A general modular framework for gene set enrichment analysis
Contents
1 Citation
M Ackermann and K Strimmer, A general modular framework for gene set enrichment analysis, 2009, BMC Bioinformatics, 10:47, pages etc in any possible citation style.
2 Summary
Gene set analyses have a modular structure, i.e. they consist of
- gene level statistics
- gene level significance assessment
- gene set statistics
- gene set significance assessment
- statistical conclusion
Alternatively, steps 1.-3. might be replaced by a single global test.
In this paper, 261 different variants of gene set enrichment procedures were evaluated based on simulated and experimental data.
3 Study outcomes
List the paper results concerning method comparison and benchmarking:
3.1 Outcome O1: Gene level statistics
- The choice of the gene-level statistics (t, moderated t, or correlation) does NOT have a great impact
- t statistic, moderated t, and correlation fail to find gene sets that contain up- and downregulated genes
Outcomes O1 and O2 are presented as Table 2 in the original publication.
3.2 Outcome O2: Transformation of the gene level statistics
- The transformation of the gene level statistic has a substantial impact
- Transformations help to find gene sets that contain up- and downregulated genes
- Combination of square transformation and rank transformation shows the best overall performance
- Binary transformation (i.e. using a cutpoint) and FDRs decrease the performance
Outcomes O1 and O2 are presented as Table 2 in the original publication.
3.3 Outcome On
...
Outcome On is presented as Figure X in the original publication.
3.4 Further outcomes
If intended, you can add further outcomes here.
4 Study design and evidence level
4.1 General aspects
- 100 data sets were simulated
- The simulated data sets have 600 features (genes) and 20 samples (10 vs. 10)
- The data was simulated with normally distributed noise with variance equals to one
- 520 genes were consided as uninformative (delta=0, rho=0)
- Altogether, nine different simulation data sets were generated that consist of the following combinations:
- Gene sets with different levels of differential expression (delta \in {0, 0.75, 1, -1}) were simulated
- Gene sets with varying levels of intra-group correlation (rho \in {0, 0.6, -0.6}) were simulated
- Gene sets that contain regulated and unregulated genes (half/half) were generated as well as gene set that contain up- and downregulated genes.
- "The gene set statistic ES was not combined with a binary transformation since the latter does not allow a sensible ranking of the genes."
- In total
- 3 gene level statistics ×
- 5 transformations ×
- 6 gene set statistics ×
- 3 significance assessments
- minus 9 insensible combinations
- = 261 (in total) variants of gene set analyses were considered
4.2 Design for Outcome O1: Gene level statistics
- The authors consider the impact of the selected approach at for module 1 (see summary above)
- Three approaches were considered: t, moderated t and correlation
- These approaches were evaluated for five different transformations (see O2)
- Multiple other approaches
- The authors already provide the important hint that the dependency on the gene level test statistic might be more relevant for smaller sample size (e.g. 3 vs 3)
4.3 Design for Outcome O2: Transformation of the gene level statistics
- The outcome was generated for five different transformations (and three gene level statistics)
- Configuration parameters were chosen ...
- ...
...
(resampling, permutation, restandardization)
4.4 Design for Outcome O
- The outcome was generated for ...
- Configuration parameters were chosen ...
- ...
5 Further comments and aspects
- Simulation is NOT based on characteristics or gene sets derived from real data
- The paper provides very comprehensive outcomes in terms of combinations of approaches
6 References
The list of cited or related literature is placed here.