The most notable advance in our project so far has been to identify highly heterogeneous synaptic properties in cerebellar nuclear inputs. While some diversity was expected, the extent of this heterogeneity and its functional role is now under investigation using optogenetic approaches. This should lead to a better understanding of the contribution of sensory information in motor coordination and motor learning.
The work so far has strongly focused on developing in vitro parts of the project. We implemented imaging protocols to visualize neurotransmitter release in cerebellar nuclei. While molecular sensors for neurotransmitters are widely used in other brain regions, their application in cerebellar nuclei presented unique challenges. We are now using these tools to investigate synaptic transmission using optical methods, enabling us to understand the properties of different information streams contacting the cerebellar nuclei.
While our imaging setup is being installed, we focused our work on developing technological solutions for the rest of the project. For example, we developed a motorized wheel system integrating dynamic friction control, programmable sensory textures, and mobile obstacles that creates unprecedented possibilities for studying sensorimotor integration. This system enables translation of experimental paradigms previously limited to other behaviours (like eyeblink conditionning) into more complex locomotor behaviors.
Finally, adhering to open science principles, we have developed solutions for sharing our complex datasets with the broader scientific community. Our work on standardizing data formats for our 3D acousto-optic lens imaging will use the best current practices for storing and sharing recordings. The adaptation of the Neurodata Without Borders format for arbitrary-trajectory imaging data, combined with our commitment to releasing hardware designs and analysis code through public repositories, provides a comprehensive template that will benefit researchers that will use our technology in the future, or that would like to use our dataset for computational neuroscience projects.