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

Chun-Fu LaiJung-Hua LiuLi-Jung TsengChun-Hao TsaoNai-Kuan ChouShuei-Liong LinYung-Ming ChenVin-Cent Wu
Published in: Annals of medicine (2023)
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.Key messagesUnsupervised consensus clustering can identify sub-phenotypes of patients with SA-AKI and provide a risk prediction.Examining the features of patient heterogeneity contributes to the discovery of serum lactate levels ≥ 3.3 mmol/L upon initializing RRT as an independent outcome predictor.This data-driven approach can be useful for prognostication and lead to a better understanding of therapeutic strategies in heterogeneous clinical syndromes.
Keyphrases
  • acute kidney injury
  • cardiac surgery
  • single cell
  • chronic kidney disease
  • end stage renal disease
  • machine learning
  • intensive care unit
  • small molecule
  • high throughput
  • genome wide
  • septic shock