cbioportal-database
Query cBioPortal for cancer genomics data including somatic mutations, copy number alterations, gene expression, and survival data across hundreds of cancer studies. Essential for cancer target validation, oncogene/tumor suppressor analysis, and patient-level genomic profiling.
Best use case
cbioportal-database is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Query cBioPortal for cancer genomics data including somatic mutations, copy number alterations, gene expression, and survival data across hundreds of cancer studies. Essential for cancer target validation, oncogene/tumor suppressor analysis, and patient-level genomic profiling.
Teams using cbioportal-database should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/cbioportal-database/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How cbioportal-database Compares
| Feature / Agent | cbioportal-database | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Query cBioPortal for cancer genomics data including somatic mutations, copy number alterations, gene expression, and survival data across hundreds of cancer studies. Essential for cancer target validation, oncogene/tumor suppressor analysis, and patient-level genomic profiling.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
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SKILL.md Source
# cBioPortal Database
## Overview
cBioPortal for Cancer Genomics (https://www.cbioportal.org/) is an open-access resource for exploring, visualizing, and analyzing multidimensional cancer genomics data. It hosts data from The Cancer Genome Atlas (TCGA), AACR Project GENIE, MSK-IMPACT, and hundreds of other cancer studies — covering mutations, copy number alterations (CNA), structural variants, mRNA/protein expression, methylation, and clinical data for thousands of cancer samples.
**Key resources:**
- cBioPortal website: https://www.cbioportal.org/
- REST API: https://www.cbioportal.org/api/
- API docs (Swagger): https://www.cbioportal.org/api/swagger-ui/index.html
- Python client: `bravado` or `requests`
- GitHub: https://github.com/cBioPortal/cbioportal
## When to Use This Skill
Use cBioPortal when:
- **Mutation landscape**: What fraction of a cancer type has mutations in a specific gene?
- **Oncogene/TSG validation**: Is a gene frequently mutated, amplified, or deleted in cancer?
- **Co-mutation patterns**: Are mutations in gene A and gene B mutually exclusive or co-occurring?
- **Survival analysis**: Do mutations in a gene associate with better or worse patient outcomes?
- **Alteration profiles**: What types of alterations (missense, truncating, amplification, deletion) affect a gene?
- **Pan-cancer analysis**: Compare alteration frequencies across cancer types
- **Clinical associations**: Link genomic alterations to clinical variables (stage, grade, treatment response)
- **TCGA/GENIE exploration**: Systematic access to TCGA and clinical sequencing datasets
## Core Capabilities
### 1. cBioPortal REST API
Base URL: `https://www.cbioportal.org/api`
The API is RESTful, returns JSON, and requires no API key for public data.
```python
import requests
BASE_URL = "https://www.cbioportal.org/api"
HEADERS = {"Accept": "application/json", "Content-Type": "application/json"}
def cbioportal_get(endpoint, params=None):
url = f"{BASE_URL}/{endpoint}"
response = requests.get(url, params=params, headers=HEADERS)
response.raise_for_status()
return response.json()
def cbioportal_post(endpoint, body):
url = f"{BASE_URL}/{endpoint}"
response = requests.post(url, json=body, headers=HEADERS)
response.raise_for_status()
return response.json()
```
### 2. Browse Studies
```python
def get_all_studies():
"""List all available cancer studies."""
return cbioportal_get("studies", {"pageSize": 500})
# Each study has:
# studyId: unique identifier (e.g., "brca_tcga")
# name: human-readable name
# description: dataset description
# cancerTypeId: cancer type abbreviation
# referenceGenome: GRCh37 or GRCh38
# pmid: associated publication
studies = get_all_studies()
print(f"Total studies: {len(studies)}")
# Common TCGA study IDs:
# brca_tcga, luad_tcga, coadread_tcga, gbm_tcga, prad_tcga,
# skcm_tcga, blca_tcga, hnsc_tcga, lihc_tcga, stad_tcga
# Filter for TCGA studies
tcga_studies = [s for s in studies if "tcga" in s["studyId"]]
print([s["studyId"] for s in tcga_studies[:10]])
```
### 3. Molecular Profiles
Each study has multiple molecular profiles (mutation, CNA, expression, etc.):
```python
def get_molecular_profiles(study_id):
"""Get all molecular profiles for a study."""
return cbioportal_get(f"studies/{study_id}/molecular-profiles")
profiles = get_molecular_profiles("brca_tcga")
for p in profiles:
print(f" {p['molecularProfileId']}: {p['name']} ({p['molecularAlterationType']})")
# Alteration types:
# MUTATION_EXTENDED — somatic mutations
# COPY_NUMBER_ALTERATION — CNA (GISTIC)
# MRNA_EXPRESSION — mRNA expression
# PROTEIN_LEVEL — RPPA protein expression
# STRUCTURAL_VARIANT — fusions/rearrangements
```
### 4. Mutation Data
```python
def get_mutations(molecular_profile_id, entrez_gene_ids, sample_list_id=None):
"""Get mutations for specified genes in a molecular profile."""
body = {
"entrezGeneIds": entrez_gene_ids,
"sampleListId": sample_list_id or molecular_profile_id.replace("_mutations", "_all")
}
return cbioportal_post(
f"molecular-profiles/{molecular_profile_id}/mutations/fetch",
body
)
# BRCA1 Entrez ID is 672, TP53 is 7157, PTEN is 5728
mutations = get_mutations("brca_tcga_mutations", entrez_gene_ids=[7157]) # TP53
# Each mutation record contains:
# patientId, sampleId, entrezGeneId, gene.hugoGeneSymbol
# mutationType (Missense_Mutation, Nonsense_Mutation, Frame_Shift_Del, etc.)
# proteinChange (e.g., "R175H")
# variantClassification, variantType
# ncbiBuild, chr, startPosition, endPosition, referenceAllele, variantAllele
# mutationStatus (Somatic/Germline)
# alleleFreqT (tumor VAF)
import pandas as pd
df = pd.DataFrame(mutations)
print(df[["patientId", "mutationType", "proteinChange", "alleleFreqT"]].head())
print(f"\nMutation types:\n{df['mutationType'].value_counts()}")
```
### 5. Copy Number Alteration Data
```python
def get_cna(molecular_profile_id, entrez_gene_ids):
"""Get discrete CNA data (GISTIC: -2, -1, 0, 1, 2)."""
body = {
"entrezGeneIds": entrez_gene_ids,
"sampleListId": molecular_profile_id.replace("_gistic", "_all").replace("_cna", "_all")
}
return cbioportal_post(
f"molecular-profiles/{molecular_profile_id}/discrete-copy-number/fetch",
body
)
# GISTIC values:
# -2 = Deep deletion (homozygous loss)
# -1 = Shallow deletion (heterozygous loss)
# 0 = Diploid (neutral)
# 1 = Low-level gain
# 2 = High-level amplification
cna_data = get_cna("brca_tcga_gistic", entrez_gene_ids=[1956]) # EGFR
df_cna = pd.DataFrame(cna_data)
print(df_cna["value"].value_counts())
```
### 6. Alteration Frequency (OncoPrint-style)
```python
def get_alteration_frequency(study_id, gene_symbols, alteration_types=None):
"""Compute alteration frequencies for genes across a cancer study."""
import requests, pandas as pd
# Get sample list
samples = requests.get(
f"{BASE_URL}/studies/{study_id}/sample-lists",
headers=HEADERS
).json()
all_samples_id = next(
(s["sampleListId"] for s in samples if s["category"] == "all_cases_in_study"), None
)
total_samples = len(requests.get(
f"{BASE_URL}/sample-lists/{all_samples_id}/sample-ids",
headers=HEADERS
).json())
# Get gene Entrez IDs
gene_data = requests.post(
f"{BASE_URL}/genes/fetch",
json=[{"hugoGeneSymbol": g} for g in gene_symbols],
headers=HEADERS
).json()
entrez_ids = [g["entrezGeneId"] for g in gene_data]
# Get mutations
mutation_profile = f"{study_id}_mutations"
mutations = get_mutations(mutation_profile, entrez_ids, all_samples_id)
freq = {}
for g_symbol, e_id in zip(gene_symbols, entrez_ids):
mutated = len(set(m["patientId"] for m in mutations if m["entrezGeneId"] == e_id))
freq[g_symbol] = mutated / total_samples * 100
return freq
# Example
freq = get_alteration_frequency("brca_tcga", ["TP53", "PIK3CA", "BRCA1", "BRCA2"])
for gene, pct in sorted(freq.items(), key=lambda x: -x[1]):
print(f" {gene}: {pct:.1f}%")
```
### 7. Clinical Data
```python
def get_clinical_data(study_id, attribute_ids=None):
"""Get patient-level clinical data."""
params = {"studyId": study_id}
all_clinical = cbioportal_get(
"clinical-data/fetch",
params
)
# Returns list of {patientId, studyId, clinicalAttributeId, value}
# Clinical attributes include:
# OS_STATUS, OS_MONTHS, DFS_STATUS, DFS_MONTHS (survival)
# TUMOR_STAGE, GRADE, AGE, SEX, RACE
# Study-specific attributes vary
def get_clinical_attributes(study_id):
"""List all available clinical attributes for a study."""
return cbioportal_get(f"studies/{study_id}/clinical-attributes")
```
## Query Workflows
### Workflow 1: Gene Alteration Profile in a Cancer Type
```python
import requests, pandas as pd
def alteration_profile(study_id, gene_symbol):
"""Full alteration profile for a gene in a cancer study."""
# 1. Get gene Entrez ID
gene_info = requests.post(
f"{BASE_URL}/genes/fetch",
json=[{"hugoGeneSymbol": gene_symbol}],
headers=HEADERS
).json()[0]
entrez_id = gene_info["entrezGeneId"]
# 2. Get mutations
mutations = get_mutations(f"{study_id}_mutations", [entrez_id])
mut_df = pd.DataFrame(mutations) if mutations else pd.DataFrame()
# 3. Get CNAs
cna = get_cna(f"{study_id}_gistic", [entrez_id])
cna_df = pd.DataFrame(cna) if cna else pd.DataFrame()
# 4. Summary
n_mut = len(set(mut_df["patientId"])) if not mut_df.empty else 0
n_amp = len(cna_df[cna_df["value"] == 2]) if not cna_df.empty else 0
n_del = len(cna_df[cna_df["value"] == -2]) if not cna_df.empty else 0
return {"mutations": n_mut, "amplifications": n_amp, "deep_deletions": n_del}
result = alteration_profile("brca_tcga", "PIK3CA")
print(result)
```
### Workflow 2: Pan-Cancer Gene Mutation Frequency
```python
import requests, pandas as pd
def pan_cancer_mutation_freq(gene_symbol, cancer_study_ids=None):
"""Mutation frequency of a gene across multiple cancer types."""
studies = get_all_studies()
if cancer_study_ids:
studies = [s for s in studies if s["studyId"] in cancer_study_ids]
results = []
for study in studies[:20]: # Limit for demo
try:
freq = get_alteration_frequency(study["studyId"], [gene_symbol])
results.append({
"study": study["studyId"],
"cancer": study.get("cancerTypeId", ""),
"mutation_pct": freq.get(gene_symbol, 0)
})
except Exception:
pass
df = pd.DataFrame(results).sort_values("mutation_pct", ascending=False)
return df
```
### Workflow 3: Survival Analysis by Mutation Status
```python
import requests, pandas as pd
def survival_by_mutation(study_id, gene_symbol):
"""Get survival data split by mutation status."""
# This workflow fetches clinical and mutation data for downstream analysis
gene_info = requests.post(
f"{BASE_URL}/genes/fetch",
json=[{"hugoGeneSymbol": gene_symbol}],
headers=HEADERS
).json()[0]
entrez_id = gene_info["entrezGeneId"]
mutations = get_mutations(f"{study_id}_mutations", [entrez_id])
mutated_patients = set(m["patientId"] for m in mutations)
clinical = cbioportal_get("clinical-data/fetch", {"studyId": study_id})
clinical_df = pd.DataFrame(clinical)
os_data = clinical_df[clinical_df["clinicalAttributeId"].isin(["OS_MONTHS", "OS_STATUS"])]
os_wide = os_data.pivot(index="patientId", columns="clinicalAttributeId", values="value")
os_wide["mutated"] = os_wide.index.isin(mutated_patients)
return os_wide
```
## Key API Endpoints Summary
| Endpoint | Description |
|----------|-------------|
| `GET /studies` | List all studies |
| `GET /studies/{studyId}/molecular-profiles` | Molecular profiles for a study |
| `POST /molecular-profiles/{profileId}/mutations/fetch` | Get mutation data |
| `POST /molecular-profiles/{profileId}/discrete-copy-number/fetch` | Get CNA data |
| `POST /molecular-profiles/{profileId}/molecular-data/fetch` | Get expression data |
| `GET /studies/{studyId}/clinical-attributes` | Available clinical variables |
| `GET /clinical-data/fetch` | Clinical data |
| `POST /genes/fetch` | Gene metadata by symbol or Entrez ID |
| `GET /studies/{studyId}/sample-lists` | Sample lists |
## Best Practices
- **Know your study IDs**: Use the Swagger UI or `GET /studies` to find the correct study ID
- **Use sample lists**: Each study has an `all` sample list and subsets; always specify the appropriate one
- **TCGA vs. GENIE**: TCGA data is comprehensive but older; GENIE has more recent clinical sequencing data
- **Entrez gene IDs**: The API uses Entrez IDs — use `/genes/fetch` to convert from symbols
- **Handle 404s**: Some molecular profiles may not exist for all studies
- **Rate limiting**: Add delays for bulk queries; consider downloading data files for large-scale analyses
## Data Downloads
For large-scale analyses, download study data directly:
```bash
# Download TCGA BRCA data
wget https://cbioportal-datahub.s3.amazonaws.com/brca_tcga.tar.gz
```
## Additional Resources
- **cBioPortal website**: https://www.cbioportal.org/
- **API Swagger UI**: https://www.cbioportal.org/api/swagger-ui/index.html
- **Documentation**: https://docs.cbioportal.org/
- **GitHub**: https://github.com/cBioPortal/cbioportal
- **Data hub**: https://datahub.cbioportal.org/
- **Citation**: Cerami E et al. (2012) Cancer Discovery. PMID: 22588877
- **API clients**: https://docs.cbioportal.org/web-api-and-clients/Related Skills
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