生物医学工程
超声波
体内
材料科学
纳米技术
生物物理学
医学
生物
放射科
生物技术
作者
Shan Jiang,Xiang Wu,Fan Yang,Nicholas J. Rommelfanger,Guosong Hong
出处
期刊:Nature Protocols
[Springer Nature]
日期:2023-11-01
卷期号:18 (12): 3787-3820
被引量:17
标识
DOI:10.1038/s41596-023-00895-8
摘要
Light is used extensively in biological and medical research for optogenetic neuromodulation, fluorescence imaging, photoactivatable gene editing and light-based therapies. The major challenge to the in vivo implementation of light-based methods in deep-seated structures of the brain or of internal organs is the limited penetration of photons in biological tissue. The presence of light scattering and absorption has resulted in the development of invasive techniques such as the implantation of optical fibers, the insertion of endoscopes and the surgical removal of overlying tissues to overcome light attenuation and deliver it deep into the body. However, these procedures are highly invasive and make it difficult to reposition and adjust the illuminated area in each animal. Here, we detail a noninvasive approach to deliver light (termed ‘deLight’) in deep tissue via systemically injected mechanoluminescent nanotransducers that can be gated by using focused ultrasound. This approach achieves localized light emission with sub-millimeter resolution and millisecond response times in any vascularized organ of living mice without requiring invasive implantation of light-emitting devices. For example, deLight enables optogenetic neuromodulation in live mice without a craniotomy or brain implants. deLight provides a generalized method for applications that require a light source in deep tissues in vivo, such as deep-brain fluorescence imaging and photoactivatable genome editing. The implementation of the entire protocol for an in vivo application takes ~1–2 weeks. This protocol describes the use of noninvasively triggered light in deep tissue via focused ultrasound-activated and systemically injected mechanoluminescent nanotransducers to achieve localized emissions with submillimeter resolution and millisecond response times.
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