7-color fluorescence imaging with linear unmixing.
Credit: Nature Communications (2024). DOI: 10.1038/s41467-024-49455-y
The brain is
the most complex organ ever created. Its functions are supported by a network
of tens of billions of densely packed neurons, with trillions of connections
exchanging information and performing calculations. Trying to understand the
complexity of the brain can be dizzying. Nevertheless, if we hope to understand
how the brain works, we need to be able to map neurons and study how they are
wired.
Now, publishing in Nature Communications, researchers from Kyushu University have developed a new AI tool, which
they call QDyeFinder, that can automatically identify and reconstruct individual neurons from images of the mouse brain. The process involves tagging
neurons with a super-multicolor labeling protocol, and then letting the AI
automatically identify the neuron's structure by matching similar color
combinations.
"One of the biggest challenges in neuroscience is
trying to map the brain and its connections. However, because neurons are so
densely packed, it's very difficult and time-consuming to distinguish neurons
with their axons and dendrites—the extensions that send and receive information
from other neurons—from each other," explains Professor Takeshi Imai of
the Graduate School of Medical Sciences, who led the study.
"To put it into perspective axons and dendrites are only about a micrometer thick, that's 100 times thinner than a standard strand of human hair, and the space between them is smaller."
Mouse cortical layer 2/3 pyramidal neurons were
labeled with 7-color Tetbow. A combination of 7 fluorescent proteins (mTagBFP2,
mTurquoise2, mAmetrine1.1, mNeonGreen, Ypet, mRuby3, tdKatushka2) was used to
visualize the dense wiring of neurons. The 7-channel images were then analyzed
by the QDyeFinder program to reveal the wiring patterns of individual neurons.
Credit: Kyushu University/Takeshi Imai
One strategy for identifying neurons is to tag the cell with a fluorescent
protein of a specific color. Researchers could then trace that color and
reconstruct the neuron and its axons. By expanding the range of colors, more
neurons could be traced at once. In 2018, Imai and his team developed Tetbow, a
system that could brightly color neurons with the three primary colors of
light.
"An example I like to use is the map of the Tokyo subway lines. The
system spans 13 lines, 286 stations, and across over 300 km. On the subway map
each line is color-coded, so you can easily identify which stations are
connected," explains Marcus N. Leiwe one of the first authors of the paper
and Assistant Professor at the time. "Tetbow made tracing neurons and
finding their connections much easier."
However, two major issues remained. Neurons still had to be meticulously
traced by hand, and using only three colors was not enough to discern a larger
population of neurons.
The team worked to scale up the number of colors from three to seven, but
the bigger problem then was the limits of human color perception. Look closely
at any TV screen and you will see that the pixels are made up of three colors:
blue, green, and red. Any color we can perceive is a combination of those three
colors, as we have blue, green, and red sensors in our eyes.
"Machines on the other hand don't have such limitations. Therefore, we
worked on developing a tool that could automatically distinguish these vast
color combinations," continues Leiwe. "We also made it so that this
tool will automatically stitch together neurons and axons of the same color and
reconstruct their structure. We called this system QDyeFinder."
QDyeFinder works by first automatically identifying fragments of axons and
dendrites in a given sample. It then identifies the color information of each
fragment. Then, utilizing a machine-learning-algorithm the team developed
called dCrawler, the color information was grouped together, wherein it would
identify axons and dendrites of the same neuron.
"When we compared QDyeFinder's results to data from manually traced
neurons they had about the same accuracy," Leiwe explains. "Even
compared to existing tracing software that makes full use of machine learning,
QDyeFinder was able to identify axons with a much higher accuracy."
The team hopes that their new tool can advance the ongoing quest to map the
connections of the brain. They would also like to see if their new method can
be applied to the labeling and tracking of other complicated cell types such
as cancer cells and
immune cells.
"There may come a day when we can read the connections in the brain and understand what they mean or represent for that person. I doubt it will happen in my lifetime, but our work represents a tangible step forward in understanding perhaps the most complicated and mysterious dimension of our existence," concludes Imai.
Source: Charting super-colorful brain wiring using an AI's super-human eye (medicalxpress.com)
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