# Automated Calculation of Sequential Organ Failure Assessment (SOFA) Score in the Intensive Care Unit: Algorithm Development, Validation, and Association With 30‐Day Mortality

**Authors:** Johan Helleberg, Anna Sundelin, Navid Soltani, Ragnar Thobaben, Johan Mårtensson, Olav Rooyackers

PMC · DOI: 10.1111/aas.70205 · 2026-02-15

## TL;DR

Researchers developed an automated method to calculate SOFA scores in ICU patients, which is as accurate as manual scoring and can predict 30-day mortality.

## Contribution

The novel contribution is an automated algorithm for calculating SOFA scores with high accuracy and mortality prediction capability.

## Key findings

- The automated SOFA score calculation had an ICC of 0.99, matching manual scoring accuracy.
- Maximum SOFA score and Day 2 SOFA score achieved an AUROC of 0.79 for predicting 30-day mortality.
- Automated SOFA scoring is reliable for clinical research and quality monitoring.

## Abstract

Sequential Organ Failure Assessment (SOFA) score is routinely used in the intensive care unit (ICU) to describe severity of organ dysfunction, for prognostication and sepsis diagnosis, and in clinical trials. Inter‐rater variability and scalability are known challenges in manual assessment. We aimed to develop and validate an algorithm for automatic SOFA calculation and evaluated its predictive abilities on 30‐day mortality.

Retrospective multi‐center cohort study on all adult patients admitted to four ICUs at the Karolinska University Hospitals in 2015–2018. Data from 2018 collected in one ICU was used for algorithm development. The algorithm was validated by comparing the results of automated SOFA score calculation to those obtained by manual SOFA scoring by experienced intensivists on 300 randomly chosen ICU days from the remaining cohort. Intra‐class correlation coefficient (ICC [95% confidence interval (CI)]) was calculated as primary validation outcome. Area under the receiver operating characteristic curve (AUROC [95% CI]) was used for assessment of 30‐day mortality prediction on the remaining cohort (excluding only the development cohort).

A total of 6953 ICU admissions were included. The algorithm was developed on 613 admissions during 2018. Data from the remaining cohort with 6340 admissions (5076 patients, 36,625 ICU days) were used for mortality prediction. On algorithm validation of the full SOFA score, the ICC was 0.99 (0.98–1.00). For 30‐day mortality, the best predictive abilities were found with maximum SOFA score (AUROC 0.79 [0.78–0.81]) and with SOFA score on Day 2 (AUROC 0.79 [0.77–0.80]).

A trustworthy automated SOFA score dataset can be produced with comprehensive high‐frequency electronic health records curation and rigorous artifact control, with accuracy comparable to manual scoring by senior intensivists. Association between SOFA score and 30‐day mortality in a large, real‐world clinical cohort aligns with findings from previous clinical trials. The results support the use of automated SOFA scoring as a reliable tool for clinical research, quality monitoring, and potentially real‐time clinical decision support.

In this article, the authors report results of a retrospective multicenter study, where they used a large cohort of adult ICU patients for developing and validating an automated algorithm for calculating SOFA scores. In validation, they found that the automatically calculated score was comparable to scores manually calculated by experienced clinicians. The automatically calculated maximum SOFA and Day 2 SOFA scores performed well in predicting 30‐day mortality.

## Full-text entities

- **Diseases:** Failure (MESH:D051437), Mortality (MESH:D003643), critically ill (MESH:D016638), Coma (MESH:D003128), Sepsis-3 (MESH:D018805), dysfunction (MESH:D006331), Organ Failure (MESH:D009102)
- **Chemicals:** DeltaSOFA (-)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

2 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12907534/full.md

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Source: https://tomesphere.com/paper/PMC12907534