bio-clinical-databases-dbsnp-queries
This Claude Code skill provides methods for querying dbSNP to retrieve variant information by rsID, including genomic coordinates, functional annotations, and cross-references to ClinVar and gnomAD databases. Use it when mapping between rsIDs and genomic positions, annotating variants with clinical significance, or looking up population frequency data from multiple sources through the myvariant.info REST API or NCBI Entrez utilities.
git clone --depth 1 https://github.com/FreedomIntelligence/OpenClaw-Medical-Skills /tmp/bio-clinical-databases-dbsnp-queries && cp -r /tmp/bio-clinical-databases-dbsnp-queries/skills/bio-clinical-databases-dbsnp-queries ~/.claude/skills/bio-clinical-databases-dbsnp-queriesSKILL.md
## Version Compatibility
Reference examples tested with: BioPython 1.83+, Entrez Direct 21.0+
Before using code patterns, verify installed versions match. If versions differ:
- Python: `pip show <package>` then `help(module.function)` to check signatures
If code throws ImportError, AttributeError, or TypeError, introspect the installed
package and adapt the example to match the actual API rather than retrying.
# dbSNP Queries
**"Look up variant information by rsID"** → Retrieve variant annotations, genomic coordinates, and cross-references to ClinVar/gnomAD from dbSNP using REST API queries.
- Python: `myvariant.MyVariantInfo().getvariant('rs12345')`
## Query rsID via myvariant.info
**Goal:** Retrieve variant information including dbSNP, ClinVar, and gnomAD annotations by rsID.
**Approach:** Query myvariant.info with the rsID and request specific annotation fields.
```python
import myvariant
mv = myvariant.MyVariantInfo()
def get_rsid_info(rsid):
'''Get variant info by rsID'''
result = mv.getvariant(rsid, fields=['dbsnp', 'clinvar', 'gnomad_exome'])
return result
result = get_rsid_info('rs121913527')
```
## Query via NCBI Entrez
**Goal:** Search and fetch dbSNP records directly from NCBI using Entrez E-utilities.
**Approach:** Use BioPython Entrez esearch to find SNP IDs, then efetch to retrieve full XML records.
```python
from Bio import Entrez
import xml.etree.ElementTree as ET
Entrez.email = 'your@email.com'
def search_dbsnp(rsid):
'''Search dbSNP by rsID'''
handle = Entrez.esearch(db='snp', term=rsid)
record = Entrez.read(handle)
handle.close()
return record
def fetch_dbsnp(snp_id):
'''Fetch dbSNP record by internal ID'''
handle = Entrez.efetch(db='snp', id=snp_id, rettype='xml')
xml_data = handle.read()
handle.close()
return xml_data
```
## Map Coordinates to rsID
**Goal:** Find the rsID corresponding to a genomic position and allele change.
**Approach:** Construct an HGVS notation from coordinates and query myvariant.info for the dbSNP rsID field.
```python
def coords_to_rsid(chrom, pos, ref, alt):
'''Find rsID for genomic coordinates'''
mv = myvariant.MyVariantInfo()
# Query by HGVS notation
hgvs = f'chr{chrom}:g.{pos}{ref}>{alt}'
result = mv.getvariant(hgvs, fields=['dbsnp.rsid'])
if result:
return result.get('dbsnp', {}).get('rsid')
return None
```
## Map rsID to Coordinates
```python
def rsid_to_coords(rsid):
'''Get genomic coordinates for rsID'''
mv = myvariant.MyVariantInfo()
result = mv.getvariant(rsid, fields=['dbsnp', 'vcf'])
if not result:
return None
dbsnp = result.get('dbsnp', {})
return {
'chrom': dbsnp.get('chrom'),
'pos': dbsnp.get('hg38', {}).get('start'),
'ref': dbsnp.get('ref'),
'alt': dbsnp.get('alt')
}
```
## Batch rsID Lookup
```python
def batch_rsid_lookup(rsids, fields=None):
'''Look up multiple rsIDs'''
mv = myvariant.MyVariantInfo()
if fields is None:
fields = ['dbsnp', 'clinvar.clinical_significance', 'gnomad_exome.af.af']
results = mv.getvariants(rsids, fields=fields)
return results
```
## Parse dbSNP Annotations
```python
def parse_dbsnp(result):
'''Extract key dbSNP annotations'''
dbsnp = result.get('dbsnp', {})
return {
'rsid': dbsnp.get('rsid'),
'chrom': dbsnp.get('chrom'),
'pos_hg38': dbsnp.get('hg38', {}).get('start'),
'pos_hg19': dbsnp.get('hg19', {}).get('start'),
'ref': dbsnp.get('ref'),
'alt': dbsnp.get('alt'),
'gene': dbsnp.get('gene', {}).get('symbol'),
'class': dbsnp.get('class'), # snv, ins, del, etc.
'validated': dbsnp.get('validated')
}
```
## Variant Classes in dbSNP
| Class | Description |
|-------|-------------|
| snv | Single nucleotide variant |
| ins | Insertion |
| del | Deletion |
| indel | Insertion/deletion |
| mnv | Multiple nucleotide variant |
## Query NCBI Variation Services API
```python
import requests
def query_spdi(rsid):
'''Query NCBI Variation Services for SPDI notation'''
url = f'https://api.ncbi.nlm.nih.gov/variation/v0/refsnp/{rsid[2:]}'
response = requests.get(url)
if response.ok:
return response.json()
return None
```
## Related Skills
- myvariant-queries - Aggregated variant queries
- clinvar-lookup - ClinVar pathogenicity
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