KECSKEMÉT, Hungary — Inside a dark
room at Bács-Kiskun County Hospital outside Budapest, Dr Éva Ambrózay, a
radiologist with more than two decades of experience, peered at a computer
monitor showing a patient’s mammogram.
اضافة اعلان
Two radiologists had previously said the X-ray
did not show any signs that the patient had breast cancer. But Ambrózay was
looking closely at several areas of the scan circled in red, which artificial
intelligence software had flagged as potentially cancerous.
“This is something,” she said. She soon
ordered the woman to be called back for a biopsy, which is taking place within
the next week.
Advancements in AI are beginning to deliver
breakthroughs in breast cancer screening by detecting the signs that doctors
miss. So far, the technology is showing an impressive ability to spot cancer at
least as well as human radiologists, according to early results and
radiologists, in what is one of the most tangible signs to date of how AI can
improve public health.
Hungary, which has a robust breast cancer
screening program, is one of the largest testing grounds for the technology on
real patients. At five hospitals and clinics that perform more than 35,000
screenings a year, AI systems were rolled out starting in 2021 and now help to
check for signs of cancer that a radiologist may have overlooked. Clinics and
hospitals in the US, Britain and the European Union are also beginning to test
or provide data to help develop the systems.
AI usage is growing as the technology has
become the center of a Silicon Valley boom, with the release of chatbots such
as ChatGPT showing how AI has a remarkable ability to communicate in humanlike
prose — sometimes with worrying results. Built off a similar form used by
chatbots that is modeled on the human brain, the breast cancer screening
technology shows other ways that AI is seeping into everyday life.
Widespread use of the cancer detection
technology still faces many hurdles, doctors and AI developers said. Additional
clinical trials are needed before the systems can be more widely adopted as an
automated second or third reader of breast cancer screens, beyond the limited
number of places now using the technology. The tool must also show it can
produce accurate results on women of all ages, ethnicities, and body types. And
the technology must prove it can recognize more complex forms of breast cancer
and cut down on false-positives that are not cancerous, radiologists said.
“I’m dreaming about the day when women are going to a breast cancer center and they are asking, ‘Do you have AI or not?’”
The AI tools have also prompted a debate
about whether they will replace human radiologists, with makers of the
technology facing regulatory scrutiny and resistance from some doctors and
health institutions. For now, those fears appear overblown, with many experts
saying the technology will be effective and trusted by patients only if it is
used in partnership with trained doctors.
And ultimately, AI could be lifesaving,
said Dr László Tabár, a leading mammography educator in Europe who said he was
won over by the technology after reviewing its performance in breast cancer
screening from several vendors.
“I’m dreaming about the day when women are
going to a breast cancer center and they are asking, ‘Do you have AI or not?’”
he said.
Hundreds of images a day
In 2016, Geoff Hinton, one of the world’s
leading AI researchers, argued the technology would eclipse the skills of a
radiologist within five years.
“I think that if you work as a radiologist,
you are like Wile E. Coyote in the cartoon,” he told the New Yorker in 2017.
“You’re already over the edge of the cliff, but you haven’t yet looked down.
There’s no ground underneath.”
Hinton and two of his students at the
University of Toronto built an image recognition system that could accurately
identify common objects such as flowers, dogs, and cars. The technology at the
heart of their system — called a neural network — is modeled on how the human
brain processes information from different sources. It is what is used to
identify people and animals in images posted to apps such as Google Photos, and
allows Siri and Alexa to recognize the words people speak. Neural networks also
drove the new wave of chatbots such as ChatGPT.
Last year, after a test on more than 275,000 breast cancer cases, Kheiron reported that its AI software matched the performance of human radiologists when acting as the second reader of mammography scans.
Many AI evangelists believed such
technology could easily be applied to detect illness and disease, such as
breast cancer in a mammogram. In 2020, there were 2.3 million breast cancer diagnoses
and 685,000 deaths from the disease, according to the World Health
Organization.
But not everyone felt replacing
radiologists would be as easy as Hinton predicted. Peter Kecskemethy, a
computer scientist who co-founded Kheiron Medical Technologies, a software
company that develops AI tools to assist radiologists detect early signs of
cancer, knew the reality would be more complicated.
Kecskemethy grew up in Hungary spending time
at one of Budapest’s largest hospitals. His mother was a radiologist, which
gave him a firsthand look at the difficulties of finding a small malignancy
within an image. Radiologists often spend hours every day in a dark room
looking at hundreds of images and making life-altering decisions for patients.
“It’s so easy to miss tiny lesions,” said
Dr Edith Karpati, Kecskemethy’s mother, who is now a medical product director
at Kheiron. “It’s not possible to stay focused.”
How the system worksKecskemethy, along with Kheiron’s
co-founder, Tobias Rijken, an expert in machine learning, said AI should assist
doctors. To train their AI systems, they collected more than 5 million
historical mammograms of patients whose diagnoses were already known, provided
by clinics in Hungary and Argentina, as well as academic institutions, such as
Emory University. The company, which is in London, also pays 12 radiologists to
label images using special software that teaches the AI to spot a cancerous
growth by its shape, density, location and other factors.
From the millions of cases the system is
fed, the technology creates a mathematical representation of normal mammograms
and those with cancers. With the ability to look at each image in a more
granular way than the human eye, it then compares that baseline to find
abnormalities in each mammogram.
Last year, after a test on more than
275,000 breast cancer cases, Kheiron reported that its AI software matched the
performance of human radiologists when acting as the second reader of
mammography scans. It also cut down on radiologists’ workloads by at least 30
percent because it reduced the number of X-rays they needed to read. In other
results from a Hungarian clinic last year, the technology increased the cancer
detection rate by 13 percent because more malignancies were identified.
“We are not irrelevant,” she said, “but there are tasks that are better done with computers.”
The National Cancer Institute has estimated
that about 20 percent of breast cancers are missed during screening mammograms.
Constance Lehman, a professor of radiology
at Harvard Medical School and chief of breast imaging and radiology at
Massachusetts General Hospital, urged doctors to keep an open mind.
“We are not irrelevant,” she said, “but
there are tasks that are better done with computers.”
At Bács-Kiskun County Hospital outside
Budapest, Ambrózay said she had initially been skeptical of the technology —
but was quickly won over. She pulled up the X-ray of a 58-year-old woman with a
tiny tumor spotted by the AI that Ambrózay had a hard time seeing.
The AI saw something, she said, “that seemed
to appear out of nowhere”.
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