City
Epaper

Study uses AI to identify people with irregular heartbeats

By ANI | Updated: October 21, 2023 23:45 IST

Washington [US], October 21 : An artificial intelligence (AI) system may spot an abnormal cardiac rhythm in people even ...

Open in App

Washington [US], October 21 : An artificial intelligence (AI) system may spot an abnormal cardiac rhythm in people even before they exhibit any symptoms, according to research.

The method, which found hidden signals in normal medical diagnostic procedures, may help doctors better protect patients with atrial fibrillation, the most common kind of heart rhythm disease, from strokes and other cardiovascular problems.

Most of the algorithms that had previously been created were used on white individuals. Veterans and underprivileged Americans are among the patient categories and scenarios in which this algorithm is effective.

A peer-reviewed journal, JAMA Cardiology, published the findings.

"This research allows for better identification of a hidden heart condition and informs the best way to develop algorithms that are equitable and generalizable to all patients," said David Ouyang, MD, a cardiologist in the Department of Cardiology in the Smidt Heart Institute at Cedars-Sinai, a researcher in the Division of Artificial Intelligence in Medicine, and senior author of the study.

Experts estimate that about 1 in 3 people with atrial fibrillation do not know they have the condition.

In atrial fibrillation, the electrical signals in the heart that regulate the pumping of blood from the upper chambers to the lower chambers are chaotic. This can cause blood in the upper chambers to pool and form blood clots that can travel to the brain and trigger an ischemic stroke.

To create the algorithm, investigators programmed an artificial intelligence tool to study patterns found in electrocardiogram readings. An electrocardiogram is a test that monitors electrical signals from the heart. People who undergo this test have electrodes placed on their body that detect the heart's electrical activity.

The algorithm was trained on almost a million electrocardiograms and it accurately predicted patients would have atrial fibrillation within 31 days.

The AI model was also applied to medical records from patients at Cedars-Sinai and it similarlyand accuratelypredicted cases of atrial fibrillation within 31 days.

"This study of veterans was geographically and ethnically diverse, indicating that the application of this algorithm could benefit the general population in the U.S.," said Sumeet Chugh, MD, director of the Division of Artificial Intelligence in Medicine in the Department of Medicine and medical director of the Heart Rhythm Center in the Department of Cardiology.

"This research exemplifies one of the many ways that investigators in the Smidt Heart Institute and the Division of Artificial Intelligence in Medicine are using AI to address preemptive management of complex and challenging cardiac conditions."

Disclaimer: This post has been auto-published from an agency feed without any modifications to the text and has not been reviewed by an editor

Open in App

Related Stories

Other SportsU-23 Asian Wrestling: Freestyle team clinches Champion Trophy, India makes history

NationalTripura: BJP govt provides jobs to 18 whose family members were victims of 'political killings'

InternationalSri Lanka expresses gratitude to India for evacuating its nationals from Iran

InternationalIndian nationals share relief, after evacuation from Iran; 827 brought back so far

NationalTrinamool announces reshuffle for 3 affiliated organisations

Technology Realted Stories

TechnologyAsiana flight to Tokyo turns back due to suspected engine issue

TechnologySEBI bars 2 operators for cheating investors, orders them to return Rs 4.83 crore

TechnologyAssam gas leak: Significant progress in well control operations, says ONGC

TechnologySickle cell elimination mission ensured regular treatment at primary care centres: ICMR-CRMCH

TechnologyYoga a master key to realising dream of healthy India by 2047: Piyush Goyal