4.4 Article

Inferring thalamocortical monosynaptic connectivity in vivo

Journal

JOURNAL OF NEUROPHYSIOLOGY
Volume 125, Issue 6, Pages 2408-2431

Publisher

AMER PHYSIOLOGICAL SOC
DOI: 10.1152/jn.00591.2020

Keywords

causality; cross correlation; inference; signal detection; thalamocortical circuit

Funding

  1. NIH/NIMH Brain Initiative Grant [U01 MH-106027]
  2. NIH/NINDS Brain Initiative Grant [R01 NS-104928]
  3. Georgia Tech-Emory-PKU Global Biomedical Engineering Research and Education Fellowship
  4. Swiss National Science Foundation (SNSF) [P300PA_177861, P2ELP3_168506]
  5. NIH NRSA Predoctoral Fellowship [F31NS089412]
  6. NSF
  7. Swiss National Science Foundation (SNF) [P300PA_177861, P2ELP3_168506] Funding Source: Swiss National Science Foundation (SNF)

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This study introduces a statistical framework for inferring synaptic connectivity based on experimentally recorded data, setting the stage for large-scale assessment of synaptic connectivity within and across brain structures. By identifying and assessing potential monosynaptic connectivity across neuronal circuits from population spiking activity, this framework will help us better understand the signaling within networks that underlies perception and behavior.
As the tools to simultaneously record electrophysiological signals from large numbers of neurons within and across brain regions become increasingly available, this opens up for the first time the possibility of establishing the details of causal relationships between monosynaptically connected neurons and the patterns of neural activation that underlie perception and behavior. Although recorded activity across synaptically connected neurons has served as the cornerstone for much of what we know about synaptic transmission and plasticity, this has largely been relegated to ex vivo preparations that enable precise targeting under relatively well-controlled conditions. Analogous studies in vivo, where image-guided targeting is often not yet possible, rely on indirect, data-driven measures, and as a result such studies have been sparse and the dependence upon important experimental parameters has not been well studied. Here, using in vivo extracellular single-unit recordings in the topographically aligned rodent thalamocortical pathway, we sought to establish a general experimental and computational framework for inferring synaptic connectivity. Specifically, attacking this problem within a statistical signal detection framework utilizing experimentally recorded data in the ventral-posterior medial (VPm) region of the thalamus and the homologous region in layer 4 of primary somatosensory cortex (S1) revealed a trade-off between network activity levels needed for the data-driven inference and synchronization of nearby neurons within the population that results in masking of synaptic relationships. Here, we provide a framework for establishing connectivity in multisite, multielectrode recordings based on statistical inference, setting the stage for large-scale assessment of synaptic connectivity within and across brain structures. NEW & NOTEWORTHY Despite the fact that all brain function relies on the long-range transfer of information across different regions, the tools enabling us to measure connectivity across brain structures are lacking. Here, we provide a statistical framework for identifying and assessing potential monosynaptic connectivity across neuronal circuits from population spiking activity that generalizes to large-scale recording technologies that will help us to better understand the signaling within networks that underlies perception and behavior.

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