2022
DOI: 10.3389/fnsys.2022.817962
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Statistical Perspective on Functional and Causal Neural Connectomics: A Comparative Study

Abstract: Representation of brain network interactions is fundamental to the translation of neural structure to brain function. As such, methodologies for mapping neural interactions into structural models, i.e., inference of functional connectome from neural recordings, are key for the study of brain networks. While multiple approaches have been proposed for functional connectomics based on statistical associations between neural activity, association does not necessarily incorporate causation. Additional approaches ha… Show more

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Cited by 12 publications
(15 citation statements)
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“…We define Y v as a windowed average of recordings over a duration of 50 msec: Y v = X v , v ∈ V , and averaging over different 50 msec windows with a gap of 50 msec between consecutive windows yields different Y v samples. This choice of Y v performs better than considering Y v to be neural recordings at time t: Y v = X v (t), v ∈ V , with different t giving different samples of Y v in previous work [6]. The TPC algorithm computes the rolled CFC-DPGM directly from the signals and, we use a maximum time-delay of interaction of 1 msec.…”
Section: Continuous Time Recurrentmentioning
confidence: 99%
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“…We define Y v as a windowed average of recordings over a duration of 50 msec: Y v = X v , v ∈ V , and averaging over different 50 msec windows with a gap of 50 msec between consecutive windows yields different Y v samples. This choice of Y v performs better than considering Y v to be neural recordings at time t: Y v = X v (t), v ∈ V , with different t giving different samples of Y v in previous work [6]. The TPC algorithm computes the rolled CFC-DPGM directly from the signals and, we use a maximum time-delay of interaction of 1 msec.…”
Section: Continuous Time Recurrentmentioning
confidence: 99%
“…The CFC maps how neural activity flows within neural circuits, and provides the possibility for inference of neural pathways essential for brain functioning and behavior, such as sensory-motor-behavioral pathways [5]. Several approaches aim to infer CFC, such as Granger Causality (GC), Dynamic Causal Modeling (DCM), and Directed Probabilistic Graphical Models (DPGM), each having their applicability and challenges, as surveyed in [6]. GC obtains the directed functional connectivity from observed neural activity in a way that tells whether a neuron's past is predictive of another neuron's future, however it is unclear whether the prediction implies causation.…”
Section: Introductionmentioning
confidence: 99%
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“…, p} and edge u → v if X t1u → X t2v for some t 1 ≤ t 2 , where X t1u → X t2v are defined by a causal model with respect to a graph G with nodes X tu . Some common examples are in interventional, structural and Granger Causality [32,33], and applications in neurosciences [12,13], and econometrics [34]. We call G R as the Rolled Graph of G.…”
Section: Linear Processmentioning
confidence: 99%
“…The CFC maps how neural activity flows within neural circuits, and provides the possibility for inference of neural pathways essential for brain functioning and behavior, such as sensory-motor-behavioral pathways [ 5 ]. Several approaches aim to infer CFC, such as Granger Causality (GC), Dynamic Causal Modeling (DCM), and Directed Probabilistic Graphical Models (DPGM), each having their applicability and challenges, as surveyed in [ 6 ]. GC obtains the directed functional connectivity from observed neural activity in a way that tells whether a neuron’s past is predictive of another neuron’s future, however it is unclear whether the prediction implies causation.…”
Section: Introductionmentioning
confidence: 99%