import requestsimport urllib3urllib3.disable_warnings()def fetch_uniprot_data(uniprot_id): url =f"https://rest.uniprot.org/uniprotkb/{uniprot_id}.json" response = requests.get(url, verify=False) # Disable SSL verification response.raise_for_status() # Raise an error for bad status codesreturn response.json()def display_uniprot_data(data): primary_accession = data.get('primaryAccession', 'N/A') protein_name = data.get('proteinDescription', {}).get('recommendedName', {}).get('fullName', {}).get('value', 'N/A') gene_name = data.get('gene', [{'geneName': {'value': 'N/A'}}])[0]['geneName']['value'] organism = data.get('organism', {}).get('scientificName', 'N/A') function_comment =next((comment for comment in data.get('comments', []) if comment['commentType'] =="FUNCTION"), None) function = function_comment['texts'][0]['value'] if function_comment else'N/A'# Printing the dataprint(f"UniProt ID: {primary_accession}")print(f"Protein Name: {protein_name}")print(f"Organism: {organism}")print(f"Function: {function}")# Replace this with the UniProt ID you want to fetchuniprot_id ="Q9BTN0"data = fetch_uniprot_data(uniprot_id)display_uniprot_data(data)
UniProt ID: Q9BTN0
Protein Name: Leucine-rich repeat and fibronectin type-III domain-containing protein 3
Organism: Homo sapiens
Function: Cell adhesion molecule that mediates homophilic cell-cell adhesion in a Ca(2+)-independent manner. Promotes neurite outgrowth in hippocampal neurons (By similarity)
More information:
AlphaFold model
Surface representation - binding sites
The computed point cloud for pLDDT > 0.6. Each atom is sampled on average by 10 points.
To see the predicted binding interfaces, you can choose color theme “uncertainty”.
Go to the “Controls Panel”
Below “Components”, to the right, click on “…”
“Set Coloring” by “Atom Property”, and “Uncertainty/Disorder”