The Journal of surgical research.2022,Vol.27712.DOI:10.1016/j.jss.2022.04.052

Early Biomarker Signatures in Surgical Sepsis

Madushani R.W.M.A. Patel V. Loftus T. Ren Y. Li H.J. Velez L. Wu Q. Adhikari L. Efron P. Segal M. Ozrazgat Baslanti T. Rashidi P. Bihorac A.
The Journal of surgical research.2022,Vol.27712.DOI:10.1016/j.jss.2022.04.052

Early Biomarker Signatures in Surgical Sepsis

Madushani R.W.M.A. 1Patel V. 2Loftus T. 1Ren Y. 1Li H.J. 2Velez L. 2Wu Q. 3Adhikari L. 1Efron P. 3Segal M. 2Ozrazgat Baslanti T. 1Rashidi P. 1Bihorac A.1
扫码查看

作者信息

  • 1. Intelligent Critical Care Center University of Florida
  • 2. Department of Medicine Division of Nephrology Hypertension and Renal Transplantation University of
  • 3. Department of Surgery University of Florida
  • 折叠

Abstract

? 2022Introduction: Sepsis has complex, time-sensitive pathophysiology and important phenotypic subgroups. The objective of this study was to use machine learning analyses of blood and urine biomarker profiles to elucidate the pathophysiologic signatures of subgroups of surgical sepsis patients. Methods: This prospective cohort study included 243 surgical sepsis patients admitted to a quaternary care center between January 2015 and June 2017. We applied hierarchical clustering to clinical variables and 42 blood and urine biomarkers to identify phenotypic subgroups in a development cohort. Clinical characteristics and short-term and long-term outcomes were compared between clusters. A na?ve Bayes classifier predicted cluster labels in a validation cohort. Results: The development cohort contained one cluster characterized by early organ dysfunction (cluster I, n = 18) and one cluster characterized by recovery (cluster II, n = 139). Cluster I was associated with higher Acute Physiologic Assessment and Chronic Health Evaluation II (30 versus 16, P < 0.001) and SOFA scores (13 versus 5, P < 0.001), greater prevalence of chronic cardiovascular and renal disease (P < 0.001) and septic shock (78% versus 17%, P < 0.001). Cluster I had higher mortality within 14 d of sepsis onset (11% versus 1.5%, P = 0.001) and within 1 y (44% versus 20%, P = 0.032), and higher incidence of chronic critical illness (61% versus 30%, P = 0.001). The Bayes classifier achieved 95% accuracy and identified two clusters that were similar to development cohort clusters. Conclusions: Machine learning analyses of clinical and biomarker variables identified an early organ dysfunction sepsis phenotype characterized by inflammation, renal dysfunction, endotheliopathy, and immunosuppression, as well as poor short-term and long-term clinical outcomes.

Key words

Biomarker/Clustering/Machine learning/Phenotyping/Sepsis/Unsupervised learning

引用本文复制引用

出版年

2022
The Journal of surgical research.

The Journal of surgical research.

ISSN:0022-4804
被引量2
参考文献量32
段落导航相关论文