AI Article Synopsis

  • The introduction describes the growing issue of postoperative complications and how a new risk stratification tool, CARES-ML, aims to reduce these risks by identifying high-risk patients early.
  • The study design involves a randomized controlled trial with over 9,200 patients undergoing elective surgeries, comparing outcomes between those guided by the CARES tool and those who are not.
  • The ethics section ensures patient consent and language support, with the study approved by the relevant review board and funding from Singapore’s National Medical Research Council, leading to findings that will be shared in peer-reviewed journals.

Article Abstract

Introduction: As surgical accessibility improves, the incidence of postoperative complications is expected to rise. The implementation of a precise and objective risk stratification tool holds the potential to mitigate these complications by early identification of high-risk patients. Moreover, it could address the escalating costs from resource misallocation. In Singapore General Hospital (SGH), we introduced the Combined Assessment of Risk Encountered in Surgery-Machine Learning (CARES-ML) in June 2023, focusing on predicting 30-day postoperative mortality and the need for post-surgery intensive care unit (ICU) stays. The IMAGINATIVE Trial aims to evaluate the efficacy of such systems in a large academic medical centre.

Methods And Analysis: This study adopts type 1 effectiveness-implementation study design within a randomised controlled trial framework. Patients will be randomly assigned in a 1:1 ratio to either the CARES-guided group (unblinded to risk level) or the unguided group (blinded to the risk level). A total of 9200 patients will be enrolled in the study, with the inclusion criteria encompassing individuals aged 21-100 years old undergoing elective surgeries except for neurology and cardiology surgeries at SGH. The primary outcome is to evaluate the effectiveness of the Machine Learning Clinical Decision Support (ML-CDS) algorithm in improving perioperative mortality rates when integrated into the clinical workflow.

Ethics And Dissemination: The study has been approved by the SingHealth Centralised Institutional Review Board (CIRB Ref: 2023:2114) and is registered on ClinicalTrials.gov (trial number: NCT05809232). All patients will sign an informed consent form before recruitment and translators will be made available to non-English-speaking participants. This study is funded by the National Medical Research Council, Singapore (HCSAINV22jul-0002) and the findings will be published in peer-reviewed journals and presented at academic conferences.

Trial Registration Number: NCT05809232.

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Source
http://dx.doi.org/10.1136/bmjopen-2024-086769DOI Listing

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