• How neuroimaging can be better utilized

    From ScienceDaily@1:317/3 to All on Tue Mar 14 22:30:30 2023
    How neuroimaging can be better utilized to yield diagnostic information
    about individuals

    Date:
    March 14, 2023
    Source:
    Dartmouth College
    Summary:
    Since the development of functional magnetic resonance imaging
    in the 1990s, the reliance on neuroimaging has skyrocketed as
    researchers investigate how fMRI data from the brain at rest,
    and anatomical brain structure itself, can be used to predict
    individual traits, such as depression, cognitive decline, and brain
    disorders. But how reliable brain imaging is for detecting traits
    has been a subject of wide debate.

    Researchers now report that stronger links between brain measures
    and traits can be obtained when state-of-the-art pattern recognition
    (or 'machine learning') algorithms are utilized, which can garner
    high- powered results from moderate sample sizes.


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    FULL STORY ========================================================================== Since the development of functional magnetic resonance imaging in the
    1990s, the reliance on neuroimaging has skyrocketed as researchers
    investigate how fMRI data from the brain at rest, and anatomical brain structure itself, can be used to predict individual traits, such as
    depression, cognitive decline, and brain disorders.


    ========================================================================== Brain imaging has the potential to reveal the neural underpinnings of
    many traits, from disorders like depression and chronic widespread pain
    to why one person has a better memory than another, and why some people's memories are resilient as they age. But how reliable brain imaging is
    for detecting traits has been a subject of wide debate.

    Prior research on brain-wide associated studies (termed 'BWAS') has
    shown that links between brain function and structure and traits are
    so weak that thousands of participants are needed to detect replicable
    effects. Research of this scale requires millions of dollars in investment
    in each study, limiting which traits and brain disorders can be studied.

    However, according to a new commentary published in Nature, stronger links between brain measures and traits can be obtained when state-of-the-art
    pattern recognition (or 'machine learning') algorithms are utilized,
    which can garner high-powered results from moderate sample sizes.

    In their article, researchers from Dartmouth and University Medicine
    Essen provide a response to an earlier analysis of brain-wide
    association studies led by Scott Marek at Washington University School
    of Medicine in St. Louis, Brenden Tervo-Clemmens at Massachusetts General Hospital/Harvard Medical School, and colleagues. The earlier study found
    very weak associations across a range of traits in several large brain
    imaging studies, concluding that thousands of participants would be
    needed to detect these associations.

    The new article explains that the very weak effects found in the earlier
    paper do not apply to all brain images and all traits, but rather are
    limited to specific cases. It outlines how fMRI data from hundreds of participants, as opposed to thousands, can be better leveraged to yield important diagnostic information about individuals.

    One key to stronger associations between brain images and traits such
    as memory and intelligence is the use of state-of-the-art pattern
    recognition algorithms.

    "Given that there's virtually no mental function performed entirely by
    one area of the brain, we recommend using pattern recognition to develop
    models of how multiple brain areas contribute to predicting traits,
    rather than testing brain areas individually," says senior author Tor
    Wager, the Diana L. Taylor Distinguished Professor of Psychological and
    Brain Sciences and director of the Brain Imaging Center at Dartmouth.

    "If models of multiple brain areas working together rather than in
    isolation are applied, this provides for a much more powerful approach
    in neuroimaging studies, yielding predictive effects that are four times
    larger than when testing brain areas in isolation," says lead author
    Tamas Spisak, head of the Predictive Neuroimaging Lab at the Institute of Diagnostic and Interventional Radiology and Neuroradiology at University Medicine Essen.

    However, not all pattern recognition algorithms are equal and finding the algorithms that work best for specific types of brain imaging data is
    an active area of research. The earlier paper by Marek, Tervo-Clemmens
    et al. also tested whether pattern recognition can be used to predict
    traits from brain images, but Spisak and colleagues found that the
    algorithm they used is suboptimal.

    When the researchers applied a more powerful algorithm, the effects
    got even larger and reliable associations could be detected in much
    smaller samples.

    "When you do the power calculations on how many participants are needed
    to detect replicable effects, the number drops to below 500 people,"
    Spisak says.

    "This opens the field to studies of many traits and clinical conditions
    for which obtaining thousands of patients is not possible, including
    rare brain disorders," says co-author Ulrike Bingel at University
    Medicine Essen, who is the head of the University Centre for Pain
    Medicine. "Identifying markers, including those involving the central
    nervous system, are urgently needed, as they are critical to improve diagnostics and individually tailored treatment approaches. We
    need to move towards a personalized medicine approach grounded in
    neuroscience. The potential for multivariate BWAS to move us towards this
    goal should not be underestimated." The team explains that the weak associations found in the earlier analysis, particularly through brain
    images, were collected while people were simply resting in the scanner,
    rather than performing tasks. But fMRI can also capture brain activity
    linked to specific moment-by-moment thoughts and experiences.

    Wager believes that linking brain patterns to these experiences may be a
    key to understanding and predicting differences among individuals. "One
    of the challenges associated with using brain imaging to predict traits
    is that many traits aren't stable or reliable. If we use brain imaging to
    focus on studying mental states and experiences, such as pain, empathy,
    and drug craving, the effects can be much larger and more reliable,"
    says Wager. "The key is finding the right task to capture the state."
    "For example, showing images of drugs to people with substance use
    disorders can elicit drug cravings, according to an earlier study
    revealing a neuromarker for cravings," says Wager.

    "Identifying which approaches to understanding the brain and mind are
    most likely to succeed is important, as this affects how stakeholders
    view and ultimately fund translational research in neuroimaging," says
    Bingel. "Finding the limitations and working together to overcome them
    is key to developing new ways of diagnosing and caring for patients with
    brain and mental health disorders."
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    ========================================================================== Story Source: Materials provided by Dartmouth_College. Original written
    by Amy Olson. Note: Content may be edited for style and length.


    ========================================================================== Journal Reference:
    1. Brenden Tervo-Clemmens, Scott Marek, Roselyne J. Chauvin, Andrew
    N. Van,
    Benjamin P. Kay, Timothy O. Laumann, Wesley K. Thompson, Thomas E.

    Nichols, B. T. Thomas Yeo, Deanna M. Barch, Beatriz Luna, Damien
    A. Fair, Nico U. F. Dosenbach. Reply to: Multivariate BWAS can be
    replicable with moderate sample sizes. Nature, 2023; 615 (7951):
    E8 DOI: 10.1038/s41586- 023-05746-w ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2023/03/230314205337.htm

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