# New complexity to color coding based on percentile and another factor in ggplot

I would like to add another level of complexity to the color coding scheme I have going on in the below plot. I want to account for whether each of the values being plotted has passed a statistical test. So, the dots will only be color coded based on the percentile if they pass the test, otherwise, I would like the dot to be grey.

Here is my code as I have it after all the helpful suggestions I received from my first post Color code points based on percentile in ggplot (note: this is some made up data, though I have real data which has many more entries:

``````dat <- data.frame(key = c("a1-a3", "a1-a2"), position = 1:100, fst = rlnorm(200, 0, 1), fet = rnorm(200, 0.24, 0.54))

#Get quantiles
quants <- quantile(dat\$fst, c(0.95, 0.99))

dat\$quant  <- with(dat, factor(ifelse(fst < quants[1], 0,
ifelse(fst < quants[2], 1, 2))))

dat\$fisher <- with(dat, factor(ifelse(fet > 1.30102999566398, 0, 1)))

dat\$col <- with(dat, factor(ifelse(fet < 1.30102999566398, 3, quant)))

########theme set
theme_set(theme_bw(base_size = 10))

p1 <- ggplot(dat, aes(x=position, y=fst)) +
geom_point(aes(colour = col, size=0.2)) +
facet_wrap(~key, nrow = 1) +
scale_colour_manual(values = c("black", "blue", "red", "grey"), labels = c("0-95", "95-99", "99-100", "fail")) +
ylab(expression(F[ST])) +
xlab("Genomic Position (Mb)") +
scale_x_continuous(breaks=c(0, 1e+06, 2e+06, 3e+06, 4e+06), labels=c("0", "1", "2", "3", "4")) +
scale_y_continuous(limits=c(0,1)) +
theme(plot.background = element_blank(),
panel.background = element_blank(),
panel.border = element_blank(),
legend.position="none",
legend.title = element_blank()
)

tiff(Fstvalues_colourcode3.tiff", height=2.5, width=6.5, units="in", res = 300, pointsize="10")
p1
dev.off()
``````

My problem is in the line: dat\$col <- with(dat, factor(ifelse(fet < 1.30102999566398, 3, quant))). I want it to use the value from the \$quant if it has an \$fet value above the above listed value (or fisher == 0), and if it has an \$fet value below, I would like it to make a new factor (3). When I look at the data frame it is doing something different than this. Any comments/suggestions are much appreciated! (I'm pretty new to coding and am finding factors are not easy to work with!!)

-

Yes, your are right, `with(dat, factor(ifelse(fet < 1.30102999566398, 3, quant)))` gives an 'unexpected' result. Your `no` return value in `ifelse`, the `factor` quant, is coerced to the same class as the `yes` return value (3), a `numeric`. Have a look at `tail(dat[order(dat\$fet), c("fet", "quant", "col")])`:

``````#          fet quant col
# 6   1.202582     0   3
# 40  1.318997     0   1
# 74  1.324552     0   1
# 24  1.415189     1   2
# 38  1.418230     0   1
# 123 1.531584     0   1
``````

For fet > 1.301 (the `test` in `ifelse`), 'col' became 1, 1, 2, 1, 1, instead of 0, 0, 1, 0, 0. Something like this happened:

``````# original factor version of quant
quant <- as.factor(0:2)
quant
# [1] 0 1 2
# Levels: 0 1 2

# coerce quant to numeric
as.numeric(quant)
# [1] 1 2 3
``````

Compare these two:

``````set.seed(1)
df <- data.frame(fet = rnorm(9), quant = factor(0:2))
str(df)
df\$col <- with(df, ifelse(fet < 0, 3, quant))
df

set.seed(1)
df <- data.frame(fet = rnorm(9), quant = 0:2)
str(df)
df\$col <- with(df, ifelse(fet < 0, 3, quant))
df
``````

Thus, try to remove `factor` from your `ifelse` call where you create 'quant' and see if it solves the problem.

PS. As you phrase your question, it is the single `ifelse` line is your actual problem (not the plotting part). If so, you may wish to isolate this problem and condense your question.