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- Title
Phase imaging with computational specificity (PICS) for measuring dry mass changes in sub-cellular compartments.
- Authors
Kandel, Mikhail E.; He, Yuchen R.; Lee, Young Jae; Chen, Taylor Hsuan-Yu; Sullivan, Kathryn Michele; Aydin, Onur; Saif, M. Taher A.; Kong, Hyunjoon; Sobh, Nahil; Popescu, Gabriel
- Abstract
Due to its specificity, fluorescence microscopy has become a quintessential imaging tool in cell biology. However, photobleaching, phototoxicity, and related artifacts continue to limit fluorescence microscopy's utility. Recently, it has been shown that artificial intelligence (AI) can transform one form of contrast into another. We present phase imaging with computational specificity (PICS), a combination of quantitative phase imaging and AI, which provides information about unlabeled live cells with high specificity. Our imaging system allows for automatic training, while inference is built into the acquisition software and runs in real-time. Applying the computed fluorescence maps back to the quantitative phase imaging (QPI) data, we measured the growth of both nuclei and cytoplasm independently, over many days, without loss of viability. Using a QPI method that suppresses multiple scattering, we measured the dry mass content of individual cell nuclei within spheroids. In its current implementation, PICS offers a versatile quantitative technique for continuous simultaneous monitoring of individual cellular components in biological applications where long-term label-free imaging is desirable. Quantitative phase imaging suffers from a lack of specificity in label-free imaging. Here, the authors introduce Phase Imaging with Computational Specificity (PICS), a method that combines phase imaging with machine learning techniques to provide specificity in unlabeled live cells with automatic training.
- Subjects
CELL nuclei; CELL anatomy; IMAGING systems; FLUORESCENCE microscopy; ARTIFICIAL intelligence
- Publication
Nature Communications, 2020, Vol 11, Issue 1, p1
- ISSN
2041-1723
- Publication type
Article
- DOI
10.1038/s41467-020-20062-x