4.4 Article

Extracting meaning from biological imaging data

Journal

MOLECULAR BIOLOGY OF THE CELL
Volume 25, Issue 22, Pages 3470-3473

Publisher

AMER SOC CELL BIOLOGY
DOI: 10.1091/mbc.E14-04-0946

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Funding

  1. Drexel University
  2. National Institute of Neurological Disorders and Stroke [R01NS076709]
  3. National Institute of Aging [R01AG040080]
  4. Human Frontier Science Program grant [RGP0060/2012]

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Biological imaging continues to improve, capturing continually longer-term, richer, and more complex data, penetrating deeper into live tissue. How do we gain insight into the dynamic processes of disease and development from terabytes of multidimensional image data? Here I describe a collaborative approach to extracting meaning from biological imaging data. The collaboration consists of teams of biologists and engineers working together. Custom computational tools are built to best exploit application-specific knowledge in order to visualize and analyze large and complex data sets. The image data are summarized, extracting and modeling the features that capture the objects and relationships in the data. The summarization is validated, the results visualized, and errors corrected as needed. Finally, the customized analysis and visualization tools together with the image data and the summarization results are shared. This Perspective provides a brief guide to the mathematical ideas that rigorously quantify the notion of extracting meaning from biological image, and to the practical approaches that have been used to apply these ideas to a wide range of applications in cell and tissue optical imaging.

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