Sepsis-associated acute kidney injury (AKI) is a complex clinical disorder associated with inflammation, endothelial dysfunction, and dysregulated coagulation. With standard regression methods, collinearity among biomarkers may lead to the exclusion of important biological pathways in a single final model. Best subset regression is an analytic technique that identifies statistically equivalent models, allowing for more robust evaluation of correlated variables. Our objective was to identify common clinical characteristics and biomarkers associated with sepsis-associated AKI. We enrolled 453 septic adults within 24 h of intensive care unit admission. Using best subset regression, we evaluated for associations using a range of models consisting of 1-38 predictors (composed of clinical risk factors and plasma and urine biomarkers) with AKI as the outcome [defined as a serum creatinine (SCr) increase of â¥0.3 mg/dL within 48 h or â¥1.5à baseline SCr within 7 days]. Two hundred ninety-seven patients had AKI. Five-variable models were found to be of optimal complexity, as the best subset of five- and six-variable models were statistically equivalent. Within the subset of five-variable models, 46 permutations of predictors were noted to be statistically equivalent. The most common predictors in this subset included diabetes, baseline SCr, angiopoetin-2, IL-8, soluble tumor necrosis factor receptor-1, and urine neutrophil gelatinase-associated lipocalin. The models had a c-statistic of â¼0.70 (95% confidence interval: 0.65-0.75). In conclusion, using best subset regression, we identified common clinical characteristics and biomarkers associated with sepsis-associated AKI. These variables may be especially relevant in the pathogenesis of sepsis-associated AKI.
Using best subset regression to identify clinical characteristics and biomarkers associated with sepsis-associated acute kidney injury.
利用最佳子集回归识别与脓毒症相关急性肾损伤相关的临床特征和生物标志物
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作者:Kwong Y Diana, Mehta Kala M, Miaskowski Christine, Zhuo Hanjing, Yee Kimberly, Jauregui Alejandra, Ke Serena, Deiss Thomas, Abbott Jason, Kangelaris Kirsten N, Sinha Pratik, Hendrickson Carolyn, Gomez Antonio, Leligdowicz Aleksandra, Matthay Michael A, Calfee Carolyn S, Liu Kathleen D
| 期刊: | American Journal of Physiology-Renal Physiology | 影响因子: | 3.400 |
| 时间: | 2020 | 起止号: | 2020 Dec 1; 319(6):F979-F987 |
| doi: | 10.1152/ajprenal.00281.2020 | 研究方向: | 毒理研究 |
| 疾病类型: | 肾损伤 | ||
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