Παρακαλώ χρησιμοποιήστε αυτό το αναγνωριστικό για να παραπέμψετε ή να δημιουργήσετε σύνδεσμο προς αυτό το τεκμήριο: https://ruomo.lib.uom.gr/handle/7000/1674
Πλήρης εγγραφή μεταδεδομένων
Πεδίο DCΤιμήΓλώσσα
dc.contributor.authorTarabanis, Constantine-
dc.contributor.authorKalampokis, Evangelos-
dc.contributor.authorKhalil, Mahmoud-
dc.contributor.authorAlviar, Carlos L.-
dc.contributor.authorChinitz, Larry A.-
dc.contributor.authorJankelson, Lior-
dc.date.accessioned2023-11-03T07:14:20Z-
dc.date.available2023-11-03T07:14:20Z-
dc.date.issued2023-
dc.identifier10.1016/j.cvdhj.2023.06.001en_US
dc.identifier.issn2666-6936en_US
dc.identifier.urihttps://doi.org/10.1016/j.cvdhj.2023.06.001en_US
dc.identifier.urihttps://ruomo.lib.uom.gr/handle/7000/1674-
dc.description.abstractBackground A lack of explainability in published machine learning (ML) models limits clinicians’ understanding of how predictions are made, in turn undermining uptake of the models into clinical practice. Objective The purpose of this study was to develop explainable ML models to predict in-hospital mortality in patients hospitalized for myocardial infarction (MI). Methods Adult patients hospitalized for an MI were identified in the National Inpatient Sample between January 1, 2012, and September 30, 2015. The resulting cohort comprised 457,096 patients described by 64 predictor variables relating to demographic/comorbidity characteristics and in-hospital complications. The gradient boosting algorithm eXtreme Gradient Boosting (XGBoost) was used to develop explainable models for in-hospital mortality prediction in the overall cohort and patient subgroups based on MI type and/or sex. Results The resulting models exhibited an area under the receiver operating characteristic curve (AUC) ranging from 0.876 to 0.942, specificity 82% to 87%, and sensitivity 75% to 87%. All models exhibited high negative predictive value ≥0.974. The SHapley Additive exPlanation (SHAP) framework was applied to explain the models. The top predictor variables of increasing and decreasing mortality were age and undergoing percutaneous coronary intervention, respectively. Other notable findings included a decreased mortality risk associated with certain patient subpopulations with hyperlipidemia and a comparatively greater risk of death among women below age 55 years. Conclusion The literature lacks explainable ML models predicting in-hospital mortality after an MI. In a national registry, explainable ML models performed best in ruling out in-hospital death post-MI, and their explanation illustrated their potential for guiding hypothesis generation and future study design.en_US
dc.language.isoenen_US
dc.publisherElsevieren_US
dc.rightsAttribution-NonCommercial-ShareAlike 4.0 International*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-sa/4.0/*
dc.sourceCardiovascular Digital Health Journalen_US
dc.subjectFRASCATI::Medical and Health sciences::Clinical medicineen_US
dc.subjectFRASCATI::Engineering and technologyen_US
dc.subject.otherAcute coronary syndromeen_US
dc.subject.otherExplainable machine learningen_US
dc.subject.otherMyocardial infarctionen_US
dc.subject.otherSHAPen_US
dc.subject.otherIn-hospital mortalityen_US
dc.titleExplainable SHAP-XGBoost models for in-hospital mortality after myocardial infarctionen_US
dc.typeArticleen_US
dc.contributor.departmentΤμήμα Οργάνωσης & Διοίκησης Επιχειρήσεωνen_US
local.identifier.volume4en_US
local.identifier.issue4en_US
local.identifier.firstpage126en_US
local.identifier.lastpage132en_US
Εμφανίζεται στις Συλλογές: Τμήμα Οργάνωσης & Διοίκησης Επιχειρήσεων

Αρχεία σε αυτό το Τεκμήριο:
Αρχείο Περιγραφή ΜέγεθοςΜορφότυπος 
PIIS2666693623000361.pdf832,75 kBAdobe PDFThumbnail
Προβολή/Ανοιγμα


Αυτό το τεκμήριο προστατεύεται από Αδεια Creative Commons Creative Commons