| Literature DB >> 33649398 |
Mehrafarin Ramezani1,2, Pauline Mouches2,3,4, Eunjin Yoon1,2, Deepthi Rajashekar2,3,4, Jennifer A Ruskey5,6, Etienne Leveille5, Kristina Martens2, Mekale Kibreab1,2, Tracy Hammer1,2, Iris Kathol1,2, Nadia Maarouf1,2, Justyna Sarna1,2, Davide Martino1,2, Gerald Pfeffer1,2,7, Ziv Gan-Or5,6,8, Nils D Forkert1,2,4, Oury Monchi9,10,11,12.
Abstract
Cognitive impairments are prevalent in Parkinson's disease (PD), but the underlying mechanisms of their development are unknown. In this study, we aimed to predict global cognition (GC) in PD with machine learning (ML) using structural neuroimaging, genetics and clinical and demographic characteristics. As a post-hoc analysis, we aimed to explore the connection between novel selected features and GC more precisely and to investigate whether this relationship is specific to GC or is driven by specific cognitive domains. 101 idiopathic PD patients had a cognitive assessment, structural MRI and blood draw. ML was performed on 102 input features including demographics, cortical thickness and subcortical measures, and several genetic variants (APOE, MAPT, SNCA, etc.). Using the combination of RRELIEFF and Support Vector Regression, 11 features were found to be predictive of GC including sex, rs894280, Edinburgh Handedness Inventory, UPDRS-III, education, five cortical thickness measures (R-parahippocampal, L-entorhinal, R-rostral anterior cingulate, L-middle temporal, and R-transverse temporal), and R-caudate volume. The rs894280 of SNCA gene was selected as the most novel finding of ML. Post-hoc analysis revealed a robust association between rs894280 and GC, attention, and visuospatial abilities. This variant indicates a potential role for the SNCA gene in cognitive impairments of idiopathic PD.Entities:
Mesh:
Substances:
Year: 2021 PMID: 33649398 PMCID: PMC7921412 DOI: 10.1038/s41598-021-84316-4
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379