Eko Health Announces New Study Demonstrating AI-Assisted Detection of Reduced Ejection Fraction
Published in the Journal of the American College of Cardiology (JACC) Advances, the study highlights the potential of Eko's platform to aid in detecting reduced ejection fraction (EF), a key indicator of heart failure.
The study underscores the potential of Eko's non-invasive, scalable technology to aid in earlier identification of heart failure, especially in settings where advanced diagnostic tools like echocardiography are not readily available. Heart failure is often diagnosed late, frequently in acute settings where symptoms have already advanced significantly. Because its symptoms can be subtle and non-specific, many cases go unrecognized until significant deterioration has occurred. The AI model is optimally used in patients who present with non-specific symptoms such as unexplained dyspnea, where it can support fast access to diagnostic testing and treatment.
"Early detection of left ventricular dysfunction is crucial, as delayed diagnosis often leads to worse patient outcomes and higher healthcare costs," said Dr.
Effective therapies for HFrEF exist and have been proven to improve patient outcomes when initiated early. By leveraging AI-powered heart sound and ECG analysis, clinicians may gain additional insights to support timely specialist referrals, further diagnostic evaluation, and better disease management. Real-world use of Eko's AI in an Imperial College London deployment demonstrated its potential to help identify patients at higher risk of adverse cardiac events and support earlier intervention.
"The study findings highlight the promise of Eko's platform to complement traditional diagnostics and address the critical challenge of underdiagnosed heart failure," said
Study Highlights AI's Role in Expanding Access to Early Detection
The study enrolled 2,960 adults from four
The AI model demonstrated strong predictive performance, achieving an AUROC of 0.85, with sensitivity and specificity of 77.5% and 78.3%, respectively. Among individuals flagged by the AI as potentially having low EF but whose echocardiograms showed EF >40%, 25% had an EF between 41-49%, and 63% had conduction or rhythm abnormalities, suggesting the AI model's potential role in identifying patients who may still be at cardiovascular risk. Performance was consistent across various demographic and clinical subgroups, reinforcing its broad applicability in clinical settings.
For more insights into Eko Health and its portfolio of transformative cardiopulmonary solutions, please visit www.ekohealth.com.
About Eko
Eko Health is a leading digital health company advancing how healthcare professionals detect and monitor heart and lung disease with its portfolio of digital stethoscopes, patient and provider software, and AI-powered analysis. Its FDA-cleared platform, used by over 500,000 healthcare professionals worldwide, allows them to detect earlier and with higher accuracy, diagnose with more confidence, manage treatment effectively, and ultimately give their patients the best care possible. Eko Health is headquartered in
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SOURCE Eko Health
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