Robust Classification of Cell Cycle Phase and Biological Feature Extraction by Image-Based Deep Learning

Across the cell cycle, the subcellular organization undergoes major spatiotemporal changes that could in principle contain biological features that could potentially represent cell cycle phase. We applied convolutional neural network-based classifiers to extract such putative features from the fluor...

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Veröffentlicht in:Molecular biology of the cell 2020-06, Vol.31 (13), p.mbcE20030187-1354
Hauptverfasser: Nagao, Yukiko, Sakamoto, Mika, Chinen, Takumi, Okada, Yasushi, Takao, Daisuke
Format: Artikel
Sprache:eng
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Zusammenfassung:Across the cell cycle, the subcellular organization undergoes major spatiotemporal changes that could in principle contain biological features that could potentially represent cell cycle phase. We applied convolutional neural network-based classifiers to extract such putative features from the fluorescence microscope images of cells stained for the nucleus, the Golgi apparatus, and the microtubule cytoskeleton. We demonstrate that cell images can be robustly classified according to G1/S and G2 cell cycle phases, without the need for specific cell cycle markers. Grad-CAM analysis of the classification models enabled us to extract several pairs of quantitative parameters of specific subcellular features as good classifiers for the cell cycle phase. These results collectively demonstrate that machine learning-based image processing is useful to extract biological features underlying cellular phenomena of interest in an unbiased and data-driven manner.
ISSN:1059-1524
1939-4586
DOI:10.1091/mbc.E20-03-0187