Features Partner Sites Information LinkXpress hp
Sign In
Advertise with Us
Radcal IBA  Group

Download Mobile App




AI Tool Performs as Good as Experienced Radiologists in Interpreting Chest X-rays

By HospiMedica International staff writers
Posted on 23 Dec 2019
A team of researchers from Google Health (Palo Alto, CA, USA) have developed a sophisticated type of artificial intelligence (AI) that can detect clinically meaningful chest X-ray findings as effectively as experienced radiologists. More...
Their findings, based on a type of AI called deep learning, could provide a valuable resource for the future development of AI chest radiography models.

Chest radiography, or X-ray, one of the most common imaging exams worldwide, is performed to help diagnose the source of symptoms like cough, fever and pain. Despite its popularity, the exam has limitations. Deep learning, a sophisticated type of AI in which the computer can be trained to recognize subtle patterns, has the potential to improve chest X-ray interpretation, but it too has limitations. For instance, results derived from one group of patients cannot always be generalized to the population at large.

Researchers at Google Health developed deep learning models for chest X-ray interpretation that overcome some of these limitations. They used two large datasets to develop, train and test the models. The first dataset consisted of more than 750,000 images from five hospitals in India, while the second set included 112,120 images made publicly available by the National Institutes of Health (NIH). A panel of radiologists convened to create the reference standards for certain abnormalities visible on chest X-rays used to train the models.

Tests of the deep learning models showed that they performed on par with radiologists in detecting four findings on frontal chest X-rays, including fractures, nodules or masses, opacity (an abnormal appearance on X-rays often indicative of disease) and pneumothorax (the presence of air or gas in the cavity between the lungs and the chest wall). Radiologist adjudication led to increased expert consensus of the labels used for model tuning and performance evaluation. The overall consensus increased from just over 41% after the initial read to more than almost 97% after adjudication.

"Chest X-ray interpretation is often a qualitative assessment, which is problematic from deep learning standpoint," said Daniel Tse, M.D., product manager at Google Health. "By using a large, diverse set of chest X-ray data and panel-based adjudication, we were able to produce more reliable evaluation for the models."

Related Links:
Google Health


Platinum Member
Real-Time Diagnostics Onscreen Viewer
GEMweb Live
Gold Member
Disposable Protective Suit For Medical Use
Disposable Protective Suit For Medical Use
Digital X-Ray Detector Panel
Acuity G4
Portable Jaundice Management Device
Nymphaea
Read the full article by registering today, it's FREE! It's Free!
Register now for FREE to HospiMedica.com and get access to news and events that shape the world of Hospital Medicine.
  • Free digital version edition of HospiMedica International sent by email on regular basis
  • Free print version of HospiMedica International magazine (available only outside USA and Canada).
  • Free and unlimited access to back issues of HospiMedica International in digital format
  • Free HospiMedica International Newsletter sent every week containing the latest news
  • Free breaking news sent via email
  • Free access to Events Calendar
  • Free access to LinkXpress new product services
  • REGISTRATION IS FREE AND EASY!
Click here to Register








Channels

Surgical Techniques

view channel
Image: Professor Bumsoo Han and postdoctoral researcher Sae Rome Choi of Illinois co-authored a study on using DNA origami to enhance imaging of dense pancreatic tissue (Photo courtesy of Fred Zwicky/University of Illinois Urbana-Champaign)

DNA Origami Improves Imaging of Dense Pancreatic Tissue for Cancer Detection and Treatment

One of the challenges of fighting pancreatic cancer is finding ways to penetrate the organ’s dense tissue to define the margins between malignant and normal tissue. Now, a new study uses DNA origami structures... Read more

Patient Care

view channel
Image: The portable biosensor platform uses printed electrochemical sensors for the rapid, selective detection of Staphylococcus aureus (Photo courtesy of AIMPLAS)

Portable Biosensor Platform to Reduce Hospital-Acquired Infections

Approximately 4 million patients in the European Union acquire healthcare-associated infections (HAIs) or nosocomial infections each year, with around 37,000 deaths directly resulting from these infections,... Read more
Copyright © 2000-2025 Globetech Media. All rights reserved.