• Researchers develop highly accurate mode

    From ScienceDaily@1:317/3 to All on Tue Feb 1 21:30:42 2022
    Researchers develop highly accurate modeling tool to predict COVID-19
    risk

    Date:
    February 1, 2022
    Source:
    University of Southern California
    Summary:
    Researchers have combined location density with real-world mobility
    data to predict the risk of infection from COVID-19 at specific
    locations with unprecedented accuracy.



    FULL STORY ==========================================================================
    As new coronavirus variants emerge and quickly spread around the globe,
    both the public and policymakers are faced with a quandary: maintaining a semblance of normality, while also minimizing infections. While digital
    contact tracing apps offered promise, the adoption rate has been low,
    due in part to privacy concerns.


    ==========================================================================
    At USC, researchers are advocating for a new approach to predict the
    chance of infection from Covid-19: combining anonymized cellphone location
    data with mobility patterns -- broad patterns of how people move from
    place to place.

    To produce "risk scores" for specific locations and times, the team
    used a large dataset of anonymous, real-world location signals from
    cell phones across the US in 2019 and 2020. The system shows a 50%
    improvement in accuracy compared to current systems, said the researchers.

    "Our results show that it is possible to predict and target specific
    areas that are high-risk, as opposed to putting all businesses under
    one umbrella. Such risk-targeted policies can be significantly more
    effective, both for controlling Covid-19 and economically," said lead
    author Sepanta Zeighami, a computer science Ph.D. student advised by
    Professor Cyrus Shahabi.

    "It's also unlikely that Covid-19 will be the last pandemic in human
    history, so if we want to avoid the chaos of 2020 and the tragic losses
    while keeping daily life as unaffected as possible when the next pandemic happens, we need such data-driven approaches." To address privacy
    concerns, the mobility data comes in an aggregated format, allowing the researchers to see patterns without identifying individual users.

    The data is not being used for contact tracing, identifying infected individuals, or where they are going, said the researchers.



    ==========================================================================
    "Our approach relies on anonymized aggregate data," said Shahabi, study
    co- author and Helen N. and Emmett H. Jones Professor in Engineering
    and Professor of Computer Science, Electrical and Computer Engineering,
    and Spatial Sciences.

    "It is the same as traffic data, where an individual's information is
    not revealed, but the aggregate data will help you to make a decision
    on whether to use a certain freeway at a certain time." The paper will
    appear in the ACM Transactions on Spatial Algorithms and Systemsand is available for early access.

    Data-driven approaches According to the researchers, existing risk
    score tools do not provide enough detailed information about infection
    rates at specific places, or they make unrealistic assumptions about
    how populations mix.

    "The risk of infection varies a lot based on the location, and having a
    single policy, for instance, at a county level, ignores how some areas
    are riskier than others," said Zeighami.



    ==========================================================================
    So, using real-world mobility data and existing knowledge about the spread
    of Covid-19, the team created a simulator to generate realistic infection patterns. In the simulation, some "agents" are initially infected and
    spread the disease as they move around.

    Then, the researchers created a Hawkes process-based model, which assigns
    risk scores based on location density and mobility patterns at a given
    time and place. Using the simulator, the researchers tested the model
    to determine if it could accurately predict the number of infections
    at different locations. It turned out, the risk scores were indeed
    a reliable metric for tracking infections in cities across the US,
    including San Francisco, New York, Chicago and Los Angeles.

    The researchers found, predictably, that popular destinations in a city
    are riskier. But they also found that incorporating the infection mobility
    -- how people move -- as opposed to just relying on the popularity of an
    area helped to improve infection prediction. This, said the researchers, underscores the importance of bringing together mobility patterns and
    infection spread prediction models to generate risk scores.

    There are two key ways the system could be used in the real world,
    said the researchers. The more straightforward case is to make neighborhood-level policy decisions: for instance, bars in Santa Monica,
    CA, should close today due to high risk in that neighborhood.

    For more targeted locations, such as a specific concert stadium event,
    the system would crunch the mobility data from similar concerts in the
    past to learn how the infection risk changes in the area following this
    type of event.

    Then, using the researchers' model and current mobility data across LA,
    the system could make predictions and assign risk scores.

    Going forward, the team plans to develop user-specific, yet still privacy- preserving, risk scores, and to include long-term forecasting capabilities
    for several weeks into the future.

    "The very high resolution of this mobility data, as well as our scalable approach, will enable us to estimate risk scores at a very fine-grain
    spatial and temporal resolution, for example, a specific restaurant at
    dinner time, or a shopping mall at lunchtime," said Shahabi.

    "As an individual, you may want to avoid areas deemed high-risk,
    and policymakers could warn the public to avoid an area known
    to be a potential hotspot of infection. The scores can also be
    used for closure or reduced capacity decisions. Instead of making
    these decisions at the county level, public health experts can
    make those decisions at city, neighborhood or zip code levels."
    special promotion Explore the latest scientific research on sleep and
    dreams in this free online course from New Scientist -- Sign_up_now_>>> ========================================================================== Story Source: Materials provided by
    University_of_Southern_California. Original written by Caitlin
    Dawson. Note: Content may be edited for style and length.


    ========================================================================== Journal Reference:
    1. Sirisha Rambhatla, Sepanta Zeighami, Kameron Shahabi, Cyrus
    Shahabi, Yan
    Liu. Toward Accurate Spatiotemporal COVID-19 Risk Scores Using
    High- Resolution Real-World Mobility Data. ACM Transactions on
    Spatial Algorithms and Systems, 2022; 8 (2): 1 DOI: 10.1145/3481044 ==========================================================================

    Link to news story: https://www.sciencedaily.com/releases/2022/02/220201143945.htm

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