• Scientists find brain network that makes

    From ScienceDaily@1:317/3 to All on Tue Mar 15 22:30:44 2022
    Scientists find brain network that makes mice mingle
    Collection of coordinated brain regions predicts and directs social
    behavior

    Date:
    March 15, 2022
    Source:
    Duke University
    Summary:
    The difference between a social butterfly and a lone wolf is
    actually at least eight differences, according to new findings
    by a team of brain researchers. By simultaneously spying on the
    electrical activity of several brain regions, researchers can
    both identify how social or solitary an individual mouse is, and,
    by zapping nodes within this social brain network, can prompt mice
    to be even more gregarious.



    FULL STORY ==========================================================================
    The difference between a social butterfly and a lone wolf is actually
    at least eight differences, according to new findings by a team of Duke
    brain researchers.


    ==========================================================================
    By simultaneously spying on the electrical activity of several brain
    regions, the researchers found they could identify how social or solitary
    an individual mouse is. Then, by tweaking nodes within this social brain network, they showed they could prompt mice to be even more gregarious.

    The research may lead to better diagnostic tools to understand how the
    brain changes in people with impaired social communication, such as
    those with autism spectrum disorder.

    The new study appears in online Neuron on March 15.

    Neuroscientists often conduct research by studying one tiny brain region
    at a time. They might select their favorite brain area based on past
    clues about its involvement in a given behavior, like social behavior,
    and study that area in isolation.

    But looking only at one small brain region at a time is a big problem,
    said Dr.

    Kafui Dzirasa, the Howard Hughes Medical Investigator and K. Ranga
    Rama Krishnan Associate Professor in psychiatry and behavioral sciences
    at Duke.

    Much like the brain, a car is not just one thing but rather the product
    of assembled parts working together that varies across builds, he said.



    ==========================================================================
    "A car is not a steering wheel. A car is not tires. A car is not an
    engine. A car is not the speedometer. A car is not the headlights. You
    have to put them all together to get the car," Dzirasa said. "When you put
    them all together, that's when you can figure out how fast an individual
    car is moving. Certainly, the tires could be the same, but a Lamborghini
    does not move the same way a Honda Accord does." To figure out what
    drives mice to socialize, Dzirasa's team first delicately implanted a
    recording device to capture the simultaneous electrical activity of eight
    brain regions that coordinate different aspects of social behavior, such
    as the prefrontal cortex and the dopamine-issuing ventral tegmental area.

    Next, mice could choose to interact with another mouse or a small
    stack of black Legos while the researchers listened to their brain
    waves. Surprisingly, no single brain region's electrical activity
    could predict how social a mouse was during the task. Even as a trained engineer, Dzirasa needed help putting together all of the complex brain
    wave data.

    "We [neuroscientists] don't know how to build the car. We just see wheels
    and tires. We don't know how the system goes together," said Dzirasa.

    To help assemble a clearer picture of the data, Dzirasa connected with
    his long-time collaborator David Carlson, an assistant professor of civil
    and environmental engineering and biostatistics and bioinformatics,
    as well as a member of the Duke Institute for Brain Sciences. Carlson
    is an expert in the field of machine learning, a branch of artificial intelligence (AI) whereby computers get better at understanding complex
    data the more they're given.

    Carlson helped to develop a new AI system to make sense of the brain
    wave data.



    ========================================================================== "What we're trying to do is make this AI system that can learn and
    describe what's going on in the brain and we're trying to treat this AI
    as a collaborator in the scientific process," Carlson said.

    Importantly, the new AI tool could analyze all of the electrical activity
    from every brain region, tens of thousands of brain cells, and chart a new "social brain network" map. Now researchers could predict which animals preferred the company of their peers just by looking at the combined
    activity of their social brain network.

    Armed with a new map and crystal ball for social tendencies, Dzirasa's
    team tested whether activating this social brain network would make mice
    even more social. To gain precise control over these brain regions, the researchers used a light-based technique called optogenetics to enable
    them to instantly flick on specific brain regions at will. Lighting up prefrontal cortex brain cells provoked already outgoing mice to cozy up
    even more to another mouse, suggesting this social brain network both
    senses and directs social behavior.

    As a final test, Dzirasa asked whether this social brain network model
    could detect impaired social behavior in a mouse model of autism. When Dzirasa's team knocked out ANK2 in mice, a gene implicated in people with autism, their behavior confounded the machine learning tool. It could no
    longer predict how social a given mouse was based on its brain waves, suggesting the new machine learning tool is good at detecting aberrant electrical activity.

    Dzirasa and Carlson are eager to explore how well these findings in
    mice hold up in people. Currently, Carlson's team is collaborating
    with researchers at the Duke Center for Autism and Brain Development to evaluate whether this new machine learning tool can detect brain changes
    in typical and neurodiverse children.

    Dzirasa hopes to develop better diagnostic tools and treatments for
    other social disorders. He likens this goal to cardiology: an EKG can
    measure anyone's heart rate when they're active and compare it to their baseline heart rate at rest, which varies widely across people. But
    there's no equivalent tool for tracking and treating brain disorders in
    a similar way. Nor is there a pacemaker to dial in the "right" amount
    of gregariousness, another future goal of Dzirasa's lab.

    However, Dzirasa is keen to highlight that variation is normal, so this
    study and future work is important for understanding how things go awry
    outside someone's typical range of sociability.

    "Some people are more social than others. It doesn't mean that people who
    are less social have a psychiatric illness, it means there are individual differences," Dzirasa said. "If you want to link this ultimately to
    think about how humans are affected in psychiatric illness, you need to understand the individual." Support for the research came from the WM
    Keck Foundation, and the US National Institutes of Health (R01MH120158, R21MH104316, R01ES025549, 1R01EB026937, 1R01MH125430).


    ========================================================================== Story Source: Materials provided by Duke_University. Original written
    by Dan Vahaba. Note: Content may be edited for style and length.


    ========================================================================== Journal Reference:
    1. Stephen D. Mague, Austin Talbot, Cameron Blount, Kathryn K. Walder-
    Christensen, Lara J. Duffney, Elise Adamson, Alexandra L. Bey,
    Nkemdilim Ndubuizu, Gwenae"lle E. Thomas, Dalton N. Hughes, Yael
    Grossman, Rainbo Hultman, Saurabh Sinha, Alexandra M. Fink, Neil
    M. Gallagher, Rachel L.

    Fisher, Yong-Hui Jiang, David E. Carlson, Kafui Dzirasa. Brain-wide
    electrical dynamics encode individual appetitive social
    behavior. Neuron, 2022; DOI: 10.1016/j.neuron.2022.02.016 ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2022/03/220315112951.htm

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