Matches in SemOpenAlex for { <https://semopenalex.org/work/W2600686939> ?p ?o ?g. }
- W2600686939 endingPage "172" @default.
- W2600686939 startingPage "147" @default.
- W2600686939 abstract "The human brain is comprised of complex networks of neuronal connections, with the functioning of these networks underscoring human cognition. At any given point in time, the complexity of these networks may be greater than the entire communications network on the planet yet functional brain networks are not static; instead, they form and dissolve within milliseconds. Although much is known about the functions and actions of individual neurons in isolation, at a systems level, when billions of neurons coordinate their individual activity to create functional brain networks and thus cognition, understanding is limited. This is due in part to the system behaving completely differently to its parts; that is, emergent properties such as intelligence, emotion and cognition cannot be adequately explained from a sum-of-parts perspective; what is needed instead are powerful computational techniques to model and explore both the intricacies and dynamics of functional brain networks. Although unravelling the activity of the human brain remains circumscribed by technological and ethical constraints, complex network analysis of EEG data offers new ways to quantitatively characterize neuronal cluster patterns. This, in turn, allows the analysis of functional brain networks to understand the complex architecture of such networks. Despite the increasing attention that functional brain network analysis is gaining in computational neuroscience, the true potential of such analysis to reveal dynamic interdependencies between brain regions has yet to be realized. To address this, multi-channel EEG data has been used to examine the dynamics of such networks during cognitive activity using Information Theory based nonlinear statistical measures such as transfer entropy. Results across different paradigms requiring different types of cognitive effort clearly suggest that transfer entropy is a highly sensitive measure for detecting cognitive activity. Furthermore, these results demonstrate that transfer entropy has clear potential for developing cognitive metrics based on complex features such as connectivity density, clustering coefficient and weighted degree. These techniques may also have application in the clinical diagnosis of cognitive impairment as well as providing new insights into normal cognitive development and function." @default.
- W2600686939 created "2017-04-07" @default.
- W2600686939 creator A5059308746 @default.
- W2600686939 creator A5064813470 @default.
- W2600686939 creator A5083353459 @default.
- W2600686939 creator A5089627557 @default.
- W2600686939 date "2017-01-01" @default.
- W2600686939 modified "2023-09-26" @default.
- W2600686939 title "Capturing Cognition via EEG-Based Functional Brain Networks" @default.
- W2600686939 cites W1491926324 @default.
- W2600686939 cites W1802130322 @default.
- W2600686939 cites W1964143171 @default.
- W2600686939 cites W1970167860 @default.
- W2600686939 cites W1978727889 @default.
- W2600686939 cites W1979773754 @default.
- W2600686939 cites W1982322471 @default.
- W2600686939 cites W1999653836 @default.
- W2600686939 cites W2003689160 @default.
- W2600686939 cites W2009405785 @default.
- W2600686939 cites W2011293069 @default.
- W2600686939 cites W2016987995 @default.
- W2600686939 cites W2018305040 @default.
- W2600686939 cites W2024461202 @default.
- W2600686939 cites W2026277241 @default.
- W2600686939 cites W2031913067 @default.
- W2600686939 cites W2037105934 @default.
- W2600686939 cites W2041782669 @default.
- W2600686939 cites W2049459548 @default.
- W2600686939 cites W2051270138 @default.
- W2600686939 cites W2055839463 @default.
- W2600686939 cites W2056348173 @default.
- W2600686939 cites W2059929889 @default.
- W2600686939 cites W2060038721 @default.
- W2600686939 cites W2067348345 @default.
- W2600686939 cites W2070041476 @default.
- W2600686939 cites W2075172228 @default.
- W2600686939 cites W2079145130 @default.
- W2600686939 cites W2079914348 @default.
- W2600686939 cites W2080092014 @default.
- W2600686939 cites W2096470434 @default.
- W2600686939 cites W2112090702 @default.
- W2600686939 cites W2125757815 @default.
- W2600686939 cites W2126902553 @default.
- W2600686939 cites W2128495200 @default.
- W2600686939 cites W2132326111 @default.
- W2600686939 cites W2136283354 @default.
- W2600686939 cites W2139119363 @default.
- W2600686939 cites W2147270524 @default.
- W2600686939 cites W2159476919 @default.
- W2600686939 cites W2165043502 @default.
- W2600686939 cites W2165417170 @default.
- W2600686939 cites W2167822639 @default.
- W2600686939 cites W2168613608 @default.
- W2600686939 cites W2271321208 @default.
- W2600686939 cites W2796218018 @default.
- W2600686939 cites W4210313614 @default.
- W2600686939 cites W4230436515 @default.
- W2600686939 cites W4233504396 @default.
- W2600686939 cites W4243487225 @default.
- W2600686939 doi "https://doi.org/10.1007/978-981-10-3957-7_8" @default.
- W2600686939 hasPublicationYear "2017" @default.
- W2600686939 type Work @default.
- W2600686939 sameAs 2600686939 @default.
- W2600686939 citedByCount "3" @default.
- W2600686939 countsByYear W26006869392019 @default.
- W2600686939 countsByYear W26006869392021 @default.
- W2600686939 countsByYear W26006869392023 @default.
- W2600686939 crossrefType "book-chapter" @default.
- W2600686939 hasAuthorship W2600686939A5059308746 @default.
- W2600686939 hasAuthorship W2600686939A5064813470 @default.
- W2600686939 hasAuthorship W2600686939A5083353459 @default.
- W2600686939 hasAuthorship W2600686939A5089627557 @default.
- W2600686939 hasConcept C118615104 @default.
- W2600686939 hasConcept C120843803 @default.
- W2600686939 hasConcept C123757187 @default.
- W2600686939 hasConcept C154945302 @default.
- W2600686939 hasConcept C15744967 @default.
- W2600686939 hasConcept C169760540 @default.
- W2600686939 hasConcept C169900460 @default.
- W2600686939 hasConcept C188147891 @default.
- W2600686939 hasConcept C2777670902 @default.
- W2600686939 hasConcept C33923547 @default.
- W2600686939 hasConcept C41008148 @default.
- W2600686939 hasConcept C522805319 @default.
- W2600686939 hasConceptScore W2600686939C118615104 @default.
- W2600686939 hasConceptScore W2600686939C120843803 @default.
- W2600686939 hasConceptScore W2600686939C123757187 @default.
- W2600686939 hasConceptScore W2600686939C154945302 @default.
- W2600686939 hasConceptScore W2600686939C15744967 @default.
- W2600686939 hasConceptScore W2600686939C169760540 @default.
- W2600686939 hasConceptScore W2600686939C169900460 @default.
- W2600686939 hasConceptScore W2600686939C188147891 @default.
- W2600686939 hasConceptScore W2600686939C2777670902 @default.
- W2600686939 hasConceptScore W2600686939C33923547 @default.
- W2600686939 hasConceptScore W2600686939C41008148 @default.
- W2600686939 hasConceptScore W2600686939C522805319 @default.
- W2600686939 hasLocation W26006869391 @default.
- W2600686939 hasOpenAccess W2600686939 @default.