# Convert to a DataFrame for easier handling feature_df = pd.DataFrame([ {'gene_product_id': gene_product_id, 'go_term_ids': go_term_ids} for gene_product_id, go_term_ids in gene_product_features.items() ])
# Usage features = generate_features('path/to/kg5_file.kg5') features.to_csv('generated_features.csv', index=False)
gene_product_features[gene_product_id].append(go_term_id) kg5 da file
for index, row in kg5_data.iterrows(): gene_product_id = row['gene_product_id'] go_term_id = row['go_term_id']
# Further processing to create binary or count features # ... # Convert to a DataFrame for easier handling feature_df = pd
# Assume the columns are gene_product_id, go_term_id, and evidence_code gene_product_features = {}
def generate_features(kg5_file_path): # Load the KG5 file kg5_data = pd.read_csv(kg5_file_path, sep='\t') 'go_term_ids': go_term_ids} for gene_product_id
return feature_df