Deep neural network automated segmentation of cellular structures in volume electron microscopy.
Benjamin GallusserGiorgio MalteseGiuseppe Di CaprioTegy John VadakkanAnwesha SanyalElliott SomervilleMihir SahasrabudheJustin O'ConnorMartin WeigertTomas KirchhausenPublished in: The Journal of cell biology (2022)
Volume electron microscopy is an important imaging modality in contemporary cell biology. Identification of intracellular structures is a laborious process limiting the effective use of this potentially powerful tool. We resolved this bottleneck with automated segmentation of intracellular substructures in electron microscopy (ASEM), a new pipeline to train a convolutional neural network to detect structures of a wide range in size and complexity. We obtained dedicated models for each structure based on a small number of sparsely annotated ground truth images from only one or two cells. Model generalization was improved with a rapid, computationally effective strategy to refine a trained model by including a few additional annotations. We identified mitochondria, Golgi apparatus, endoplasmic reticulum, nuclear pore complexes, caveolae, clathrin-coated pits, and vesicles imaged by focused ion beam scanning electron microscopy. We uncovered a wide range of membrane-nuclear pore diameters within a single cell and derived morphological metrics from clathrin-coated pits and vesicles, consistent with the classical constant-growth assembly model.
Keyphrases
- electron microscopy
- convolutional neural network
- deep learning
- endoplasmic reticulum
- single cell
- high resolution
- neural network
- high throughput
- induced apoptosis
- reactive oxygen species
- rna seq
- cell death
- stem cells
- cell cycle arrest
- oxidative stress
- cell proliferation
- body composition
- quantum dots
- fluorescence imaging
- sensitive detection