Authors
Robin C Hilsabeck, Jeffrey N Keller, Maya L Henry, Junyi Jessy Li, Lokesh Pugalenthi, Paul Toprac, Patrick Chang, Joshua Chang, Suzanne Schmitz, Avery Largent, Heather Foil, Robert Brouillette, Rosemary A Lester-Smith, Paul J Rathouz
Published in
Alzheimer's & dementia (New York, N. Y.). Volume 11. Issue 3. Pages e70145. Epub Aug 18, 2025.
Abstract
Cognitive screening to detect mild cognitive impairment (MCI) and dementia in primary care settings has proven to be a challenging task. The ideal solution would be a brief, yet sensitive, tool appropriate for use with individuals from diverse educational and cultural backgrounds that requires limited time and expertise from clinic staff. The purpose of this project was (1) to develop an automated cognitive screening tool incorporating cognitive and speech/language data using machine learning techniques for potential use in primary care settings and (2) to compare its classification accuracy to an established cognitive screening measure.
Participants were 53 cognitively normal and 51 cognitively impaired older adults. Each completed a working memory (WM) and four speaking tasks, followed by a second administration of WM to investigate the added utility of practice effects. Bayesian additive regression trees were used to test nine models, and the Quick Mild Cognitive Impairment screen was administered as a comparator.
The top feature set consisted of both administrations of the WM task and a personal narrative task and achieved a cross-validated classification accuracy (area under the receiver operating characteristics curve) of 0.84, which was slightly better than the comparator.
Combining WM and acoustic and linguistic variables derived from connected speaking tasks discriminated cognitively normal from cognitively impaired groups with a high degree of accuracy.
Working memory and speaking tasks were used for detection of cognitive impairment.This combination distinguished cognitively normal from impaired older adults.This automated tool may overcome barriers to cognitive screening in primary care.
PMID:
40832474
Bibliographic data and abstract were imported from PubMed on 20 Aug 2025.
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