MRI data-driven clustering reveals different subtypes of Dementia with Lewy bodies

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Abstract

Dementia with Lewy bodies (DLB) is a neurodegenerative disorder with a wide heterogeneity of symptoms, which suggests the existence of different subtypes. We used data-driven analysis of magnetic resonance imaging (MRI) data to investigate DLB subtypes. We included 165 DLB from the Mayo Clinic and 3 centers from the European DLB consortium and performed a hierarchical cluster analysis to identify subtypes based on gray matter (GM) volumes. To characterize the subtypes, we used demographic and clinical data, as well as β-amyloid, tau, and cerebrovascular biomarkers at baseline, and cognitive decline over three years. We identified 3 subtypes: an older subtype with reduced cortical GM volumes, worse cognition, and faster cognitive decline (n = 49, 30%); a subtype with low GM volumes in fronto-occipital regions (n = 76, 46%); and a subtype of younger patients with the highest cortical GM volumes, proportionally lower GM volumes in basal ganglia and the highest frequency of cognitive fluctuations (n = 40, 24%). This study shows the existence of MRI subtypes in DLB, which may have implications for clinical workout, research, and therapeutic decisions.

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Inguanzo, A., Poulakis, K., Mohanty, R., Schwarz, C. G., Przybelski, S. A., Diaz-Galvan, P., … Ferreira, D. (2023). MRI data-driven clustering reveals different subtypes of Dementia with Lewy bodies. Npj Parkinson’s Disease, 9(1). https://doi.org/10.1038/s41531-023-00448-6

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