Chest X-ray from patient severely ill from COVID-19, showing (in white patches) infected tissue spread across the lungs. Image courtesy of Nature Publishing or npj Digital Medicine

Chest X-ray from patient severely ill from COVID-19, showing (in white patches) infected tissue spread across the lungs. Image courtesy of Nature Publishing or npj Digital Medicine


May 14, 2021 — Trained to see patterns by analyzing thousands of chest X-rays, a computer program predicted with up to 80 percent accuracy which COVID-19 patients would develop life-threatening complications within four days, a new study finds.

Developed by researchers at NYU Grossman School of Medicine, the program used several hundred gigabytes of data gleaned from 5,224 chest X-rays taken from 2,943 seriously ill patients infected with SARS-CoV-2, the virus behind the infections.

The authors of the study, publishing in the journal npj Digital Medicine online May 12, cited the "pressing need" for the ability to quickly predict which COVID-19 patients are likely to have lethal complications so that treatment resources can best be matched to those at increased risk. For reasons not yet fully understood, the health of some COVID-19 patients suddenly worsens, requiring intensive care, and increasing their chances of dying.

In a bid to address this need, the NYU Langone team fed not only X-ray information into their computer analysis, but also patients' age, race, and gender, along with several vital signs and laboratory test results, including weight, body temperature, and blood immune cell levels. Also factored into their mathematical models, which can learn from examples, were the need for a mechanical ventilator and whether each patient went on to survive (2,405) or die (538) from their infections.

Researchers then tested the predictive value of the software tool on 770 chest X-rays from 718 other patients admitted for COVID-19 through the emergency room at NYU Langone hospitals from March 3 to June 28, 2020. The computer program accurately predicted four out of five infected patients who required intensive care and mechanical ventilation and/or died within four days of admission.

"Emergency room physicians and radiologists need effective tools like our program to quickly identify those COVID-19 patients whose condition is most likely to deteriorate quickly so that health care providers can monitor them more closely and intervene earlier," says study co-lead investigator Farah Shamout, Ph.D., an assistant professor in computer engineering at New York University's campus in Abu Dhabi.

"We believe that our COVID-19 classification test represents the largest application of artificial intelligence in radiology to address some of the most urgent needs of patients and caregivers during the pandemic," said Yiqiu "Artie" Shen, MS, a doctoral student at the NYU Data Science Center.

Study senior investigator Krzysztof Geras, Ph.D., an assistant professor in the Department of Radiology at NYU Langone, says a major advantage to machine-intelligence programs such as theirs is that its accuracy can be tracked, updated and improved with more data. He says the team plans to add more patient information as it becomes available. He also says the team is evaluating what additional clinical test results could be used to improve their test model.

Geras says he hopes, as part of further research, to soon deploy the NYU COVID-19 classification test to emergency physicians and radiologists. In the interim, he is working with physicians to draft clinical guidelines for its use.

For more information: nyulangone.org


Related Content

News | Information Technology

June 26, 2026 — Radin Health recently announced the successful deployment of its cloud-native platform at four ...

Time June 26, 2026
arrow
News | FDA

June 25, 2026 — Aidoc recently announced that the U.S. Food and Drug Administration (FDA) granted Breakthrough Device ...

Time June 25, 2026
arrow
News | Mammography

June 23, 2026 — Using artificial intelligence (AI), researchers found that image-based risk scores for breast cancer ...

Time June 24, 2026
arrow
News | Pediatric Imaging

June 16, 2026 — Crescom has officially launched a global clinical Proof of Concept (PoC) of its pediatric ...

Time June 24, 2026
arrow
News | Information Technology

June 24, 2026 — HOPPR Presto Agent (Presto) is now commercially available from HOPPR. Presto iis a tool that ntegrates ...

Time June 24, 2026
arrow
Feature | X-Ray | Kyle Hardner

Water-window X-rays allow researchers to visualize biological cells at high contrast without staining agents or other ...

Time June 23, 2026
arrow
News | Digital Pathology

June 17, 2026 — Proscia has introduced the Fifth Generation of its Concentriq1 platform, helping pathologists focus on ...

Time June 22, 2026
arrow
News | Artificial Intelligence

June 15, 2026 — HOPPR recently announced that HOPPR AI Foundry is now available in AWS Marketplace. The availability ...

Time June 19, 2026
arrow
News | Radiology Imaging

June 15, 2026 — Lead Glass Pro, a supplier of radiation shielding products, has expanded its turnkey installation ...

Time June 18, 2026
arrow
News | Digital Pathology

June 15, 2026 — Leica Biosystems is expanding the availability of its Aperio GT Elite digital scanner into the EMEA ...

Time June 15, 2026
arrow
Subscribe Now