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1.
PLoS Comput Biol ; 14(4): e1006128, 2018 04.
Artigo em Inglês | MEDLINE | ID: mdl-29672531

RESUMO

State-of-the-art light-sheet and confocal microscopes allow recording of entire embryos in 3D and over time (3D+t) for many hours. Fluorescently labeled structures can be segmented and tracked automatically in these terabyte-scale 3D+t images, resulting in thousands of cell migration trajectories that provide detailed insights to large-scale tissue reorganization at the cellular level. Here we present EmbryoMiner, a new interactive open-source framework suitable for in-depth analyses and comparisons of entire embryos, including an extensive set of trajectory features. Starting at the whole-embryo level, the framework can be used to iteratively focus on a region of interest within the embryo, to investigate and test specific trajectory-based hypotheses and to extract quantitative features from the isolated trajectories. Thus, the new framework provides a valuable new way to quantitatively compare corresponding anatomical regions in different embryos that were manually selected based on biological prior knowledge. As a proof of concept, we analyzed 3D+t light-sheet microscopy images of zebrafish embryos, showcasing potential user applications that can be performed using the new framework.


Assuntos
Rastreamento de Células/estatística & dados numéricos , Peixe-Zebra/embriologia , Animais , Animais Geneticamente Modificados , Movimento Celular , Biologia Computacional , Desenvolvimento Embrionário , Células-Tronco Embrionárias/citologia , Gastrulação , Camadas Germinativas/citologia , Imageamento Tridimensional , Microscopia de Fluorescência , Mucosa Olfatória/citologia , Mucosa Olfatória/embriologia , Software
2.
Klin Monbl Augenheilkd ; 236(12): 1399-1406, 2019 Dec.
Artigo em Alemão | MEDLINE | ID: mdl-31671462

RESUMO

The use of deep neural networks ("deep learning") creates new possibilities in digital image processing. This approach has been widely applied and successfully used for the evaluation of image data in ophthalmology. In this article, the methodological approach of deep learning is examined and compared to the classical approach for digital image processing. The differences between the approaches are discussed and the increasingly important role of training data for model generation is explained. Furthermore, the approach of transfer learning for deep learning is presented with a representative data set from the field of corneal confocal microscopy. In this context, the advantages of the method and the specific problems when dealing with medical microscope data will be discussed.


Assuntos
Processamento de Imagem Assistida por Computador , Redes Neurais de Computação , Oftalmologia , Aprendizado Profundo , Microscopia Confocal
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