News Release

Acoustic analysis of primary care patient–clinician conversations to screen for cognitive impairment

JAMA Neurology

Peer-Reviewed Publication

JAMA Network

About The Study: In this diagnostic study, machine learning models trained on acoustic features from brief clinical conversations identified cognitive impairment with high accuracy. These findings support the feasibility of passive, speech-based screening during routine primary care.

Corresponding Author: To contact the corresponding author, Joseph T. Colonel, PhD, email joseph.colonel@mssm.edu.

To access the embargoed study: Visit our For The Media website at this link https://media.jamanetwork.com/

(doi:10.1001/jamaneurol.2026.1868)

Editor’s Note: Please see the article for additional information, including other authors, author contributions and affiliations, conflict of interest and financial disclosures, and funding and support.

Embed this link to provide your readers free access to the full-text article This link will be live at the embargo time https://jamanetwork.com/journals/jamaneurology/fullarticle/10.1001/jamaneurol.2026.1868?guestAccessKey=bb6fdcfa-b129-402f-93c4-2e3d5bc49b0c&utm_source=for_the_media&utm_medium=referral&utm_campaign=ftm_links&utm_content=tfl&utm_term=061526


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