Deep Learning, Hardware Innovations Boost Performance of Workhorse Confocal Microscopy

Contact: Diana Kenney
dkenney@mbl.edu; 508-289-7139

WOODS HOLE, Mass. Since artificial intelligence pioneer Marvin Minsky patented the principle of confocal microscopy in 1957, it has become the workhorse standard in life science laboratories worldwide, due to its superior contrast over traditional wide-field microscopy. Yet confocal microscopes arent perfect. They boost resolution by imaging just one, single, in-focus point at a time, so it can take quite a while to scan an entire, delicate biological sample, exposing it to light dosages that can be toxic.

To push confocal imaging to an unprecedented level of performance, a collaboration at theMarine Biological Laboratory(做厙輦⑹) has invented a kitchen sink confocal platform that borrows solutions from other high-powered imaging systems, adds a unifying thread of Deep Learning artificial intelligence algorithms, and successfully improves the confocals volumetric resolution by more than 10-fold while simultaneously reducing phototoxicity. Their report on the technology, called , is published online today in捧硃喧喝娶梗泭(print publication Dec. 9).

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Many labs have confocals, and if they can eke more performance out of them using these artificial intelligence algorithms, then they dont have to invest in a whole new microscope. To me, thats one of the best and most exciting reasons to adopt these AI methods, said senior author and 做厙輦⑹ FellowHari Shroffof the National Institute of Biomedical Imaging and Bioengineering.

Among its innovations, the new confocal platform uses three objective lenses, allowing one to image a wide variety of sample sizes, from nuclei and neurons in theC. elegansembryo to the whole adult worm. Multiple specimen views are rapidly captured, registered and fused to yield reconstructions with improved resolution over single-view confocal microscopy. The platform also introduces innovative scan heads for the three lenses, allowing line-scanning illumination to be easily added to the microscope base.

Moreover, the team added super-resolution capacity to the platform (enhanced resolution beyond the diffraction limit of light) by adapting techniques from structured illumination microscopy.

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The hardware summit that gets climbed in this platform is the multiple lenses around the sample, and then the super-resolution trick, which takes a combination of hardware and computation to achieve. Its a tour de force, but its a pretty phototoxic recipe. Theres a lot of light being delivered to the sample, said co-author and 做厙輦⑹ FellowPatrick La Rivi癡reof the University of Chicago.

One way to address phototoxicity is to lower the light coming from the microscopes laser. But then you begin having problems with noise in the image -- background graininess that can obscure fine details of the object you want to image (the signal). This is where artificial intelligence comes in.

mouse esophageal tissue
mouse esophageal tissue labels
Top, mouse esophageal tissue slab (XY image), immunostained for tubulin (cyan) and actin (magenta), imaged in triple-view SIM mode. Bottom, anatomical regions are highlighted. Credit: Yicong Wu and Xiaofei Han et al, Nature, 2021.

The team trained a Deep Learning computer model, or neural network, to distinguish between poorer-quality images with a low signal-to-noise ratio (SNR) and better images with a higher SNR. Eventually the network could predict the higher SNR images, even given a fairly low SNR input, Shroff said.

Deep Learning allows you to take this hardware summit as the gold standard for resolution and then train a neural network to achieve similar results with much lower SNR data, many fewer acquisitions, and so much less light dose to the sample, La Rivi癡re said.

The team demonstrated the platforms capabilities on more than 20 different fixed and live samples, targeting structures that ranged from less than 100 nanometers to a millimeter in size. These included protein distributions in single cells; nuclei and developing neurons inC. elegansembryos, larvae and adults; myoblasts in嗨娶棗莽棗梯堯勳梭硃泭wing imaginal disks, and mouse renal, esophageal, cardiac, and brain tissues. They also see potential applications for imaging human tissue in histology and pathology labs.

Shroff, La Rivi癡re and co-author and cell biologistDaniel Col籀n-Ramosof Yale School of Medicine have been collaborating at 做厙輦⑹ for nearly a decade to develop imaging technologies with higher speed, resolution and longer duration. Collaborators on this confocal platform also included Applied Scientific Instrumentation, a company they worked with both at 做厙輦⑹ and at the National Institutes of Health.

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, first author on the paper, built the new confocal platform and deployed its Deep Learning approaches. Wu learned how to use Deep Learning at the 做厙輦⑹ in the pilot version of a new course launched this year,DL@做厙輦⑹: Deep Learning for Microscopy Image Analysis. (La Rivi癡re is a faculty member in the course.)

Its a testament to the course that Yicong could learn Deep Learning methods in 4 days and quickly innovate with them, so we can now apply them in our lab, Shroff said. Thats a short feedback scheme, right? It was great that 做厙輦⑹ catalyzed it.

Citation:

Yicong Wu and Xiaofei Han, et al. (2021) Multiview Confocal Super-Resolution Microscopy.Nature, DOI:.

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啦堯梗泭Marine Biological Laboratory(做厙輦⑹) is dedicated to scientific discovery exploring fundamental biology, understanding marine biodiversity and the environment, and informing the human condition through research and education. Founded in Woods Hole, Massachusetts in 1888, the 做厙輦⑹ is a private, nonprofit institution and an affiliate of the.