
Can AI Help Prevent the Next Stroke? New Study Uses Brain Scans to Detect Hidden Heart Risk
Detecting atrial fibrillation (AF) from brain scans using AI could support future stroke care, according to a recent study found in Cerebrovascular Diseases.
The condition in focus is atrial fibrillation (AF) – a type of irregular heartbeat that increases stroke risk by five times. Because AF may not initially present symptoms, it often goes undiagnosed until a stroke has already occurred. Traditional detection methods, such as prolonged heart monitoring, can be expensive, invasive, and time-consuming.
This new research from the Melbourne Brain Centre and the University of Melbourne takes a different approach. By training a machine learning model on MRI images from patients who have already had strokes, the team taught the algorithm to recognize patterns linked to AF.
The researchers found that their AI model had “reasonable classification power” in telling apart strokes caused by AF from those caused by blocked arteries. In testing, the model achieved a strong performance score (AUC 0.81), suggesting that AI could become a valuable tool in helping doctors identify patients who might need further heart testing or treatment.
As the study notes, “machine learning is gaining greater traction for clinical decision-making and may help facilitate the detection of undiagnosed AF when applied to magnetic resonance imaging.” Because MRIs are already a routine part of stroke care, this method doesn’t require extra scans or procedures for patients – making it a low-cost, non-invasive way to support more targeted care.
The authors of the study emphasize the need for larger follow-up studies, but the potential is promising: Earlier detection of AF could lead to more timely treatment and fewer strokes.
“Early detection of atrial fibrillation (AF) is important to offer patients the best chance of preventing a serious cardioembolic stroke. However, many patients first present with an acute ischemic stroke for which the underlying cause of AF is silent because it is asymptomatic and intermittent,” says Craig Anderson, Editor-in-Chief of the journal Cerebrovascular Diseases. “The work by Sharobeam et al. presents a novel approach to use AI-based algorithm to inform the diagnosis of AF according to the pattern of cerebral ischemia on MRI.”
The paper is available here: http://doi.org/10.1159/000543042
About Karger Publishers
Connecting people and science since 1890, Karger provides scientists, healthcare professionals, patients, and the broader public with reliable and tailored information in Health Sciences. Building upon a publishing portfolio of more than 100 reputable scholarly journals and the award-winning Fast Facts medical info series, Karger excels in medical education and omnichannel HCP engagement in multiple formats, including 3D animations, podcasts, AR/VR environments, and more. Academic institutions and both medical affairs and pharma marketing teams in the corporate space entrust Karger with their most demanding communication challenges. Independent and family-led in the fourth generation by Chairwoman Gabriella Karger, Switzerland-based Karger is present in 15 countries with a team of 200 dedicated professionals worldwide.
For more information, please visit www.karger.com
Christine Hohlbaum
Hohlbaum PR & Social Media
+49 491 778638661
email us here
Visit us on social media:
LinkedIn
Bluesky
Facebook
YouTube
X
Other
Karger at a Glance

Distribution channels: Book Publishing Industry, Healthcare & Pharmaceuticals Industry, Science, Sports, Fitness & Recreation, Technology
Legal Disclaimer:
EIN Presswire provides this news content "as is" without warranty of any kind. We do not accept any responsibility or liability for the accuracy, content, images, videos, licenses, completeness, legality, or reliability of the information contained in this article. If you have any complaints or copyright issues related to this article, kindly contact the author above.
Submit your press release