article thumbnail

New Studies: AI Captures Electrocardiogram Patterns That Could Signal a Future Sudden Cardiac Arrest

DAIC

In a study published in Communications Medicine , David Ouyang, MD, assistant professor of Cardiology and Medicine at Cedars-Sinai, along with Chugh and fellow investigators trained a deep learning algorithm to study patterns in electrocardiograms, also known as ECGs, which are recordings of the heart’s electrical activity.

article thumbnail

AI model can predict health risks, including early death, from electrocardiograms

Medical Xpress - Cardiology

A new AI model can predict patients' risk of developing and worsening disease, and even their risk of early death, using an electrocardiogram (ECG).

article thumbnail

Tombstone Pattern Electrocardiogram in a Young Woman

JAMA Cardiology

Electrocardiogram results showed sinus tachycardia, QRS widening, low-voltage complexes, and ST-segment elevation. A woman in her mid-20s presented with acute fever, chest pain, and exertional dyspnea. What would you do next?

article thumbnail

Researchers achieve contactless electrocardiogram monitoring

Medical Xpress - ECG

Chen Yan and researcher Sun Qibin from the University of Science and Technology of China (USTC) achieved contactless electrocardiogram (ECG) monitoring through a millimeter-wave radar system. Recently, a team led by Prof. Their work was published in IEEE Transactions on Mobile Computing and reported by IEEE Spectrum.

article thumbnail

Artificial intelligence predicts undiagnosed atrial fibrillation in patients with embolic stroke of undetermined source using sinus rhythm electrocardiograms

HeartRhythm

Artificial intelligence (AI)-enabled sinus rhythm (SR) electrocardiogram (ECG) interpretation can aid in identifying undiagnosed paroxysmal atrial fibrillation (AF) in patients with embolic stroke of undetermined source (ESUS).

article thumbnail

AI-based preeclampsia detection and prediction with electrocardiogram data

Frontiers in Cardiovascular Medicine

In this study, we developed artificial intelligence models to detect and predict preeclampsia from electrocardiograms (ECGs) in point-of-care settings. Early diagnosis and management of preeclampsia can improve outcomes for both mother and baby.

article thumbnail

The Electrocardiogram at 100 Years: History and Future

Circulation

Circulation, Volume 149, Issue 6 , Page 411-413, February 6, 2024.