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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Aug 11, 2025
Date Accepted: May 19, 2026

The final, peer-reviewed published version of this preprint can be found here:

Machine Learning–Augmented Traditional Analysis of Lactate vs Lactate-to-Albumin Ratio for Predicting Mortality Risk in Patients With Sepsis: Large-Scale Retrospective Study

Wang X, Yi X, Weijun X, Peng D, Yunxia H, Muhan C, Liang L, qinghua H

Machine Learning–Augmented Traditional Analysis of Lactate vs Lactate-to-Albumin Ratio for Predicting Mortality Risk in Patients With Sepsis: Large-Scale Retrospective Study

JMIR Med Inform 2026;14:e82230

DOI: 10.2196/82230

PMID: 42462220

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Machine Learning-Augmented Traditional Analysis: Lactate versus Lactate/Albumin Ratio in Predicting Mortality Risk among Septic Patients: A Large-scale Retrospective Study

  • Xiaodi Wang; 
  • Xu Yi; 
  • Xiao Weijun; 
  • Dou Peng; 
  • Huang Yunxia; 
  • Cao Muhan; 
  • Luo Liang; 
  • Hou qinghua

ABSTRACT

Background:

Effective risk stratification in sepsis remains a clinical challenge. While lactate is a cornerstone biomarker, its predictive limitations are well-known. The lactate-to-albumin ratio (LAR) has emerged as a promising alternative, but its superiority, particularly in patients without severe hyperlactatemia, has not been rigorously validated in a large cohort using advanced, transparent methodologies.

Objective:

 To determine whether the lactate-to-albumin ratio (LAR) provides superior and more robust prediction of 28-day mortality than lactate alone in adult sepsis patients, through comprehensive analysis using threshold effects, restricted cubic splines, and interpretable machine learning models in a large multicenter cohort.

Methods:

We conducted a retrospective analysis of 3637 adult sepsis patients from the multicenter eICU database. The primary outcome was 28-day mortality. We employed a dual approach: 1. Traditional statistical analyses, including threshold and restricted cubic spline modeling, to compare the predictive behavior of lactate and LAR. 2. Development of nine machine learning models to assess their predictive performance. We used SHapley Additive exPlanations (SHAP) to provide full model interpretability and to quantify the precise predictive contribution of each biomarker.

Results:

LAR consistently demonstrated a stronger and more stable association with mortality than lactate, especially in patients with lactate levels <4 mmol/L. In machine learning analyses, the top-performing Extreme Gradient Boosting (XGBoost) model achieved an AUC of 0.71 for 28-day in-hospital mortality. Critically, SHAP analysis revealed that LAR was consistently ranked as one of the top three most important predictive features across all models, with a contribution quantitatively greater than that of lactate alone.

Conclusions:

The LAR is a superior and more robust biomarker than lactate for sepsis mortality prediction. By integrating a measure of acute metabolic distress (lactate) with a marker of systemic inflammation and capillary leak (albumin), LAR provides a more comprehensive risk assessment, particularly in the crucial early stages of sepsis. Interpretable machine learning models powered by LAR offer a promising pathway toward more precise and reliable clinical decision support. Clinical Trial: .Database access complied with the PhysioNet review board's data use agreement and HIPAA Safe Harbor provisions. This study received an exemption from the Massachusetts Institute of Technology Institutional Review Board, and the researcher completed the required data access training certification(Xu Yi, Certificate No.66014966).


 Citation

Please cite as:

Wang X, Yi X, Weijun X, Peng D, Yunxia H, Muhan C, Liang L, qinghua H

Machine Learning–Augmented Traditional Analysis of Lactate vs Lactate-to-Albumin Ratio for Predicting Mortality Risk in Patients With Sepsis: Large-Scale Retrospective Study

JMIR Med Inform 2026;14:e82230

DOI: 10.2196/82230

PMID: 42462220

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