Publication: B-tensor: brain connectome tensor factorization for Alzheimer's disease
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Program
KU-Authors
KU Authors
Co-Authors
Durusoy, Göktekin
Yıldırım, Zerrin
Dal, Demet Yüksel
Ulaşoğlu-Yıldız, Çiğdem
Kurt, Elif
Bayır, Güneş
Özacar, Erhan
Özarslan, Evren
Demirtaş-Tatlıdede, Aslı
Bilgiç, Başar
Advisor
Publication Date
2021
Language
English
Type
Journal Article
Journal Title
Journal ISSN
Volume Title
Abstract
AD is the highly severe part of the dementia spectrum and impairs cognitive abilities of individuals, bringing economic, societal and psychological burdens beyond the diseased. A promising approach in AD research is the analysis of structural and functional brain connectomes, i.e., sNETs and fNETs, respectively. We propose to use tensor representation (B-tensor) of uni-modal and multi-modal brain connectomes to define a low-dimensional space via tensor factorization. We show on a cohort of 47 subjects, spanning the spectrum of dementia, that diagnosis with an accuracy of 77% to 100% is achievable in a 5D connectome space using different structural and functional connectome constructions in a uni-modal and multi-modal fashion. We further show that multi-modal tensor factorization improves the results suggesting complementary information in structure and function. A neurological assessment of the connectivity patterns identified largely agrees with prior knowledge, yet also suggests new associations that may play a role in the disease progress.
Description
Source:
IEEE Journal of Biomedical and Health Informatics
Publisher:
Institute of Electrical and Electronics Engineers (IEEE)
Keywords:
Subject
Computer science, Mathematical and computational biology, Medical informatics