scatterbar: an R package for visualizing proportional data across spatially resolved coordinates.

Dee Velazquez, Jean Fan
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Abstract

Motivation: Displaying proportional data across many spatially resolved coordinates is a challenging but important data visualization task, particularly for spatially resolved transcriptomics data. Scatter pie plots are one type of commonly used data visualization for such data but present perceptual challenges that may lead to difficulties in interpretation. Increasing the visual saliency of such data visualizations can help viewers more accurately identify proportional trends and compare proportional differences across spatial locations.

Results: We developed scatterbar, an open-source R package that extends ggplot2, to visualize proportional data across many spatially resolved coordinates using scatter stacked bar plots. We apply scatterbar to visualize deconvolved cell-type proportions from a spatial transcriptomics dataset of the adult mouse brain to demonstrate how scatter stacked bar plots can enhance the distinguishability of proportional distributions compared to scatter pie plots.

Availability and implementation: scatterbar is available on CRAN https://cran.r-project.org/package=scatterbar with additional documentation and tutorials at https://jef.works/scatterbar/.

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scatterbar:一个R包,用于可视化跨空间分解坐标的比例数据。
动机:显示跨许多空间分辨坐标的比例数据是一项具有挑战性但重要的数据可视化任务,特别是对于空间分辨转录组学数据。散点饼图是这类数据常用的一种数据可视化方法,但存在可能导致解释困难的感知挑战。增加这种数据可视化的视觉显着性可以帮助观众更准确地识别比例趋势,并比较不同空间位置的比例差异。结果:我们开发了scatterbar,这是一个扩展了ggplot2的开源R包,可以使用散点堆叠条形图来可视化许多空间分辨坐标中的比例数据。我们应用散点柱来可视化来自成年小鼠大脑空间转录组数据集的反卷积细胞类型比例,以证明与散点饼图相比,散点堆叠条形图如何增强比例分布的可分辨性。可用性:散点条可在CRAN https://cran.r-project.org/package=scatterbar上获得,其他文档和教程可在https://jef.works/scatterbar/.Supplementary上获得。信息:补充数据可在Bioinformatics在线获得。
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