New York Post

WARNING SIGNS IN FB POSTS

Mental-illness hints

- By CARL CAMPANILE

The content of your Facebook posts could predict whether you will develop schizophre­nia or mood disorders, according to a new study.

The findings were based on machine learning algorithms of users’ “linguistic footprint” utilized by Northwell Health’s Feinstein Institutes for Medical Research and computer scientists at IBM.

The study, published in Nature Partner Journals Schizophre­nia, found that those with schizophre­nia or mood disorders were more likely to use curse words in Facebook instant messages compared to healthy volunteers.

Participan­ts with mood disorders also tapped more words related to blood and pain — and used “negative emotion” language such as the words “sad,” “upset” and “down” more frequently than healthy participan­ts.

Schizophre­nia patients used more perception words, like “hear,” “see” and “feel,” and emphatic punctuatio­n.

The words used were fed into an analytics program called Linguistic Inquiry Word Count.

The study also noted that participan­ts with schizophre­nic spectrum disorders posted images that were smaller than those from healthy volunteers, while those with mood disorders posted photos with colors containing more blue and less yellow.

The research is part of an emerging field of psychiatri­cs that analyzes patients’ communicat­ions and behavior on social media, which could lead to earlier and better diagnosis and interventi­on for psychiatri­c care.

The rsearchers gathered more than 3.4 millionn Facebook messages and more than 140,000 images posted by 223 participan­ts recruited for the study by Northwell.

The group of study participan­ts ranged in age from 15 to 35 and included 79 patients with a schizophre­nia spectrum disorder, 74 with a mood disorder and 70 healthy volunteers.

“There is great promise in the current research regarding the relationsh­ip between social media activity and behavioral health, and our results published with IBM Research demonstrat­e that machine learning algorithms are capable of identifyin­g signals associated with mental illness, well over a year in advance of the first psychiatri­c hospitaliz­ation,” said Michael Birnbaum, program director for Northwell Health’s Early Treatment Program, a chief author of the study.

“We have the potential to thoughtful­ly bring psychiatry into the modern, digital age by integratin­g these data into the field.”

Birnbaum, a child psychiatri­st, noted that mental disorders often happen gradually over a number of years, so analysis of social media messages and postings can help with early detection and improve treatment.

“Early identifica­tion is one of the biggest challenges in psychiatry,” he told The Post Sunday. “You can use this informatio­n to identify risk factors. It provides additional clues.”

Down the road, such sophistica­ted analytics could be used to help identify warnings for suicide and other forms of violence.

“There are people we see in psychiatri­c clinics who we are concerned might do something dangerous,” Birnbaum said.

He added that reviewing FB messsages can also provide valuable insight on whether aa patient is improving, as “socializat­ion is a critical part of recovery.” Respecting the privacy of patients and getting their consent to access their digital foot pri footprint sis crucial.

“The question is, how ddo we implement this program iin a real-world setting,” he said.

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Shuttersto­ck / Pixel-Shot

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