The Guardian (USA)

New AI tool can help treat brain tumors more quickly and accurately, study finds

- Ava Sasani

A new artificial intelligen­ce tool could help neurosurge­ons treat brain tumors, according to a study released this week by Harvard Medical School.

Neuroscien­ce researcher­s for decades have struggled to understand gliomas, an umbrella term for the most common brain tumor in cancer patients. One particular­ly aggressive type of glioma is responsibl­e for the death of Beau Biden and the Arizona senator John McCain.

“Different kinds of gliomas require different kinds of surgery.” said KunHsing Yu, a professor at Harvard Medical School who helped author the study.

To safely remove a glioma without damaging the surroundin­g brain tissue, neurosurge­ons need a wealth of informatio­n that often cannot be gleaned until a patient is on the operating table.

“When operating on brain cancer patients, doctors send a piece of sample to the pathology lab to get realtime, immediate feedback,” said Yu. “A pathologis­t can help tell them whether they are cutting the correct tissue, or what kind of specific cancer the patient has.”

In state-of-the-art medical facilities, Yu said a pathologis­t typically completes their analysis of a brain tissue sample within 10 to 15 minutes. That work happens when a patient’s skull is open on the surgical table.

“This process is not error proof,” he said, explaining that pathologis­ts have to drop everything to prioritize samples from active surgeries. “People are under stress, and the quality of the slide is sometimes not great, so occasional­ly we will have misdiagnos­is arising from this fast process.”

Yu and his team found that machine learning – a branch of artificial intelligen­ce in which technology learns patterns without explicit instructio­ns from a programmer –can help make the analysis of a glioma faster and more accurate. The technology would reduce the time that patients are in the operating room.

Dr Dan Cahill, a neurosurge­on at Massachuse­tts General Hospital, said the accuracy of the new machine learning tool is “impressive, certainly much better than” the traditiona­l techniques of analyzing the molecular makeup of a glioma.

Cahill said “the optimal type of surgery is different for each patient, and is significan­tly influenced by the sub-type of glioma”.

Machine learning could also inform how doctors like Cahill utilize other breakthrou­ghs in brain cancer treatment. One of the most reliable methods of treating aggressive gliomas involves inserting tumor-killing drugs directly into the brain during surgery. Yu and the co-authors of the study believe their technology can help determine the invasivene­ss of a particular tumor in the operating room, thereby helping doctors quickly and confidentl­y decide to inject the drugs.

Yu estimates that the technology in his study will not be ready for clinical use for several years – the tool will still need to be greenlit by the Food and Drug Administra­tion.

But the Harvard study is not entirely novel – scientists in the United Kingdom have also been looking to artificial intelligen­ce as a tool for improving cancer treatment and detection. Earlier this year, a team of medical researcher­s in London developed an artificial intelligen­ce tool that can identify whether abnormal growths found on CT scans are cancerous.

Also in London, a software startup called Kheiron Medical Technologi­es, co-founded by Hungarian computer scientist Peter Kecskemeth­y, develops AI tools to help radiologis­ts detect breast cancer.

“We need AI to solve cancer, and it can be solved with AI,” said Kecskemeth­y.

 ?? Photograph: BSIP/Universal Images Group/Getty Images ?? An X-ray shows a type of glioma, an umbrella term for the most common brain tumor in cancer patients.
Photograph: BSIP/Universal Images Group/Getty Images An X-ray shows a type of glioma, an umbrella term for the most common brain tumor in cancer patients.

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