Seeing Is Believing: Quantifying Is Convincing: Computational Image Analysis in Biology.

@article{Sbalzarini2016SeeingIB,
  title={Seeing Is Believing: Quantifying Is Convincing: Computational Image Analysis in Biology.},
  author={Ivo F. Sbalzarini},
  journal={Advances in anatomy, embryology, and cell biology},
  year={2016},
  volume={219},
  pages={1-39}
}
Imaging is center stage in biology. Advances in microscopy and labeling techniques have enabled unprecedented observations and continue to inspire new developments. Efficient and accurate quantification and computational analysis of the acquired images, however, are becoming the bottleneck. We review different paradigms of computational image analysis for intracellular, single-cell, and tissue-level imaging, providing pointers to the specialized literature and listing available software tools… CONTINUE READING
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