Back

Causal Discovery of Synchronous Neural Oscillations based on Jacobian-informed VAR-LiNGAM

Yokoyama, H.; Takeuchi, R.; Shimizu, S.

2026-05-01 neuroscience
10.64898/2026.04.28.721377 bioRxiv
Show abstract

The primary objective of system neuroscience is to understand the functional mapping and its causation in the dynamics of the brain network. Some experimental and methodological studies suggest that functional modularity and its hierarchical information processing in the brain network are crucial to understanding the functional role of task-specific or state-specific information flow in the brain. However, because most of the established techniques for detecting effective network structures in the neuroscience research field are strongly based on the "Granger causality" perspective, existing causal discovery methods specified for brain network analysis cannot identify the causal hierarchy in the modular network in the brain due to spurious correlation issues and indistinguishability of causal direction under the Gaussianity of observational noise in a linear system. To address the issues, we developed a causal discovery method for synchronous neural dynamics, called the Jacobian-informed linear non-Gaussian acyclic model, "j-VAR-LiNGAM", by incorporating the information of the Jacobian matrix determined from a phase-coupled oscillator model estimated from observed neural data into the VAR-LiNGAM algorithms. The method was validated by showing that it could extract causal ordering in both synthetic data and empirical neural observed data. Moreover, by analyzing the observed neural oscillatory signals obtained from mice and humans, we confirmed that our method identified causally hierarchical structures in the brain, which aligned with the neurophysiological interpretations. These findings suggested that our proposed method can reveal the neural basis of hierarchical information processing in the brain network.

Matching journals

The top 9 journals account for 50% of the predicted probability mass.

1
Neural Networks
32 papers in training set
Top 0.1%
7.1%
2
NeuroImage
813 papers in training set
Top 2%
6.8%
3
PLOS Computational Biology
1633 papers in training set
Top 6%
6.3%
4
Neurocomputing
13 papers in training set
Top 0.1%
6.3%
5
Network Neuroscience
116 papers in training set
Top 0.1%
6.3%
6
Frontiers in Computational Neuroscience
53 papers in training set
Top 0.5%
4.8%
7
Chaos, Solitons & Fractals
32 papers in training set
Top 0.4%
4.8%
8
eLife
5422 papers in training set
Top 20%
4.3%
9
Communications Biology
886 papers in training set
Top 2%
3.6%
50% of probability mass above
10
Scientific Reports
3102 papers in training set
Top 41%
3.1%
11
Neural Computation
36 papers in training set
Top 0.2%
2.7%
12
eneuro
389 papers in training set
Top 4%
2.6%
13
Cognitive Neurodynamics
15 papers in training set
Top 0.1%
2.6%
14
Entropy
20 papers in training set
Top 0.1%
2.1%
15
Frontiers in Neuroscience
223 papers in training set
Top 3%
1.8%
16
PLOS ONE
4510 papers in training set
Top 51%
1.8%
17
Journal of Neural Engineering
197 papers in training set
Top 1%
1.7%
18
Frontiers in Systems Neuroscience
19 papers in training set
Top 0.1%
1.7%
19
The Journal of Neuroscience
928 papers in training set
Top 6%
1.5%
20
Neuroscience Research
14 papers in training set
Top 0.1%
1.3%
21
Neuroscience
88 papers in training set
Top 2%
1.3%
22
Physical Review Research
46 papers in training set
Top 0.5%
1.2%
23
Chaos: An Interdisciplinary Journal of Nonlinear Science
16 papers in training set
Top 0.1%
1.2%
24
Biometrics
22 papers in training set
Top 0.1%
0.9%
25
Frontiers in Neural Circuits
36 papers in training set
Top 0.5%
0.9%
26
Genomics, Proteomics & Bioinformatics
171 papers in training set
Top 5%
0.9%
27
PNAS Nexus
147 papers in training set
Top 1%
0.8%
28
Briefings in Bioinformatics
326 papers in training set
Top 6%
0.8%
29
National Science Review
22 papers in training set
Top 2%
0.7%
30
Physical Review E
95 papers in training set
Top 1%
0.7%