We use cookies to understand how you use our site and to improve your experience. This includes personalizing content and advertising. To learn more, click here. By continuing to use our site, you accept our use of cookies. Cookie Policy.

HospiMedica

Download Mobile App
Recent News AI Critical Care Surgical Techniques Patient Care Health IT Point of Care Business Focus

Deep Learning Model Accurately Classifies Chest X-Rays

By HospiMedica International staff writers
Posted on 16 Dec 2019
Print article
Image: Chest X-ray of a pneumothorax missed by radiologist (L), but identified by the DL model (R) (Photo courtesy of Google Health)
Image: Chest X-ray of a pneumothorax missed by radiologist (L), but identified by the DL model (R) (Photo courtesy of Google Health)
Combining deep learning (DL) models with adjudicated image labels can help classify clinically important findings on chest X-rays, claims a new study.

Researchers at Google Health (Mountain View, CA), Apollo Radiology International (Hyderabad, India), California Advanced Imaging (Novato, USA), and other institutions have developed DL models that can accurately classify four clinically important chest X-ray findings - pneumothorax, nodules and masses, fractures, and airspace opacities. The target findings were selected in consultation with radiologists and clinical colleagues, so as to focus on conditions that are both critical for patient care, and for which chest X-ray images alone are an important and accessible first-line imaging study.

To do so, they used two large data sets. The first included 759,611 images from the Apollo Hospitals network (Hyderabad, India), and the second was drawn from a publicly available set of 112,120 images. Natural language processing and expert review of a small subset of images were then used to provide labels for 657,954 training images, with reference standards defined by four radiologists. The results showed that for all four radiologic findings, and across both datasets, DL models exhibited radiologist-level performance. The study was published on December 3, 2019, in Radiology.

“Achieving expert-level accuracy on average is just a part of the story. Even though overall accuracy for the DL models was consistently similar to that of radiologists for any given finding, performance for both varied across datasets,” said senior author Shravya Shetty, MSc, technical lead of Google Health. “This highlights the importance of validating deep learning tools on multiple, diverse datasets, and eventually across the patient populations and clinical settings in which any model is intended to be used.”

With millions of diagnostic examinations performed annually worldwide, chest X-rays are an important and accessible clinical imaging tool for the detection of many diseases. However, their usefulness can be limited by challenges in interpretation, which requires rapid, thorough evaluation of a two-dimensional image depicting complex, three-dimensional (3D) organs and disease processes. As a result, early-stage lung cancers or pneumothoraces (collapsed lungs) can often be missed, potentially leading to serious adverse outcomes.

Related Links:
Google Health
Apollo Radiology International
California Advanced Imaging


Gold Member
12-Channel ECG
CM1200B
Gold Member
Solid State Kv/Dose Multi-Sensor
AGMS-DM+
Silver Member
Compact 14-Day Uninterrupted Holter ECG
NR-314P
New
Autoclavable Camera System
Precision AC

Print article

Channels

Critical Care

view channel
Image: The stretchable microneedle electrode arrays (Photo courtesy of Zhao Research Group)

Stretchable Microneedles to Help In Accurate Tracking of Abnormalities and Identifying Rapid Treatment

The field of personalized medicine is transforming rapidly, with advancements like wearable devices and home testing kits making it increasingly easy to monitor a wide range of health metrics, from heart... Read more

Surgical Techniques

view channel
Image: Real-time analysis image by \"Eureka α\" with connective tissue highlighted in blue (Photo courtesy of Anaut Inc.)

AI-Powered Surgical Visualization Tool Supports Surgeons' Visual Recognition in Real Time

Connective tissue serves as an essential landmark in surgical navigation, often referred to as the "dissection plane" or "holy plane." Its accurate identification is vital for achieving safe and effective... Read more

Patient Care

view channel
Image: The portable, handheld BeamClean technology inactivates pathogens on commonly touched surfaces in seconds (Photo courtesy of Freestyle Partners)

First-Of-Its-Kind Portable Germicidal Light Technology Disinfects High-Touch Clinical Surfaces in Seconds

Reducing healthcare-acquired infections (HAIs) remains a pressing issue within global healthcare systems. In the United States alone, 1.7 million patients contract HAIs annually, leading to approximately... Read more

Health IT

view channel
Image: First ever institution-specific model provides significant performance advantage over current population-derived models (Photo courtesy of Mount Sinai)

Machine Learning Model Improves Mortality Risk Prediction for Cardiac Surgery Patients

Machine learning algorithms have been deployed to create predictive models in various medical fields, with some demonstrating improved outcomes compared to their standard-of-care counterparts.... Read more

Point of Care

view channel
Image: The Quantra Hemostasis System has received US FDA special 510(k) clearance for use with its Quantra QStat Cartridge (Photo courtesy of HemoSonics)

Critical Bleeding Management System to Help Hospitals Further Standardize Viscoelastic Testing

Surgical procedures are often accompanied by significant blood loss and the subsequent high likelihood of the need for allogeneic blood transfusions. These transfusions, while critical, are linked to various... Read more