From single-neuron dynamics to higher-order circuit motifs in control and pathological brain networks.
Darian HadjiabadiIvan SolteszPublished in: The Journal of physiology (2022)
The convergence of advanced single-cell in vivo functional imaging techniques, computational modelling tools and graph-based network analytics has heralded new opportunities to study single-cell dynamics across large-scale networks, providing novel insights into principles of brain communication and pointing towards potential new strategies for treating neurological disorders. A major recent finding has been the identification of unusually richly connected hub cells that have capacity to synchronize networks and may also be critical in network dysfunction. While hub neurons are traditionally defined by measures that consider solely the number and strength of connections, novel higher-order graph analytics now enables the mining of massive networks for repeating subgraph patterns called motifs. As an illustration of the power offered by higher-order analysis of neuronal networks, we highlight how recent methodological advances uncovered a new functional cell type, the superhub, that is predicted to play a major role in regulating network dynamics. Finally, we discuss open questions that will be critical for assessing the importance of higher-order cellular-scale network analytics in understanding brain function in health and disease.
Keyphrases
- single cell
- big data
- cerebral ischemia
- white matter
- network analysis
- resting state
- rna seq
- healthcare
- public health
- induced apoptosis
- high resolution
- mental health
- minimally invasive
- bioinformatics analysis
- spinal cord
- machine learning
- cell cycle arrest
- subarachnoid hemorrhage
- convolutional neural network
- climate change
- brain injury
- blood brain barrier
- human health
- photodynamic therapy