Usually, work is organized into a directory with:
scripts/BRFSS-visualize.R
)extdata/BRFSS-subset.csv
)saveRDS()
(.rds
files) that represent final results or intermediate ‘checkpoints’ (data/ALL-cleaned.rds
). Read the data into an R session using readRDS()
.setwd()
to navigate to folder containing scripts/, extdata/ foldersource("scripts/BRFSS-visualization.R")
.R can also save the state of the current session (prompt when choosing to quit()
R), and to view and save the history()
of the the current session; I do not find these to be helpful in my own work flows.
All the functionality we have been using comes from packages that are automatically loaded when R starts. Loaded packages are on the search()
path.
search()
## [1] ".GlobalEnv" "package:RColorBrewer" "package:BiocStyle" "package:stats"
## [5] "package:graphics" "package:grDevices" "package:utils" "package:datasets"
## [9] "package:methods" "Autoloads" "package:base"
Additional packages may be installed in R’s libraries. Use `installed.packages() or the RStudio interface to see installed packages. To use these packages, it is necessary to attach them to the search path, e.g., for survival analysis
library("survival")
There are many thousands of R packages, and not all of them are installed in a single installation. Important repostories are
Packages can be discovered in various ways, including CRAN Task Views and the Bioconductor web and Bioconductor support sites.
To install a package, use install.packages()
or, for Bioconductor packages, instructions on the package landing page, e.g., for GenomicRanges. Here we install the ggplot2 package.
install.packages("ggplot2", repos="https://cran.r-project.org")
A package needs to be installed once, and then can be used in any R session.
Load the BRFSS-subset.csv data
path <- "extdata/BRFSS-subset.csv" # or file.choose()
brfss <- read.csv(path)
Clean it by coercing Year
to factor
brfss$Year <- factor(brfss$Year)
Useful for quick exploration during a normal work flow.
plot()
, hist()
, boxplot()
, …?par
, but often provided as arguments to plot()
, etc.Construct complicated plots by layering information, e.g., points, regression line, annotation.
brfss2010Male <- subset(brfss, (Year == 2010) & (Sex == "Male"))
fit <- lm(Weight ~ Height, brfss2010Male)
plot(Weight ~ Height, brfss2010Male, main="2010, Males")
abline(fit, lwd=2, col="blue")
points(180, 90, pch=20, cex=3, col="red")
Approach to complicated graphics: create a grid of panels (e.g., par(mfrows=c(1, 2))
, populate with plots, restore original layout.
brfssFemale <- subset(brfss, Sex=="Female")
opar = par(mfrow=c(2, 1)) # layout: 2 'rows' and 1 'column'
hist( # first panel -- 1990
brfssFemale[ brfssFemale$Year == 1990, "Weight" ],
main = "Female, 1990")
hist( # second panel -- 2010
brfssFemale[ brfssFemale$Year == 2010, "Weight" ],
main = "Female, 2010")
par(opar) # restore original layout
library(ggplot2)
‘Grammar of graphics’
aes()
) to be plottedAdd layers (geom_*()
) of information
ggplot(brfss2010Male, aes(x=Height, y=Weight)) +
geom_point() +
geom_smooth(method="lm")
Capture a plot and augment it
plt <- ggplot(brfss2010Male, aes(x=Height, y=Weight)) +
geom_point() +
geom_smooth(method="lm")
plt + labs(title = "2010 Male")
Use facet_*()
for layouts
ggplot(brfssFemale, aes(x=Height, y=Weight)) +
geom_point() + geom_smooth(method="lm") +
facet_grid(. ~ Year)
Choose display to emphasize relevant aspects of data
ggplot(brfssFemale, aes(Weight, fill=Year)) +
geom_density(alpha=.2)