Kopsavilkums
We hypothesized that the heterogeneous architecture of biological neural networks provides a substrate to regulate the well-known tradeoff between robustness and efficiency, thereby allowing different subpopulations of the same network to optimize for different objectives. To distinguish between subpopulations, we developed a metric based on the mathematical theory of simplicial complexes that captures the complexity of their connectivity by contrasting its higher-order structure to a random control and confirmed its relevance in several openly available connectomes. Using a biologically detailed cortical model and an electron microscopic dataset, we showed that subpopulations with low simplicial complexity exhibit efficient activity. Conversely, subpopulations of high simplicial complexity play a supporting role in boosting the reliability of the network as a whole, softening the robustness-efficiency tradeoff. Crucially, we found that both types of subpopulations can and do coexist within a single connectome in biological neural networks, due to the heterogeneity of their connectivity.
| Oriģinālvaloda | Angļu |
|---|---|
| Raksta numurs | 111585 |
| Žurnāls | iScience |
| Sējums | 28 |
| Izdevuma numurs | 1 |
| DOIs | |
| Publikācijas statuss | Publicēts - 17 janv. 2025 |
| Ārēji publicēts | Jā |
OECD Zinātnes nozare
- 2.6 Medicīniskā inženierija
Nospiedums
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