Rust + PyO3 reimplementation of the full SCENIC+ pipeline — GRN, AUCell, topics, cistarget, peak calling, cell QC, enhancer→gene, eRegulon assembly. Installs and runs where arboreto+pyscenic+pycisTopic no longer do.
Project description
rustscenic
A Rust + PyO3 replacement for the SCENIC / SCENIC+ compute stack: one install, modern Python, low-memory CPU execution, and atlas-scale regulatory-network analysis without Java, dask, CUDA, or fragile multi-tool environments.
pip install rustscenic
Five runtime dependencies (numpy, pandas, pyarrow, scipy, anndata). Python 3.10–3.13, Linux + macOS (x86_64 + aarch64). No dask, no Java, no CUDA.
The practical SCENIC+ compute path in one package:
flowchart LR
rna["RNA<br/>AnnData"] --> grn["GRN"]
atac["ATAC<br/>AnnData/fragments"] --> chrom["topics<br/>cisTarget<br/>enhancer links"]
grn --> ereg["eRegulons"]
chrom --> ereg
grn --> auc["AUCell<br/>cells x regulons"]
Status
Current release: v0.4.3 on PyPI. v0.4.0 established publishable real-data end-to-end on PBMC and mouse brain E18 multiome via the public pipeline.run; v0.4.1 fixes pipeline.run(tfs="hs"/"mm") species shortcuts; v0.4.2 adds motif-annotation cisTarget pruning (synthetic-validated; real-data Kamath rerun pending), addressing the regulon-pruning gap surfaced by the Kamath DA-neuron community run (#68); v0.4.3 corrects PipelineResult.pruned_regulons_path to be None on pruning fallback, makes validation scripts NA-safe, and softens earlier scope claims. See CHANGELOG and validation/ for evidence and caveats.
Open follow-ups tracked for v0.5+: AUCell wall-time refresh against the current SCENIC+ stack (current numbers measured 2026-04 pre-v0.4.x), region-cistarget kernel parity vs ctxcore, normalised enrichment scores (NES) on top of cistarget AUCs to match pycistarget output scale, the six-dataset v0.4.x benchmark sweep (see docs/v0.4.x-benchmark-plan.md), and raw 10x pipeline.run without caller-side ATAC pre-subset (current docs require the subset).
Goal
rustscenic is being built as the single-install replacement for the practical SCENIC / SCENIC+ workflow: RNA GRN inference, AUCell regulon activity, motif enrichment, ATAC fragment preprocessing, topic modelling, enhancer-gene linking, and eRegulon assembly in one package.
The project is intentionally not a thin wrapper around the old stack. The target is a simpler architecture that makes regulatory-network analysis easier to install, cheaper to run on CPU, deterministic under a fixed seed, and robust to real atlas conventions such as ENSEMBL var_names, duplicate gene symbols, backed AnnData, and UCSC/Ensembl chromosome mismatches.
What it does
Rust-native replacements for the compute stages plus the glue that scenicplus builds eRegulons from:
| Stage | rustscenic | Replaces |
|---|---|---|
| Gene-regulatory network inference | rustscenic.grn.infer |
arboreto.grnboost2 |
| Per-cell regulon activity scoring | rustscenic.aucell.score |
pyscenic.aucell.aucell |
| Topic modelling on scATAC peaks (Online VB) | rustscenic.topics.fit |
pycisTopic (gensim VB) |
| Topic modelling K ≥ 30 (Mallet-class collapsed Gibbs) | rustscenic.topics.fit_gibbs |
pycisTopic (Mallet, Java) |
| Motif-regulon enrichment | rustscenic.cistarget.enrich |
pycistarget AUC kernel |
| ATAC fragments → cells × peaks matrix | rustscenic.preproc.fragments_to_matrix |
pycisTopic fragment loader |
| Cell QC (TSS enrichment, FRiP, insert size) | rustscenic.preproc.qc |
pycisTopic.qc |
| Enhancer → gene correlation | rustscenic.enhancer.link_peaks_to_genes |
scenicplus p2g linking |
| eRegulon assembly (TF × enhancers × target genes) | rustscenic.eregulon.build_eregulons |
scenicplus eRegulon builder |
| End-to-end pipeline orchestrator | rustscenic.pipeline.run |
scenicplus snakemake |
Bundled with the wheel: HGNC (1,839 human) and MGI (1,721 mouse) TF lists via rustscenic.data.tfs(species). Motif rankings can be fetched and cached via rustscenic.data.download_motif_rankings. Cellxgene-curated h5ads (ENSEMBL IDs in var_names, gene symbols in var["feature_name"]) are auto-detected so atlas data works without manual patching.
Quick example (PBMC-3k, RNA GRN + AUCell)
import anndata as ad
import rustscenic.grn, rustscenic.aucell
import rustscenic.data
adata = ad.read_h5ad("rna.h5ad")
tfs = rustscenic.data.tfs("hs") # bundled HGNC list (1,839 TFs)
# 1. GRN inference
grn = rustscenic.grn.infer(adata, tf_names=tfs, n_estimators=5000, seed=777)
# 2. Build top-50-target regulons and score per-cell activity
regulons = [
(f"{tf}_regulon", grn[grn["TF"] == tf].nlargest(50, "importance")["target"].tolist())
for tf in grn["TF"].unique()
]
auc = rustscenic.aucell.score(adata, regulons, top_frac=0.05)
Full RNA example script: examples/pbmc3k_end_to_end.py. Runs in about 3 minutes on an 8-core laptop with n_estimators=500. docs/tester-quickstart.md is the collaborator smoke-test path.
Measured against the pyscenic / arboreto reference
Same input on both sides. Every row has a log file under validation/.
| Axis | pyscenic / arboreto | rustscenic |
|---|---|---|
| Installs on fresh Python 3.10–3.13 venv | arboreto: TypeError: Must supply at least one delayed object (dask_expr); pyscenic: ModuleNotFoundError: pkg_resources in current stacks |
PyPI wheels and sdist install; core APIs import |
| AUCell wall-time, Ziegler 2021 atlas (31,602 × 59; measured 2026-04 pre-v0.4.x; refresh deferred to v0.5) | 6.81 s (pyscenic) | 0.25 s |
| AUCell wall-time, 10x Multiome (10,290 × 1,457; measured 2026-04 pre-v0.4.x; refresh deferred to v0.5) | 18.6 s (pyscenic) | 0.21 s |
| Peak RSS, 4 stages on 100,000 cells × 20,292 genes | > 40 GB (reported) | 6.3 GB |
Cistarget kernel vs ctxcore.recovery.aucs |
reference | Pearson 1.0000, mean abs diff 2.4 × 10⁻⁵ |
| AUCell per-cell Pearson vs pyscenic (Ziegler, 31,602 cells; measured 2026-04 pre-v0.4.x; refresh deferred to v0.5) | reference | 0.984 mean, 91.7 % of cells > 0.95 |
| Canonical airway TFs matching literature (Ziegler, n=14) | 8 / 14 (pyscenic, unit weights) | 8 / 14 — same hits, same 5/14 misses |
| Bit-identical output under same seed across threaded runs | no (dask non-determinism) | yes |
| Runtime dependencies | 40 + | 5 |
Tool-to-tool variation (same hits, same misses on the same 14 canonical TFs) is smaller than the dataset-inherent noise, consistent with rustscenic being numerically equivalent to pyscenic at the per-cell level.
Per-stage detail
Numbers are rustscenic's values. The measurement context (dataset, n_cells, version) is in each row. The parity refresh against current upstream stacks (six-dataset sweep) is now planned for v0.5+; see docs/v0.4.x-benchmark-plan.md for the dataset list and success criteria.
GRN — arboreto.grnboost2 replacement
| Measurement | Value |
|---|---|
| Per-edge Spearman vs arboreto (PBMC-3k scanpy, n_estimators=5000, 480,680 shared edges, v0.3.10) | 0.611 |
| Within-TF Spearman, mean across 1,274 TFs (same fixture) | 0.632 (median 0.649) |
| Per-edge Spearman vs arboreto (multiome3k, n_estimators=5000, 816 k common edges, 2026-04) | 0.58 |
| Per-target TF-ranking Spearman mean | 0.57 |
| TRRUST known TF→target edges recovered (PBMC-3k) | 17 / 18 (94 %) |
| Lineage TFs correctly enriched in expected cell types (PBMC-10k) | 8 / 8 (SPI1, PAX5, EBF1, TCF7, LEF1, TBX21, CEBPD, IRF8) |
| Cortex marker TFs present in regulon set (E18 multiome, 4,770 cells, v0.3.10; name-presence, not cell-type enrichment) | 9 / 9 (Pax6, Neurod2, Sox2, Ascl1, Tbr1, Neurog2, Fezf2, Eomes, Foxg1) |
| MITF regulon activity, Tirosh 2016 melanoma — malignant vs TME | 3.48× |
| Wall vs pyscenic on PBMC-3k (n_estimators=5000, seed 777, Apple M5, v0.3.10; pyscenic in sync mode — not apples-to-apples against dask-parallel) | 214 s vs 381 s (1.78×) |
| 100k-cell bootstrap, n_estimators=100 | 17 min / 5.0 GB peak RSS |
Edge rankings disagree with arboreto at fine grain (per-edge Spearman 0.611 on PBMC-3k v0.3.10 / 0.58 on multiome3k 2026-04, top-10k Jaccard 0.20) — expected consequence of independent histogram-GBM quantisation. Coarse biology converges (per-TF Spearman ≈ 0.65, all canonical lineage TFs recovered on both human PBMC and mouse cortex). Downstream AUCell is 0.99 per-cell with pyscenic, so edge-ranking differences do not propagate.
AUCell — pyscenic.aucell replacement
| Measurement | Value |
|---|---|
| Per-cell Pearson vs pyscenic (10x Multiome, 2,588 × 1,457) | 0.988 mean, 99.5 % of cells > 0.95 |
| Per-cell Pearson vs pyscenic (Ziegler atlas, 31,602 × 59) | 0.984 mean, 91.7 % of cells > 0.95 |
| Per-regulon Pearson (10x Multiome) | 0.87 mean, 90.5 % > 0.80 |
| Exact top-regulon-per-cell match (Multiome) | 88.4 % |
| Wall-time, 10k cells × 1,457 regulons | 0.21 s (vs 18.6 s pyscenic) |
| 100 k cells × 500 regulons | 10 s, 5.6 GB peak RSS |
Topics — pycisTopic LDA replacement (Online VB + collapsed Gibbs)
Two algorithms ship side-by-side:
rustscenic.topics.fit— Online VB LDA, fastest at K ≤ 10.rustscenic.topics.fit_gibbs— collapsed Gibbs (Mallet's algorithm class). Addn_threads=Nfor parallel AD-LDA.
Real PBMC 3k Multiome ATAC, 1,500 cells × 98,319 peaks, K = 30, intrinsic top-10 NPMI on the training corpus:
| Tool | Wall | Unique topics (of 30) | Top-10 NPMI mean |
|---|---|---|---|
rustscenic.topics.fit (Online VB) |
104 s | 2 / 30 (collapsed) | +0.012 |
rustscenic.topics.fit_gibbs (serial) |
191 s | 22 / 30 | +0.031 |
rustscenic.topics.fit_gibbs (8-thread) |
84 s | 25 / 30 | +0.019 |
| Mallet (pycisTopic reference) | n/a | 24 / 30 | 0.196 (extrinsic) |
Collapsed Gibbs gives ~11× more distinct topics than Online VB on sparse scATAC at K = 30 and ~2.7× higher intrinsic NPMI; the parallel AD-LDA path adds a 2.56× wall-clock speedup at 8 threads while preserving topic diversity. Mallet's published 0.196 is an extrinsic NPMI (different protocol, not directly comparable in absolute scale). See docs/topic-collapse.md and docs/bench-vs-references.md. Reproduce with python validation/scaling/bench_npmi_head_to_head.py and python validation/scaling/bench_gibbs_parallel.py.
Cistarget — pycistarget AUC kernel replacement
Validated on the aertslab hg38 v10 feather database (5,876 motifs × 27,015 genes):
| Measurement | Value |
|---|---|
Per-regulon Pearson vs ctxcore.recovery.aucs (58 TRRUST regulons) |
1.0000 (all > 0.9999, abs diff 2.4 × 10⁻⁵) |
| Self-consistency (motif's own top-500 genes → rank #1) | 10 / 10 |
| TRRUST at scale (166 TFs ≥ 10 targets): TF-annotated motif ranks #1 | 19 % |
| Same benchmark: any TF-motif in top-100 | 68 – 100 % (rises with regulon size) |
| Mouse mm10 cross-species (5 TRRUST TFs) | 2 / 5 rank #1, 4 / 5 in top-5 |
| 100 k-cell workload × 100 regulons | 2.6 s, 6.3 GB peak RSS |
Bit-identical to ctxcore.recovery.aucs at float32 precision. The 19 % rank-#1 rate is the scaled-out TRRUST-vs-motif-binding benchmark, a property of the gold-standard mismatch, not the implementation.
End-to-end + determinism
| Pipeline | Wall | Peak RSS | Stages |
|---|---|---|---|
| Reference (arboreto + pyscenic + tomotopy), 10x Multiome 3k | 11.8 min | n/a | 4 |
| rustscenic, 10x Multiome 3k | 9.1 min | n/a | 4 |
| rustscenic, 10x PBMC 3k multiome real-data (v0.3.9, measured 2026-05-02) | 7.5 min | 3.67 GB | 7 (all) |
| rustscenic, 10x brain E18 5k multiome real-data (v0.3.10, measured 2026-05-04) | 13.8 min | 4.01 GB | 7 (all) |
| rustscenic, 10x PBMC granulocyte 10k multiome real-data (v0.4.3, measured 2026-05-11) | 38.1 min | 5.39 GB | 7 (all) |
| rustscenic, 100k synthetic multiome E2E (measured v0.3.10, 2026-04-27) | 12.7 min | 7.09 GB | 7 (all) |
| rustscenic, 200k synthetic multiome E2E (measured v0.3.10, 2026-04-27) | 16.8 min | 7.44 GB | 7 (all) |
Cross-dataset scaling on real 10x multiomes: 4.2x cell scale-up (2,767 to 11,620 cells) produces 5.1x wall (slope ~1.21x over the full span; intermediate-pair slopes are 1.06x and 1.14x, so the trajectory is slightly accelerating) and 1.47x peak RSS (sub-linear in cells). GRN dominates 78% of wall on the 10k run at n_estimators=100. Biology check on the latest run: 10 of 10 canonical PBMC and granulocyte transcription factors recovered by name (SPI1, CEBPA, CEBPB, CEBPE, IRF8, PAX5, EBF1, GATA3, TBX21, FOXP3); the brain E18 5k run recovered 9 of 9 cortex TFs. Name-presence checks against a regulon set of ~1,500 names from a TF list of ~1,800, not cell-type enrichment; the per-cluster AUCell F-test is tracked as a v0.5 follow-up. Memory: 100k synthetic multiome 7-stage E2E peaks at 7.09 GB RSS (measured v0.3.10; v0.4.x motif-pruning may shift this, refresh pending), vs scenicplus stack's reported > 40 GB at comparable scale. Bit-identical output under the same seed across threaded runs, verified across three consecutive runs per stage. 10 / 10 robustness edge-case tests pass (foreign genes, NaN input, duplicate gene names, all-zero cells, large regulons, object-dtype rankings, n_topics = 0, very-sparse matrices). Reproduce the real-data runs with the scripts under validation/multiome_pipeline_run_*.sh; reproduce the synthetic runs with python validation/scaling/bench_e2e_100k_synthetic.py and the 200k script.
Scope and alternatives
rustscenic covers the practical SCENIC / SCENIC+ compute path on CPU. Adjacent tools with different scope:
- GPU, CUDA — flashSCENIC (uses RegDiffusion, a different algorithm from GENIE3 / GRNBoost2, so outputs are not pyscenic-numerical).
- Multiomic enhancer-aware GRN — scenicplus (joint scRNA + scATAC enhancer inference; superset of this scope).
- TF-activity scoring from prebuilt regulons, no GRN inference — decoupler-py with CollecTRI.
- R Bioconductor ecosystem — the original R-SCENIC or Epiregulon.
rustscenic does not bundle the aertslab motif ranking feather databases (300 MB – 35 GB). Users fetch them from resources.aertslab.org and pass the resulting DataFrame to cistarget.enrich.
CLI
# End-to-end orchestrator (recommended):
rustscenic pipeline --rna data.h5ad --tfs tfs.txt --output out/
# Per-stage CLI:
rustscenic grn --expression data.h5ad --tfs tfs.txt --output grn.parquet
rustscenic aucell --expression data.h5ad --regulons grn.parquet --output auc.parquet
rustscenic topics --expression atac.h5ad --output topics --n-topics 30
rustscenic cistarget --rankings motifs.feather --regulons grn.parquet --output enrichment.tsv
Repo layout
crates/— Rust workspace:rustscenic-{grn, aucell, topics, preproc, py}python/rustscenic/— Python package, CLI entry point, type stubsexamples/pbmc3k_end_to_end.py— RNA GRN + AUCell script on real PBMC-3kvalidation/— reproducible benchmark scripts + measurement reports for every number above, plusVALIDATION_SUMMARY.mdtests/— pytest suite (169 Python tests, 1 skipped) + Rust crate tests (57)manuscript/— preprint sourcedocs/topic-collapse.md— known algorithmic caveat
License
MIT. Algorithm implementations follow the aertslab Python references — original method credit to Aibar et al. 2017 (SCENIC), Bravo González-Blas et al. 2023 (SCENIC+), Hoffman-Blei-Bach 2010 (Online VB LDA).
Citation and attribution
If you use rustscenic in a paper, report, benchmark, derivative package, or lab workflow, cite the exact release used. GitHub citation metadata is in CITATION.cff.
rustscenic was created and is maintained by Ekin Kahraman. See AUTHORS.md and docs/collaboration-and-authorship.md for contribution and authorship expectations.
Contact
File issues at github.com/Ekin-Kahraman/rustscenic/issues. Bug, correctness, and validation-report templates pre-fill the fields we need. If you ran the pipeline on real data and want the result folded into the v0.4.x sweep, see docs/tester-reporting.md. If reporting ARI or related clustering metrics, include the comparator; see docs/evaluation-metrics.md. Coordinated vulnerability disclosure: see SECURITY.md.
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File details
Details for the file rustscenic-0.4.3-cp310-abi3-macosx_10_12_x86_64.whl.
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- Upload date:
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- Tags: CPython 3.10+, macOS 10.12+ x86-64
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Provenance
The following attestation bundles were made for rustscenic-0.4.3-cp310-abi3-macosx_10_12_x86_64.whl:
Publisher:
release.yml on Ekin-Kahraman/rustscenic
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Statement:
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https://docs.pypi.org/attestations/publish/v1 -
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Permalink:
Ekin-Kahraman/rustscenic@1dd76f6a8d1ea70b731357131084d3abdb66e037 -
Branch / Tag:
refs/tags/v0.4.3 - Owner: https://github.com/Ekin-Kahraman
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Access:
public
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Token Issuer:
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Runner Environment:
github-hosted -
Publication workflow:
release.yml@1dd76f6a8d1ea70b731357131084d3abdb66e037 -
Trigger Event:
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Statement type: