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  • 标题:Spatio-temporal feature learning with reservoir computing for T-cell segmentation in live-cell usepackage usepackage usepackage usepackage beginhbox ^end Ca 2 + fluorescence microscopy
  • 本地全文:下载
  • 作者:Fatemeh Hadaeghi ; Björn-Philipp Diercks ; Daniel Schetelig
  • 期刊名称:Scientific Reports
  • 电子版ISSN:2045-2322
  • 出版年度:2021
  • 卷号:11
  • DOI:10.1038/s41598-021-87607-y
  • 语种:English
  • 出版社:Springer Nature
  • 摘要:Advances in high-resolution live-cell Ca2+ imaging enabled subcellular localization of early Ca2+ signaling events in T-cells and paved the way to investigate the interplay between receptors and potential target channels in Ca2+ release events. The huge amount of acquired data requires efficient, ideally automated image processing pipelines, with cell localization/segmentation as central tasks. Automated segmentation in live-cell cytosolic Ca2+ imaging data is, however, challenging due to temporal image intensity fluctuations, low signal-to-noise ratio, and photo-bleaching. Here, we propose a reservoir computing (RC) framework for efficient and temporally consistent segmentation. Experiments were conducted with Jurkat T-cells and anti-CD3 coated beads used for T-cell activation. We compared the RC performance with a standard U-Net and a convolutional long short-term memory (LSTM) model. The RC-based models (1) perform on par in terms of segmentation accuracy with the deep learning models for cell-only segmentation, but show improved temporal segmentation consistency compared to the U-Net; (2) outperform the U-Net for two-emission wavelengths image segmentation and differentiation of T-cells and beads; and (3) perform on par with the convolutional LSTM for single-emission wavelength T-cell/bead segmentation and differentiation. In turn, RC models contain only a fraction of the parameters of the baseline models and reduce the training time considerably.
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