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.

Features Partner Sites Information LinkXpress hp
Sign In
Advertise with Us
ARAB HEALTH - INFORMA

Download Mobile App





Deep Learning Neural Network Quickly Detects COVID-19 Infections Using X-Ray Images

By HospiMedica International staff writers
Posted on 24 Nov 2021
Print article
Illustration
Illustration

A deep learning neural network can quickly detect COVID-19 infections using X-ray images.

The deep learning neural network named CORONA-Net was developed by scientists at The University of British Columbia (Kelowna, BC Canada) to help doctors who lack access to polymerase chain reaction (PCR) tests and need a way to rapidly screen patients for COVID-19. As COVID-19 continues to make headlines across the globe, people have become used to the idea of rapid testing to determine if they have been infected. The viral test only indicates if a current infection exists, but not if there was previous infection. The alternative antibody test uses a blood sample and can detect if there was a previous infection with the SARS-CoV-2 virus, even if there are no current symptoms. However, the PCR test can be rare in many countries and usually costs several hundred dollars each time. Doctors around the world need a way to rapidly test patients for COVID-19 so that they can begin immediate treatment for patients with the virus

UBC Okanagan researchers, who say rapid tests can be limited and expensive in many countries, are testing another testing method. And they believe, thanks to artificial intelligence, they have found one. The research team has developed CORONA-Net, a deep learning neural network that can quickly detect COVID-19 infections using X-ray images. In many countries, people opt for chest X-ray because of the cost of a PCR test or its unavailability. However, sometimes it is difficult to get the X-ray looked at by a specialist, and accurately detecting the infection can take time. But by using CORONA-NET, the artificial intelligence system can flag suspicious cases to be fast-tracked and looked at quickly.

The developed CORONA-Net architecture substantially increases the sensitivity and positive predictive value (PPV) of predictions, making CORONA-Net a valuable tool when it comes to using chest X-rays to diagnose COVID-19. According to the researchers, the developed CORONA-Net was able to produce results with an accuracy of more than 95% in classifying COVID-19 cases from digital chest X-ray images. The accuracy of detecting COVID-19 by CORONA-Net will continue to increase as the dataset grows. CORONA-Net can automatically improve itself over time and self-learn to be more accurate.

“COVID-19 typically causes pneumonia in human lungs, which can be detected in X-ray images. These datasets of X-rays - of people with pneumonia inflicted by COVID-19, of people with pneumonia inflicted by other diseases, as well as X-rays of healthy people - allow the possibility to create deep learning networks that can differentiate between images of people with COVID-19 and people who do not have the disease,” said graduate student Sherif Elbishlawi, who helped develop CORONA-Net.

“The results on the testing set were obtained and can be seen in 100 per cent sensitivity to the COVID-19 class. There was a 95% sensitivity in the classification of the pneumonia class and a 95 per cent sensitivity in the classification of the normal class,” he added. “These results show that CORONA-Net gives a highly accurate prediction with the most sensitivity to the COVID-19 class.”

Related Links:
The University of British Columbia 

Gold Member
SARS‑CoV‑2/Flu A/Flu B/RSV Sample-To-Answer Test
SARS‑CoV‑2/Flu A/Flu B/RSV Cartridge (CE-IVD)
Gold Member
Real-Time Diagnostics Onscreen Viewer
GEMweb Live
New
Anterior Cervical Plate System
XTEND
New
Documentation System For Blood Banks
HettInfo II

Print article

Channels

Surgical Techniques

view channel
Image: The surgical team and the Edge Multi-Port Endoscopic Surgical Robot MP1000 surgical system (Photo courtesy of Wei Zhang)

Endoscopic Surgical System Enables Remote Robot-Assisted Laparoscopic Hysterectomy

Telemedicine enables patients in remote areas to access consultations and treatments, overcoming challenges related to the uneven distribution and availability of medical resources. However, the execution... 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

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 acoustic pipette uses sound waves to test for biomarkers in blood (Photo courtesy of Patrick Campbell/CU Boulder)

Handheld, Sound-Based Diagnostic System Delivers Bedside Blood Test Results in An Hour

Patients who go to a doctor for a blood test often have to contend with a needle and syringe, followed by a long wait—sometimes hours or even days—for lab results. Scientists have been working hard to... Read more
Copyright © 2000-2024 Globetech Media. All rights reserved.