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AuthorPrithula, Johayra
AuthorIslam, Khandaker Reajul
AuthorKumar, Jaya
AuthorTan, Toh Leong
AuthorReaz, Mamun Bin Ibne
AuthorRahman, Tawsifur
AuthorZughaier, Susu M.
AuthorKhan, Muhammad Salman
AuthorMurugappan, M.
AuthorChowdhury, Muhammad E.H.
Available date2025-04-22T05:50:03Z
Publication Date2025-01-31
Publication NameComputers in Biology and Medicine
Identifierhttp://dx.doi.org/10.1016/j.compbiomed.2024.109284
ISSN00104825
URIhttps://www.sciencedirect.com/science/article/pii/S0010482524013696
URIhttp://hdl.handle.net/10576/64369
AbstractSepsis, a life-threatening condition triggered by the body's response to infection, remains a significant global health challenge, annually affecting millions in the United States alone with substantial mortality and healthcare costs. Early prediction of sepsis is critical for timely intervention and improved patient outcomes. This study introduces an innovative predictive model leveraging machine learning techniques and a specific data-splitting approach on highly imbalanced electronic health records (EHRs). Using PhysioNet/CinC Challenge 2019 data from 40,336 patients, including vital signs, lab values, and demographics. Preliminary assessments using classical and stacked ML models with Synthetic Minority Oversampling Technique (SMOTE) augmentation were conducted, showing improved performance. It is found that stacking ML models enhances overall accuracy but faces limitations in precision, recall, and F1 score for positive class prediction. A novel data-splitting approach with 5-fold cross-validation and SMOTE and COPULA augmentation techniques demonstrated promise, with F1 scores ranging from 93 % to 94 % using the COPULA technique. COPULA excelled at predictions for different hours' onsets compared to the SMOTE technique. The proposed model outperformed existing studies, suggesting clinical viability for early sepsis prediction.
SponsorThis work was made possible by Qatar University High Impact Grant# QUHI-1-CENG-2023-216 from Qatar University. The statements made herein are solely the responsibility of the authors.
Languageen
PublisherElsevier
SubjectSepsis
Early prediction
Electronic health record
Machine learning
Intensive care unit (ICU)
TitleA novel classical machine learning framework for early sepsis prediction using electronic health record data from ICU patients
TypeArticle
Volume Number184
ESSN1879-0534
dc.accessType Full Text


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