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For Some Hard-To-Find Tumors, Doctors See Promise In Artificial Intelligence

A team at Johns Hopkins Medicine in Baltimore is developing a tumor-detecting algorithm for detecting pancreatic cancer. But first, they have to train computers to distinguish between organs.

Scientists are training computers to read CT scans in the hopes that they can catch pancreatic cancer early.

(Image credit: Courtesy of The Felix Project)

News : NPR https://ift.tt/2kAwtxB May 30, 2018 at 11:33PM

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