Documentdetail
ID kaart

oai:pubmedcentral.nih.gov:1077...

Onderwerp
Method
Auteur
Chen, Yefei Wang, Jingyi Liu, Jing Lin, Jianbang Lin, Yunping Nie, Jinyao Yue, Qi Deng, Chunshan Qi, Xiaofei Li, Yuantao Dai, Ji Lu, Zhonghua
Langue
en
Editor

Springer Nature Singapore

Categorie

Neuroscience Bulletin

Jaar

2023

vermelding datum

08-01-2025

Trefwoorden
aav functional retrograde aav-dj8r neurons projection
Metriek

Beschrijving

Retrograde adeno-associated viruses (AAVs) are capable of infecting the axons of projection neurons and serve as a powerful tool for the anatomical and functional characterization of neural networks.

However, few retrograde AAV capsids have been shown to offer access to cortical projection neurons across different species and enable the manipulation of neural function in non-human primates (NHPs).

Here, we report the development of a novel retrograde AAV capsid, AAV-DJ8R, which efficiently labeled cortical projection neurons after local administration into the striatum of mice and macaques.

In addition, intrastriatally injected AAV-DJ8R mediated opsin expression in the mouse motor cortex and induced robust behavioral alterations.

Moreover, AAV-DJ8R markedly increased motor cortical neuron firing upon optogenetic light stimulation after viral delivery into the macaque putamen.

These data demonstrate the usefulness of AAV-DJ8R as an efficient retrograde tracer for cortical projection neurons in rodents and NHPs and indicate its suitability for use in conducting functional interrogations.

SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s12264-023-01091-0.

Chen, Yefei,Wang, Jingyi,Liu, Jing,Lin, Jianbang,Lin, Yunping,Nie, Jinyao,Yue, Qi,Deng, Chunshan,Qi, Xiaofei,Li, Yuantao,Dai, Ji,Lu, Zhonghua, 2023, A Novel Retrograde AAV Variant for Functional Manipulation of Cortical Projection Neurons in Mice and Monkeys, Springer Nature Singapore

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