Difference between FC and LogFC
4
7
Entering edit mode
6.6 years ago
Joe Kherery ▴ 140

Hello guys,

It may seem like a basic question, but this is causing confusion.

What is the difference between fold change and Log fold change?

Regards,

r microarray • 46k views
ADD COMMENT
7
Entering edit mode

Using a log has some advantages here. Without the log, a downregulation gets squeezed between 0 and 1, while an upregulation goes from 1 to infinity. With the log, you get a better scale.

ADD REPLY
2
Entering edit mode

With the log, you get a better scale.

Indeed, centered around zero and symmetrical, instead of centered around one and asymmetrical.

ADD REPLY
0
Entering edit mode

Ty so much WouterDeCoster

ADD REPLY
0
Entering edit mode

Yeah, I think so. If you make a FC rule, big fold is out side the graph; and a logFC makes big number in a human-visible& understhandable scale; meanwhile a small number is as well. If you want a better one you can choose a log instead of log2 when you facing a fold value more than big

ADD REPLY
2
Entering edit mode

Log fold change = log(FC)

Usually, the transformation is log at base 2, so the interpretation is straightforward: a log(FC) of 1 means twice as expressed.

See some lengthier discussions here and here.

ADD REPLY
0
Entering edit mode

Thank you so much h.mon, Useful links.

ADD REPLY
1
Entering edit mode

fold chance

Do you mean fold change?

ADD REPLY
0
Entering edit mode

Hello Ram, sorry!

Yes, Fold change (FC)

ADD REPLY
11
Entering edit mode
6.6 years ago
Russ ▴ 520

I find pictures helpful when thinking about these concepts, so quickly made some visualizations for you. They expand on WouterDeCoster's and h.mon's comments. The figures were made in R using with the following code:

#Generate fake data    
fake <- data.frame("gene" = as.numeric(c(1:50)), "pre" = as.numeric(seq(1,99,2)), "post"= as.numeric(seq(99,1,-2)))
#Calculate fold change
fake$fold <- fake$post/fake$pre
#Calculate log2 fold change
fake$logfold <- log2(fake$fold)
#Visualize
library(ggplot2)
ggplot(fake, aes(x = gene, y = fold)) + geom_line()
ggplot(fake, aes(x = gene, y = logfold)) + geom_line() + ylab("Log2(FC)")

Let's say you have 50 genes (for the sake of convenience, the genes are called "1", "2", "3", ... , "50") and you measure expression before and after some type of treatment. You then measure the fold change of the genes due to treatment: FC = expression(post) / expression(pre). As russhh indicated, the logFC is simply log2(FC).

In this dataset, half the genes were upregulated and the other half downregulated. Interpreting the untransformed fold change is tricky: here it looks like gene1 had a huge fold change, close to 100, but what about genes30-50? It's hard to tell what their value is, and also by how much they differ from each other.

enter image description here

Performing the log2 transformation scales the data and facilitates the interpretation, as illustrated below.

enter image description here

The differences in expression in genes30-50 are now much more obvious.

ADD COMMENT
6
Entering edit mode
6.6 years ago
russhh 5.7k

If you think that fold-change is the 'expression level' in one set of samples (set A) divided by the 'expression level' in another set (set B), then log-fold-change is the log of that value (typically to base 2).

That is, if FC=, A/B, then log_FC = log(A / B) = log(A) - log(B)

and if log_FC=x, then FC=2^x

ADD COMMENT
0
Entering edit mode

Thank you so much russhh,

ADD REPLY
4
Entering edit mode
6.6 years ago

To follow up on the value added by the symmetry in log2-transformed fold changes, you might also look at a volcano plot of features, a common way to represent p-values vs log2-fold change.

For example:

enter image description here

Symmetry makes visual interpretation of this type of plot — comparison and labeling of features with significant fold change and p-value thresholds — much simpler. One can see immediately which features are both statistically significant and likely to be significantly up- or down-regulated.

ADD COMMENT
2
Entering edit mode
6.6 years ago

"fold change" is a bad metric and also the term itself can be ambiguous when speaking to different people, as evidenced by the confused entry in wikipedia https://en.wikipedia.org/wiki/Fold_change

"log2 fold change" is symmetric and unambiguous

ADD COMMENT

Login before adding your answer.

Traffic: 1409 users visited in the last hour
Help About
FAQ
Access RSS
API
Stats

Use of this site constitutes acceptance of our User Agreement and Privacy Policy.

Powered by the version 2.3.6