Feb. 7, 2024, 5:41 a.m. | Fahim Mohammad Lakshmi Arunachalam Samanway Sadhu Boudewijn Aasman Shweta Garg Adil Ahmed Silvie Colma

cs.LG updates on arXiv.org arxiv.org

This study proposes the use of Machine Learning models to predict the early onset of sepsis using deidentified clinical data from Montefiore Medical Center in Bronx, NY, USA. A supervised learning approach was adopted, wherein an XGBoost model was trained utilizing 80\% of the train dataset, encompassing 107 features (including the original and derived features). Subsequently, the model was evaluated on the remaining 20\% of the test data. The model was validated on prospective data that was entirely unseen during …

center clinical cs.ai cs.ir cs.lg data dataset features machine machine learning machine learning models medical prediction study supervised learning train usa xgboost

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