Bayesian Mapping of the Striatal Microcircuit Reveals Robust Asymmetries in the Probabilities and Distances of Connections.

Autor: Cinotti F; School of Psychology, University of Nottingham, Nottingham, NG7 2RD, United Kingdom francois.cinotti@gmail.com mark.humphries@nottingham.ac.uk., Humphries MD; School of Psychology, University of Nottingham, Nottingham, NG7 2RD, United Kingdom francois.cinotti@gmail.com mark.humphries@nottingham.ac.uk.
Jazyk: angličtina
Zdroj: The Journal of neuroscience : the official journal of the Society for Neuroscience [J Neurosci] 2022 Feb 23; Vol. 42 (8), pp. 1417-1435. Date of Electronic Publication: 2021 Dec 10.
DOI: 10.1523/JNEUROSCI.1487-21.2021
Abstrakt: The striatum's complex microcircuit is made by connections within and between its D1- and D2-receptor expressing projection neurons and at least five species of interneuron. Precise knowledge of this circuit is likely essential to understanding striatum's functional roles and its dysfunction in a wide range of movement and cognitive disorders. We introduce here a Bayesian approach to mapping neuron connectivity using intracellular recording data, which lets us simultaneously evaluate the probability of connection between neuron types, the strength of evidence for it, and its dependence on distance. Using it to synthesize a complete map of the mouse striatum, we find strong evidence for two asymmetries: a selective asymmetry of projection neuron connections, with D2 neurons connecting twice as densely to other projection neurons than do D1 neurons, but neither subtype preferentially connecting to another; and a length-scale asymmetry, with interneuron connection probabilities remaining non-negligible at more than twice the distance of projection neuron connections. We further show that our Bayesian approach can evaluate evidence for wiring changes, using data from the developing striatum and a mouse model of Huntington's disease. By quantifying the uncertainty in our knowledge of the microcircuit, our approach reveals a wide range of potential striatal wiring diagrams consistent with current data. SIGNIFICANCE STATEMENT To properly understand a neuronal circuit's function, it is important to have an accurate picture of the rate of connection between individual neurons and how this rate changes with the distance separating pairs of neurons. We present a Bayesian method for extracting this information from experimental data and apply it to the mouse striatum, a subcortical structure involved in learning and decision-making, which is made up of a variety of different projection neurons and interneurons. Our resulting statistical map reveals not just the most robust estimates of the probability of connection between neuron types, but also the strength of evidence for them, and their dependence on distance.
(Copyright © 2022 the authors.)
Databáze: MEDLINE