March 19, 2024
Does AI Help or Hurt Human Radiologists Performance? It Depends on the Doctor
Newswise — One of the most touted promises of medical Artificial intelligence tools is their ability to augment human clinicians’ performance by helping them interpret images such as X-rays and CT scans with greater precision to make more accurate diagnoses. But the benefits of using AI tools on image interpretation appear to vary from clinician to clinician, according to new research led by investigators at Harvard Medical School, working with colleagues at MIT and Stanford. The study findings suggest that individual clinician differences shape the interaction between human and machine in critical ways that researchers do not yet fully understand. The analysis, published March 19 in Nature Medicine , is based on data from an earlier working paper by the same research group released by the National Bureau of Economic Research. In some instances, the research showed, use of AI can interfere with a radiologist’s performance and interfere with the accuracy of their interpretation. “We find that different radiologists, indeed, react differently to AI assistance — some are helped while others are hurt by it,” said co-senior author Pranav Rajpurkar , assistant professor of biomedical informatics in the Blavatnik Institute at HMS. “What this means is that we should not look at radiologists as a uniform population and consider just the ‘average’ effect of AI on their performance,” he said. “To maximize benefits and minimize harm, we need to personalize assistive AI systems.” The findings underscore the importance of carefully calibrated implementation of AI into clinical practice, but they should in no way discourage the adoption of AI in radiologists’ offices and clinics, the researchers said. Instead, the results should signal the need to better understand how humans and AI interact and to design carefully calibrated approaches that boost human performance rather than hurt it. “Clinicians have different levels of expertise, experience, and decision-making styles, so ensuring that AI reflects this diversity is critical for targeted implementation,” said Feiyang “Kathy” Yu, who conducted the work while at the Rajpurkar lab with co-first author on the paper with Alex Moehring at the MIT Sloan School of Management. “Individual factors and variation would be key in ensuring that AI advances rather than interferes with performance and, ultimately, with diagnosis,” Yu said. AI tools affected different radiologists differently While previous research has shown that AI assistants can, indeed, boost radiologists’ diagnostic performance,these studies have looked at radiologists as a whole without accounting for variability from radiologist to radiologist. In contrast, the new study looks at how individual clinician factors — area of specialty, years of practice, prior use of AI tools — come into play in human-AI collaboration. The researchers examined how AI tools affected the performance of 140 radiologists on 15 X-ray diagnostic tasks — how reliably the radiologists were able to spot telltale features on an image and make an accurate diagnosis. The analysis involved 324 patient cases with 15 pathologies — abnormal conditions captured on X-rays of the chest.To determine how AI affected doctors’ ability to spot and correctly identify problems, the researchers used advanced computational methods that captured the magnitude of change in performance when using AI and when not using it. The effect of AI assistance was inconsistent and varied across radiologists, with the performance of some radiologists improving with AI and worsening in others. AI tools influenced human performance unpredictably AI’s effects on human radiologists’ performance varied in often surprising ways. For instance, contrary to what the researchers expected, factors such how many years of experience a radiologist had, whether they specialized in thoracic, or chest, radiology, and whether they’d used AI readers before, did not reliably predict how an AI tool would affect a doctor’s performance. Another finding that challenged the prevailing wisdom: Clinicians who had low performance at baseline did not benefit consistently from AI assistance. Some benefited more, some less, and some none at all. Overall, however, lower-performing radiologists at baseline had lower performance with or without AI. The same was true among radiologists who performed better at baseline. They performed consistently well, overall, with or without AI. Then came a not-so-surprising finding: More accurate AI tools boosted radiologists’ performance, while poorly performing AI tools diminished the diagnostic accuracy of human clinicians. While the analysis was not done in a way that allowed researchers to determine why this happened, the finding points to the importance of testing and validating AI tool performance before clinical deployment, the researchers said. Such pre-testing could ensure that inferior AI doesn’t interfere with human clinicians’ performance and, therefore, patient care. What do these findings mean for the future of AI in the clinic? The researchers cautioned that their findings do not provide an explanation for why and how AI tools seem to affect performance across human clinicians differently, but note that understanding why would be critical to ensuring that AI radiology tools augment human performance rather than hurt it. To that end, the team noted, AI developers should work with physicians who use their tools to understand and define the precise factors that come into play in the human-AI interaction. And, the researchers added, the radiologist-AI interaction should be tested in experimental settings that mimic real-world scenarios and reflect the actual patient population for which the tools are designed. Apart from improving the accuracy of the AI tools, it’s also important to train radiologists to detect inaccurate AI predictions and to question an AI tool’s diagnostic call, the research team said. To achieve that, AI developers should ensure that they design AI models that can “explain” their decisions. “Our research reveals the nuanced and complex nature of machine-human interaction,” said study co-senior author Nikhil Agarwal , professor of economics at MIT. “It highlights the need to understand the multitude of factors involved in this interplay and how they influence the ultimate diagnosis and care of patients.” Authorship, funding, disclosures Additional authors included Oishi Banerjee at HMS and Tobias Salz at MIT, who was co-senior author on the paper. The work was funded in part by the Alfred P. Sloan Foundation (2022-17182), the J-PAL Health Care Delivery Initiative, and MIT School of Humanities, Arts, and Social Sciences.
Latest News
Top news around the world
Academy Awards

‘Oppenheimer’ Reigns at Oscars With Seven Wins, Including Best Picture and Director

Get the latest news about the 2024 Oscars, including nominations, winners, predictions and red carpet fashion at 96th Academy Awards

Around the World

Celebrity News

> Latest News in Media

Watch It
JoJo Siwa Reveals She Spent $50k on This Cosmetic Procedure
April 08, 2024
tilULujKDIA
Gypsy Rose Blanchard Files for Divorce from Ryan Anderson
April 08, 2024
kjqE93AL4AM
Bachelor Nation’s Trista Sutter Shares Update on Husband’s Battle With Lyme Disease | E! News
April 08, 2024
mNBxwEpFN4Y
Alan Tudyk Does All His Disney Voices
April 08, 2024
fkqBY4E9QPs
Bob Iger responds to critics who call Disney "too woke"
April 06, 2024
loZMrwBYVbI
Kirsten Dunst recites a classic cheer from 'Bring it On'
April 06, 2024
VHAca3r0t-k
Dr. Paul Nassif Offers Up Plastic Surgery Warning for Gypsy Rose Blanchard | TMZ
April 09, 2024
cXIyPm8mKGY
Reba McEntire Laughs at Joy Behar's Suggestion 'Jolene' is Anti-Feminist | TMZ TV
April 08, 2024
11Cyp1sH14I
NeNe Leakes Says She's Okay with Cheating If It's Done Respectfully | TMZ TV
April 08, 2024
IsjAeJFgwhk
Ben Affleck and Jennifer Lopez’s wedding was 20 years in the making
April 08, 2024
BU8hh19xtzA
Bianca Censori wears completely sheer tube dress and knee-high stockings for Kanye West outing
April 08, 2024
IkbdMacAuhU
Kelsea Ballerini tells trolls to ‘shut up’ about pantsless CMT Music Awards 2024 performance #shorts
April 08, 2024
G4OSTYyXcOc
TV Schedule
Late Night Show
Watch the latest shows of U.S. top comedians

Sports

Latest sport results, news, videos, interviews and comments
Latest Events
08
Apr
ITALY: Serie A
Udinese - Inter Milan
07
Apr
ENGLAND: Premier League
Manchester United - Liverpool
07
Apr
ENGLAND: Premier League
Tottenham Hotspur - Nottingham Forest
07
Apr
ITALY: Serie A
Juventus - Fiorentina
07
Apr
ENGLAND: Premier League
Sheffield United - Chelsea
07
Apr
ITALY: Serie A
Monza - Napoli
07
Apr
GERMANY: Bundesliga
Wolfsburg - Borussia Monchengladbach
07
Apr
ITALY: Serie A
Verona - Genoa
07
Apr
ITALY: Serie A
Cagliari - Atalanta
07
Apr
GERMANY: Bundesliga
Hoffenheim - Augsburg
07
Apr
ITALY: Serie A
Frosinone - Bologna
06
Apr
GERMANY: Bundesliga
Heidenheim - Bayern Munich
06
Apr
GERMANY: Bundesliga
Borussia Dortmund - Stuttgart
06
Apr
ENGLAND: Premier League
Brighton - Arsenal
06
Apr
ITALY: Serie A
Roma - Lazio
06
Apr
ENGLAND: Premier League
Crystal Palace - Manchester City
06
Apr
ITALY: Serie A
AC Milan - Lecce
04
Apr
ENGLAND: Premier League
Chelsea - Manchester United
04
Apr
ENGLAND: Premier League
Liverpool - Sheffield United
03
Apr
ENGLAND: Premier League
Arsenal - Luton
03
Apr
ENGLAND: Premier League
Manchester City - Aston Villa
02
Apr
ENGLAND: Premier League
West Ham United - Tottenham Hotspur
01
Apr
SPAIN: La Liga
Villarreal - Atletico Madrid
01
Apr
ITALY: Serie A
Lecce - Roma
01
Apr
ITALY: Serie A
Inter Milan - Empoli
31
Mar
ENGLAND: Premier League
Manchester City - Arsenal
31
Mar
SPAIN: La Liga
Real Madrid - Athletic Bilbao
31
Mar
ENGLAND: Premier League
Liverpool - Brighton
30
Mar
SPAIN: La Liga
Barcelona - Las Palmas
30
Mar
ENGLAND: Premier League
Brentford - Manchester United
30
Mar
ITALY: Serie A
Fiorentina - AC Milan
Find us on Instagram
at @feedimo to stay up to date with the latest.
Featured Video You Might Like
zWJ3MxW_HWA L1eLanNeZKg i1XRgbyUtOo -g9Qziqbif8 0vmRhiLHE2U JFCZUoa6MYE UfN5PCF5EUo 2PV55f3-UAg W3y9zuI_F64 -7qCxIccihU pQ9gcOoH9R8 g5MRDEXRk4k
Copyright © 2020 Feedimo. All Rights Reserved.