Integrating single-cell connectivity, gene expression, and function in zebra finches - PROJECT SUMMARY
The courtship song of male zebra finches is a classical model for learning complex motor behaviors and shows
important parallels to human speech and communication. Male zebra finches learn a song from an adult tutor
and then reproduce this song throughout adulthood. The zebra finch model offers outstanding behavioral control
that permits the investigation of general principles of the circuit basis of vocal learning and motor control. Many
highly interconnected brain regions across the zebra finch brain, ranging from forebrain to brainstem motor
nuclei, form a song control system required for song learning and song production. A major bottleneck in
understanding this system stems from unknown connectivity properties in the songbird brain and little knowledge
of how these connectivity properties interface with transcriptomic and functional diversity of individual neurons
to produce robust behavioral output. BRAIN Initiative supported tools have revolutionized research in the
laboratory mouse by addressing this same bottleneck. However, these technologies are currently limited to a
small set of model systems and not yet adapted to the zebra finch. We recently developed a novel class of
flexible, high-throughput connectivity mapping tools for investigating neural circuit function. Our strategy relies
on nucleic acid barcodes to translate neuronal connectivity into a format that can be read out by DNA sequencing
and can bridge connectomics, transcriptomics, and functional data with single-cell resolution. Importantly, our
tools are virus-based and can therefore be applied across species. To enable a multi-modal investigation of
the circuit function of integrated cell types in the zebra finch song control system, and in particular the
song nucleus HVC, in this capacity-building proposal we will adapt our next-generation connectomics
and spatial transcriptomics tools to the zebra finch. In Aim 1, we bring the single-cell tracing method
MAPseq and its combination with single-cell RNA sequencing to the zebra finch to discover, in an unbiased way,
the multi-omic cell type identities in HVC. In Aim 2, we first optimize in situ sequencing method BARseq for zebra
finches to map endogenous gene expression and barcodes in space. We then establish a pipeline to routinely
register functional imaging data of HVC with BARseq images to interrogate the interaction of neuronal activity,
gene expression, and long-range connectivity at the resolution of single cells for hundreds of cells per
experiment. Successful completion of these aims paves the way for integrative TargetedBCP R01 projects
conducted in collaboration between the Kebschull and Long labs. These projects will update existing models of
song learning in the zebra finch by incorporating long-range connectivity and transcriptomic cell identity
information that is critical for achieving a mechanistic understanding of circuit function. Our first target will test
two competing hypotheses about how the connectomic and transcriptomic features of HVC neurons determine
network properties that give rise to acoustic structure in the songbird brain.