Perineuronal Net Microscopy: From Brain Pathology to Artificial Intelligence

Int J Mol Sci. 2024 Apr 11;25(8):4227. doi: 10.3390/ijms25084227.

Abstract

Perineuronal nets (PNN) are a special highly structured type of extracellular matrix encapsulating synapses on large populations of CNS neurons. PNN undergo structural changes in schizophrenia, epilepsy, Alzheimer's disease, stroke, post-traumatic conditions, and some other brain disorders. The functional role of the PNN microstructure in brain pathologies has remained largely unstudied until recently. Here, we review recent research implicating PNN microstructural changes in schizophrenia and other disorders. We further concentrate on high-resolution studies of the PNN mesh units surrounding synaptic boutons to elucidate fine structural details behind the mutual functional regulation between the ECM and the synaptic terminal. We also review some updates regarding PNN as a potential pharmacological target. Artificial intelligence (AI)-based methods are now arriving as a new tool that may have the potential to grasp the brain's complexity through a wide range of organization levels-from synaptic molecular events to large scale tissue rearrangements and the whole-brain connectome function. This scope matches exactly the complex role of PNN in brain physiology and pathology processes, and the first AI-assisted PNN microscopy studies have been reported. To that end, we report here on a machine learning-assisted tool for PNN mesh contour tracing.

Keywords: antidepressant; artificial intelligence; brain plasticity; epilepsy; extracellular matrix; machine learning; perineuronal net; schizophrenia; synapse.

Publication types

  • Review

MeSH terms

  • Animals
  • Artificial Intelligence*
  • Brain Diseases / pathology
  • Brain* / diagnostic imaging
  • Brain* / pathology
  • Extracellular Matrix* / metabolism
  • Humans
  • Microscopy / methods
  • Nerve Net / pathology
  • Neurons / metabolism
  • Neurons / pathology
  • Synapses / pathology

Grants and funding

This paper has been supported by the Kazan Federal University Strategic Academic Leadership Program (“PRIORITY-2030”), Strategic Project #4.