4.5 Article

Interpretable Machine Learning for Early Prediction of Prognosis in Sepsis: A Discovery and Validation Study

Journal

INFECTIOUS DISEASES AND THERAPY
Volume 11, Issue 3, Pages 1117-1132

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s40121-022-00628-6

Keywords

Machine learning; Algorithm; Sepsis; Critically ill; Mortality

Funding

  1. Chinese Medical Information and Big Data Association [Z-2019-1-003]
  2. Translational Medicine and Interdisciplinary Research Joint Fund of Zhongnan Hospital of Wuhan University [ZNJC202011]

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This study aimed to develop and validate an interpretable machine-learning model based on clinical features for early predicting in-hospital mortality in critically ill patients with sepsis. The eXtreme Gradient Boosting (XGBoost) model achieved the best performance in predicting the outcome, with the top 5 features being Glasgow Coma Scale (GCS) score, blood urea nitrogen, respiratory rate, urine output, and age. The SHAP method improved the interpretability of the model and helped clinicians better understand the reasoning behind the outcome.
Introduction: This study aimed to develop and validate an interpretable machine-learning model based on clinical features for early predicting in-hospital mortality in critically ill patients with sepsis. Methods: We enrolled all patients with sepsis in the Medical Information Mart for Intensive Care IV (MIMIC-IV, v.1.0) database from 2008 to 2019. Lasso regression was used for feature selection. Seven machine-learning methods were applied to develop the models. The best model was selected based on its accuracy and area under curve (AUC) in the validation cohort. Furthermore, we employed the SHapley Additive exPlanations (SHAP) method to illustrate the effects of the features attributed to the model, and to analyze how the individual features affect the output of the model, and to visualize the Shapley value for a single individual. Results: In total, 8,817 patients with sepsis were eligible for participation, the median age was 66.8 years (IQR, 55.9-77.1 years), and 3361 of 8817 participants (38.1%) were women. After selection, 25 of a total 57 clinical parameters collected on day 1 after ICU admission remained associated with prognosis and were used for developing the machine-learning models. Among seven constructed models, the eXtreme Gradient Boosting (XGBoost) model achieved the best performance with an AUC of 0.884 and an accuracy of 89.5% in the validation cohort. Feature importance analysis showed that Glasgow Coma Scale (GCS) score, blood urea nitrogen, respiratory rate, urine output, and age were the top 5 features of the XGBoost model with the greatest impact. Furthermore, SHAP force analysis illustrated how the constructed model visualized the individualized prediction of death. Conclusions: We have demonstrated the potential of machine-learning approaches for predicting outcome early in patients with sepsis. The SHAP method could improve the interpretability of machine-learning models and help clinicians better understand the reasoning behind the outcome. [GRAPHICS] .

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