• New data analysis tool uncovers importan

    From ScienceDaily@1:317/3 to All on Mon Feb 28 21:30:40 2022
    New data analysis tool uncovers important COVID-19 clues

    Date:
    February 28, 2022
    Source:
    Yale University
    Summary:
    A new data analysis tool has revealed the specific immune cell
    types associated with increased risk of death from COVID-19.



    FULL STORY ==========================================================================
    A new data analysis tool developed by Yale researchers has revealed the specific immune cell types associated with increased risk of death from
    COVID- 19, they report Feb. 28 in the journal Nature Biotechnology.


    ========================================================================== Immune system cells such as T cells and antibody-producing B cells are
    known to provide broad protection against pathogens such as SARS-CoV-2,
    the virus that causes COVID-19. And large-scale data analyses of millions
    of cells have given scientists a broad overview of the immune system
    response to this particular virus. However, they have also found that
    some immune cell responses - - including by cell types that are usually protective -- can occasionally trigger deadly inflammation and death
    in patients.

    Other data analysis tools that allow for examination down to the level
    of single cells have given scientists some clues about culprits in severe
    COVID cases. But such focused views often lack the context of particular
    cell groupings that might cause better or poorer outcomes.

    The Multiscale PHATE tool, a machine learning tool developed at Yale,
    allows researchers to pass through all resolutions of data, from millions
    of cells to a single cell, within minutes. The technology builds on
    an algorithm called PHATE, created in the lab of Smita Krishnaswamy,
    associate professor of genetics and computer science, which overcomes
    many of the shortcomings of existing data visualization tools.

    "Machine learning algorithms typically focus on a single resolution
    view of the data, ignoring information that can be found in other more
    focused views," said Manik Kuchroo, a doctoral candidate at Yale School
    of Medicine who helped develop the technology and is co-lead author of
    the paper. "For this reason, we created Multiscale PHATE which allows
    users to zoom in and focus on specific subsets of their data to perform
    more detailed analysis." Kuchroo, who works in Krishnaswamy's lab,
    used the new tool to analyze 55 million blood cells taken from 163
    patients admitted to Yale New Haven Hospital with severe cases of
    COVID-19. Looking broadly, they found that high levels T cells seem
    to be protective against poor outcomes while high levels of two white
    blood cell types known as granulocytes and monocytes were associated
    with higher levels of mortality.

    However, when the researchers drilled down to a more granular level they discovered that TH17, a helper T cell, was also associated with higher mortality when clustered with the immune system cells IL-17 and IFNG.

    By measuring quantities of these cells in the blood, they could predict
    whether the patient lived or died with 83% accuracy, the researchers
    report.

    "We were able to rank order risk factors of mortality to show which are
    the most dangerous," Krishnaswamy said.

    In theory, the new data analytical tool could be used to fine tune risk assessment in a host of diseases, she said.

    Jessie Huang in the Yale Department of Computer Science and Patrick Wong
    in the Department of Immunobiology are co-lead authors of the paper. Akiko Iwasaki, the Waldemar Von Zedtwitz Professor of Immunobiology, is co-corresponding author.

    ========================================================================== Story Source: Materials provided by Yale_University. Original written
    by Bill Hathaway. Note: Content may be edited for style and length.


    ========================================================================== Journal Reference:
    1. Manik Kuchroo, Jessie Huang, Patrick Wong, Jean-Christophe Grenier,
    Dennis Shung, Alexander Tong, Carolina Lucas, Jon Klein, Daniel B.

    Burkhardt, Scott Gigante, Abhinav Godavarthi, Bastian Rieck,
    Benjamin Israelow, Michael Simonov, Tianyang Mao, Ji Eun Oh, Julio
    Silva, Takehiro Takahashi, Camila D. Odio, Arnau Casanovas-Massana,
    John Fournier, Abeer Obaid, Adam Moore, Alice Lu-Culligan,
    Allison Nelson, Anderson Brito, Angela Nunez, Anjelica Martin,
    Anne L. Wyllie, Annie Watkins, Annsea Park, Arvind Venkataraman,
    Bertie Geng, Chaney Kalinich, Chantal B. F.

    Vogels, Christina Harden, Codruta Todeasa, Cole Jensen, Daniel
    Kim, David McDonald, Denise Shepard, Edward Courchaine, Elizabeth
    B. White, Eric Song, Erin Silva, Eriko Kudo, Giuseppe DeIuliis,
    Haowei Wang, Harold Rahming, Hong-Jai Park, Irene Matos, Isabel
    M. Ott, Jessica Nouws, Jordan Valdez, Joseph Fauver, Joseph Lim,
    Kadi-Ann Rose, Kelly Anastasio, Kristina Brower, Laura Glick,
    Lokesh Sharma, Lorenzo Sewanan, Lynda Knaggs, Maksym Minasyan,
    Maria Batsu, Maria Tokuyama, M. Cate Muenker, Mary Petrone,
    Maxine Kuang, Maura Nakahata, Melissa Campbell, Melissa Linehan,
    Michael H. Askenase, Michael Simonov, Mikhail Smolgovsky, Nathan
    D. Grubaugh, Nicole Sonnert, Nida Naushad, Pavithra Vijayakumar,
    Peiwen Lu, Rebecca Earnest, Rick Martinello, Roy Herbst, Rupak
    Datta, Ryan Handoko, Santos Bermejo, Sarah Lapidus, Sarah Prophet,
    Sean Bickerton, Sofia Velazquez, Subhasis Mohanty, Tara Alpert,
    Tyler Rice, Wade Schulz, William Khoury-Hanold, Xiaohua Peng,
    Yexin Yang, Yiyun Cao, Yvette Strong, Shelli Farhadian, Charles
    S. Dela Cruz, Albert I. Ko, Matthew J.

    Hirn, F. Perry Wilson, Julie G. Hussin, Guy Wolf, Akiko Iwasaki,
    Smita Krishnaswamy. Multiscale PHATE identifies multimodal
    signatures of COVID- 19. Nature Biotechnology, 2022; DOI:
    10.1038/s41587-021-01186-x ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2022/02/220228114335.htm

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