Literature DB >> 34876684

Label-free multiplexed microtomography of endogenous subcellular dynamics using generalizable deep learning.

YoungJu Jo1,2,3,4, Hyungjoo Cho3, Wei Sun Park1,2, Geon Kim1,2, DongHun Ryu1,2, Young Seo Kim1,2,5, Moosung Lee1,2, Sangwoo Park6, Mahn Jae Lee2,5, Hosung Joo3, HangHun Jo3, Seongsoo Lee6, Sumin Lee3, Hyun-Seok Min7, Won Do Heo8,9, YongKeun Park10,11,12.   

Abstract

Simultaneous imaging of various facets of intact biological systems across multiple spatiotemporal scales is a long-standing goal in biology and medicine, for which progress is hindered by limits of conventional imaging modalities. Here we propose using the refractive index (RI), an intrinsic quantity governing light-matter interaction, as a means for such measurement. We show that major endogenous subcellular structures, which are conventionally accessed via exogenous fluorescence labelling, are encoded in three-dimensional (3D) RI tomograms. We decode this information in a data-driven manner, with a deep learning-based model that infers multiple 3D fluorescence tomograms from RI measurements of the corresponding subcellular targets, thereby achieving multiplexed microtomography. This approach, called RI2FL for refractive index to fluorescence, inherits the advantages of both high-specificity fluorescence imaging and label-free RI imaging. Importantly, full 3D modelling of absolute and unbiased RI improves generalization, such that the approach is applicable to a broad range of new samples without retraining to facilitate immediate applicability. The performance, reliability and scalability of this technology are extensively characterized, and its various applications within single-cell profiling at unprecedented scales (which can generate new experimentally testable hypotheses) are demonstrated.
© 2021. The Author(s), under exclusive licence to Springer Nature Limited.

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Year:  2021        PMID: 34876684     DOI: 10.1038/s41556-021-00802-x

Source DB:  PubMed          Journal:  Nat Cell Biol        ISSN: 1465-7392            Impact factor:   28.824


  4 in total

Review 1.  Reconstructing data-driven governing equations for cell phenotypic transitions: integration of data science and systems biology.

Authors:  Jianhua Xing
Journal:  Phys Biol       Date:  2022-09-09       Impact factor: 2.959

2.  Quantitative phase velocimetry measures bulk intracellular transport of cell mass during the cell cycle.

Authors:  Soorya Pradeep; Thomas A Zangle
Journal:  Sci Rep       Date:  2022-04-12       Impact factor: 4.379

3.  Rapid species identification of pathogenic bacteria from a minute quantity exploiting three-dimensional quantitative phase imaging and artificial neural network.

Authors:  Geon Kim; Daewoong Ahn; Minhee Kang; Jinho Park; DongHun Ryu; YoungJu Jo; Jinyeop Song; Jea Sung Ryu; Gunho Choi; Hyun Jung Chung; Kyuseok Kim; Doo Ryeon Chung; In Young Yoo; Hee Jae Huh; Hyun-Seok Min; Nam Yong Lee; YongKeun Park
Journal:  Light Sci Appl       Date:  2022-06-23       Impact factor: 20.257

Review 4.  Roadmap on Digital Holography-Based Quantitative Phase Imaging.

Authors:  Vinoth Balasubramani; Małgorzata Kujawińska; Cédric Allier; Vijayakumar Anand; Chau-Jern Cheng; Christian Depeursinge; Nathaniel Hai; Saulius Juodkazis; Jeroen Kalkman; Arkadiusz Kuś; Moosung Lee; Pierre J Magistretti; Pierre Marquet; Soon Hock Ng; Joseph Rosen; Yong Keun Park; Michał Ziemczonok
Journal:  J Imaging       Date:  2021-11-26
  4 in total

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