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Analysis of social media language using AI models predicts depression severity for white Americans, but not Black Americans

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Tue, Mar 26, 2024 07:17 PM

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NIH-supported study also found Black people with depression used different language than white peopl

NIH-supported study also found Black people with depression used different language than white people to express their thoughts on Facebook [] [View as webpage / Share]( [NIH/NIDA logo] NEWS [Black woman holding a toddler and walking down a city street.] Analysis of social media language using AI models predicts depression severity for white Americans, but not Black Americans Researchers were able to predict depression severity for white people, but not for Black people using standard language-based computer models to analyze Facebook posts. Words and phrases associated with depression, such as first-person pronouns and negative emotion words, were around three times more predictive of depression severity for white people than for Black people. [The study](, published today in the Proceedings of the National Academy of Sciences, is co-authored by researchers at the University of Pennsylvania, Philadelphia, and the National Institute on Drug Abuse (NIDA), part of the National Institutes of Health (NIH), which also funded the study. [View Press Release]( Stay Connected [facebook]([twitter]([linkedin]([youtube]( --------------------------------------------------------------- View topics of interest, update your subscriptions, modify your password or email address, alter frequency of bulletins, or stop subscriptions at any time on your [Subscriber Preferences Page](. You will need to use your email address to log in. If you have questions or problems with the subscription service, please visit [subscriberhelp.govdelivery.com](. This service is provided to you at no charge by [National Institute on Drug Abuse](. --------------------------------------------------------------- This email was sent to {EMAIL} using govDelivery Communications Cloud on behalf of National Institutes of Health: National Institute on Drug Abuse · 3WFN MSC 6024 · 16071 Industrial Dr ·Dock 11 · Gaithersburg, MD 20877 [GovDelivery logo](

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