An X-ray of a Covid-19 patient's lungs at United Memorial Medical Center in Houston, Texas, US, July 10, 2020. PHOTO: REUTERS

AI detects Covid-19 on chest X-rays with accuracy, speed

Researchers have developed a new artificial intelligence platform which analyzes X-ray images of lungs


Xinhua November 25, 2020
CHICAGO:

Northwestern University (NU) researchers have developed a new artificial intelligence (AI) platform, called DeepCovid-XR, to detect Covid-19 by analysing X-ray images of the lungs.

The machine-learning algorithm has outperformed a team of specialized thoracic radiologists by spotting Covid-19 in X-rays about 10 times faster and 1-6 per cent more accurately.

To develop, train, and test the new algorithm, the researchers used 17,002 chest X-ray images. Of those images, 5,445 came from Covid-19-positive patients from sites across the Northwestern Memorial Healthcare System.

Govt approves social media rules expanding PTA powers

The researchers then tested DeepCovid-XR against five experienced cardiothoracic fellowship-trained radiologists on 300 random test images from Lake Forest Hospital. Each radiologist took approximately two-and-a-half to three-and-a-half hours to examine this set of images, whereas the AI system took about 18 minutes.

The radiologists' accuracy ranged from 76-81 per cent. DeepCovidD-XR performed slightly better at 82-per cent accuracy.

Three countries that spend the most on research and development

"Radiologists are expensive and not always available," said NU's Aggelos Katsaggelos, an AI expert and senior author of the study. "X-rays are inexpensive and already a common element of routine care. This could potentially save money and time -- especially because timing is so critical when working with Covid-19."

NU researchers have made the algorithm publicly available with hopes that others can continue to train it with new data. DeepCovid-XR is still in the research phase, but could potentially be used in the clinical setting in the future.

 

COMMENTS

Replying to X

Comments are moderated and generally will be posted if they are on-topic and not abusive.

For more information, please see our Comments FAQ