
Your AI radiologist will not be with you soon
Nine years ago, one of the world's leading artificial intelligence scientists singled out an endangered occupational species.
"People should stop training radiologists now," Geoffrey Hinton said, adding that it was "just completely obvious" that within five years AI would outperform humans in that field.
Today, radiologists -- the physician specialists in medical imaging who look inside the body to diagnose and treat disease -- are still in high demand. A recent study from the
American College of Radiology
projected a steadily growing workforce through 2055.
Hinton, who was awarded a Nobel Prize in physics last year for pioneering
research in AI
, was broadly correct that the technology would have a significant impact -- just not as a job killer.
That's true for radiologists at the
Mayo Clinic
, one of the nation's premier medical systems, whose main campus is in Rochester, Minnesota. There, in recent years, they have begun using AI to sharpen images, automate routine tasks, identify medical abnormalities and predict disease. AI can also serve as "a second set of eyes."
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"But would it replace radiologists? We didn't think so," said Dr. Matthew Callstrom, the Mayo Clinic's chair of radiology, recalling the 2016 prediction. "We knew how hard it is and all that is involved."
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Computer scientists, labour experts and policymakers have long debated how AI will ultimately play out in the workforce. Will it be a clever helper, enhancing human performance, or a robotic surrogate, displacing millions of workers?
The debate has intensified as the leading-edge technology behind chatbots appears to be improving faster than anticipated. Leaders at OpenAI, Anthropic and other companies in Silicon Valley now predict that AI will eclipse humans in most cognitive tasks within a few years. But many researchers foresee a more gradual transformation in line with seismic inventions of the past, like electricity or the internet.
The predicted extinction of radiologists provides a telling case study. So far, AI is proving to be a powerful medical tool to increase efficiency and magnify human abilities, rather than take anyone's job.
When it comes to developing and deploying
AI in medicine
, radiology has been a prime target. Of the more than 1,000 AI applications approved by the
Food and Drug Administration
for use in medicine, about three-fourths are in radiology. AI typically excels at identifying and measuring a specific abnormality, such as a lung lesion or a breast lump.
"There's been amazing progress, but these AI tools for the most part look for one thing," said Dr. Charles E. Kahn Jr., a professor of radiology at the University of Pennsylvania's Perelman School of Medicine and editor of the journal Radiology: Artificial Intelligence.
Radiologists do far more than study images. They advise other doctors and surgeons, talk to patients, write reports and analyse medical records. After identifying a suspect cluster of tissue in an organ, they interpret what it might mean for an individual patient with a particular medical history, tapping years of experience.
Predictions that AI will steal jobs often "underestimate the complexity of the work that people actually do -- just as radiologists do a lot more than reading scans," said David Autor, a labour economist at the Massachusetts Institute of Technology.
At the Mayo Clinic, AI tools have been researched, developed and tailored to fit the work routines of busy doctors. The staff has grown 55% since Hinton's forecast of doom, to more than 400 radiologists.
In 2016, spurred by the warning and advances in AI-fuelled image recognition, the leaders of the radiology department assembled a group to assess the technology's potential impact.
"We thought the first thing we should do is use this technology to make us better," Callstrom recalled. "That was our first goal."
They decided to invest.
Today, the radiology department has an AI team of 40 people including AI scientists, radiology researchers, data analysts and software engineers. They have developed a series of AI tools, from tissue analyzers to disease predictors.
That team works with specialists like Dr. Theodora
Potretzke
, who focuses on the kidneys, bladder and reproductive organs. She describes the radiologist's role as "a doctor for other doctors," clearly communicating the imaging results, assisting and advising.
Potretzke has collaborated on an AI tool that measures the volume of kidneys. Kidney growth, when combined with cysts, can predict decline in renal function before it shows up in blood tests. In the past, she measured kidney volume largely by hand, with the equivalent of a ruler on the screen and guesswork. Results varied, and the chore was a time-consuming.
Potretzke served as a consultant, end user and tester while working with the department's AI team. She helped design the software program, which has colour coding for different tissues, and checked the measurements.
Today, she brings up an image on her computer screen and clicks an icon, and the kidney volume measurement appears instantly. It saves her 15 to 30 minutes each time she examines a kidney image, and it is consistently accurate.
"It's a good example of something I'm very comfortable handing off to AI for efficiency and accuracy," Potretzke said. "It can augment, assist and quantify, but I am not in a place where I give up interpretive conclusions to the technology."
Down the hall, Dr. Francis Baffour, a staff radiologist, explained the varied ways that AI had been applied to the field, often in the background. The makers of MRI and CT scanners use AI algorithms to speed up taking images and to clean them up, he said.
AI can also automatically identify images showing the highest probability of an abnormal growth, essentially telling the radiologist, "Look here first." Another program scans images for blood clots in the heart or lungs, even when the medical focus may be elsewhere.
"AI is everywhere in our workflow now," Baffour said.
Overall, the Mayo Clinic is using more than 250 AI models, both developed internally and licensed from suppliers. The radiology and cardiology departments are the largest consumers.
In some cases, the new technology opens a door to insights that are beyond human ability. One AI model analyzes data from electrocardiograms to predict patients more likely to develop atrial fibrillation, a heart-rhythm abnormality.
A research project in radiology employs an AI algorithm to discern subtle changes in shape and texture of the pancreas to detect cancer up to two years before conventional diagnoses. The Mayo Clinic team is working with other medical institutions to further test the algorithm on more data.
"The math can see what the human eye cannot," said Dr. John Halamka, president of the
Mayo Clinic Platform
, who oversees the health system's digital initiatives.
Halamka, an AI optimist, believes the technology will transform medicine.
"Five years from now, it will be malpractice not to use AI," he said. "But it will be humans and AI working together."
Hinton agrees. In retrospect, he believes he spoke too broadly in 2016, he said in an email. He didn't make clear that he was speaking purely about image analysis, and was wrong on timing but not the direction, he added.
In a few years, most medical image interpretation will be done by "a combination of AI and a radiologist, and it will make radiologists a whole lot more efficient in addition to improving accuracy," Hinton said.

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- Time of India
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While early discussions are still underway, any licensing deal would likely come with its own restrictions. Labels want an assurance that the AI-generated songs will not cause impersonation without consent and distribute content that harms their brand's value into the market. Despite concerns, labels see opportunity in new revenue streams, from marketing jingles and soundtrack content to virtual artists. Live Events The silver lining: This lawsuit-driven experiment isn't the first time the music industry has experimented with Other virtual performers have also gained significant traction in this manner. For instance, in 2023, Warner Music signed the CGI influencer Noonoouri, whose music, created with synthetic vocals and AI-generated lyrics, blurs the boundary between synthetic and human-generated music. This deal symbolized that AI wasn't just remixing soundtracks anymore; it was now producing the next generation of pop stars. Startups like Suno and Udio, with venture capital support and next-gen generative models as their armor, are creating new boundaries of what AI can do. For example, Suno can create full-fledged songs with vocals, lyrics, and instruments, and all it requires is a single text prompt. Udio, on the other hand, boasts its studio-level audio quality. The Stake: The talks symbolize a pattern, familiar in the entertainment industry, in the way it did for accepting TikTok; every digital disruption was initially met with resistance before being co-opted. This time, however, the stakes are higher, not just in dollars, for this could potentially undermine artist earnings and intellectual property rights if the AI were to flood the market with convincing fakes and unauthorized pastiches. Whether these licensing talks culminate in a deal or dissolve amid legal tension, one thing is clear: AI is no longer an invader but a part of the industry's future. Warner Music Group , and Sony Music Entertainment, amidst the ongoing lawsuit, are in the early-stage discussions to license portions of their vast music catalogs to 'Suno' and 'Udio.' The same firms they are currently AI music startups were long viewed as threats in the industry with outstanding billion-dollar lawsuits stacked against them; now, however, they are viewed as potential partners in the rapidly evolving music industry. With their ability to generate studio-quality songs from text prompts and dramatically lessened monetary April 2024, UMG, Sony Music Entertainment, and Warner Music Group filed a suit against Suno and Udio , accusing them of using copyrighted material to develop their model without consent. Although, beneath the tensions remains an undeniable fact: AI is here to stay, and the music industry is adapting. 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'However, it is imperative that all uses and implementations of machine learning and AI technologies respect the rights of all those involved in the creation, marketing, promotion, and distribution of music.'While early discussions are still underway, any licensing deal would likely come with its own restrictions. Labels want an assurance that the AI-generated songs will not cause impersonation without consent and distribute content that harms their brand's value into the market. Despite concerns, labels see opportunity in new revenue streams, from marketing jingles and soundtrack content to virtual lawsuit-driven experiment isn't the first time the music industry has experimented with AI-generated music or artists. K-pop label SM Entertainment was notably known for fusing traditional K-pop music with virtual personas since 2020, with the debut of their 4th generation girl group, 'Aespa.' Each of the girl group's members has a hyper-realistic AI avatar counterpart, curated to interact with the fans, participate in videos, and also live in a fictional world called 'KWANGYA.' This fusion reshaped how K-pop marketing worked, for these avatars were not just novelty tools but rather integrated parts of the groups' concepts and marketing strategies, signaling a future where artists can have both a traditional presence and a digital one, the label's creative virtual performers have also gained significant traction in this manner. For instance, in 2023, Warner Music signed the CGI influencer Noonoouri, whose music, created with synthetic vocals and AI-generated lyrics, blurs the boundary between synthetic and human-generated music. This deal symbolized that AI wasn't just remixing soundtracks anymore; it was now producing the next generation of pop like Suno and Udio, with venture capital support and next-gen generative models as their armor, are creating new boundaries of what AI can do. For example, Suno can create full-fledged songs with vocals, lyrics, and instruments, and all it requires is a single text prompt. Udio, on the other hand, boasts its studio-level audio talks symbolize a pattern, familiar in the entertainment industry, in the way it did for accepting TikTok; every digital disruption was initially met with resistance before being co-opted. This time, however, the stakes are higher, not just in dollars, for this could potentially undermine artist earnings and intellectual property rights if the AI were to flood the market with convincing fakes and unauthorized these licensing talks culminate in a deal or dissolve amid legal tension, one thing is clear: AI is no longer an invader but a part of the industry's future. Disclaimer Statement: This content is authored by a 3rd party. The views expressed here are that of the respective authors/ entities and do not represent the views of Economic Times (ET). ET does not guarantee, vouch for or endorse any of its contents nor is responsible for them in any manner whatsoever. Please take all steps necessary to ascertain that any information and content provided is correct, updated, and verified. ET hereby disclaims any and all warranties, express or implied, relating to the report and any content therein.


Time of India
2 hours ago
- Time of India
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India Today
2 hours ago
- India Today
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