The efficient extraction of image data from curved tissue sheets embedded in volumetric imaging data remains a serious and unsolved problem in quantitative studies of embryogenesis. Here, we present DeepProjection (DP), a trainable projection algorithm based on deep learning. This algorithm is trained on user-generated training data to locally classify 3D stack content, and to rapidly and robustly predict binary masks containing the target content, e.g. tissue boundaries, while masking highly fluorescent out-of-plane artifacts. A projection of the masked 3D stack then yields background-free 2D images with undistorted fluorescence intensity values. The binary masks can further be applied to other fluorescent channels or to extract local tissue curvature. DP is designed as a first processing step than can be followed, for example, by segmentation to track cell fate. We apply DP to follow the dynamic movements of 2D-tissue sheets during dorsal closure in Drosophila embryos and of the periderm layer in the elongating Danio embryo. DeepProjection is available as a fully documented Python package.
DeepProjection: specific and robust projection of curved 2D tissue sheets from 3D microscopy using deep learning.
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作者:Haertter Daniel, Wang Xiaolei, Fogerson Stephanie M, Ramkumar Nitya, Crawford Janice M, Poss Kenneth D, Di Talia Stefano, Kiehart Daniel P, Schmidt Christoph F
| 期刊: | Development | 影响因子: | 3.600 |
| 时间: | 2022 | 起止号: | 2022 Nov 1; 149(21):dev200621 |
| doi: | 10.1242/dev.200621 | ||
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