Assessment of Sepsis Risk at Admission to the Emergency Department: Clinical Interpretable Prediction Model.
Umran AygunFatma Hilal YagınBurak YaginSeyma YasarCemil ÇolakAhmet Selim OzkanLuca Paolo ArdigòPublished in: Diagnostics (Basel, Switzerland) (2024)
This study aims to develop an interpretable prediction model based on explainable artificial intelligence to predict bacterial sepsis and discover important biomarkers. A total of 1572 adult patients, 560 of whom were sepsis positive and 1012 of whom were negative, who were admitted to the emergency department with suspicion of sepsis, were examined. We investigated the performance characteristics of sepsis biomarkers alone and in combination for confirmed sepsis diagnosis using Sepsis-3 criteria. Three different tree-based algorithms-Extreme Gradient Boosting (XGBoost), Light Gradient Boosting Machine (LightGBM), Adaptive Boosting (AdaBoost)-were used for sepsis prediction, and after examining comprehensive performance metrics, descriptions of the optimal model were obtained with the SHAP method. The XGBoost model achieved accuracy of 0.898 (0.868-0.929) and area under the ROC curve (AUC) of 0.940 (0.898-0.980) with a 95% confidence interval. The five biomarkers for predicting sepsis were age, respiratory rate, oxygen saturation, procalcitonin, and positive blood culture. SHAP results revealed that older age, higher respiratory rate, procalcitonin, neutrophil-lymphocyte count ratio, C-reactive protein, plaque, leukocyte particle concentration, as well as lower oxygen saturation, systolic blood pressure, and hemoglobin levels increased the risk of sepsis. As a result, the Explainable Artificial Intelligence (XAI)-based prediction model can guide clinicians in the early diagnosis and treatment of sepsis, providing more effective sepsis management and potentially reducing mortality rates and medical costs.
Keyphrases
- septic shock
- acute kidney injury
- intensive care unit
- emergency department
- artificial intelligence
- blood pressure
- machine learning
- deep learning
- big data
- cardiovascular disease
- heart failure
- healthcare
- left ventricular
- weight loss
- adipose tissue
- cardiovascular events
- heart rate
- insulin resistance
- peripheral blood
- high resolution
- single molecule
- adverse drug