Artificial Intelligence Sees More in Microscopy than Humans Do

Deep learning approaches in development by big players in the tech industry can be used by biologists to extract more information from the images they create.

Written byJef Akst
| 8 min read
computer programs that learn from experience image data

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Six years ago, Steve Finkbeiner of the Gladstone Institutes and the University of California, San Francisco, got a call from Google. He and his colleagues had invented a robotic microscopy system to track single cells over time, amassing more data than they knew what to do with. It was exactly the type of dataset that Google was looking for to apply its deep learning approach, a state-of-the-art form of artificial intelligence (AI).

“We generated enough data to be interesting, is basically what they said,” Finkbeiner recalls of the phone conversation. “They were interested in blue-sky ideas—problems that either humans didn’t think would even be possible or things that a computer could do ten times better or faster.”

Deep learning is really dominant at the moment. It’s really changing the field of image analysis.

One application that came to Finkbeiner’s mind was to have a neural network—an ...

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  • Jef (an unusual nickname for Jennifer) got her master’s degree from Indiana University in April 2009 studying the mating behavior of seahorses. After four years of diving off the Gulf Coast of Tampa and performing behavioral experiments at the Tennessee Aquarium in Chattanooga, she left research to pursue a career in science writing. As The Scientist's managing editor, Jef edited features and oversaw the production of the TS Digest and quarterly print magazine. In 2022, her feature on uterus transplantation earned first place in the trade category of the Awards for Excellence in Health Care Journalism. She is a member of the National Association of Science Writers.

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