In Silico Labeling: Predicting Fluorescent Labels in Unlabeled Images
Author(s) -
Eric Christiansen,
Samuel Yang,
D. Michael Ando,
Ashkan Javaherian,
Gaia Skibinski,
Scott Lipnick,
Elliot Mount,
Alison O’Neil,
Kevan Shah,
Alicia K. Lee,
Piyush Goyal,
William Fedus,
Ryan Poplin,
Andre Esteva,
Marc Berndl,
Lee L. Rubin,
Philip Nelson,
Steven Finkbeiner
Publication year - 2018
Publication title -
cell
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 26.304
H-Index - 776
eISSN - 1097-4172
pISSN - 0092-8674
DOI - 10.1016/j.cell.2018.03.040
Subject(s) - biology , in silico , fluorescence , fluorescent labelling , computational biology , artificial intelligence , genetics , computer science , gene , physics , quantum mechanics
Microscopy is a central method in life sciences. Many popular methods, such as antibody labeling, are used to add physical fluorescent labels to specific cellular constituents. However, these approaches have significant drawbacks, including inconsistency; limitations in the number of simultaneous labels because of spectral overlap; and necessary perturbations of the experiment, such as fixing the cells, to generate the measurement. Here, we show that a computational machine-learning approach, which we call "in silico labeling" (ISL), reliably predicts some fluorescent labels from transmitted-light images of unlabeled fixed or live biological samples. ISL predicts a range of labels, such as those for nuclei, cell type (e.g., neural), and cell state (e.g., cell death). Because prediction happens in silico, the method is consistent, is not limited by spectral overlap, and does not disturb the experiment. ISL generates biological measurements that would otherwise be problematic or impossible to acquire.
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