Automated Plasmonic Resonance Scattering Imaging Analysis via Deep Learning.
Ming Ke SongShan Xiong ChenPing Ping HuCheng Zhi HuangJun ZhouPublished in: Analytical chemistry (2021)
Plasmonic nanoparticles, which have excellent local surface plasmon resonance (LSPR) optical and chemical properties, have been widely used in biology, chemistry, and photonics. The single-particle light scattering dark-field microscopy (DFM) imaging technique based on a color-coded analytical method is a promising approach for high-throughput plasmonic nanoparticle scatterometry. Due to the interference of high noise levels, accurately extracting real scattering light of plasmonic nanoparticles in living cells is still a challenging task, which hinders its application for intracellular analysis. Herein, we propose an automatic and high-throughput LSPR scatterometry technique using a U-Net convolutional deep learning neural network. We use the deep neural networks to recognize the scattering light of nanoparticles from background interference signals in living cells, which have a dynamic and complicated environment, and construct a DFM image semantic analytical model based on the U-Net convolutional neural network. Compared with traditional methods, this method can achieve higher accuracy, stronger generalization ability, and robustness. As a proof of concept, the change of intracellular cytochrome c in MCF-7 cells under UV light-induced apoptosis was monitored through the fast and high-throughput analysis of the plasmonic nanoparticle scattering light, providing a new strategy for scatterometry study and imaging analysis in chemistry.
Keyphrases
- deep learning
- high throughput
- neural network
- single molecule
- living cells
- induced apoptosis
- convolutional neural network
- high resolution
- energy transfer
- fluorescent probe
- machine learning
- endoplasmic reticulum stress
- signaling pathway
- single cell
- oxidative stress
- label free
- reactive oxygen species
- air pollution
- monte carlo