Predicting acute kidney injury in septic shock patients using inflammatory indices in the intensive care unit.

Jackson Rajendran, Song-Peng Ang, Maria Jose Lorenzo-Capps, Carlos Valladares, Eunseuk Lee, Veera Jayasree Latha Bommu, George Altarcha, Svitlana Pominov, Bryan Gregory, Jia Ee Chia, Jose Iglesias
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Abstract

Background: Acute kidney injury (AKI) is a prevalent and common complication in critically ill patients with septic shock, associated with increased morbidity, mortality, and healthcare resource utilization in the intensive care unit (ICU). While inflammatory indices derived from standard laboratory tests - such as the neutrophil-to-lymphocyte ratio (NLR), platelet lymphocyte ratio (PLR), monocyte-to-lymphocyte ratio (MLR), systemic immune-inflammation index (SII), systemic inflammation response index (SIRI), neutrophil percentage to albumin ratio (NPAR) and aggregate index of systemic inflammation (AISI) - have emerged as promising biomarkers for systemic immune activation in critical illness, their direct value as predictors of AKI in large ICU cohorts remains uncertain.

Aim: To evaluate the predictive value of inflammatory indices derived from standard laboratory tests as predictors of AKI in ICU patients with septic shock.

Methods: This retrospective cohort study utilized the eICU Collaborative Research Database, including adult patients with septic shock admitted to over 200 ICUs across the United States from 2014 to 2015. Patients with pre-existing end-stage renal disease, death within 24 hours, or insufficient data for inflammatory indices were excluded. Inflammatory markers (NLR, PLR, MLR, NPAR, SII, SIRI, AISI) and clinical variables were analyzed. Multivariable logistic regression, principal component analysis, and multilayer perceptron neural network modeling were employed to identify independent predictors of AKI, defined by Kidney Disease Global Outcomes criteria.

Results: Among 12660 septic shock patients, 6552 (51.7%) developed AKI during their ICU stay. Patients with AKI were older, had higher body mass index and Sequential Organ Failure Assessment scores, and a greater burden of comorbidities such as chronic kidney disease and diabetes. Univariate analysis showed significantly higher levels of NLR, MLR, SII, NPAR, SIRI, and AISI in the AKI group, suggesting an association between systemic inflammation and kidney injury. However, these indices displayed strong multicollinearity with other clinical and laboratory variables. In logistic regression, traditional predictors such as baseline serum creatinine, blood urea nitrogen, Sequential Organ Failure Assessment score, chronic kidney disease, vasopressor use, and selected comorbidities remained independently associated with AKI, while most individual inflammatory indices did not retain independent significance due to multicollinearity. To address this, principal component analysis employed, which identified three major components - an inflammatory/hematological component, a metabolic/renal/inflammatory component, and an electrolyte/age component. Incorporating these composite dimensions into predictive models significantly improved discrimination for AKI risk. Neural network models further expounded the contribution of both clinical factors and the combined inflammatory/metabolic dimension to accurate AKI prediction, capturing complex interactions and non-linear relationships not evident in traditional regression models.

Conclusion: In ICU patients with septic shock, composite inflammatory indices are elevated in those who develop AKI and may serve as important markers of risk. However, after accounting for multicollinearity and confounding, these markers alone offer limited incremental predictive value over traditional clinical and laboratory risk factors.

利用重症监护病房的炎症指数预测感染性休克患者的急性肾损伤。
背景:急性肾损伤(AKI)是脓毒性休克危重患者常见的并发症,与重症监护病房(ICU)的发病率、死亡率和医疗资源利用率增加有关。虽然来自标准实验室测试的炎症指数,如中性粒细胞与淋巴细胞比率(NLR)、血小板淋巴细胞比率(PLR)、单核细胞与淋巴细胞比率(MLR)、全身免疫炎症指数(SII)、全身炎症反应指数(SIRI)、中性粒细胞百分比与白蛋白比率(NPAR)和全身炎症聚集指数(AISI),已成为危重疾病中全身免疫激活的有希望的生物标志物,在大型ICU队列中,它们作为AKI预测指标的直接价值仍不确定。目的:评价标准实验室检查炎性指标对感染性休克ICU患者AKI的预测价值。方法:本回顾性队列研究利用eICU合作研究数据库,纳入2014 - 2015年美国200多家icu收治的感染性休克成年患者。排除了既往存在终末期肾病、24小时内死亡或炎症指标数据不足的患者。分析炎症指标(NLR、PLR、MLR、NPAR、SII、SIRI、AISI)及临床变量。采用多变量逻辑回归、主成分分析和多层感知器神经网络建模来确定AKI的独立预测因素,这些预测因素由肾脏疾病全球结局标准定义。结果:12660例感染性休克患者中,6552例(51.7%)在ICU住院期间发生AKI。AKI患者年龄较大,有较高的体重指数和序贯器官衰竭评估评分,并且有更大的合并症负担,如慢性肾脏疾病和糖尿病。单因素分析显示,AKI组NLR、MLR、SII、NPAR、SIRI和AISI水平显著升高,提示全身性炎症与肾损伤之间存在关联。然而,这些指标与其他临床和实验室变量表现出强烈的多重共线性。在logistic回归中,传统的预测指标如基线血清肌酐、血尿素氮、序贯器官衰竭评估评分、慢性肾脏疾病、血管升压药物使用和选择的合并症仍然与AKI独立相关,而大多数个体炎症指标由于多重共线性而没有保持独立的显著性。为了解决这个问题,采用了主成分分析,确定了三个主要成分-炎症/血液学成分,代谢/肾脏/炎症成分和电解质/年龄成分。将这些综合维度纳入预测模型可显著提高AKI风险的辨别能力。神经网络模型进一步阐述了临床因素和炎症/代谢联合维度对准确预测AKI的贡献,捕捉了传统回归模型中不明显的复杂相互作用和非线性关系。结论:ICU脓毒性休克患者发生AKI时,复合炎症指标升高,可能是危险的重要标志。然而,在考虑多重共线性和混杂之后,这些标记物单独提供有限的增量预测价值,而不是传统的临床和实验室风险因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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