Scientific Reports (Mar 2023)

Development and validation of a simple machine learning tool to predict mortality in leptospirosis

  • Gabriela Studart Galdino,
  • Tainá Veras de Sandes-Freitas,
  • Luis Gustavo Modelli de Andrade,
  • Caio Manuel Caetano Adamian,
  • Gdayllon Cavalcante Meneses,
  • Geraldo Bezerra da Silva Junior,
  • Elizabeth de Francesco Daher

DOI
https://doi.org/10.1038/s41598-023-31707-4
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 7

Abstract

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Abstract Predicting risk factors for death in leptospirosis is challenging, and identifying high-risk patients is crucial as it might expedite the start of life-saving supportive care. Admission data of 295 leptospirosis patients were enrolled, and a machine-learning approach was used to fit models in a derivation cohort. The comparison of accuracy metrics was performed with two previous models—SPIRO score and quick SOFA score. A Lasso regression analysis was the selected model, demonstrating the best accuracy to predict mortality in leptospirosis [area under the curve (AUC-ROC) = 0.776]. A score-based prediction was carried out with the coefficients of this model and named LeptoScore. Then, to simplify the predictive tool, a new score was built by attributing points to the predictors with importance values higher than 1. The simplified score, named QuickLepto, has five variables (age > 40 years; lethargy; pulmonary symptom; mean arterial pressure < 80 mmHg and hematocrit < 30%) and good predictive accuracy (AUC-ROC = 0.788). LeptoScore and QuickLepto had better accuracy to predict mortality in patients with leptospirosis when compared to SPIRO score (AUC-ROC = 0.500) and quick SOFA score (AUC-ROC = 0.782). The main result is a new scoring system, the QuickLepto, that is a simple and useful tool to predict death in leptospirosis patients at hospital admission.