2018
DOI: 10.1101/505032
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DeepCell Kiosk: Scaling deep learning-enabled cellular image analysis with Kubernetes

Abstract: Deep learning is transforming the ability of life scientists to extract information from images. These techniques have better accuracy than conventional approaches and enable previously impossible analyses. As the capability of deep learning methods expands, they are increasingly being applied to large imaging datasets. The computational demands of deep learning present a significant barrier to large-scale image analysis. To meet this challenge, we have developed DeepCell 2.0, a platform for deploying deep lea… Show more

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Cited by 28 publications
(33 citation statements)
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“…Others do not contain any T cells. Developing a better filter to detect images with artifacts and adopting state-of-the-art segmentation approaches [16,50] could further boost classification accuracy. We highlight the images that are misclassified by the pre-trained CNN with fine-tuning on the UMAP plots for three alternative image representations (Figures S12-S14).…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Others do not contain any T cells. Developing a better filter to detect images with artifacts and adopting state-of-the-art segmentation approaches [16,50] could further boost classification accuracy. We highlight the images that are misclassified by the pre-trained CNN with fine-tuning on the UMAP plots for three alternative image representations (Figures S12-S14).…”
Section: Discussionmentioning
confidence: 99%
“…Advanced machine learning models, in particular convolutional neural networks (CNNs), are now the prevailing approach for a variety of cellular image analyses [10][11][12]. CNNs can classify cell phenotypes [13,14], segment cells [15,16], restore images [17], and predict protein localization [18,19], cell lineage choice [20], the biological activity of small molecules [21] or ratios of activated T cells in a population [22]. They are also effective at cell type classification tasks such as predicting cell cycle state [23] and cell sorting [24].…”
Section: Introductionmentioning
confidence: 99%
“…Background (due to absence of tissue or high gold signal) was removed, and noise was filtered out using a k-nearest-neighbor approach. To segment single cells from images, we trained a convolutional neural network 76,117 using annotated training data from a variety of different cancer types. The network output was fed into the watershed algorithm to produce individual cells.…”
Section: Imaging Data Pre-processing and Single-cell Segmentationmentioning
confidence: 99%
“…To make BactMAP as useful as possible for the bacterial cell biology community, we standardized the import of datasets from five popular segmentation programs and one single-molecule tracking program: SuperSegger (Stylianidou et al, 2016), MicrobeJ (Ducret et al, 2016), Oufti (Paintdakhi et al, 2016), Morphometrics (Ursell et al, 2017), ObjectJ/ChainTracer (Syvertsson, Vischer, Gao, & Hamoen, 2016;Vischer et al, 2015) and iSBatch (Caldas, Punter, Ghodke, Robinson, & Oijen, 2015). Furthermore, new programs with improved or specialized cell segmentation capabilities are being developed constantly, as recently for instance BacStalk (Hartmann, van Teeseling, Thanbichler, & Drescher, 2018), a specialized tool for segmentation of cells with complex morphologies and the deep learning and machine-learningbased segmentation programs DeepCell (Bannon et al, 2018), DeLTA (Lugagne, Lin, & Dunlop, 2019) and Ilastik (Berg et al, 2019). Therefore, to make BactMAP compatible with a wide range of current and future segmentation software packages, we also implemented a generic import function for segmentation input.…”
Section: Visualization and Analysis Of Microscopy Data Using Bactmapmentioning
confidence: 99%