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Title: | Machine-learning versus traditional approaches to predict all-cause mortality for acute coronary syndrome: a systematic review and meta-analysis. | Authors: | Gupta A.K.;Mustafiz C.;Mutahar D.;Zaka A.;Parvez R.;Mridha N.;Stretton B.;Kovoor J.G.;Bacchi S.;Ramponi F.;Chan J.C.Y.;Zaman S. ;Chow C.;Kovoor P.;Bennetts J.S.;Maddern G.J. | Monash Health Department(s): | Cardiothoracic Surgery | Institution: | (Gupta, Stretton, Kovoor, Bacchi) University of Adelaide, Discipline of Surgery, Adelaide, Australia (Mustafiz) Griffith University, School of Medicine and Dentistry, Southport, Australia (Mutahar, Parvez) Bond University, Australia (Zaka) Gold Coast University Hospital, Southport, Australia (Mridha) Prince Charles Hospital, Brisbane, Australia (Ramponi) Yale University, New Haven, United States (Chan) New York University, NY, United States (Zaman, Chow) Westmead Applied Research Centre, Faculty of Medicine and Health, University of Sydney, Sydney, Australia; Department of Cardiology, Westmead Hospital, Sydney, Australia (Kovoor) Department of Cardiology, Westmead Hospital, Sydney, Australia (Bennetts) School of Medicine, Monash University, Melbourne, Australia; Department of Cardiothoracic Surgery, Victorian Heart Hospital, Melbourne, Australia (Maddern) University of Adelaide, Discipline of Surgery, Adelaide, Australia; Australian Safety and Efficacy Register of New Interventional Procedures-Surgical, Royal Australasian College of Surgeons, Adelaide, Australia; Research, Audit and Academic Surgery, Royal Australasian College of Surgeons, Adelaide, Australia |
Issue Date: | 5-Mar-2025 | Copyright year: | 2025 | Place of publication: | United Kingdom | Publication information: | The Canadian Journal of Cardiology. (no pagination), 2025. Date of Publication: 17 Feb 2025. | Journal: | The Canadian Journal of Cardiology | Abstract: | BACKGROUND: Acute coronary syndrome (ACS) remains one of the leading causes of death globally. Accurate and reliable mortality risk prediction of ACS patients is essential for developing targeted treatment strategies and improve prognostication. Traditional models for risk stratification such as the GRACE and TIMI risk scores offer moderate discriminative value, and do not incorporate contemporary predictors of ACS prognosis. Machine learning (ML) models have emerged as an alternate method that may offer improved risk assessment. This article aims to compare machine learning models with traditional risk scores for predicting all-cause mortality in patients with ACS. METHOD(S): PubMed, EMBASE, Web of Science, Cochrane, CINAHL, Scopus and iEEE XPlore databases were searched until 30th October 2024, as well as Google Scholar and manual screening of reference lists from included studies and the grey literature for studies comparing ML models with traditional statistical methods for event prediction of ACS patients. Best-performing ML models demonstrated superior discrimination of all-cause mortality for ACS patients compared to traditional risk scores. The primary outcome was comparative discrimination measured by C-statistics with 95% confidence intervals in estimating risk of all-cause mortality. RESULT(S): Twelve studies were included (250,510 patients). The summary C-statistic of best-performing ML models across all endpoints was 0.88 (95% CI, 0.86-0.91), compared to traditional methods 0.82 (95% CI, 0.80-0.85). The difference in C-statistic between ML models and traditional methods was 0.06 (p<0.0007). Five studies undertook external validation. PROBAST tool demonstrated high risk of bias for all studies. Common sources of bias included reporting bias and selection bias. Best-performing ML models demonstrated superior discrimination of all-cause mortality for ACS patients compared to traditional risk scores. CONCLUSION(S): Despite outperforming well-established prognostic tools such as the GRACE and TIMI scores, current clinical applications of ML approaches remain uncertain, particularly in view of the need for greater model validation.Copyright © 2025. Published by Elsevier Inc. | DOI: | http://monash.idm.oclc.org/login?url=https://dx.doi.org/10.1016/j.cjca.2025.01.037 | PubMed URL: | 39971002 | URI: | https://repository.monashhealth.org/monashhealthjspui/handle/1/53368 | Type: | Article In Press | Subjects: | acute coronary syndrome artificial intelligence coronary artery disease machine learning |
Type of Clinical Study or Trial: | Systematic review and/or meta-analysis |
Appears in Collections: | Articles |
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