A sensitive red/far-red photoswitch for controllable gene therapy in mouse models of metabolic diseases

Longliang Qiao(Tongji University), Lingxue Niu(East China Normal University), Meiyan Wang(Shanghai University), Zhihao Wang(East China Normal University), Deqiang Kong(East China Normal University), Guiling Yu(East China Normal University), Haifeng Ye(East China Normal University)
Nature Communications
November 27, 2024
Cited by 25Open Access
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Abstract

Red light optogenetic systems are in high demand for the precise control of gene expression for gene- and cell-based therapies. Here, we report a red/far-red light-inducible photoswitch (REDLIP) system based on the chimeric photosensory protein FnBphP (Fn-REDLIP) or PnBphP (Pn-REDLIP) and their interaction partner LDB3, which enables efficient dynamic regulation of gene expression with a timescale of seconds without exogenous administration of a chromophore in mammals. We use the REDLIP system to establish the REDLIP-mediated CRISPR-dCas9 (REDLIPcas) system, enabling optogenetic activation of endogenous target genes in mammalian cells and mice. The REDLIP system is small enough to support packaging into adeno-associated viruses (AAVs), facilitating its therapeutic application. Demonstrating its capacity to treat metabolic diseases, we show that an AAV-delivered Fn-REDLIP system achieved optogenetic control of insulin expression to effectively lower blood glucose levels in type 1 diabetes model mice and control an anti-obesity therapeutic protein (thymic stromal lymphopoietin, TSLP) to reduce body weight in obesity model mice. REDLIP is a compact and sensitive optogenetic tool for reversible and non-invasive control that can facilitate basic biological and biomedical research. Red light optogenetic systems are in high demand for therapeutic applications. Here, the authors introduce REDLIP, a red-light-inducible system that enables rapid gene regulation without external chromophores, effectively modulating insulin and anti-obesity protein expression in disease models.


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