Host, Dr Dipti Itchhaporia (Hoag Heart and Vascular Institute, Newport Beach, CA, US) is joined by PI, Dr Derek Chew (Monash Heart and Victorian Heart Institute, AU) to discuss the findings from the RAPIDxAI trial, which aims to improve the assessment of suspected cardiac chest pain in emergency departments (ED) using a machine-learning algorithm that will interpret high-sensitivity troponin test results, assisting the diagnosis of myocardial infarction (MI) and other myocardial injuries. Conducted across 12 hospitals with 9600 patients, RAPIDxAI compares AI-supported decision-making to standard of care.
Investigators found that the availability of AI-based decision making tools guiding diagnostic and prognostic evaluation of high-sensitivity troponin T did not impact clinical care to improve cardiovascular outcomes. There was no increased risk using the algorithms observed in the trial, demonstrating the safety of the algorithm. Dr Itchhaporia and Dr Chew discuss the trust levels of cardiologists in implementing AI algorithms into clinical practice, and cost-effective methods of validating AI, as well as the lessons learnt from the trial.
If you have any questions or suggestions for topics to cover on the Radcliffe Podcast, please email managingeditor@ecrjournal.com.
In this month's episode of ECR Podcast, Dr Vinoda Sharma, (Sandwell and West Birmingham Hospitals NHS Trust, Birmingham, UK) and Dr Abdul Mozid, (Leeds Teaching Hospitals NHS Trust, Leeds, UK) discuss the ways in which CT coronary angiography can be utilised in chronic total occlusion percutaneous coronary interventions, and how the procedures differ across their UK-based practices.
They interpret the evidence from five key trials, providing context, asking thought-provoking questions to translate the data into key take-home messages for practice and research.
Dive into this practical and engaging discussion and learn more about the latest data for practice and for research.