Adaptive robustness through incoherent signaling mechanisms in a regenerative brain.
Samuel R BrayLivia S WyssChew ChaiMaria E LozadaBo WangPublished in: bioRxiv : the preprint server for biology (2023)
Animal behavior emerges from collective dynamics of interconnected neurons, making it vulnerable to connectome damage. Paradoxically, many organisms maintain significant behavioral output after large-scale neural injury. Molecular underpinnings of this extreme robustness remain largely unknown. Here, we develop a quantitative behavioral analysis pipeline to measure previously uncharacterized long-lasting latent memory states in planarian flatworms during whole-brain regeneration. By combining >20,000 animal trials with neural population dynamic modeling, we show that long-range volumetric peptidergic signals allow the planarian to rapidly reestablish latent states and restore coarse behavior after large structural perturbations to the nervous system, while small-molecule neuromodulators gradually refine the precision. The different time and length scales of neuropeptide and small-molecule transmission generate incoherent patterns of neural activity which competitively regulate behavior and memory. Controlling behavior through opposing communication mechanisms creates a more robust system than either alone and may serve as a generic approach to construct robust neural networks.
Keyphrases
- small molecule
- stem cells
- neural network
- resting state
- working memory
- white matter
- mesenchymal stem cells
- diffusion weighted
- oxidative stress
- spinal cord
- climate change
- contrast enhanced
- magnetic resonance imaging
- computed tomography
- magnetic resonance
- molecular dynamics simulations
- cerebral ischemia
- multiple sclerosis
- tissue engineering
- subarachnoid hemorrhage