Az orvos-, egészségtudományi- és gyógyszerészképzés tudományos műhelyeinek fejlesztése(EFOP-3.6.3-VEKOP-16-2017-00009)
Támogató: EFOP-VEKOP
Aging affects cognitive functions even in the absence of ongoing pathologies. The
neurophysiological basis of age-related cognitive decline (CD), however, is not completely
understood. Alterations in both functional brain connectivity and in the fractal scaling
of neuronal dynamics have been linked to aging and cognitive performance. Recently,
fractal connectivity (FrC) has been proposed — combining the two concepts — for capturing
long-term interactions among brain regions. FrC was shown to be influenced by increased
mental workload; however, no prior studies investigated how resting-state FrC relates
to cognitive performance and plausible CD in healthy aging. We recruited 19 healthy
elderly (HE) and 24 young control (YC) participants, who underwent resting-state electroencephalography
(EEG) measurements and comprehensive cognitive evaluation using 7 tests of the Cambridge
Neurophysiological Test Automated Battery. FrC networks were reconstructed from EEG
data using the recently introduced multiple-resampling cross-spectral analysis (MRCSA).
Elderly individuals could be characterized with increased response latency and reduced
performance in 4–4 tasks, respectively, with both reaction time and accuracy being
affected in two tasks. Auto- and cross-spectral exponents — characterizing regional
fractal dynamics and FrC, respectively, — were found reduced in HE when compared to
YC over most of the cortex. Additionally, fractal scaling of frontoparietal connections
expressed an inverse relationship with task performance in visual memory and sustained
attention domains in elderly, but not in young individuals. Our results confirm that
the fractal nature of brain connectivity — as captured by MRCSA — is affected in healthy
aging. Furthermore, FrC appears as a sensitive neurophysiological marker of age-related
CD.