Temporal Mapper: transition networks in simulated and real neural dynamics

Characterizing large-scale dynamic organization of the brain relies on both data-driven and mechanistic modeling, which demands a low vs. high level of prior knowledge and assumptions about how constituents of the brain interact. However, the conceptual translation between the two is not straightfor...

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Bibliographic Details
Published inbioRxiv
Main Authors Zhang, Mengsen, Chowdhury, Samir, Saggar, Manish
Format Paper
LanguageEnglish
Published Cold Spring Harbor Cold Spring Harbor Laboratory Press 01.12.2022
Cold Spring Harbor Laboratory
Edition1.2
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Summary:Characterizing large-scale dynamic organization of the brain relies on both data-driven and mechanistic modeling, which demands a low vs. high level of prior knowledge and assumptions about how constituents of the brain interact. However, the conceptual translation between the two is not straightforward. The present work aims to provide a bridge between data-driven and mechanistic modeling. We conceptualize brain dynamics as a complex landscape that is continuously modulated by internal and external changes. The modulation can induce transitions between one stable brain state (attractor) to another. Here, we provide a novel method - Temporal Mapper - built upon established tools from the field of Topological Data Analysis to retrieve the network of attractor transitions from time-series data alone. For theoretical validation, we use a biophysical network model to induce transitions in a controlled manner, which provides simulated time series equipped with a ground-truth attractor transition network. Our approach reconstructs the ground-truth transition network from simulated time-series data better than existing time-varying approaches. For empirical relevance, we apply our approach to fMRI data gathered during a continuous multitask experiment. We found that occupancy of the high-degree nodes and cycles of the transition network was significantly associated with subjects' behavioral performance. Taken together, we provide an important first step towards integrating data-driven and mechanistic modeling of brain dynamics.Competing Interest StatementThe authors have declared no competing interest.Footnotes* journal accepted version.
Bibliography:SourceType-Working Papers-1
ObjectType-Working Paper/Pre-Print-1
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Competing Interest Statement: The authors have declared no competing interest.
ISSN:2692-8205
2692-8205
DOI:10.1101/2022.07.28.501877