Hilsabeck Robin C, Keller Jeffrey N, Henry Maya L, Li Junyi Jessy, Pugalenthi Lokesh, Toprac Paul, Chang Patrick, Chang Joshua, Schmitz Suzanne, Largent Avery, Foil Heather, Brouillette Robert, Lester-Smith Rosemary A, Rathouz Paul J
Department of Neurology The University of Texas at Austin Dell Medical School Austin Texas USA.
Institute of Dementia Research & Prevention Pennington Biomedical Research Center at Louisiana State University Baton Rouge Louisiana USA.
Alzheimers Dement (N Y). 2025 Aug 18;11(3):e70145. doi: 10.1002/trc2.70145. eCollection 2025 Jul-Sep.
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.
在初级保健机构中进行认知筛查以检测轻度认知障碍(MCI)和痴呆症已被证明是一项具有挑战性的任务。理想的解决方案是一种简短但灵敏的工具,适用于来自不同教育和文化背景的个体,且诊所工作人员所需的时间和专业知识有限。本项目的目的是:(1)使用机器学习技术开发一种结合认知和语音/语言数据的自动化认知筛查工具,供初级保健机构使用;(2)将其分类准确性与一种既定的认知筛查方法进行比较。
参与者包括53名认知正常的老年人和51名认知受损的老年人。每人完成一项工作记忆(WM)任务和四项口语任务,之后再次进行WM任务以研究练习效果的附加作用。使用贝叶斯加法回归树测试九个模型,并使用快速轻度认知障碍筛查作为对照。
最佳特征集包括两次WM任务和一项个人叙述任务,其交叉验证分类准确率(受试者工作特征曲线下面积)为0.84,略高于对照。
结合WM以及从连贯口语任务中得出的声学和语言变量,能够高度准确地区分认知正常组和认知受损组。
使用工作记忆和口语任务检测认知障碍。这种组合能够区分认知正常和受损的老年人。这种自动化工具可能克服初级保健中认知筛查的障碍。