Radiology in public focus

Press releases were sent to the medical news media for the following articles appearing in recent issues of RSNA Journals.


Head shot of Louis Lind Plesner MD
Plesner

Radiologists Outperformed AI in Identifying Lung Diseases on Chest X-Ray

In a study of more than 2,000 chest X-rays, radiologists outperformed AI in accurately identifying the presence and absence of three common lung disease, according to a study published in Radiology.

Researchers compared the performance of four commercially available AI tools with a pool of 72 thoracic radiologists in interpreting 2,040 consecutive adult chest X-rays taken over a two-year period at four Danish Hospitals in 2020.

“The AI tools showed moderate to a high sensitivity comparable to radiologists for detecting airspace disease, pneumothorax and pleural effusion on chest X-rays,” said lead researcher Louis L. Plesner, MD, Department of Radiology at Herlev and Gentofte Hospital in Copenhagen, Denmark. “However, they produced more false-positive results (predicting disease when none was present) than the radiologists, and their performance decreased when multiple findings were present and for smaller targets.”

Read the related RSNA News story, “Radiologists Outperformed AI in Identifying Lung Diseases on Chest X-Ray.”


Chad Klochko, MD
Klochko

Vision-based ChatGPT Shows Deficits Interpreting Radiologic Images

Researchers evaluating the performance of ChatGPT-4 Vision found that the model performed well on text-based radiology exam questions but struggled to answer image-related questions accurately. The study’s results were published in Radiology.

Chad Klochko, MD, Henry Ford Health in Detroit, and colleagues used retired questions from the American College of Radiology’s Diagnostic Radiology In-Training Examinations, a series of tests used to benchmark the progress of radiology residents. After excluding duplicates, the researchers used 377 questions across 13 domains, including 195 questions that were text-only and 182 that contained an image.

GPT-4 Vision achieved an overall score of 65.3%. The model correctly answered 81.5% (159) of the 195 text-only queries and 47.8% (87) of the 182 questions with images.

“Our study showed evidence of hallucinatory responses when interpreting image findings,” Dr. Klochko said. “We noted an alarming tendency for the model to provide correct diagnoses based on incorrect image interpretations, which could have significant clinical implications.”

Read the related RSNA News story, “Vision-based ChatGPT Shows Deficits Interpreting Radiologic Images.”


Lori Strachowski, MD
Strachowski

Expert Panel Endorses New US Terminology for Early Pregnancy

For the first time, a multi-medical society panel has developed and endorsed a uniform lexicon for describing the observations seen on US during the first trimester of pregnancy.

The lexicon, based on scientific evidence, societal guidelines and expert consensus, was published today in Radiology and simultaneously in the American Journal of Obstetrics & Gynecology.

“We recognize that specific language in the medical record could be used by third parties to negatively affect the physician-patient relationship,” said senior author Lori M. Strachowski, MD, University of California, San Francisco. “Our goal was to recommend clear, specific, scientifically based and medically appropriate terminology that communicates clearly across disciplines, minimizes bias and harm, and respects patient preferences.”

Read the related RSNA News story, “Expert Panel Endorses New US Terminology for Early Pregnancy.”

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Sensitive Topics Made Simple on RadiologyInfo.org

Help patients reduce worry and empower them to seek health care assistance even if the conversation might be a bit uncomfortable.

Visit RadiologyInfo.org, the public information website produced by RSNA and ACR, and share easy-to-read patient information about Pelvic Pain and Scrotal Mass & Pain.

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Patient Perception of AI

RSNA Media Coverage

In August, we tracked 851 RSNA-related news stories in the media with over 415 million audience impressions.

Coverage included Yahoo! News, ScienceDaily, Medscape, HealthDay, MSN.com, United Press International, Radiology Business, Diagnostic Imaging, Auntminnie.com and Applied Radiology.

Among releases garnering attention were:

Lung Nodules Seen in a High Percentage of Non-Smokers

A new study of more than 10,000 non-smoking adults found that solid lung nodules were present in a considerable portion of study participants.

Routine CT Screening Can Identify Diabetes Risk

Automated multiorgan analysis of CT scans in people who undergo imaging for health screening purposes can identify individuals at risk of Type 2 diabetes.

AI Model Effective in Detecting Prostate Cancer

A deep learning model performs at the level of an abdominal radiologist in the detection of clinically significant prostate cancer on MRI.