Skip to main content

Predicting the progression of MCI and Alzheimer’s disease on structural brain integrity and other features with machine learning

Publication ,  Journal Article
Mieling, M; Yousuf, M; Bunzeck, N; Spicer, K; Longmire, CF; Mintzer, J; Rojas, YG; Sotelo, V; Hu, W; Jones, F; Saklad, A; Seshadri, S; Le, R ...
Published in: Geroscience
January 1, 2025

Machine learning (ML) on structural MRI data shows high potential for classifying Alzheimer’s disease (AD) progression, but the specific contribution of brain regions, demographics, and proteinopathy remains unclear. Using Alzheimer’s Disease Neuroimaging Initiative (ADNI) data, we applied an extreme gradient-boosting algorithm and SHAP (SHapley Additive exPlanations) values to classify cognitively normal (CN) older adults, those with mild cognitive impairment (MCI) and AD dementia patients. Features included structural MRI, CSF status, demographics, and genetic data. Analyses comprised one cross-sectional multi-class classification (CN vs. MCI vs. AD dementia, n = 568) and two longitudinal binary-class classifications (CN-to-MCI converters vs. CN stable, n = 92; MCI-to-AD converters vs. MCI stable, n = 378). All classifications achieved 70–77% accuracy and 61–83% precision. Key features were CSF status, hippocampal volume, entorhinal thickness, and amygdala volume, with a clear dissociation: hippocampal properties contributed to the conversion to MCI, while the entorhinal cortex characterized the conversion to AD dementia. The findings highlight explainable, trajectory-specific insights into AD progression.

Duke Scholars

Published In

Geroscience

DOI

EISSN

2509-2723

ISSN

2509-2715

Publication Date

January 1, 2025
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Mieling, M., Yousuf, M., Bunzeck, N., Spicer, K., Longmire, C. F., Mintzer, J., … Figueroa, C. (2025). Predicting the progression of MCI and Alzheimer’s disease on structural brain integrity and other features with machine learning. Geroscience. https://doi.org/10.1007/s11357-025-01626-5
Mieling, M., M. Yousuf, N. Bunzeck, K. Spicer, C. F. Longmire, J. Mintzer, Y. G. Rojas, et al. “Predicting the progression of MCI and Alzheimer’s disease on structural brain integrity and other features with machine learning.” Geroscience, January 1, 2025. https://doi.org/10.1007/s11357-025-01626-5.
Mieling M, Yousuf M, Bunzeck N, Spicer K, Longmire CF, Mintzer J, et al. Predicting the progression of MCI and Alzheimer’s disease on structural brain integrity and other features with machine learning. Geroscience. 2025 Jan 1;
Mieling, M., et al. “Predicting the progression of MCI and Alzheimer’s disease on structural brain integrity and other features with machine learning.” Geroscience, Jan. 2025. Scopus, doi:10.1007/s11357-025-01626-5.
Mieling M, Yousuf M, Bunzeck N, Spicer K, Longmire CF, Mintzer J, Rojas YG, Sotelo V, Hu W, Jones F, Saklad A, Seshadri S, Boegel A, Hill SJ, Newhouse P, Long R, Long C, Williams A, Acree A, Brawman-Mintzer O, Reichert C, Pomara V, Hernando R, Pomara N, Acothley S, Elayan N, Slaughter ME, Garcia A, Sabbagh M, Gurung M, Le R, Masdeu J, Rosario C, Smith C, Kalowsky T, Rivera E, Okhravi H, Devine R, Yong M, Roglaski E, Janavs J, Echevarria J, Mba I, Smith A, Miller BL, Rosen HJ, Blackburn M, Windon C, Correia S, Malloy P, Salloway S, Riddle M, Sanborn V, Fogerty T, Warren S, Bailey R, Acosta MV, Amoyaw M, Doyon K, Davis J, Clark J, Arcuri D, Stipanovich A, DeMarco A, Wu CK, Harrison W, Baker W, Rogers S, Shannon M, Hoover B, Moretz L, Bottoms J, Henkle S, Bohlman S, Ledford PH, White M, Rowell J, Walker E, Thompson D, Crawford F, Bateman J, Zamora E, Gagnon K, O’Connell A, Duncan C, Jessup A, Williamson J, Schwartz ES, Santulli RB, Anderson K, Blank K, Pearlson GD, Stewart W, Ahmed T, Presto S, Reposa M, Patterson K, Bauerle H, Figueroa C. Predicting the progression of MCI and Alzheimer’s disease on structural brain integrity and other features with machine learning. Geroscience. 2025 Jan 1;

Published In

Geroscience

DOI

EISSN

2509-2723

ISSN

2509-2715

Publication Date

January 1, 2025