Prediction of Alzheimer's disease progression within 6 years using speech: A novel approach leveraging language models

Author:

Amini Samad1ORCID,Hao Boran1,Yang Jingmei1,Karjadi Cody2,Kolachalama Vijaya B.345,Au Rhoda26,Paschalidis Ioannis C.14

Affiliation:

1. Department of Electrical & Computer Engineering Division of Systems Engineering and Department of Biomedical Engineering Boston University Boston Massachusetts USA

2. Framingham Heart Study Boston University Framingham Massachusetts USA

3. Department of Medicine Boston University School of Medicine Boston Massachusetts USA

4. Faculty of Computing & Data Sciences Boston University Boston Massachusetts USA

5. Department of Computer Science Boston University Boston Massachusetts USA

6. Departments of Anatomy & Neurobiology, Neurology, and Epidemiology Boston University School of Medicine and School of Public Health Boston Massachusetts USA

Abstract

AbstractINTRODUCTIONIdentification of individuals with mild cognitive impairment (MCI) who are at risk of developing Alzheimer's disease (AD) is crucial for early intervention and selection of clinical trials.METHODSWe applied natural language processing techniques along with machine learning methods to develop a method for automated prediction of progression to AD within 6 years using speech. The study design was evaluated on the neuropsychological test interviews of n = 166 participants from the Framingham Heart Study, comprising 90 progressive MCI and 76 stable MCI cases.RESULTSOur best models, which used features generated from speech data, as well as age, sex, and education level, achieved an accuracy of 78.5% and a sensitivity of 81.1% to predict MCI‐to‐AD progression within 6 years.DISCUSSIONThe proposed method offers a fully automated procedure, providing an opportunity to develop an inexpensive, broadly accessible, and easy‐to‐administer screening tool for MCI‐to‐AD progression prediction, facilitating development of remote assessment.Highlights Voice recordings from neuropsychological exams coupled with basic demographics can lead to strong predictive models of progression to dementia from mild cognitive impairment. The study leveraged AI methods for speech recognition and processed the resulting text using language models. The developed AI‐powered pipeline can lead to fully automated assessment that could enable remote and cost‐effective screening and prognosis for Alzehimer's disease.

Funder

National Science Foundation

National Institutes of Health

National Heart, Lung, and Blood Institute

National Institute on Aging

Publisher

Wiley

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