knitr::opts_chunk$set(collapse = TRUE, comment = "#>") # Skip evaluation of all chunks on CRAN's auto-check farm to fit the # 10-minute build budget. Locally, on CI, and under devtools::check(), # NOT_CRAN=true and all chunks evaluate normally. The vignette source # (which CRAN users see in browseVignettes() / vignette()) is unchanged. NOT_CRAN <- identical(tolower(Sys.getenv("NOT_CRAN")), "true") knitr::opts_chunk$set(eval = NOT_CRAN)
vennDiagramLab ships three complementary visualizations of the same
underlying region structure. This vignette explains when to use which.
library(vennDiagramLab) result <- analyze(load_sample("dataset_real_cancer_drivers_4")) length(result@dataset@set_names)
| # of sets | Recommended primary view | Why | |---|---|---| | 2 | Venn | obvious, area-proportional possible | | 3 | Venn | classic three-circle layout reads instantly | | 4 | Venn (Edwards) | still readable as a Venn | | 5–6 | UpSet | Venn becomes hard to read; UpSet bars are clearer | | 7+ | UpSet (primary) + Network (relationships) | Venn is essentially unusable |
For high set counts (5+), the Network view adds something neither representation provides: it shows the pairwise relationships as a graph, where edge weight is intersection size or significance.
svg <- render_venn_svg(result, title = "4-set Venn (cancer drivers)") nchar(svg)
The SVG is plain text — embed it in a notebook with
htmltools::HTML(svg) or save to disk and reference from Markdown.
render_upset(result, sort_by = "size", color_mode = "depth")
(The chunk above is gated on R >= 4.6 because the CRAN release of
ComplexUpset (1.3.3) is incompatible with ggplot2 >= 4.0 on older R.)
render_network(result, edge_metric = "intersection")
Each node is a set, sized by inclusive cardinality. Each edge is a pair,
weighted by the chosen edge_metric ("intersection", "jaccard",
"fold_enrichment", or "overlap_coefficient"). Edges below the
significance threshold are colored differently.
Sometimes a region looks "small" on a Venn but lights up bright on a Network because the fold-enrichment is high relative to expectation. That's not a contradiction — Venn shows raw counts, Network can show normalized strength. Use both.
vignette("v05_statistics_deep_dive") — what the network's significance
threshold actually means.vignette("v07_pdf_reports") — generate a single PDF that includes all
three views.Any scripts or data that you put into this service are public.
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