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Single-cell morphological analysis

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scmorph - Single-cell morphological analysis

scmorph is a Python library to process CellPainting or any morphological data. It unlocks single-cell data to model heterogenity.

scmorph differs from the popular PyCytominer package in the following ways:

  • Single-cell: Enables efficient analysis of single-cell data
  • Batch-correction: Natively integrates a batch correction technique widely used for scRNA-seq.
  • Enhanced feature selection: Removes non-linearly correlated features using an adapted Chatterjee correlation coefficient, which results in fewer, more meaningful features.
  • Enhanced aggregation: Offers statistically robust aggregation methods to derive meaningful distances to a control sample.

It provides tools to make single-cell data analysis easier and more reproducible. For example, it can be used to:

  • Load in data from csv files, e.g. generated by CellProfiler.
  • Remove batch effects to compare conditions across batches.
  • QC both cells and images.
  • Remove redundant features based on correlation.
  • Reduce dimensionality to gain quick intuition about the data's spread.
  • Perform statistically robust aggregate analysis to quickly identify hits.

Installation

Install scmorph via pip or conda:

pip install scmorph
# or:
conda install -c conda-forge scmorph

Usage

For documentation on the usage of scmorph, please see https://scmorph.readthedocs.io/en/latest/

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