Skip to main content

Curated cancer reference data: ontology, TMB, incidence/mortality, and expression

Project description

oncoref

Tests PyPI

Curated cancer reference data — cancer-type ontology, tumor mutational burden (TMB), incidence/mortality, checkpoint-inhibitor (ICI) response, per-cohort RNA-seq expression, and cancer-testis antigens — behind one small Python API, a data fetch/cache CLI, and a set of reference plots.

oncoref is the base layer

oncoref is designed as the base layer of the openvax/PIRL stack — the intended single upstream source of truth for cancer reference data, meant to become a shared dependency of pirlygenes, trufflepig, and tsarina. Adoption is still in progress — most of these don't depend on it yet. Architecturally it stays at the bottom: it depends only on pandas / numpy / pyarrow / PyYAML, it never imports its consumers (data and logic flow only downward), and it owns these definitions rather than mirroring them from elsewhere.

Anything that needs to know about

  • gene expression of cancer samples — per-cohort RNA-seq in a normalized, comparable space: summary stats, tail-weighted percentiles, and medoid/exemplar samples per cancer type/subtype;
  • HPA protein / RNA normal-tissue expression;
  • the definition of cancer-testis antigens — the HPA tissue-restriction call over the candidate list (HPA-only; no MS/peptide layer);
  • the ontology of cancer types — codes, the parent/child hierarchy, subtypes, families, characteristic driver fusions, and the cross-cutting MSI/POLE/HPV groupings; and
  • checkpoint-inhibitor response rates and TMB per cancer type

depends on oncoref — including pirlygenes (gene-set curation/analysis), tsarina (personalized target selection), hitlist (panel selection), trufflepig (sample classification), and anything else downstream.

Everything keys on the cancer-type registry. The small curated tables ship in the wheel; the heavy per-cohort expression bundle downloads on first use from oncoref's own GitHub Release.

Install

pip install oncoref

Python API

import oncoref as od

od.resolve_cancer_type("prostate")        # -> "PRAD"
od.cancer_type_info("SARC_RMS_ARMS")      # full registry record + burden + tmb
od.cancer_tmb("LUAD_EGFR")                # 6.9  (inherited from LUAD)
od.cancer_burden("pancreas", metric="us_mortality_pct")
od.burden_category("SARC_OS")             # -> "bone_and_joint" (incidence/mortality bucket)
od.cancer_ici_response("SKCM")            # 42  (anti-PD-1 ORR %; fallback aPD-1 → aPD-L1 → combo)
od.cancer_ici_response("SKCM", regimen="PD-1+CTLA-4")   # 57.6  (pin a regimen)

# Cancer-testis antigens (HPA-derived tissue-restriction):
od.cta_gene_names()                       # expressed CTA symbols (MAGEA4, CT83, …)
od.cta_evidence()                         # full HPA restriction table

# Per-cohort expression percentiles (downloads the data bundle on first use):
od.cohort_gene_percentiles("PRAD")        # per-gene p0…p100 vector (within-cohort)
od.within_sample_top_fraction("PRAD")     # per-gene frac of samples top-5% (within-sample)

Domains

  • Ontologycancer_type_registry, resolve_cancer_type, cancer_type_info, cancer_types_in_family, viral_status, fusion_status, the cohort vocabulary (cohort_registry, cohort_aggregates).
  • TMBcancer_tmb, cancer_tmb_df (parent-chain inheritance).
  • Incidence / mortalitycancer_burden, burden_category (ACS / GLOBOCAN).
  • Checkpoint responsecancer_ici_response (ORR per type/regimen: anti-PD-1, anti-PD-L1, anti-PD-1+anti-CTLA-4), with cancer_apd1_response the PD-1 shortcut.
  • Expressioncohort_gene_percentiles, within_sample_top_fraction, representative_cohort_samples over the lazy-downloaded per-cohort bundle.
  • Cancer-testis antigenscta_gene_names/cta_gene_ids, cta_evidence, synthesize_restriction (HPA-only tissue-restriction; MS evidence stays in the target-selection layer).
  • HPA normal tissuehpa_rna_consensus, hpa_normal_tissue (IHC), hpa_single_cell, and per-gene lookups (gene_tissue_ntpm, gene_protein_tissues, gene_cell_type_ntpm) over HPA v23, fetched on demand (oncoref hpa fetch).
  • Genome referencecanonical_gene_id_and_name, find_gene_id_by_name, find_gene_name_from_ensembl_{gene,transcript}_id, aggregate_gene_expression (pyensembl-backed symbol ↔ Ensembl-ID resolution). pyensembl ships with the package, but resolution needs a downloaded human release once: pyensembl install --release 111 --species homo_sapiens (the accessors return None until then).
  • Peptidescta_specific_9mer_counts, cta_specific_9mer_load (per-cohort mean per-patient CTA-specific 9-mer load): 9-mers found in a CTA protein but in no non-CTA protein, enumerated from the reference proteome and cached per release.
  • Plots (pip install oncoref[plots]) — oncoref.plots.apd1_vs_tmb, apd1_orr_bars, incidence_vs_mortality, and the CTA/coverage figures.

CLI

oncoref cancer-type prostate     # registry info as JSON
oncoref tmb LUAD_EGFR            # 6.9
oncoref ici SKCM                # 42  (--regimen to pin, --all-regimens to compare)
oncoref burden pancreas --metric us_mortality_pct
oncoref cta --count             # number of expressed CTAs
oncoref plot apd1-vs-tmb --out apd1_vs_tmb.png

# expression-bundle cache (per-cohort expression):
oncoref cache fetch             # download the ~340 MB bundle
oncoref cache status            # which bundle paths are cached (no download)
oncoref cache dir               # where the data bundle is cached
oncoref cache prune --yes       # delete stale version caches
oncoref hpa fetch               # download HPA reference data (RNA / IHC / single-cell)
oncoref version

Development

./develop.sh   # editable install with dev extras
./format.sh    # ruff format
./lint.sh      # ruff check + format --check
./test.sh      # lint + pytest with coverage

License

Apache 2.0.

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

oncoref-1.7.0.tar.gz (1.7 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

oncoref-1.7.0-py3-none-any.whl (1.6 MB view details)

Uploaded Python 3

File details

Details for the file oncoref-1.7.0.tar.gz.

File metadata

  • Download URL: oncoref-1.7.0.tar.gz
  • Upload date:
  • Size: 1.7 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.6

File hashes

Hashes for oncoref-1.7.0.tar.gz
Algorithm Hash digest
SHA256 1b41da269739c45f384ca657216522e3e572a311da3e573ac0360b7795694209
MD5 9793d3dd3d81d9e8dc91c7fb2e7308b3
BLAKE2b-256 6b4f2b9be7b2858be7ca1c850ea67261cfe41c9595b7d57ed818b20af88c815c

See more details on using hashes here.

File details

Details for the file oncoref-1.7.0-py3-none-any.whl.

File metadata

  • Download URL: oncoref-1.7.0-py3-none-any.whl
  • Upload date:
  • Size: 1.6 MB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.6

File hashes

Hashes for oncoref-1.7.0-py3-none-any.whl
Algorithm Hash digest
SHA256 02c28e3bd70a0da3e405abf8561990ecc32d42ac3357913b664e78a0aff8bd3e
MD5 a741330c9ed3e5557f346bf6ed32977a
BLAKE2b-256 00bcd076f0b5f3ab5d26840cd8eee073af59210bb90aba8a7826d64980c08e70

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page