Methods and systems for imaging cells

Image analysis – Applications – Biomedical applications

Reexamination Certificate

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C382S224000, C424S093200

Reexamination Certificate

active

07920736

ABSTRACT:
The invention generally provides methods and systems for determining characteristics of cellular structures. The methods include non-invasive, non-perturbing, automatable, and quantitative methods and may be applied to the examination of cells such as stem cells, embryos, and egg cells.

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