Litcius/Paper detail

CoMut: visualizing integrated molecular information with comutation plots

Jett Crowdis, Meng Xiao He, Brendan Reardon, Eliezer M. Van Allen

2020Bioinformatics70 citationsDOIOpen Access PDF

Abstract

MOTIVATION: Large-scale sequencing studies have created a need to succinctly visualize genomic characteristics of patient cohorts linked to widely variable phenotypic information. This is often done by visualizing the co-occurrence of variants with comutation plots. Current tools lack the ability to create highly customizable and publication quality comutation plots from arbitrary user data. RESULTS: We developed CoMut, a stand-alone, object-oriented Python package that creates comutation plots from arbitrary input data, including categorical data, continuous data, bar graphs, side bar graphs and data that describes relationships between samples. AVAILABILITY AND IMPLEMENTATION: The CoMut package is open source and is available at https://github.com/vanallenlab/comut under the MIT License, along with documentation and examples. A no installation, easy-to-use implementation is available on Google Colab (see GitHub).

Topics & Concepts

Computer scienceSoftwareComputational biologyProgramming languageBiologyGenomics and Rare DiseasesGenetic Associations and EpidemiologyCancer Genomics and Diagnostics