Blinking-Based Multiplexing: A New Approach for Differentiating Spectrally Overlapped Emitters.
Grace A DeSalvoGrayson R HoyIsabelle M KoganJohn Z LiElise T PalmerEmilio Luz-RiccaPaul Scemama de GiallulyKristin L WustholzPublished in: The journal of physical chemistry letters (2022)
Multicolor single-molecule imaging is widely applied to answer questions in biology and materials science. However, most studies rely on spectrally distinct fluorescent probes or time-intensive sequential imaging strategies to multiplex. Here, we introduce blinking-based multiplexing (BBM), a simple approach to differentiate spectrally overlapped emitters based solely on their intrinsic blinking dynamics. The blinking dynamics of hundreds of rhodamine 6G and CdSe/ZnS quantum dots on glass are obtained using the same acquisition settings and analyzed with a change point detection algorithm. Although substantial blinking heterogeneity is observed, the analysis yields a blinking metric with 93.5% classification accuracy. We further show that BBM with up to 96.6% accuracy is achieved by using a deep learning algorithm for classification. This proof-of-concept study demonstrates that a single emitter can be accurately classified based on its intrinsic blinking dynamics and without the need to probe its spectral color.
Keyphrases
- quantum dots
- deep learning
- single molecule
- machine learning
- living cells
- sensitive detection
- high resolution
- artificial intelligence
- convolutional neural network
- fluorescent probe
- public health
- energy transfer
- fluorescence imaging
- single cell
- atomic force microscopy
- high throughput
- computed tomography
- contrast enhanced
- magnetic resonance imaging
- neural network