import pandas as pd from rdkit import Chem from molvs import Standardizer # Read the CSV file file_path = '/Users/colestephens/Desktop/CodeFolders/ML_Dataset_Curation_Project/Final_Project_Dataset_curration/HiTEA-master/data/cleaned_datasets/ullmann.csv' # replace with your file path df = pd.read_csv(file_path) # Initialize the Standardizer from MolVS standardizer = Standardizer() # List the columns that contain SMILES strings smiles_columns = ['PRODUCT_STRUCTURE', 'catalyst_1_ID_1_SMILES', 'Reactant_1_SMILES', 'reactant_2_SMILES', 'reactant_3_SMILES'] # replace with your SMILES columns def sanitize_smiles(smiles): try: if pd.isna(smiles): return smiles # Return NA or None if the original data is NA mol = Chem.MolFromSmiles(smiles) if mol: standardized_mol = standardizer.standardize(mol) sanitized_smiles = Chem.MolToSmiles(standardized_mol) print(f"SMILES successfully sanitized: {sanitized_smiles}") return sanitized_smiles else: return None except Exception as e: print(f"Error standardizing SMILES: {smiles} -> {e}") return None # Apply sanitization to each SMILES column for col in smiles_columns: df[col] = df[col].apply(sanitize_smiles) # List the columns you want to keep in the output CSV columns_to_keep = ['ID', 'Product_Yield_PCT_Area_UV', 'Solvent_1_Name', 'PRODUCT_STRUCTURE', 'catalyst_1_ID_1_SMILES', 'Reactant_1_SMILES', 'reactant_2_SMILES', 'reactant_3_SMILES'] # Replace with the columns you want # Filter the DataFrame to keep only the specified columns filtered_df = df[columns_to_keep] # Save the sanitized SMILES back to a new CSV file filtered_df.to_csv('/Users/colestephens/Desktop/CodeFolders/ML_Dataset_Curation_Project/Sanitized_data/ullmann.csv', index=False)