电化学发光
显微镜
化学发光
钌
纳米技术
化学
分辨率(逻辑)
电化学
水溶液
超分辨显微术
时间分辨率
分子
材料科学
电极
物理
光学
计算机科学
扫描共焦电子显微镜
物理化学
催化作用
人工智能
有机化学
生物化学
作者
Jinrun Dong,Yuxian Lu,Yang Xu,Fanfan Chen,Jinmei Yang,Yuang Chen,Jiandong Feng
出处
期刊:Nature
[Nature Portfolio]
日期:2021-08-11
卷期号:596 (7871): 244-249
被引量:262
标识
DOI:10.1038/s41586-021-03715-9
摘要
Chemical reactions tend to be conceptualized in terms of individual molecules transforming into products, but are usually observed in experiments that probe the average behaviour of the ensemble. Single-molecule methods move beyond ensemble averages and reveal the statistical distribution of reaction positions, pathways and dynamics1–3. This has been shown with optical traps and scanning probe microscopy manipulating and observing individual reactions at defined locations with high spatial resolution4,5, and with modern optical methods using ultrasensitive photodetectors3,6,7 that enable high-throughput single-molecule measurements. However, effective probing of single-molecule solution chemistry remains challenging. Here we demonstrate optical imaging of single-molecule electrochemical reactions7 in aqueous solution and its use for super-resolution microscopy. The method utilizes a chemiluminescent reaction involving a ruthenium complex electrochemically generated at an electrode8, which ensures minimal background signal. This allows us to directly capture single photons of the electrochemiluminescence of individual reactions, and to develop super-resolved electrochemiluminescence microscopy for imaging the adhesion dynamics of live cells with high spatiotemporal resolution. We anticipate that our method will advance the fundamental understanding of electrochemical reactions and prove useful for bioassays and cell-imaging applications. Optical imaging of single-molecule electrochemical reactions in aqueous solution enables super-resolution electrochemiluminescence microscopy, which can be used to monitor the adhesion dynamics of live cells with high spatiotemporal resolution.
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