4.6 Article

Unsupervised clustering identifies sub-phenotypes and reveals novel outcome predictors in patients with dialysis-requiring sepsis-associated acute kidney injury

Journal

ANNALS OF MEDICINE
Volume 55, Issue 1, Pages -

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/07853890.2023.2197290

Keywords

Acute kidney injury; cluster analysis; competing risk; recovery of function; renal replacement therapy; Sepsis-3; sequential organ failure assessment

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This study used unsupervised consensus clustering to investigate the heterogeneity in dialysis-requiring sepsis-associated acute kidney injury (SA-AKI) patients. Three sub-phenotypes were identified based on 23 clinical variables, which exhibited distinct clinical manifestations at the initiation of renal replacement therapy. Among them, sub-phenotype 1, characterized by younger age, lower Charlson Comorbidity Index, higher baseline estimated glomerular filtration rate but higher severity of acute illness, had a higher risk of death and a lower probability of being free of dialysis compared to sub-phenotype 3.
Introduction: Heterogeneity exists in sepsis-associated acute kidney injury (SA-AKI). This study aimed to perform unsupervised consensus clustering in critically ill patients with dialysis-requiring SA-AKI.Patients and Methods: This prospective observational cohort study included all septic patients, defined by the Sepsis-3 criteria, with dialysis-requiring SA-AKI in surgical intensive care units in Taiwan between 2009 and 2018. We employed unsupervised consensus clustering based on 23 clinical variables upon initializing renal replacement therapy. Multivariate-adjusted Cox regression models and Fine-Gray sub-distribution hazard models were built to test associations between cluster memberships with mortality and being free of dialysis at 90 days after hospital discharge, respectively.Results: Consensus clustering among 999 enrolled patients identified three sub-phenotypes characterized with distinct clinical manifestations upon renal replacement therapy initiation (n = 352, 396 and 251 in cluster 1, 2 and 3, respectively). They were followed for a median of 48 (interquartile range 9.5-128.5) days. Phenotypic cluster 1, featured by younger age, lower Charlson Comorbidity Index, higher baseline estimated glomerular filtration rate but with higher severity of acute illness was associated with an increased risk of death (adjusted hazard ratio of 3.05 [95% CI, 2.35-3.97]) and less probability to become free of dialysis (adjusted sub-distribution hazard ratio of 0.55 [95% CI, 0.38-0.8]) than cluster 3. By examining distinct features of the sub-phenotypes, we discovered that pre-dialysis hyperlactatemia =3.3 mmol/L was an independent outcome predictor. A clinical model developed to determine high-risk sub-phenotype 1 in this cohort (C-static 0.99) can identify a sub-phenotype with high in-hospital mortality risk (adjusted hazard ratio of 1.48 [95% CI, 1.25-1.74]) in another independent multi-centre SA-AKI cohort.Conclusions: Our data-driven approach suggests sub-phenotypes with clinical relevance in dialysis-requiring SA-AKI and serves an outcome predictor. This strategy represents further development toward precision medicine in the definition of high-risk sub-phenotype in patients with SA-AKI.

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