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"The argument runs deeper than most discussions--even many academic ones--about the myths that continue to be reproduced through our stories about AI..." Congrats to "Artificial Humanities" on being named a 2025 Artificiality Book Award winner!
Health plan disenrollment following MOUD initiation "was associated with a 51% and 56% increase in the hazards of all-cause mortality and overdose mortality" Relevant finding as states work to operationalize Medicaid work requirement exemptions for enrollees with substance use disorder.
Now that's a headline: "Former surgeon general: The Senate must not approve someone who can’t practice medicine as the nation’s top doctor"
3mo
3mo
5mo
Congratulations to the winners of the Artificiality Book Awards 2025!
journal.artificialityinstitute.org
“The surgeon general is not a wellness influencer,” writes former Surgeon General Jerome Adams of Casey Means.
Artificiality Book Awards 2025 plus a working library of past must-reads
Former surgeon general: The Senate must not approve someone who can't practice medicine as the nation’s top doctor
www.statnews.com
This cohort study assesses the association of health plan disenrollment and mortality in patients treated with medications for opioid use disorder.
jamanetwork.com
Health Plan Disenrollment and Mortality After Initiation of Medications for Opioid Use Disorder
University of Michigan Press
Adrianna McIntyre
Adrianna McIntyre
In AI, "benchmark saturation" refers to when an evaluation test (benchmark) used to evaluate which model is outperforming other models no longer differentiates between the top-performing LLM (Large Language Models) because their scores have hit a functional ceiling; where they perform the same