丹麦北西兰岛大学医院进行的前瞻性纵向“NGAL研究”的数据。共纳入了344例ED患者,采用KDIGO基于肌酐的标准诊断AKI。提取并分析了患者数据,包括病史、暴露因素和易感性。使用受试者工作特征(ROC)分析评估个体和联合危险因素的预测性能。其他模型纳入了pNGAL和CRP,以评估它们对预测准确性的影响。个体暴露因素和易感性的预测性能较差,肾毒性药物和高龄显示出最高的敏感性,但阳性预测值(PPV)较低。联合多个危险因素可改善AKI预测,模型可分为优化敏感性或PPV的两类。纳入pNGAL显著提高了预测性能,实现了最高的联合敏感性和PPV。虽然不如pNGAL,但CRP也改善了预测,同时所需变量比包含pNGAL的模型少。在ED环境中,没有单个KDIGO列出的暴露因素或易感性能够可靠地预测AKI。联合多个暴露因素和易感性可提高预测准确性,但模型在筛查或确认方面表现出色,而非两者兼顾。添加pNGAL和CRP显著增强了AKI预测能力,强调了在风险分层模型中整合生物标志物的必要性。这些发现突出了仅靠临床参数的局限性,并强调了采用多方面方法进行AKI风险评估的重要性。