| Literature DB >> 30793410 |
Yael Jacob1,2,3, Keren Rosenberg-Katz3, Tanya Gurevich3,4,5, Rick C Helmich6,7, Bastiaan R Bloem6,7, Avi Orr-Urtreger5,8, Nir Giladi3,4,5, Anat Mirelman3,4,5,9, Talma Hendler2,3, Avner Thaler3,4,5.
Abstract
Non-manifesting carriers (NMC) of the G2019S mutation in the LRRK2 gene represent an "at risk" group for future development of Parkinson's disease (PD) and have demonstrated task related fMRI changes. However, resting-state networks have received less research focus, thus this study aimed to assess the integrity of the motor, default mode (DMN), salience (SAL), and dorsal attention (DAN) networks among this unique population by using two different connectivity measures: interregional functional connectivity analysis and Dependency network analysis (DEP NA). Machine learning classification methods were used to distinguish connectivity between the two groups of participants. Forty-four NMC and 41 non-manifesting non-carriers (NMNC) participated in this study; while no behavioral differences on standard questionnaires could be detected, NMC demonstrated lower connectivity measures in the DMN, SAL, and DAN compared to NMNC but not in the motor network. Significant correlations between NMC connectivity measures in the SAL and attention were identified. Machine learning classification separated NMC from NMNC with an accuracy rate above 0.8. Reduced integrity of non-motor networks was detected among NMC of the G2019S mutation in the LRRK2 gene prior to identifiable changes in connectivity of the motor network, indicating significant non-motor cerebral changes among populations "at risk" for future development of PD.Entities:
Keywords: zzm321990LRRK2; Parkinson's disease; graph theory network analysis; machine learning classification; resting state fMRI
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Year: 2019 PMID: 30793410 PMCID: PMC6865680 DOI: 10.1002/hbm.24543
Source DB: PubMed Journal: Hum Brain Mapp ISSN: 1065-9471 Impact factor: 5.038