Massively Parallel Selection of NanoCluster Beacons.
Yu-An KuoCheulhee JungYu-An ChenHung-Che KuoOliver S ZhaoTrung D NguyenJames R RybarskiSoonwoo HongYuan-I ChenDennis C WylieJohn A HawkinsJada N WalkerSamuel W J ShieldsJennifer S BrodbeltJeffrey T PettyIlya J FinkelsteinHsin-Chin YehPublished in: Advanced materials (Deerfield Beach, Fla.) (2022)
NanoCluster Beacons (NCBs) are multicolor silver nanocluster probes whose fluorescence can be activated or tuned by a proximal DNA strand called the activator. While a single-nucleotide difference in a pair of activators can lead to drastically different activation outcomes, termed polar opposite twins (POTs), it is difficult to discover new POT-NCBs using the conventional low-throughput characterization approaches. Here, a high-throughput selection method is reported that takes advantage of repurposed next-generation-sequencing chips to screen the activation fluorescence of ≈40 000 activator sequences. It is found that the nucleobases at positions 7-12 of the 18-nucleotide-long activator are critical to creating bright NCBs and positions 4-6 and 2-4 are hotspots to generate yellow-orange and red POTs, respectively. Based on these findings, a "zipper-bag" model is proposed that can explain how these hotspots facilitate the formation of distinct silver cluster chromophores and alter their chemical yields. Combining high-throughput screening with machine-learning algorithms, a pipeline is established to design bright and multicolor NCBs in silico.
Keyphrases
- single molecule
- machine learning
- high throughput
- nuclear factor
- gold nanoparticles
- circulating tumor
- flow cytometry
- silver nanoparticles
- artificial intelligence
- energy transfer
- toll like receptor
- cell free
- single cell
- molecular docking
- copy number
- adipose tissue
- ionic liquid
- gestational age
- circulating tumor cells
- gene expression
- weight loss
- data analysis
- genetic diversity