Connectome-Based Attractor Dynamics Underlie Brain Activity in Rest, Task, and Disease

Robert Englert,Balint Kincses, Raviteja Kotikalapudi,Giuseppe Gallitto, Jialin Li, Kevin Hoffschlag,Choong-Wan Woo, Tor D. Wager,Dagmar Timmann, Ulrike Bingel,Tamas Spisak

biorxiv(2024)

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摘要
Understanding large-scale brain dynamics is a grand challenge in neuroscience. We propose functional connectome-based Hopfield Neural Networks (fcHNNs) as a model of macro-scale brain dynamics, arising from recurrent activity flow among brain regions. An fcHNN is neither optimized to mimic certain brain characteristics, nor trained to solve specific tasks; its weights are simply initialized with empirical functional connectivity values. In the fcHNN framework, brain dynamics are understood in relation to so-called attractor states, i.e. neurobiologically meaningful low-energy activity configurations. Analyses of 7 distinct datasets demonstrate that fcHNNs can accurately reconstruct and predict brain dynamics under a wide range of conditions, including resting and task states and brain disorders. By establishing a mechanistic link between connectivity and activity, fcHNNs offer a simple and interpretable computational alternative to conventional descriptive analyses of brain function. Being a generative framework, fcHNNs can yield mechanistic insights and hold potential to uncover novel treatment targets. Key Points ### Competing Interest Statement The authors have declared no competing interest.
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