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Machine learning for early prediction of sepsis-associated acute brain injury

Chenglong Ge, Fuxing Deng, Wei Chen, Zhiwen Ye, Lina Zhang, Yuhang Ai, Yu Zou, Qianyi Peng

2022Frontiers in Medicine24 citationsDOIOpen Access PDF

Abstract

Background: Sepsis-associated encephalopathy (SAE) is defined as diffuse brain dysfunction associated with sepsis and leads to a high mortality rate. We aimed to develop and validate an optimal machine-learning model based on clinical features for early predicting sepsis-associated acute brain injury. Methods: We analyzed adult patients with sepsis from the Medical Information Mart for Intensive Care (MIMIC III) clinical database. Candidate models were trained using random forest, support vector machine (SVM), decision tree classifier, gradients boosting machine (GBM), multiple layer perception (MLP), extreme gradient boosting (XGBoost), light gradients boosting machine (LGBM) and a conventional logistic regression model. These methods were applied to develop and validate the optimal model based on its accuracy and area under curve (AUC). Results: In total, 12,460 patients with sepsis met inclusion criteria, and 6,284 (50.4%) patients suffered from sepsis-associated acute brain injury. Compared other models, the LGBM model achieved the best performance. The AUC for both train set and test set indicated excellent validity (Trainset AUC 0.91, Testset AUC 0.87). Feature importance analysis showed that glucose, age, mean arterial pressure, heart rate, hemoglobin, and length of ICU stay were the top 6 important clinical factors to predict occurrence of sepsis-associated acute brain injury. Conclusion: Almost half of patients admitted to ICU with sepsis had sepsis-associated acute brain injury. The LGBM model better identify patients with sepsis-associated acute brain injury than did other machine-learning models. Glucose, age, and mean arterial pressure were the three most important clinical factors to predict occurrence of sepsis-associated acute brain injury.

Topics & Concepts

SepsisMedicineLogistic regressionGradient boostingMachine learningReceiver operating characteristicArea under the curveRandom forestProcalcitoninSupport vector machineArtificial intelligenceIntensive care medicineInternal medicineComputer scienceSepsis Diagnosis and TreatmentTraumatic Brain Injury and Neurovascular DisturbancesIntensive Care Unit Cognitive Disorders
Machine learning for early prediction of sepsis-associated acute brain injury | Litcius