Cell Membrane Tracking in Living Brain Tissue using Differential Interference Contrast Microscopy (bibtex)
by J. Lee, I. Kolb, C. Forest and C.J. Rozell
Abstract:
Differential Interference Contrast (DIC) microscopy is widely used for observing unstained biological samples that are otherwise optically transparent. Combining this optical technique with machine vision could enable the automation of many life science experiments; however, identifying relevant features under DIC is challenging. In particular, precise tracking of cell boundaries in a thick (>100 um) slice of tissue has not previously been accomplished. We present a novel deconvolution algorithm that achieves state-of-the-art performance at identifying and tracking these membrane locations. Our proposed algorithm is formulated as a regularized least-squares optimization that incorporates a filtering mechanism to handle organic tissue interference and a robust edge-sparsity regularizer that integrates dynamic edge-tracking capabilities. As a secondary contribution, this paper also describes new community infrastructure in the form of a MATLAB toolbox for accurately simulating DIC microscopy images of in vitro brain slices. Building on existing DIC optics modeling, our simulation framework additionally contributes an accurate representation of interference from organic tissue, neuronal cell-shapes, and tissue motion due to the action of the pipette. This simulator allows us to better understand the image statistics (to improve algorithms), as well as quantitatively test cell segmentation and tracking algorithms in scenarios where ground truth data is fully known.
Reference:
Cell Membrane Tracking in Living Brain Tissue using Differential Interference Contrast MicroscopyJ. Lee, I. Kolb, C. Forest and C.J. Rozell. IEEE Transactions on Image Processing, pp. 1847–1861, April 2018.
Bibtex Entry:
@Article{lee.16c,
  author = {Lee, J. and Kolb, I. and Forest, C. and Rozell, C.J.},
  title = {Cell Membrane Tracking in Living Brain Tissue using Differential Interference Contrast Microscopy},
  year = 2018,
  abstract = {
  Differential Interference Contrast (DIC) microscopy is widely used for observing unstained biological samples that are otherwise optically transparent. Combining this optical technique with machine vision could enable the automation of many life science experiments; however, identifying relevant features under DIC is challenging. In particular, precise tracking of cell boundaries in a thick (>100 um) slice of tissue has not previously been accomplished. We present a novel deconvolution algorithm that achieves state-of-the-art performance at identifying and tracking these membrane locations.  Our proposed algorithm is formulated as a regularized least-squares optimization that incorporates a filtering mechanism to handle organic tissue interference and a robust edge-sparsity regularizer that integrates dynamic edge-tracking capabilities. As a secondary contribution, this paper also describes new community infrastructure in the form of a MATLAB toolbox for accurately simulating DIC microscopy images of in vitro brain slices. Building on existing DIC optics modeling, our simulation framework additionally contributes an accurate representation of interference from organic tissue, neuronal cell-shapes, and tissue motion due to the action of the pipette. This simulator allows us to better understand the image statistics (to improve algorithms), as well as quantitatively test cell segmentation and tracking algorithms in scenarios where ground truth data is fully known.},
  vol = 27,
  number = 4,
  month = apr,
  pages = {1847--1861},
  journal = {IEEE Transactions on Image Processing},
  url = {https://doi.org/10.1109/TIP.2017.2787625}
}
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