4.7 Article

DeepProjection: specific and robust projection of curved 2D tissue sheets from 3D microscopy using deep learning

期刊

DEVELOPMENT
卷 149, 期 21, 页码 -

出版社

COMPANY BIOLOGISTS LTD
DOI: 10.1242/dev.200621

关键词

KEY WORDS; 2D projection; 3D image analysis; Deep learning; Software; Tissue morphogenesis

资金

  1. Studienstiftung des Deutschen Volkes
  2. National Institutes of Health
  3. Soft Matter Center, Duke University [R35GM127059, R01-AR076342]

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This study presents DeepProjection, a trainable projection algorithm based on deep learning, for efficient extraction of image data from curved tissue sheets in volumetric imaging data. The algorithm can predict binary masks containing the target content and generate background-free 2D images. It can also be applied to other fluorescent channels or extract tissue curvature.
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 backgroundfree 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.

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