Generating colorblind-friendly scatter plots for single-cell data release_o2q5mcmryjc4tmeczjox5rmgvy

by Tejas Guha, Elana J Fertig, Atul Deshpande

Published .

2022   Volume 11

Abstract

Reduced-dimension or spatial in situ scatter plots are widely employed in bioinformatics papers analyzing single-cell data to present phenomena or cell-conditions of interest in cell groups. When displaying these cell groups, color is frequently the only graphical cue used to differentiate them. However, as the complexity of the information presented in these visualizations increases, the usefulness of color as the only visual cue declines, especially for the sizable readership with color-vision deficiencies (CVDs). In this paper, we present scatterHatch, an R package that creates easily interpretable scatter plots by redundant coding of cell groups using colors as well as patterns. We give examples to demonstrate how the scatterHatch plots are more accessible than simple scatter plots when simulated for various types of CVDs.
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Type  article-journal
Stage   published
Date   2022-12-16
Language   en ?
DOI  10.7554/elife.82128
PubMed  36524718
PMC  PMC9829408
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