News Release

Non-invasive eye test for multiple diseases to advance under $4.8 million NIH award

Researchers at the Indiana University School of Optometry and Luddy School of Informatics, Computing and Engineering focus on early detection of conditions such as Alzheimer’s disease, diabetes and heart disease

Grant and Award Announcement

Indiana University

Stephen Burns

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Stephen Burns stands with a high-precision ophthalmoscope capable of observing microscopic details in the back of the eye without distortion based on technology advanced at IU.

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Credit: Photo by Chris Meyer, Indiana University

Indiana University scientists with expertise in optometry and artificial intelligence are among the first three groups of researchers to receive support from a new program from the National Institutes of Health supporting the emerging field of “oculomics,” which uses the eye as a lens on diseases that affect the whole body.

Stephen A. Burns, a professor at the IU School of Optometry, has been named a principal investigator on a three-year, $4.8 million award from the NIH Venture Program Oculomics Initiative. Among the co-investigators on the award is Eleftherios Garyfallidis, an associate professor of intelligent systems engineering at the IU Luddy School of Informatics, Computing and Engineering.

The project will support the development of next-generation ophthalmoscopes — instruments to observe the interior of the eye — that can spot the early warning signs of conditions such as diabetes, heart disease, kidney disease, sickle cell anemia and Alzheimer’s disease with a simple eye scan.

“This research is about using the eye as a window on health,” Burns said, noting that the retina is the only directly observable part of the central nervous system. “We want to give health care providers the clearest view they can hope to get into the body, non-invasively.”

Additional researchers on the project include co-principal investigator Amani Fawzi of Northwestern University and co-investigators Alfredo Dubra of Stanford University and Toco Y. P. Chui of the New York Eye and Ear Infirmary of Mount Sinai.

Burns’ research on using the eye to detect disease goes back to the early 2000s, when he and colleagues at the IU School of Optometry pioneered applying adaptive optics scanning laser systems to the observation of the human eye. The field was originally developed by astronomers to eliminate the “twinkle” of stars — or distortions cause by the Earth’s atmosphere — in telescopes. The optics of the eye produce similar light distortions.

Using the technology developed at the school, the ophthalmoscope in Burns’ lab can observe the back of the human eye at the resolution of two microns — a scale small enough to show the real-time movement of red blood cells inside the eye’s arteries and veins. (A single red blood cell is approximately eight microns in width.) Burns has used the technology to identify biomarkers for diabetes and hypertension in the walls of the eye’s blood vessels.

Project researchers from Northwestern and Mount Sinai have used similar technology to observe the cells both outside and inside these blood vessels, including spotting the crescent-shaped red blood cells found in sickle cell anemia. The Stanford researchers have used adaptive optics to improve observation of the eye’s photoreceptors.

With support from the NIH, the research teams will integrate their individual projects into a singular device, as well as apply state-of-the-art machine learning and AI. Additionally, they will explore the technology’s potential to spot the early signs of heart disease and Alzheimer’s disease.

“There’s growing evidence of a strong retinal vascular component to Alzheimer’s disease,” Burns said. “You can currently see the signs with PET scans, which require large, multimillion-dollar instruments. If we can see the same signs with an eye scan, it’s a lot less invasive and a lot less costly.”

Garyfallidis’ role is developing and applying the machine learning and AI methods for interpreting the devices’ results. This could reduce diagnosis time from days to minutes by eliminating the need for a human to analyze the imagery.

In the first year of the project, the labs will align their instruments to the same level of sensitivity, said Burns, whose lab will integrate its technology with Northwestern’s instrument. Stanford will focus on similar technological integrations with the instrument at New York Eye and Ear.

Next, the work will shift toward data validation to confirm that the new instruments’ readings align with earlier versions of the technology. The researcher will also compare the new AI system’s interpretation of scans against the conclusions of human analysts to confirm accuracy.

The final year of the project will involve testing the device on clinical volunteers. Much of IU’s data will come from individuals recruited through the Atwater Eye Care Center.

“Up to 80 percent of the population over the age of 60 has at least one health issue that may be detectable in the eye with our technology,” Burns said.

He said the NIH selected the project due to potential for high impact. Venture Fund initiatives emphasize “brief, modest investments that can be implemented quickly, with a strong potential to accelerate science.”

“Our challenge now is selectivity and specificity,” Burns said. “We need to show that we can detect the differences between conditions, to quickly and accurately interpret the signs of the various diseases we’re focusing on.”

The goal is to advance the technology until it is ready to make the leap from the lab to “wherever you get your annual eye exam,” he said.


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