2021
DOI: 10.1089/brain.2020.0982
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High-Order Interdependencies in the Aging Brain

Abstract: Brain interdependencies can be studied either from a structural/anatomical perspective ("structural connectivity", SC) or by considering statistical interdependencies ("functional connectivity", FC). Interestingly, while SC is typically pairwise (white-matter fibers start in a certain region and arrive at another), FC is not; however, most FC analyses focus only on pairwise statistics and neglect highorder interactions. A promising tool to study high-order interdependencies is the recently proposed O-Informati… Show more

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Cited by 56 publications
(53 citation statements)
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“…2C. The DMF model reproduced the age differences in redundancy and synergy reported in [24]. Moreover, the differences in redundancy between I4 and the rest of groups (I1,I2,I3) are statistically significant at all orders after the multiple comparison correction of the false discovery rate.…”
Section: Resultssupporting
confidence: 55%
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“…2C. The DMF model reproduced the age differences in redundancy and synergy reported in [24]. Moreover, the differences in redundancy between I4 and the rest of groups (I1,I2,I3) are statistically significant at all orders after the multiple comparison correction of the false discovery rate.…”
Section: Resultssupporting
confidence: 55%
“…with the values obtained from the groups of younger participants following previous work [24]. This is illustrated in Fig.…”
Section: Resultsmentioning
confidence: 57%
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“…One of the most significant limitations is that, while multivariate transfer entropy gives a much more “complete” picture of the information transfer dynamics (and appears to better estimate the generative network [33]), it suffers from a terrible curse of dimensionality and will not scale gracefully as the number of neurons being recorded from gets large and/or the number of bins of history increases. Consequently, for researchers interested in the role of redundancies and synergies in time series dynamics, heuristics such as the O-information may be useful [58, 59, 60]. The partial information decomposition (PID) framework suffers from a similar curse of dimensionality as the the mTE algorithm: the number of unique partial information atoms grows super-exponentially with the number of sources.…”
Section: Discussionmentioning
confidence: 99%