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The Clinical Potential of EEG Functional Connectivity Analysis

Explore the clinical implications and applications of EEG functional connectivity analysis in both macaque and human patients. Understand the interarea oscillatory synchrony and directed influences within sensori-motor, visual, and parieto-frontal systems. Discover the techniques for source localization and the solutions to the inverse problem in human EEG source imaging. Dive into the research on cortical LFPs and BOLD signals to uncover the underlying neural networks and connectivity patterns. Learn about the state-of-the-art technologies enabling real-time analysis of cortical source data with minimal preparation time. Enhance your understanding of brain dynamics and functional connectivity for neuroscientific research and clinical assessments.

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The Clinical Potential of EEG Functional Connectivity Analysis

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  1. The Clinical Potential of EEG Functional Connectivity Analysis Steven L. Bressler Cognitive Neurodynamics Laboratory Center for Complex Systems & Brain Sciences Florida Atlantic University

  2. Overview 1. Functional Connectivity of macaque cortical LFPs a. Sensori-Motor System b. Visual System c. Parieto-Frontal System 2. Functional Connectivity of human patient cortical BOLD signals 3. Implications for use of Functional Connectivity of human patient EEG source signals EEG Source Imaging IOP 2016

  3. Nakamura-Coppola Recording Paradigm • Chronic Implant of Bipolar Electrodes • Multiple Distributed Electrode Sites • Simultaneous LFP Recording EEG Source Imaging IOP 2016

  4. Functional Connectivity of Cortical LFPs in Macaque Prefrontal CortexLiang et al, Neuroreport, 2002 Synchronized beta rhythms form a large-scale set-related network. Non-network Prefrontal EEG Source Imaging IOP 2016

  5. Functional Connectivity of Cortical LFPs in Macaque Somatosensory-Motor SystemBrovelliet al., 2004, PNASMatias et al. 2014, NeuroImage • Functional Connectivity analysis using AR-based spectral analysis was successfully applied to Local Field Potentials (LFPs) from the somatosensory & motor cortices in the monkey. • Functional Connectivity was seen as interareal oscillatory synchrony & directed influences in the beta frequency range. • The flow of directed influence suggested that somatosensory feedback modulates the motor cortex in motor maintenance. EEG Source Imaging IOP 2016

  6. Functional Connectivity of Cortical LFPs in Macaque Visual SystemBressler & Richter, 2014, Current Opinion in Neurobiology • Top-down processing in the visual cortexwas found to underlie predictive coding & attentional set. • Functional Connectivity was seen as interareal oscillatory synchrony & directed influences in the beta frequency range. EEG Source Imaging IOP 2016

  7. Gray Recording Paradigm • Semi-Chronic Implant • Monopolar Electrodes • Multiple Electrode Sites in 2 Regions • Simultaneous Spike & LFP Recording EEG Source Imaging IOP 2016

  8. Functional Connectivity of Cortical LFPs in Macaque Parieto-Frontal SystemSalazar et al., 2012, Science Interareal beta frequency synchrony of LFPs from posterior parietal and dorsolateral prefrontal cortices coded for visual working memory content. EEG Source Imaging IOP 2016

  9. Functional Connectivity of Cortical BOLD Signals in Human Dorsal Attention SystemBressler et al., 2008, J NeuroscienceTang et al., 2012, PLoS Computational BiologyMeehan, 2016, PhD Dissertation Functional Connectivity analysis of the Dorsal Attention Network (DAN), and its interactions with the Visual Occipital Cortex (VOC), revealed that stroke-induced lesions alter intrahemispheric functional connectivity within the DAN and with the VOC, leading to interhemispheric functional connectivity imbalances that strongly correlate with behavioral deficit in spatial-neglect patients. EEG Source Imaging IOP 2016

  10. Frequency-Domain Functional Connectivity of Human EEG Sources • Human EEG recording provides a noninvasive fast-timescale signal of brain activity. • Human EEG source analysis offers the potential for a noninvasive fast-timescale measure of cortical source activity. • Technologies are available to perform human EEG recording with minimal preparation time, mobility, and telemetry. • It is technically feasible to perform Functional Connectivity analysis of human EEG cortical source data in real time using high-performance computing. EEG Source Imaging IOP 2016

  11. Source Localization & Functional Connectivity Analysis • The key to human frequency-domain functional connectivity analysis of EEG sources is to determine the Primary Current Density (PCD) from the human scalp-recorded EEG. [See Paz-Linares et al. (2016)]. • To determine the PCD from an arbitrary scalp EEG distribution (V) means solving the inverse problem. • To solve the inverse problem, one must know the Electric Lead Field (ELF), which is usually estimated by making assumptions about head geometry and electrical conductivity. • Once V and the ELF are known, the PCD can be obtained. EEG Source Imaging IOP 2016

  12. Solving the Inverse Problem • Since the number of recording electrodes (N) is typically small compared to the number of generators in the PCD (S), the inverse problem, in general, is ill-posed, i.e., it has many equivalent solutions. • Solving the inverse problem thus requires the imposition of additional constraints. EEG Source Imaging IOP 2016

  13. Solutions to the Inverse Problem • Valdes-Sosa and colleagues have proposed a mixed-norms approach to the inverse problem, where L1 and L2 penalty functions are used as constraints. • Cheung et al. (2010) assume that cortical signals arise from known regions. They propose simultaneously solving state (MVAR model) and observation (relating PCD and scalp EEG) equations to estimate an MVAR model of cortical functional connectivity from the scalp EEG. EEG Source Imaging IOP 2016

  14. Take-Home Message • Neurocognitive networks support higher-level functions in the cerebral cortex. • Synchronized beta-frequency oscillations underlie neurocognitive network interactions. • Techniques are being developed and tested to solve the inverse problem and estimate PCD Functional Connectivity from the scalp EEG. • One can envision that Functional Connectivity of human patient EEGs will provide neuromarkers to augment clinical decision-making and provide patient-specific neural information to guide brain stimulation. EEG Source Imaging IOP 2016

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