Pycallingcards: an integrated environment for visualizing, analyzing, and interpreting Calling Cards data

Author:

Guo Juanru12ORCID,Zhang Wenjin12ORCID,Chen Xuhua12,Yen Allen13ORCID,Chen Lucy12,Shively Christian A12ORCID,Li Daofeng12ORCID,Wang Ting124,Dougherty Joseph D135ORCID,Mitra Robi D1245ORCID

Affiliation:

1. Department of Genetics, Washington University in St. Louis School of Medicine , Saint Louis, MO 63110, United States

2. Edison Family Center for Genome Sciences and Systems Biology, Washington University in St. Louis School of Medicine , Saint Louis, MO 63110, United States

3. Department of Psychiatry, Washington University in St. Louis School of Medicine , Saint Louis, MO 63110, United States

4. McDonnell Genome Institute, , Washington University in St. Louis School of Medicine , Saint Louis, MO, 63110, United States

5. Intellectual and Developmental Disabilities Research Center, Washington University School of Medicine , Saint Louis, MO 63108, United States

Abstract

Abstract Motivation Unraveling the transcriptional programs that control how cells divide, differentiate, and respond to their environments requires a precise understanding of transcription factors’ (TFs) DNA-binding activities. Calling cards (CC) technology uses transposons to capture transient TF binding events at one instant in time and then read them out at a later time. This methodology can also be used to simultaneously measure TF binding and mRNA expression from single-cell CC and to record and integrate TF binding events across time in any cell type of interest without the need for purification. Despite these advantages, there has been a lack of dedicated bioinformatics tools for the detailed analysis of CC data. Results We introduce Pycallingcards, a comprehensive Python module specifically designed for the analysis of single-cell and bulk CC data across multiple species. Pycallingcards introduces two innovative peak callers, CCcaller and MACCs, enhancing the accuracy and speed of pinpointing TF binding sites from CC data. Pycallingcards offers a fully integrated environment for data visualization, motif finding, and comparative analysis with RNA-seq and ChIP-seq datasets. To illustrate its practical application, we have reanalyzed previously published mouse cortex and glioblastoma datasets. This analysis revealed novel cell-type-specific binding sites and potential sex-linked TF regulators, furthering our understanding of TF binding and gene expression relationships. Thus, Pycallingcards, with its user-friendly design and seamless interface with the Python data science ecosystem, stands as a critical tool for advancing the analysis of TF functions via CC data. Availability and implementation Pycallingcards can be accessed on the GitHub repository: https://github.com/The-Mitra-Lab/pycallingcards.

Funder

National Institute of Mental Health

National Institute of General Medical Sciences

National Institute of Dental and Craniofacial Research

Publisher

Oxford University Press (OUP)

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