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Four Distinct Subtypes of Alzheimer's Disease Based on Resting-State Connectivity Biomarkers.

Authors :
Chen, Pindong
Yao, Hongxiang
Tijms, Betty M.
Wang, Pan
Wang, Dawei
Song, Chengyuan
Yang, Hongwei
Zhang, Zengqiang
Zhao, Kun
Qu, Yida
Kang, Xiaopeng
Du, Kai
Fan, Lingzhong
Han, Tong
Yu, Chunshui
Zhang, Xi
Jiang, Tianzi
Zhou, Yuying
Lu, Jie
Han, Ying
Source :
Biological Psychiatry. May2023, Vol. 93 Issue 9, p759-769. 11p.
Publication Year :
2023

Abstract

Alzheimer's disease (AD) is a neurodegenerative disorder with significant heterogeneity. Different AD phenotypes may be associated with specific brain network changes. Uncovering disease heterogeneity by using functional networks could provide insights into precise diagnoses. We investigated the subtypes of AD using nonnegative matrix factorization clustering on the previously identified 216 resting-state functional connectivities that differed between AD and normal control subjects. We conducted the analysis using a discovery dataset (n = 809) and a validated dataset (n = 291). Next, we grouped individuals with mild cognitive impairment according to the model obtained in the AD groups. Finally, the clinical measures and brain structural characteristics were compared among the subtypes to assess their relationship with differences in the functional network. Individuals with AD were clustered into 4 subtypes reproducibly, which included those with 1) diffuse and mild functional connectivity disruption (subtype 1), 2) predominantly decreased connectivity in the default mode network accompanied by an increase in the prefrontal circuit (subtype 2), 3) predominantly decreased connectivity in the anterior cingulate cortex accompanied by an increase in prefrontal cortex connectivity (subtype 3), and 4) predominantly decreased connectivity in the basal ganglia accompanied by an increase in prefrontal cortex connectivity (subtype 4). In addition to these differences in functional connectivity, differences between the AD subtypes were found in cognition, structural measures, and cognitive decline patterns. These comprehensive results offer new insights that may advance precision medicine for AD and facilitate strategies for future clinical trials. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00063223
Volume :
93
Issue :
9
Database :
Academic Search Index
Journal :
Biological Psychiatry
Publication Type :
Academic Journal
Accession number :
162759497
Full Text :
https://doi.org/10.1016/j.biopsych.2022.06.019