34 results on '"Rossini, Paolo"'
Search Results
2. Small World derived index to distinguish Alzheimer's type dementia and healthy subjects.
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Vecchio, Fabrizio, Miraglia, Francesca, Pappalettera, Chiara, Nucci, Lorenzo, Cacciotti, Alessia, and Rossini, Paolo Maria
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BRAIN physiology ,RISK assessment ,ALZHEIMER'S disease ,ELECTROENCEPHALOGRAPHY ,DESCRIPTIVE statistics ,PSYCHOLOGY of movement ,NEUROPSYCHOLOGY ,NEUROPSYCHOLOGICAL tests ,ONE-way analysis of variance ,DEMENTIA ,DATA analysis software ,MACHINE learning ,BIOMARKERS - Abstract
Background This article introduces a novel index aimed at uncovering specific brain connectivity patterns associated with Alzheimer's disease (AD), defined according to neuropsychological patterns. Methods Electroencephalographic (EEG) recordings of 370 people, including 170 healthy subjects and 200 mild-AD patients, were acquired in different clinical centres using different acquisition equipment by harmonising acquisition settings. The study employed a new derived Small World (SW) index, SWcomb, that serves as a comprehensive metric designed to integrate the seven SW parameters, computed across the typical EEG frequency bands. The objective is to create a unified index that effectively distinguishes individuals with a neuropsychological pattern compatible with AD from healthy ones. Results Results showed that the healthy group exhibited the lowest SWcomb values, while the AD group displayed the highest SWcomb ones. Conclusions These findings suggest that SWcomb index represents an easy-to-perform, low-cost, widely available and non-invasive biomarker for distinguishing between healthy individuals and AD patients. [ABSTRACT FROM AUTHOR]
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- 2024
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3. Human brain networks: a graph theoretical analysis of cortical connectivity normative database from EEG data in healthy elderly subjects
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Vecchio, Fabrizio, Miraglia, Francesca, Judica, Elda, Cotelli, Maria, Alù, Francesca, and Rossini, Paolo Maria
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- 2020
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4. “Small World” architecture in brain connectivity and hippocampal volume in Alzheimer’s disease: a study via graph theory from EEG data
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Vecchio, Fabrizio, Miraglia, Francesca, Piludu, Francesca, Granata, Giuseppe, Romanello, Roberto, Caulo, Massimo, Onofrj, Valeria, Bramanti, Placido, Colosimo, Cesare, and Rossini, Paolo Maria
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- 2017
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5. Early dementia diagnosis, MCI‐to‐dementia risk prediction, and the role of machine learning methods for feature extraction from integrated biomarkers, in particular for EEG signal analysis.
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Rossini, Paolo Maria, Miraglia, Francesca, and Vecchio, Fabrizio
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Introduction: Dementia in its various forms represents one of the most frightening emergencies for the aging population. Cognitive decline—including Alzheimer's disease (AD) dementia—does not develop in few days; disease mechanisms act progressively for several years before clinical evidence. Methods: A preclinical stage, characterized by measurable cognitive impairment, but not overt dementia, is represented by mild cognitive impairment (MCI), which progresses to—or, more accurately, is already in a prodromal form of—AD in about half cases; people with MCI are therefore considered the population at risk for AD deserving special attention for validating screening methods. Results: Graph analysis tools, combined with machine learning methods, represent an interesting probe to identify the distinctive features of physiological/pathological brain aging focusing on functional connectivity networks evaluated on electroencephalographic data and neuropsychological/imaging/genetic/metabolic/cerebrospinal fluid/blood biomarkers. Discussion: On clinical data, this innovative approach for early diagnosis might provide more insight into pathophysiological processes underlying degenerative changes, as well as toward a personalized risk evaluation for pharmacological, nonpharmacological, and rehabilitation treatments. [ABSTRACT FROM AUTHOR]
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- 2022
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6. Brain Connectivity and Graph Theory Analysis in Alzheimer's and Parkinson's Disease: The Contribution of Electrophysiological Techniques.
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Miraglia, Francesca, Vecchio, Fabrizio, Pappalettera, Chiara, Nucci, Lorenzo, Cotelli, Maria, Judica, Elda, Ferreri, Florinda, and Rossini, Paolo Maria
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ALZHEIMER'S disease ,PARKINSON'S disease ,GRAPH connectivity ,GRAPH theory ,ELECTROPHYSIOLOGY - Abstract
In recent years, applications of the network science to electrophysiological data have increased as electrophysiological techniques are not only relatively low cost, largely available on the territory and non-invasive, but also potential tools for large population screening. One of the emergent methods for the study of functional connectivity in electrophysiological recordings is graph theory: it allows to describe the brain through a mathematic model, the graph, and provides a simple representation of a complex system. As Alzheimer's and Parkinson's disease are associated with synaptic disruptions and changes in the strength of functional connectivity, they can be well described by functional connectivity analysis computed via graph theory. The aim of the present review is to provide an overview of the most recent applications of the graph theory to electrophysiological data in the two by far most frequent neurodegenerative disorders, Alzheimer's and Parkinson's diseases. [ABSTRACT FROM AUTHOR]
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- 2022
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7. Contribution of Graph Theory Applied to EEG Data Analysis for Alzheimer's Disease Versus Vascular Dementia Diagnosis.
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Vecchio, Fabrizio, Miraglia, Francesca, Alú, Francesca, Orticoni, Alessandro, Judica, Elda, Cotelli, Maria, and Rossini, Paolo Maria
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BRAIN diseases ,VASCULAR dementia ,ALZHEIMER'S disease ,GRAPH theory ,ALPHA rhythm ,ELECTROENCEPHALOGRAPHY ,BRAIN physiology ,ALZHEIMER'S disease diagnosis ,BRAIN ,RESEARCH evaluation ,NERVOUS system ,DIFFERENTIAL diagnosis ,BRAIN mapping - Abstract
Background: Most common progressive brain diseases in the elderly are Alzheimer's disease (AD) and vascular dementia (VaD). They present with relatively similar clinical symptoms of cognitive decline, but the underlying pathophysiological mechanisms are different.Objective: The aim is to explore the brain connectivity differences between AD and VaD patients compared to mild cognitive impairment (MCI) and normal elderly (Nold) subjects applying graph theory, in particular the Small World (SW) analysis.Methods: 274 resting state EEGs were analyzed in 100 AD, 80 MCI, 40 VaD, and 54 Nold subjects. Graph theory analyses were applied to undirected and weighted networks obtained by lagged linear coherence evaluated by eLORETA tool.Results: VaD and AD patients presented more ordered low frequency structure (lower value of SW) than Nold and MCI subjects, and more random organization (higher value of SW) in low and high frequency alpha rhythms. Differences between patients have been found in high frequency alpha rhythms in VaD (higher value of SW) with respect to AD, and in theta band with a trend which is more similar to MCI and Nold than to AD. MCI subjects presented a network organization which is intermediate, in low frequency bands, between Nold and patients.Conclusion: Graph theory applied to EEG data has proved very useful in identifying differences in brain network patterns in subjects with dementia, proving to be a valid tool for differential diagnosis. Future studies will aim to validate this method to diagnose especially in the early stages of the disease and at single subject level. [ABSTRACT FROM AUTHOR]- Published
- 2021
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8. Sustainable method for Alzheimer's prediction in Mild Cognitive Impairment: EEG connectivity and graph theory combined with ApoE
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Vecchio, Fabrizio, Miraglia, Francesca, Iberite, Francesco, Lacidogna, Giordano, Guglielmi, Valeria, Marra, Camillo, Pasqualetti, Patrizio, Tiziano, Francesco Danilo, and Rossini, Paolo Maria
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Settore MED/26 - NEUROLOGIA ,Alzheimer ,ApoE ,EEG ,MCI ,alpha band ,conversion ,eLORETA ,functional connectivity ,graph theory ,precision medicine - Published
- 2018
9. Classification of Alzheimer's Disease with Respect to Physiological Aging with Innovative EEG Biomarkers in a Machine Learning Implementation.
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Vecchio, Fabrizio, Miraglia, Francesca, Alù, Francesca, Menna, Matteo, Judica, Elda, Cotelli, Maria, and Rossini, Paolo Maria
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BRAIN physiology ,ALZHEIMER'S disease diagnosis ,BRAIN ,RESEARCH ,ELECTROENCEPHALOGRAPHY ,ALZHEIMER'S disease ,RESEARCH methodology ,MEDICAL cooperation ,EVALUATION research ,NEUROPSYCHOLOGICAL tests ,COMPARATIVE studies ,AGE factors in Alzheimer's disease - Abstract
Background: Several studies investigated clinical and instrumental differences to make diagnosis of dementia in general and in Alzheimer's disease (AD) in particular with the aim to classify, at the individual level, AD patients and healthy controls cooperating with neuropsychological tests for an early diagnosis. Advanced network analysis of electroencephalographic (EEG) rhythms provides information on dynamic brain connectivity and could be used in classification processes. If successfully reached, this goal would add a low-cost, easily accessible, and non-invasive technique with neuropsychological tests.Objective: To investigate the possibility to automatically classify physiological versus pathological aging from cortical sources' connectivity based on a support vector machine (SVM) applied to EEG small-world parameter.Methods: A total of 295 subjects were recruited: 120 healthy volunteers and 175 AD. Graph theory functions were applied to undirected and weighted networks obtained by lagged linear coherence evaluated by eLORETA. A machine-learning classifier (SVM) was applied. EEG frequency bands were: delta (2-4 Hz), theta (4-8 Hz), alpha1 (8-10.5 Hz), alpha2 (10.5-13 Hz), beta1 (13-20 Hz), beta2 (20-30 Hz), and gamma (30-40 Hz).Results: The receiver operating characteristic curve showed AUC of 0.97±0.03 (indicating very high classification accuracy). The classifier showed 95% ±5% sensitivity, 96% ±3% specificity, and 95% ±3% accuracy for the classification.Conclusion: EEG connectivity analysis via a combination of source/connectivity biomarkers, highly correlating with neuropsychological AD diagnosis, could represent a promising tool in identification of AD patients. This approach represents a low-cost and non-invasive method, one that utilizes widely available techniques which, when combined, reach high sensitivity/specificity and optimal classification accuracy on an individual basis (0.97 of AUC). [ABSTRACT FROM AUTHOR]- Published
- 2020
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10. Small World Index in Default Mode Network Predicts Progression from Mild Cognitive Impairment to Dementia.
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Miraglia, Francesca, Vecchio, Fabrizio, Marra, Camillo, Quaranta, Davide, Alù, Francesca, Peroni, Benedetta, Granata, Giuseppe, Judica, Elda, Cotelli, Maria, and Rossini, Paolo Maria
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MILD cognitive impairment ,COGNITION disorders ,DEMENTIA ,ALZHEIMER'S disease ,INFORMATION processing - Abstract
Aim of this study was to explore the EEG functional connectivity in amnesic mild cognitive impairments (MCI) subjects with multidomain impairment in order to characterize the Default Mode Network (DMN) in converted MCI (cMCI), which converted to Alzheimer's disease (AD), compared to stable MCI (sMCI) subjects. A total of 59 MCI subjects were recruited and divided -after appropriate follow-up- into cMCI or sMCI. They were further divided in MCI with linguistic domain (LD) impairment and in MCI with executive domain (ED) impairment. Small World (SW) index was measured as index of balance between integration and segregation brain processes. SW, computed restricting to nodes of DMN regions for all frequency bands, evaluated how they differ between MCI subgroups assessed through clinical and neuropsychological four-years follow-up. In addition, SW evaluated how this pattern differs between MCI with LD and MCI with ED. Results showed that SW index significantly decreased in gamma band in cMCI compared to sMCI. In cMCI with LD impairment, the SW index significantly decreased in delta band, while in cMCI with ED impairment the SW index decreased in delta and gamma bands and increased in alpha1 band. We propose that the DMN functional alterations in cognitive impairment could reflect an abnormal flow of brain information processing during resting state possibly associated to a status of pre-dementia. [ABSTRACT FROM AUTHOR]
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- 2020
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11. Tracking Neuronal Connectivity from Electric Brain Signals to Predict Performance.
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Vecchio, Fabrizio, Miraglia, Francesca, and Rossini, Paolo Maria
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NEUROSCIENCES ,TASK performance - Abstract
The human brain is a complex container of interconnected networks. Network neuroscience is a recent venture aiming to explore the connection matrix built from the human brain or human "Connectome." Network-based algorithms provide parameters that define global organization of the brain; when they are applied to electroencephalographic (EEG) signals network, configuration and excitability can be monitored in millisecond time frames, providing remarkable information on their instantaneous efficacy also for a given task's performance via online evaluation of the underlying instantaneous networks before, during, and after the task. Here we provide an updated summary on the connectome analysis for the prediction of performance via the study of task-related dynamics of brain network organization from EEG signals. [ABSTRACT FROM AUTHOR]
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- 2019
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12. Learning Processes and Brain Connectivity in A Cognitive-Motor Task in Neurodegeneration: Evidence from EEG Network Analysis.
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Vecchio, Fabrizio, Miraglia, Francesca, Quaranta, Davide, Lacidogna, Giordano, Marra, Camillo, and Rossini, Paolo Maria
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NEURODEGENERATION ,COGNITIVE ability ,LEARNING ability ,ELECTROENCEPHALOGRAPHY ,MOTOR ability testing ,BIOLOGICAL neural networks ,GRAPH theory ,BRAIN physiology ,ALZHEIMER'S disease ,CEREBRAL dominance ,LEARNING disabilities ,MAGNETIC resonance imaging ,PSYCHOLOGY of movement ,PSYCHOLOGICAL tests ,NEURAL pathways ,DISEASE complications - Abstract
Electroencephalographic (EEG) rhythms are linked to any kind of learning and cognitive performance including motor tasks. The brain is a complex network consisting of spatially distributed networks dedicated to different functions including cognitive domains where dynamic interactions of several brain areas play a pivotal role. Brain connectome could be a useful approach not only to mechanisms underlying brain cognitive functions, but also to those supporting different mental states. This goal was approached via a learning task providing the possibility to predict performance and learning along physiological and pathological brain aging. Eighty-six subjects (22 healthy, 47 amnesic mild cognitive impairment, 17 Alzheimer's disease) were recruited reflecting the whole spectrum of normal and abnormal brain connectivity scenarios. EEG recordings were performed at rest, with closed eyes, both before and after the task (Sensory Motor Learning task consisting of a visual rotation paradigm). Brain network properties were described by Small World index (SW), representing a combination of segregation and integration properties. Correlation analyses showed that alpha 2 SW in pre-task significantly predict learning (r = -0.2592, p < 0.0342): lower alpha 2 SW (higher possibility to increase during task and better the learning of this task), higher the learning as measured by the number of reached targets. These results suggest that, by means of an innovative analysis applied to a low-cost and widely available techniques (SW applied to EEG), the functional connectome approach as well as conventional biomarkers would be effective methods for monitoring learning progress during training both in normal and abnormal conditions. [ABSTRACT FROM AUTHOR]
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- 2018
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13. Cortical connectivity modulation during sleep onset: A study via graph theory on EEG data.
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Vecchio, Fabrizio, Miraglia, Francesca, Gorgoni, Maurizio, Ferrara, Michele, Iberite, Francesco, Bramanti, Placido, De Gennaro, Luigi, and Rossini, Paolo Maria
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Sleep onset is characterized by a specific and orchestrated pattern of frequency and topographical EEG changes. Conventional power analyses of electroencephalographic (EEG) and computational assessments of network dynamics have described an earlier synchronization of the centrofrontal areas rhythms and a spread of synchronizing signals from associative prefrontal to posterior areas. Here, we assess how 'small world' characteristics of the brain networks, as reflected in the EEG rhythms, are modified in the wakefulness-sleep transition comparing the pre- and post-sleep onset epochs. The results show that sleep onset is characterized by a less ordered brain network (as reflected by the higher value of small world) in the sigma band for the frontal lobes indicating stronger connectivity, and a more ordered brain network in the low frequency delta and theta bands indicating disconnection on the remaining brain areas. Our results depict the timing and topography of the specific mechanisms for the maintenance of functional connectivity of frontal brain regions at the sleep onset, also providing a possible explanation for the prevalence of the frontal-to-posterior information flow directionality previously observed after sleep onset. Hum Brain Mapp 38:5456-5464, 2017. © 2017 Wiley Periodicals, Inc. [ABSTRACT FROM AUTHOR]
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- 2017
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14. From Mild Cognitive Impairment to Alzheimer's Disease: A New Perspective in the "Land" of Human Brain Reactivity and Connectivity.
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Rossini, Paolo Maria, Di Iorio, Riccardo, Granata, Giuseppe, Miraglia, Francesca, and Vecchio, Fabrizio
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MILD cognitive impairment , *ALZHEIMER'S disease , *DEMENTIA risk factors , *DISEASE progression , *GRAPH theory , *BRAIN physiology , *NEURAL pathways , *ELECTROENCEPHALOGRAPHY , *TRANSCRANIAL direct current stimulation , *DISEASE complications , *PHYSIOLOGY - Abstract
In a recent study, analyzing the modulation of γ-band oscillations, Naro and colleagues demonstrated that transcranial alternating current stimulation could drive the gamma rhythms in the human EEG in cognitive healthy elderly subjects but not in mild cognitive impairment (MCI) prodromal to Alzheimer's disease (AD) and in early AD patients. Therefore, this method is proposed to intercept early in the disease course those MCI subjects who are in a pre-symptomatic stage of an already established AD. This prediction index may help the clinician to adopt a better prevention/follow-up strategy. In this direction, the novel advances in EEG analysis for the evaluation of brain reactivity and connectivity-namely via innovative mathematical approach, i.e., graph theory-represent a promising tool for a non-invasive and easy-to-perform neurophysiological marker that could be used for the pre-symptomatic diagnosis of AD and to predict MCI progression to dementia. [ABSTRACT FROM AUTHOR]
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- 2016
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15. Cortical Brain Connectivity Evaluated by Graph Theory in Dementia: A Correlation Study Between Functional and Structural Data.
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Vecchio, Fabrizio, Miraglia, Francesca, Curcio, Giuseppe, Altavilla, Riccardo, Scrascia, Federica, Giambattistelli, Federica, Quattrocchi, Carlo Cosimo, Bramanti, Placido, Vernieri, Fabrizio, and Rossini, Paolo Maria
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BRAIN injuries ,BRAIN anatomy ,ALZHEIMER'S patients ,ETIOLOGY of dementia ,NEUROSCIENCES ,DIFFUSION tensor imaging ,ANISOTROPY ,MILD cognitive impairment ,PATIENTS - Abstract
A relatively new approach to brain function in neuroscience is the 'functional connectivity', namely the synchrony in time of activity in anatomically-distinct but functionally-collaborating brain regions. On the other hand, diffusion tensor imaging (DTI) is a recently developed magnetic resonance imaging (MRI)-based technique with the capability to detect brain structural connection with fractional anisotropy (FA) identification. FA decrease has been observed in the corpus callosum of subjects with Alzheimer's disease (AD) and mild cognitive impairment (MCI, an AD prodromal stage). Corpus callosum splenium DTI abnormalities are thought to be associated with functional disconnections among cortical areas. This study aimed to investigate possible correlations between structural damage, measured by MRI-DTI, and functional abnormalities of brain integration, measured by characteristic path length detected in resting state EEG source activity (40 participants: 9 healthy controls, 10 MCI, 10 mild AD, 11 moderate AD). For each subject, undirected and weighted brain network was built to evaluate graph core measures. eLORETA lagged linear connectivity values were used as weight of the edges of the network. Results showed that callosal FA reduction is associated to a loss of brain interhemispheric functional connectivity characterized by increased delta and decreased alpha path length. These findings suggest that 'global' (average network shortest path length representing an index of how efficient is the information transfer between two parts of the network) functional measure can reflect the reduction of fiber connecting the two hemispheres as revealed by DTI analysis and also anticipate in time this structural loss. [ABSTRACT FROM AUTHOR]
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- 2015
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16. Human Brain Networks in Physiological Aging: A Graph Theoretical Analysis of Cortical Connectivity from EEG Data.
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Vecchio, Fabrizio, Miraglia, Francesca, Bramanti, Placido, and Rossini, Paolo Maria
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BRAIN research ,PHYSIOLOGICAL aspects of aging ,ELECTROENCEPHALOGRAPHY ,OLDER people physiology ,MAGNETIC induction tomography ,GRAPH theory - Abstract
Modern analysis of electroencephalographic (EEG) rhythms provides information on dynamic brain connectivity. To test the hypothesis that aging processes modulate the brain connectivity network, EEG recording was conducted on 113 healthy volunteers. They were divided into three groups in accordance with their ages: 36 Young (15-45 years), 46 Adult (50-70 years), and 31 Elderly (>70 years). To evaluate the stability of the investigated parameters, a subgroup of 10 subjects underwent a second EEG recording two weeks later. Graph theory functions were applied to the undirected and weighted networks obtained by the lagged linear coherence evaluated by eLORETA on cortical sources. EEG frequency bands of interest were: delta (2-4 Hz), theta (4-8 Hz), alpha1 (8-10.5 Hz), alpha2 (10.5-13 Hz), beta1 (13-20 Hz), beta2 (20-30 Hz), and gamma (30-40 Hz). The spectral connectivity analysis of cortical sources showed that the normalized Characteristic Path Length (λ) presented the pattern Young > Adult>Elderly in the higher alpha band. Elderly also showed a greater increase in delta and theta bands than Young. The correlation between age and λ showed that higher ages corresponded to higher λ in delta and theta and lower in the alpha2 band; this pattern reflects the age-related modulation of higher (alpha) and decreased (delta) connectivity. The Normalized Clustering coefficient (γ) and small-world network modeling (σ) showed non-significant age-modulation. Evidence from the present study suggests that graph theory can aid in the analysis of connectivity patterns estimated from EEG and can facilitate the study of the physiological and pathological brain aging features of functional connectivity networks. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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17. Human Brain Networks in Cognitive Decline: A Graph Theoretical Analysis of Cortical Connectivity from EEG Data.
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Vecchio, Fabrizio, Miraglia, Francesca, Marra, Camillo, Quaranta, Davide, Vita, Maria Gabriella, Bramanti, Placido, and Rossini, Paolo Maria
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ALZHEIMER'S disease research ,MILD cognitive impairment ,COGNITIVE ability ,GERIATRIC psychology ,DEMENTIA research - Abstract
The aim of this study was to investigate the neuronal network characteristics in physiological and pathological brain aging. A database of 378 participants divided in three groups was analyzed: Alzheimer's disease (AD), mild cognitive impairment (MCI), and normal elderly (Nold) subjects. Through EEG recordings, cortical sources were evaluated by sLORETA software, while graph theory parameters (Characteristic Path Length λ, Clustering coefficient γ, and small-world network σ) were computed to the undirected and weighted networks, obtained by the lagged linear coherence evaluated by eLORETA software. EEG cortical sources from spectral analysis showed significant differences in delta, theta, and alpha 1 bands. Furthermore, the analysis of eLORETA cortical connectivity suggested that for the normalized Characteristic Path Length (λ) the pattern differences between normal cognition and dementia were observed in the theta band (MCI subjects are find similar to healthy subjects), while for the normalized Clustering coefficient (γ) a significant increment was found for AD group in delta, theta, and alpha 1 bands; finally, the small world (σ) parameter presented a significant interaction between AD and MCI groups showing a theta increase in MCI. The fact that AD patients respect the MCI subjects were significantly impaired in theta but not in alpha bands connectivity are in line with the hypothesis of an intermediate status of MCI between normal condition and overt dementia. [ABSTRACT FROM AUTHOR]
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- 2014
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18. Graph Theory on Brain Cortical Sources in Parkinson's Disease: The Analysis of 'Small World' Organization from EEG.
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Vecchio, Fabrizio, Pappalettera, Chiara, Miraglia, Francesca, Alù, Francesca, Orticoni, Alessandro, Judica, Elda, Cotelli, Maria, Pistoia, Francesca, and Rossini, Paolo Maria
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PARKINSON'S disease ,GRAPH theory ,RECONSTRUCTION (Graph theory) ,OLDER people ,EARLY diagnosis - Abstract
Parkinson's disease (PD) is the second most common neurodegenerative disease in the elderly population. Similarly to other neurodegenerative diseases, the early diagnosis of PD is quite difficult. The current pilot study aimed to explore the differences in brain connectivity between PD and NOrmal eLDerly (Nold) subjects to evaluate whether connectivity analysis may speed up and support early diagnosis. A total of 26 resting state EEGs were analyzed from 13 PD patients and 13 age-matched Nold subjects, applying to cortical reconstructions the graph theory analyses, a mathematical representation of brain architecture. Results showed that PD patients presented a more ordered structure at slow-frequency EEG rhythms (lower value of SW) than Nold subjects, particularly in the theta band, whereas in the high-frequency alpha, PD patients presented more random organization (higher SW) than Nold subjects. The current results suggest that PD could globally modulate the cortical connectivity of the brain, modifying the functional network organization and resulting in motor and non-motor signs. Future studies could validate whether such an approach, based on a low-cost and non-invasive technique, could be useful for early diagnosis, for the follow-up of PD progression, as well as for evaluating pharmacological and neurorehabilitation treatments. [ABSTRACT FROM AUTHOR]
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- 2021
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19. Brain electroencephalographic segregation as a biomarker of learning.
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Miraglia, Francesca, Vecchio, Fabrizio, and Rossini, Paolo Maria
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ELECTROENCEPHALOGRAPHY , *BRAIN function localization , *MOTOR learning , *GAMMA rays , *COGNITION - Abstract
Abstract The aim of the present study was to understand whether modeling brain function in terms of network structure makes it possible to find markers of prediction of motor learning performance in a sensory motor learning task. By applying graph theory indexes of brain segregation – such as modularity and transitivity – to functional connectivity data derived from electroencephalographic (EEG) rhythms, we further studied pre- (baseline) versus post-task brain network architecture to understand whether motor learning induces changes in functional brain connectivity. The results showed that, after the training session with measurable learning, transitivity increased in the alpha1 EEG frequency band and modularity increased in the theta band and decreased in the gamma band, suggesting that brain segregation is modulated by the cognitive task. Furthermore, it was observed that theta modularity at the baseline negatively correlated with the performance improvement; namely, the lower this connectivity index at the baseline pre-task period, the higher the improvement of performance with training. The present results show that brain segregation is modulated by the cognitive task and that it is possible to predict performance by the study of pre-task EEG rhythm connectivity parameters. [ABSTRACT FROM AUTHOR]
- Published
- 2018
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20. Searching for signs of aging and dementia in EEG through network analysis.
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Miraglia, Francesca, Vecchio, Fabrizio, and Rossini, Paolo Maria
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ELECTROENCEPHALOGRAPHY , *AGING , *BRAIN , *NEURAL circuitry , *COGNITIVE ability , *PATHOLOGICAL physiology , *GRAPH theory - Abstract
Graph theory applications had spread widely in understanding how human cognitive functions are linked to dynamics of neuronal network structure, providing a conceptual frame that can reduce the analytical brain complexity. This review summarizes methodological advances in this field. Electroencephalographic functional network studies in pathophysiological aging will be presented, focusing on neurodegenerative disease −such Alzheimer’s disease-aiming to discuss whether network science is changing the traditional concept of brain disease and how network topology knowledge could help in modeling resilience and vulnerability of diseases. Aim of this work is to open discussion on how network model could better describe brain architecture. [ABSTRACT FROM AUTHOR]
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- 2017
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21. Source-level EEG and graph theory reveal widespread functional network alterations in focal epilepsy.
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Hatlestad-Hall, Christoffer, Bruña, Ricardo, Syvertsen, Marte Roa, Erichsen, Aksel, Andersson, Vebjørn, Vecchio, Fabrizio, Miraglia, Francesca, Rossini, Paolo M., Renvall, Hanna, Taubøll, Erik, Maestú, Fernando, and Haraldsen, Ira H.
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PARTIAL epilepsy , *EPILEPSY , *GRAPH theory , *ELECTROENCEPHALOGRAPHY , *QUALITY of life , *COGNITION disorders - Abstract
• Focal epilepsies are associated with widespread interictal functional network alterations, extending beyond the epilepsy focus. • Graph theory analyses of source EEG functional connectivity capture these network changes, and might thus be clinically relevant. • Group-level differences in network metrics are relatively stable across network analysis parameters. The hypersynchronous neuronal activity associated with epilepsy causes widespread functional network disruptions extending beyond the epileptogenic zone. This altered network topology is considered a mediator for non-seizure symptoms, such as cognitive impairment. The aim of this study was to investigate functional network alterations in focal epilepsy patients with good seizure control and high quality of life. We compared twenty-two focal epilepsy patients and sixteen healthy controls on graph metrics derived from functional connectivity of source-level resting-state EEG. Graph metrics were calculated over a range of network densities in five frequency bands. We observed a significantly increased small world index in patients relative to controls. On the local level, two left-hemisphere regions displayed a shift towards greater alpha band "hubness". The findings were not mediated by age, sex or education, nor by age of epilepsy onset, duration or focus lateralisation. Widespread functional network alterations are evident in focal epilepsy, even in a cohort characterised by successful anti-seizure medication therapy and high quality of life. These findings might support the position that functional network analysis could hold clinical relevance for epilepsy. Focal epilepsy is accompanied by global and local functional network aberrancies which might be implied in the sustenance of non-seizure symptoms. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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22. The brain network organization during sleep onset after deprivation.
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Miraglia, Francesca, Tomino, Carlo, Vecchio, Fabrizio, Gorgoni, Maurizio, De Gennaro, Luigi, and Rossini, Paolo Maria
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SLEEP , *SLEEP deprivation , *FUNCTIONAL connectivity , *FUNCTIONAL analysis , *ELECTROENCEPHALOGRAPHY - Abstract
• A night of sleep deprivation affects EEG during the subsequent recovery sleep. • Brain networks organization is modified during the wakefulness-to-sleep transition. • During sleep, EEG connectivity resembles more a small-world network organization. Aim of the present study is to investigate the alterations of brain networks derived from EEG analysis in pre- and post-sleep onset conditions after 40 h of sleep deprivation (SD) compared to sleep onset after normal sleep in 39 healthy subjects. Functional connectivity analysis was made on electroencelographic (EEG) cortical sources of current density and small world (SW) index was evaluated in the EEG frequency bands (delta, theta, alpha, sigma and beta). Comparing pre- vs. post-sleep onset conditions after a night of SD a significant decrease of SW in delta and theta bands in post-sleep onset condition was found together with an increase of SW in sigma band. Comparing pre-sleep onset after sleep SD versus pre-sleep onset after a night of normal sleep a decreased of SW index in beta band in pre-sleep onset in SD compared to pre-sleep onset in normal sleep was evidenced. Brain functional network architecture is influenced by the SD in different ways. Brain networks topology during wake resting state needs to be further explored to reveal SD-related changes in order to prevent possible negative effects of SD on behaviour and brain function during wakefulness. The SW modulations as revealed by the current study could be used as an index of an altered balance between brain integration and segregation processes after SD. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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23. N°341 – The prognostic role of hemispheric functional connectivity in ischemic stroke using coherence analysis and graph theory applied to electroencephalography.
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Pappalettera, Chiara, Miraglia, Francesca, Nucci, Lorenzo, Cacciotti, Alessia, Rossini, Paolo Maria, and Vecchio, Fabrizio
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ISCHEMIC stroke , *FUNCTIONAL connectivity , *GRAPH theory , *ELECTROENCEPHALOGRAPHY - Published
- 2023
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24. Human brain connectivity: Clinical applications for clinical neurophysiology.
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Hallett, Mark, de Haan, Willem, Deco, Gustavo, Dengler, Reinhard, Di Iorio, Riccardo, Gallea, Cecile, Gerloff, Christian, Grefkes, Christian, Helmich, Rick C., Kringelbach, Morten L., Miraglia, Francesca, Rektor, Ivan, Strýček, Ondřej, Vecchio, Fabrizio, Volz, Lukas J., Wu, Tao, and Rossini, Paolo M.
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SYMPTOMS , *NEUROLOGICAL disorders , *MENTAL illness , *AMYOTROPHIC lateral sclerosis , *BRAIN diseases , *MOVEMENT disorders , *ESSENTIAL tremor - Abstract
• The brain operates in networks and clinical neurophysiology can assess these networks. • Methods include EEG, MEG, and functional MRI. • Neurological and psychiatric disorders cause a breakdown in brain networks. This manuscript is the second part of a two-part description of the current status of understanding of the network function of the brain in health and disease. We start with the concept that brain function can be understood only by understanding its networks, how and why information flows in the brain. The first manuscript dealt with methods for network analysis, and the current manuscript focuses on the use of these methods to understand a wide variety of neurological and psychiatric disorders. Disorders considered are neurodegenerative disorders, such as Alzheimer disease and amyotrophic lateral sclerosis, stroke, movement disorders, including essential tremor, Parkinson disease, dystonia and apraxia, epilepsy, psychiatric disorders such as schizophrenia, and phantom limb pain. This state-of-the-art review makes clear the value of networks and brain models for understanding symptoms and signs of disease and can serve as a foundation for further work. [ABSTRACT FROM AUTHOR]
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- 2020
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25. Cortical connectivity from EEG data in acute stroke: A study via graph theory as a potential biomarker for functional recovery.
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Vecchio, Fabrizio, Tomino, Carlo, Miraglia, Francesca, Iodice, Francesco, Erra, Carmen, Di Iorio, Riccardo, Judica, Elda, Alù, Francesca, Fini, Massimo, and Rossini, Paolo Maria
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POTENTIAL theory (Mathematics) , *GRAPH theory , *ELECTROENCEPHALOGRAPHY , *STROKE , *BRAIN abnormalities - Abstract
Cerebral post-stroke plasticity has been repeatedly investigated via functional neuroimaging techniques mainly based on blood flow/metabolism. However, little is known on predictive value of topological properties of widely distributed neural networks immediately following stroke on rehabilitation outcome and post-stroke recovery measured by early functional outcome. The utility of EEG network parameters (i.e. small world organization) analysis as a potential rough and simple biomarker for stroke outcome has been little explored and needs more validation. A total of 139 consecutive patients within a post-stroke acute stage underwent EEG recording. A group of 110 age paired healthy subjects constituted the control group. All patients were clinically evaluated with 3 scales for stroke: NIHSS, Barthel and ARAT. As a first result, NIHSS, Barthel and ARAT correlated with Small World index as provided by the proportional increment/decrement of low (delta) and viceversa of high (beta2 and gamma) EEG frequency bands. Furthermore, in line with the aim of the present study, we found a strong correlation between NIHSS at follow up and gamma Small World index in the acute post-stroke period, giving SW index a significant weight of recovery prediction. This study aimed to investigate possible correlations between functional abnormalities of brain networks, measured by small world characteristics detected in resting state EEG source investigation, and early post-stroke clinical outcome in order to find a possible predictive index of functional recovery to address and/or correct the rehabilitation program. • NIHSS, Barthel and ARAT correlated with Small World index. • Strong correlation between NIHSS at follow up and gamma Small World in acute period • SW index has a significant weight of recovery prediction. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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26. Acute cerebellar stroke and middle cerebral artery stroke exert distinctive modifications on functional cortical connectivity: A comparative study via EEG graph theory.
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Vecchio, Fabrizio, Caliandro, Pietro, Reale, Giuseppe, Miraglia, Francesca, Piludu, Francesca, Masi, Gianvito, Iacovelli, Chiara, Simbolotti, Chiara, Padua, Luca, Leone, Edoardo, Alù, Francesca, Colosimo, Cesare, and Rossini, Paolo Maria
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CEREBRAL arteries , *GRAPH theory , *ELECTROENCEPHALOGRAPHY , *STROKE , *BRAIN abnormalities - Abstract
• Acute cerebellar stroke may determine changes in brain network architecture. • Optimal network structure is essential for proper information processing in the brain. • Functional abnormalities of the brain are found to be associated with the pathological changes in connectivity and network structures. We tested whether acute cerebellar stroke may determine changes in brain network architecture as defined by cortical sources of EEG rhythms. Graph parameters of 41 consecutive stroke patients (<5 days from the event) were studied using eLORETA EEG sources. Network rearrangements of stroke patients were investigated in delta, alpha 2, beta 2 and gamma bands in comparison with healthy subjects. The delta network remodeling was similar in cerebellar and middle cerebral artery strokes, with a reduction of small-worldness. Beta 2 and gamma small-worldness , in the right hemisphere of patients with cerebellar stroke, increase respect to healthy subjects, while alpha 2 small-worldness increases only among patients with a middle cerebral artery stroke. The network remodeling characteristics are independent on the size of the ischemic lesion. In the early post-acute stages cerebellar stroke differs from the middle cerebral artery one because it does not cause alpha 2 network remodeling while it determines a high frequency network reorganization in beta 2 and gamma bands with an increase of small-worldness characteristics. These findings demonstrate changes in the balance of local segregation and global integration induced by cerebellar acute stroke in high EEG frequency bands. They need to be integrated with appropriate follow-up to explore whether further network changes are attained during post-stroke outcome stabilization. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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27. N°340 – Graph theory[StQuote]s contribution in EEG data analysis for differential diagnosis of Alzheimer[StQuote]s disease and vascular dementia.
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Nucci, Lorenzo, Miraglia, Francesca, Pappalettera, Chiara, Cacciotti, Alessia, Rossini, Paolo Maria, and Vecchio, Fabrizio
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GRAPH theory , *DIFFERENTIAL diagnosis , *VASCULAR diseases , *DATA analysis , *ELECTROENCEPHALOGRAPHY , *VASCULAR dementia - Published
- 2023
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28. N°171 – The combination of hyperventilation test and graph theory parameters to characterize EEG changes in mild cognitive impairment condition.
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Miraglia, Francesca, Pappalettera, Chiara, Cacciotti, Alessia, Nucci, Lorenzo, Vecchio, Fabrizio, and Rossini, Paolo Maria
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MILD cognitive impairment , *GRAPH theory , *HYPERVENTILATION , *ELECTROENCEPHALOGRAPHY - Published
- 2023
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29. Pre-seizure architecture of the local connections of the epileptic focus examined via graph-theory.
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Vecchio, Fabrizio, Miraglia, Francesca, Vollono, Catello, Fuggetta, Filomena, Bramanti, Placido, Cioni, Beatrice, and Rossini, Paolo Maria
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PEOPLE with epilepsy , *GRAPH theory , *ACTION potentials , *DRUG resistance , *STEREOTAXIC techniques - Abstract
Objective Epilepsy is characterized by unpredictable and sudden paroxysmal neuronal firing occurrences and sometimes evolving in clinically evident seizure. To predict seizure event, small-world characteristic in nine minutes before seizure, divided in three 3-min periods (T0, T1, T2) were investigated. Methods Intracerebral recordings were obtained from 10 patients with drug resistant focal epilepsy examined by means of stereotactically implanted electrodes; analysis was focused in a period of low spiking (Baseline) and during two seizures. Networks’ architecture is undirected and weighted. Electrodes’ contacts close to epileptic focus are the vertices, edges are weighted by mscohere (=magnitude squared coherence). Results Differences were observed between Baseline and T1 and between Baseline and T2 in theta band; and between Baseline and T1, Baseline and T2, and near-significant difference between T0 and T2 in Alpha 2 band. Moreover, an intra-band index was computed for small worldness as difference between Theta and Alpha 2. It was found a growing index trend from Baseline to T2. Conclusions Cortical network features a specific pre-seizure architecture which could predict the incoming epileptic seizure. Significance Through this study future researches could investigate brain connectivity modifications approximating a clinical seizure also in order to address a preventive therapy. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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30. TH-228. Machine Learning Classification of Alzheimer's Disease respect to Physiological Aging by means of Graph Theory EEG Biomarkers.
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Pappalettera, Chiara, Miraglia, Francesca, Nucci, Lorenzo, Cacciotti, Alessia, Judica, Elda, Cotelli, Maria, Maria Rossini, Paolo, and Vecchio, Fabrizio
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ALZHEIMER'S disease , *AGE , *GRAPH theory , *MACHINE learning , *ELECTROENCEPHALOGRAPHY - Published
- 2022
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31. EEG characteristics in “eyes-open” versus “eyes-closed” conditions: Small-world network architecture in healthy aging and age-related brain degeneration.
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Miraglia, Francesca, Vecchio, Fabrizio, Bramanti, Placido, and Rossini, Paolo Maria
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ELECTROENCEPHALOGRAPHY , *BRAIN , *AGING , *BRAIN degeneration , *MILD cognitive impairment , *ALZHEIMER'S disease diagnosis , *DISEASE progression , *NEURAL circuitry , *GRAPH theory , *DIAGNOSIS - Abstract
Objective Applying graph theory, we investigated how cortical sources small worldness (SW) of resting EEG in eyes-closed/open (EC/EO) differs in amnestic mild cognitive impairment (aMCI) and Alzheimer’s disease (AD) subjects with respect to normal elderly (Nold). Methods EEG was recorded in 30 Nold, 30 aMCI, and 30 AD during EC and EO. Undirected and weighted cortical brain network was built to evaluate graph core measures. eLORETA lagged linear connectivity was used to weight the network. Results In Nold, in EO condition, the brain network is characterized by more SW (higher SW) in alpha bands and less SW (lower SW) in beta2 and gamma bands. In aMCI, SW has the same trend, except for delta and theta bands where the network shows less small worldness. AD shows a similar trend of Nold, but with less fluctuations between EO/EC conditions. Furthermore, in both conditions, aMCI SW architecture presents midway properties between AD and Nold. At low frequencies (delta e theta bands) in EC, aMCI group presents network’s architecture similar to Nold, while in EO aMCI, SW is superimposable to AD ones. Conclusions In resting state condition, aMCI small-world architecture presents midway topological properties between AD subjects and healthy controls, confirming the hypothesis that aMCI is an intermediate step along the disease progression. Significance We proposed the application of graph theory to EEG in reactivity to EO in order to find a marker of diagnosis that – in association with other techniques of neuroimaging – could be sensitive to the progression of MCI or conversion into AD. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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32. Cortical connectivity in fronto-temporal focal epilepsy from EEG analysis: A study via graph theory.
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Vecchio, Fabrizio, Miraglia, Francesca, Curcio, Giuseppe, Della Marca, Giacomo, Vollono, Catello, Mazzucchi, Edoardo, Bramanti, Placido, and Rossini, Paolo Maria
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FRONTAL lobe epilepsy , *ELECTROENCEPHALOGRAPHY , *BRAIN abnormalities , *GRAPH theory , *BRAIN function localization , *NEUROPLASTICITY - Abstract
Objective It is believed that effective connectivity and optimal network structure are essential for proper information processing in the brain. Indeed, functional abnormalities of the brain are found to be associated with pathological changes in connectivity and network structures. The aim of the present study was to explore the interictal network properties of EEG signals from temporal lobe structures in the context of fronto-temporal lobe epilepsy. Methods To complete this aim, the graph characteristics of the EEG data of 17 patients suffering from focal epilepsy of the fronto-temporal type, recorded during interictal periods, were examined and compared in terms of the affected versus the unaffected hemispheres. EEG connectivity analysis was performed using eLORETA software in 15 fronto-temporal regions (Brodmann Areas BAs 8, 9, 10, 11, 20, 21, 22, 37, 38, 41, 42, 44, 45, 46, 47) on both affected and unaffected hemispheres. Results The evaluation of the graph analysis parameters, such as ‘global’ (characteristic path length) and ‘local’ connectivity (clustering coefficient) showed a statistically significant interaction among side (affected and unaffected hemisphere) and Band (delta, theta, alpha, beta, gamma). Duncan post hoc testing showed an increase of the path length in the alpha band in the affected hemisphere with respect to the unaffected one, as evaluated by an inter-hemispheric marker. The affected hemisphere also showed higher values of local connectivity in the alpha band. In general, an increase of local and global graph theory parameters in the alpha band was found in the affected hemisphere. It was also demonstrated that these effects were more evident in drug-free patients than in those undergoing pharmacological therapy. Conclusions The increased measures in the affected hemisphere of both functional local segregation and global integration could result from the combination of overlapping mechanisms, including reactive neuroplastic changes seeking to maintain constant integration and segregation properties. Significance This reactive neuroplastic mechanism seeking to maintain constant integration and segregation properties seems to be more evident in the absence of antiepileptic treatment. [ABSTRACT FROM AUTHOR]
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- 2015
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33. Cognitive decline risk stratification in people with late-onset epilepsy of unknown etiology: An electroencephalographic connectivity and graph theory pilot study.
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Costa, Cinzia, Vecchio, Fabrizio, Romoli, Michele, Miraglia, Francesca, Cesarini, Elena Nardi, Alù, Francesca, Calabresi, Paolo, and Rossini, Paolo Maria
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GRAPH connectivity , *GRAPH theory , *ELECTROENCEPHALOGRAPHY , *PEOPLE with epilepsy , *AT-risk people , *EPILEPSY - Published
- 2021
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34. O155 Pre-seizure brain networks architecture as index of prediction in epileptic seizure.
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Miraglia, Francesca, Vecchio, Fabrizio, Vollomo, Catello, Fuggetta, Filomena, Cioni, Beatrice, and Rossini, Paolo Maria
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NEURAL circuitry , *EPILEPSY prevention , *ACTION potentials , *DRUG resistance , *PREDICTION models - Abstract
Objective Epilepsy is a neurological disorder characterized by sudden and unpredictable occurrence of paroxysmal neuronal firing and sometimes evolving in clinically evident seizure. To predict seizure event, small-world characteristic in nine minutes before seizure, divided in three 3-min periods (T0, T1, T2) were investigated. Methods Intracerebral recordings were obtained from 10 patients with drug resistant focal epilepsy examined by means of stereotactically implanted electrodes; analysis was focused in a period of low spiking (Baseline) and during two seizures for each subject. Weighted and undirected networks were built. Network vertices are electrodes’ contacts close to epileptic focus, edges are weighted by mscohere (magnitude squared coherence). Results Differences were observed between Baseline and T1 and between Baseline and T2 in Theta band; and between Baseline and T1, Baseline and T2, and near-significant difference between T0 and T2 in Alpha 2 band. Moreover, an intra-band index was computed for small worldness as difference between Theta and Alpha 2. It was found a growing index trend from Baseline to T2. Discussion Results of this study suggest that cortical network features significantly modify their configuration up to about 10 min before seizure onset. Significance Identifying connectivity alterations could provide valuable informations at individual level on transient factors that influence the clinical manifestations of the disease. Conclusions Cortical network shows a specific pre-seizure architecture which could predict the incoming epileptic seizure. This study opens interesting avenues for future researches investigating brain connectivity modifications approximating a clinical seizure also in order to address a preventive therapy. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
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