1. Generating diagnostic profiles of cognitive decline and dementia using magnetoencephalography.
- Author
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Scheijbeler EP, Schoonhoven DN, Engels MMA, Scheltens P, Stam CJ, Gouw AA, and Hillebrand A
- Subjects
- Aged, Alzheimer Disease, Cognitive Dysfunction etiology, Datasets as Topic, Dementia etiology, Female, Humans, Machine Learning, Male, Mental Disorders complications, Middle Aged, Sensitivity and Specificity, Cognitive Dysfunction diagnosis, Dementia diagnosis, Magnetoencephalography methods
- Abstract
Accurate identification of the underlying cause(s) of cognitive decline and dementia is challenging due to significant symptomatic overlap between subtypes. This study presents a multi-class classification framework for subjects with subjective cognitive decline, mild cognitive impairment, Alzheimer's disease, dementia with Lewy bodies, fronto-temporal dementia and cognitive decline due to psychiatric illness, trained on source-localized resting-state magnetoencephalography data. Diagnostic profiles, describing probability estimates for each of the 6 diagnoses, were assigned to individual subjects. A balanced accuracy rate of 41% and multi-class area under the curve value of 0.75 were obtained for 6-class classification. Classification primarily depended on posterior relative delta, theta and beta power and amplitude-based functional connectivity in the beta and gamma frequency band. Dementia with Lewy bodies (sensitivity: 100%, precision: 20%) and Alzheimer's disease subjects (sensitivity: 51%, precision: 90%) could be classified most accurately. Fronto-temporal dementia subjects (sensitivity: 11%, precision: 3%) were most frequently misclassified. Magnetoencephalography biomarkers hold promise to increase diagnostic accuracy in a noninvasive manner. Diagnostic profiles could provide an intuitive tool to clinicians and may facilitate implementation of the classifier in the memory clinic., (Copyright © 2021. Published by Elsevier Inc.)
- Published
- 2022
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