I want to generate graphs between variables (columns) that have a correlation above and below a certain point as well as having a pvalue < 0.01. The graphs would be ggplot2 (line or bar) graphs plotting the two columns (variables) that correlate.
Here is the gist of my approach so far, with some dummy data, I would love a pointer in where to go next.
# Create some dummy data df <- data.frame(sample(1:50), sample(1:50), sample(1:50), sample(1:50)) colnames(df) <- c("var1", "var2", "var3", "var4") # Find correlations in the dummy data df.cor <- cor(df) # Make up some random pvalues for this example x <- 0:1000 df.cor.pvals <- data.frame(sample(x/1000, 4), sample(x/1000, 4), sample(x/1000, 4), sample(x/1000,4)) colnames(df.cor.pvals) <- c("var1", "var2", "var3", "var4") # Find the significant correlations df.cor.extreme <- ((df.cor < -0.01 | df.cor > 0.01) & df.cor.pvals < 0.5) # Ready data to for plotting df$rownames <- rownames(df) df.melt <- melt(df, id="rownames") # I want to plot the combinations of variables that have a TRUE value # in the df.cor.extreme matrix
Below is hardcoded example if var1 and var2 had a value of TRUE. I assume this is where I need some sort of loop to generate multiple plots where varA and varB are correlated.
ggplot(df.melt[(df.melt$variable=="var1" | df.melt$variable=="var2"),], aes(x=rownames, y=value, group=variable, colour=variable)) + geom_line()