tidySpatialExperiment

github.com/william-hutchison/tidyspatialexperiment
Active8updated 1 month ago
R
GPL-3.0+

tidySpatialExperiment provides a bridge between the SpatialExperiment package and the tidyverse ecosystem. It creates an invisible layer that allows you to interact with a SpatialExperiment object as if it were a tibble; enabling the use of functions from dplyr, tidyr, ggplot2 and plotly. But, underneath, your data remains a SpatialExperiment object.

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