Multi-level experiments in Limma
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Entering edit mode
A.Barden ▴ 10
@abarden-23487
Last seen 8 weeks ago
USA

Hi there,

I'd like some guidance on how best to carry out differential expression analysis using the limma pipeline with my data set. Below is representative of my targets data.frame:

Sample   Patient   Tissue   Time   Treatment   Class
  1        1      Diseased   0      Topical      A
  2        1      Diseased   2      Topical      A
  3        1      Diseased   4      Topical      A
  4        1      Healthy    0      Topical      A
  5        1      Healthy    2      Topical      A
  6        1      Healthy    4      Topical      A
  7        2      Diseased   0      Systemic     B
  8        2      Diseased   2      Systemic     B
  9        2      Diseased   4      Systemic     B
  10       2      Healthy    0      Systemic     B
  11       2      Healthy    2      Systemic     B
  12       2      Healthy    4      Systemic     B

I have data from patients undergoing either topical or systemic treatment, with samples taken at three time points: 0 (baseline) = before starting treatment 2 = two weeks after starting treatment 4 = four weeks after starting treatment

Samples were also taken from two tissue types in each patient = healthy and diseased.

Each patient also has either class A disease or class B disease.

There are a number of questions that I'd like to answer here. I'll state my intended approach and then hopefully I can get some pointers if I have the wrong idea.

(1) What is the difference between class A disease and class B disease at week 0?

Here, I'm guessing a simple two group comparison would be best. I.e. subset my data by grabbing just the week 0 samples and then do a two group comparison.

(2) What is the effect of each treatment type in each tissue type over time?

Here, section 9.7 on multi-level experiments in the limma manual seems most relevant. I'm thinking I should analyse each treatment type separately by subsetting my data, and then proceed like so:

> Treat <- factor(paste(targets$Tissue,targets$Time,sep="."))
> design <- model.matrix(~0+Treat)
> colnames(design) <- levels(Treat)

> corfit <- duplicateCorrelation(eset,design,block=targets$Patient)
> corfit$consensus

> fit <- lmFit(eset,design,block=targets$Patient,correlation=corfit$consensus)

> cm <- makeContrasts(
+ Diseased_twoweekchange = Diseased.2-Diseased.0,
+ Diseased_fourweekchange = Diseased.4-Diseased.0,
+ Healthy_twoweekchange = Healthy.2-Healthy.0,
+ Healthy_fourweekchange = Healthy.4-Healthy.0,
+ levels=design)

(3) Is the effect of each treatment type in each tissue type over time different in Class A compared to Class B?

This is the question I'm most unsure about. Should I proceed like I did in question 2 but use a three way combined factor (Tissue.Time.Class) and then compare the DEG lists after?

Thank you.

limma rnaseq r • 1.8k views
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3
Entering edit mode
@gordon-smyth
Last seen 13 hours ago
WEHI, Melbourne, Australia

You can subset the data to answer different questions, but you will miss out on a lot of the power of limma by doing that. It is usually better to analyse all the samples at once:

  • create a single Treat factor by combining Tissue, Time, Treatment and Class
  • estimate the intra-patient correlation using duplicateCorrelation
  • use makeContrasts to make any comparison(s) you need.

This gives an integrated analysis that allows you to answer all your questions in a unified way.

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Entering edit mode

Thank you for your answer. For the questions where a given variable isn't relevant could I average the subgroups to get at less specific questions?

For example, in the case of question 1 treatment type and tissue type are not relevant, only class type. Therefore, could I make the following contrast:

> cm <- makeContrasts(
+ (Diseased.0.Topical.A + Healthy.0.Topical.A + Diseased.0.Systemic.A + Healthy.0.Systemic.A) / 4 -
+   (Diseased.0.Topical.B + Healthy.0.Topical.B + Diseased.0.Systemic.B + Healthy.0.Systemic.B) / 4
+ levels=design)
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1
Entering edit mode

Yes, you can form and test any contrast that makes sense from a biological/scientist point of view.

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