ashlar


Nameashlar JSON
Version 1.18.0 PyPI version JSON
download
home_pagehttps://github.com/sorgerlab/ashlar
SummaryAlignment by Simultaneous Harmonization of Layer/Adjacency Registration
upload_time2024-02-02 18:12:57
maintainer
docs_urlNone
authorJeremy Muhlich
requires_python
licenseMIT License
keywords scripts microscopy registration stitching
VCS
bugtrack_url
requirements No requirements were recorded.
Travis-CI No Travis.
coveralls test coverage No coveralls.
            

ASHLAR: Alignment by Simultaneous Harmonization of Layer/Adjacency Registration

Ashlar implements efficient combined stitching and registration of multi-channel
image mosaics collected using the Tissue-CycIF microscopy protocol [1]_. Although
originally developed for CycIF, it may also be applicable to other tiled and/or
cyclic imaging approaches. The package offers both a command line script for the
most common use cases as well as an API for building more specialized tools.

.. [1] Tissue-CycIF is multi-round immunofluorescence microscopy on large fixed
   tissue samples. See https://doi.org/10.1101/151738 for details.


            

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