Single-cell RNA sequencing of motoneurons identifies regulators of synaptic wiring in Drosophila embryos

Abstract

The correct wiring of neuronal circuits is one of the most complex processes in development, since axons form highly specific connections out of a vast number of possibilities. Circuit structure is genetically determined in vertebrates and invertebrates, but the mechanisms guiding each axon to precisely innervate a unique pre-specified target cell are poorly understood. We investigated Drosophila embryonic motoneurons using single-cell genomics, imaging, and genetics. We show that a cell-specific combination of homeodomain transcription factors and downstream immunoglobulin domain proteins is expressed in individual cells and plays an important role in determining cell-specific connections between differentiated motoneurons and target muscles. We provide genetic evidence for a functional role of five homeodomain transcription factors and four immunoglobulins in the neuromuscular wiring. Knockdown and ectopic expression of these homeodomain transcription factors induces cell-specific synaptic wiring defects that are partly phenocopied by genetic modulations of their immunoglobulin targets. Taken together, our data suggest that homeodomain transcription factor and immunoglobulin molecule expression could be directly linked and function as a crucial determinant of neuronal circuit structure.


The project was funded by the DFG grant LO 844/4-2 to Ingrid Lohmann. Lars Velten acknowledges grant PID2019-108082GA-I00 by the Spanish Ministry of Science, Innovation and Universities (MCIU/AEI/FEDER, UE) as well as support of the Spanish Ministry of Science and Innovation to the EMBL partnership, the Centro de Excelencia Severo Ochoa and the CERCA Programme / Generalitat de Catalunya. Open Access funding enabled and organized by ProjektDEAL

Document Type

Article


Published version

Language

English

Subjects and keywords

Drosòfila; Embriologia; Genètica

Publisher

Wiley Open Access

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Rights

© 2022 Jessica Velten et al. Published under the terms of the CC BY 4.0 license

https://creativecommons.org/licenses/by/4.0/

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