Category: Parkinson's Disease: Cognitive functions
Objective: To characterize the frequency dependence and the complexity changes of functional connectivity associated with PD cognitive decline.
Background: Changes in spontaneous neural activity have been reported in PD patients with cognitive deficits[1]. However, the frequency dependence of neuronal interaction activities, especially as measured by the fractional amplitude of low-frequency fluctuation (fALFF) and the degree of complexity of these interactions, remains still underinvestigated in PD with cognitive deficits.
Among complexity measures, the Higuchi’s fractal dimension (FD) is emerging as being sensitive to capture the complexity of functional connectivity in neurological disorders[2, 3].
Method: As described in our previous work [4], 118 PD patients were matched for age, sex and education with 35 healthy controls (HC), and classified as 52 PD with normal cognition (PD-NC), 46 with mild cognitive impairment (PD-MCI), and 20 with dementia (PDD) based on an extensive cognitive evaluation. Rs-fMRI data was acquired on 1.5T scanner. Through spatial group ICA, 35 ICs were identified and sorted into 7 functional networks: basal ganglia, auditory (AN), visual, cerebellar, sensorimotor (SMN), cognitive executive (CEN), and default mode network (DMN). Further, a machine learning approach was used to test the best model based on distances between all FDs vs. fALFFs.
Results: The fALFF values in the DMN and CEN were decreased in PD, but increased in the AN, as compared to the HCs. PD-subgroups analyses highlighted that PDD had lower fALFF values than PD-NC/MCI in fronto-parietal internodes located within the CEN.
By contrast, PD patients showed increased complexity than HCs in the SMN, CEN and DMN. Namely, subgroups analyses showed that PDD had increased complexity compared to PD-NC/MCI, in fronto-parieto-occipital internodes located within the CEN and DMN.
Of note, the best model based on distances between all FDs reached the 78% accuracy in differentiating PD-cognitive states as opposed to the 62% accuracy between all fALFFs.
Conclusion: Our study indicates cognitive decline in PD is characterized by an altered spontaneous neuronal activity and an increased temporal complexity, involving namely the CEN and DMN and reflecting an increased segregation of these networks. Hence, we proposed that FD may serve as a prognostic biomarker of PD-cognitive decline.
References: 1. Rong S, Zhang P, He C, Li Y, Li X, Li R, et al. Abnormal Neural Activity in Different Frequency Bands in Parkinson’s Disease With Mild Cognitive Impairment. Frontiers in Aging Neuroscience. 2021;13.
2. Ziukelis ET, Mak E, Dounavi M-E, Su L, T O’Brien J. Fractal dimension of the brain in neurodegenerative disease and dementia: A systematic review. Ageing Research Reviews. 2022;79:101651.
3. Smits FM, Porcaro C, Cottone C, Cancelli A, Rossini PM, Tecchio F. Electroencephalographic Fractal Dimension in Healthy Ageing and Alzheimer’s Disease. PLOS ONE. 2016;11:e0149587.
4. Fiorenzato E, Strafella AP, Kim J, Schifano R, Weis L, Antonini A, et al. Dynamic functional connectivity changes associated with dementia in Parkinson’s disease. Brain. 2019;142:2860–72.
To cite this abstract in AMA style:
E. Fiorenzato, A. Antonini, L. Weis, R. Biundo, V. D’Onofrio, F. Ferreri, S. Moaveninejad, C. Porcaro. Characterization of haemodynamic activity in resting-state networks associated with cognitive decline in PD: a fractal analysis approach [abstract]. Mov Disord. 2023; 38 (suppl 1). https://www.mdsabstracts.org/abstract/characterization-of-haemodynamic-activity-in-resting-state-networks-associated-with-cognitive-decline-in-pd-a-fractal-analysis-approach/. Accessed November 22, 2024.« Back to 2023 International Congress
MDS Abstracts - https://www.mdsabstracts.org/abstract/characterization-of-haemodynamic-activity-in-resting-state-networks-associated-with-cognitive-decline-in-pd-a-fractal-analysis-approach/