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Custom scripts used in the EpiDamID Publication (Rang & de Luca et al., 2022)

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EpiDamID2022

This repository contains key scripts and analyses accompanying the EpiDamID manuscript: bioRxiv

All raw data in the manuscript was processed using the workflow described in Markodimitraki, Rang et al., 2020, available at https://github.com/KindLab/scDamAndTools .

Jupyter Notebooks

The following jupyter notebooks with analyses are included:

  • LDA_classifier.applied_to_EB_data: Contains the analyses to train an LDA to predict membership to transcriptional clusters based on the single-cell DamID readout.

Custom scripts

The following code is included:

  • enrichment_over_regions.py: Custom code to compute average signal over regions of interest. Loosely based on the DeepTools functionalities (https://deeptools.readthedocs.io/en/develop/).
  • InformationContent.py: Custom code to compute the Information Content of DamID samples.

Additional code is available upon request.

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Custom scripts used in the EpiDamID Publication (Rang & de Luca et al., 2022)

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