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--- |
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dataset_info: |
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features: |
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- name: Y_affinity |
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dtype: float64 |
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- name: smiles |
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dtype: string |
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- name: seq |
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dtype: string |
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- name: Y_binary |
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dtype: int64 |
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- name: Y_log_affinity |
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dtype: float64 |
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- name: selfies |
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dtype: string |
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splits: |
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- name: train |
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num_bytes: 606248442.8293403 |
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num_examples: 740566 |
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download_size: 161743110 |
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dataset_size: 606248442.8293403 |
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--- |
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# From the [GLASS GPCR database](https://aideepmed.com/GLASS1/), converted to SELFIES |
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Steps to prepare the database: |
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1. Download the GLASS database |
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```bash |
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wget https://zhanggroup.org/GLASS/downloads/interactions_active.tsv |
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wget https://zhanggroup.org/GLASS/downloads/interactions_inactives.tsv |
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wget https://zhanggroup.org/GLASS/downloads/targets.tsv |
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wget https://zhanggroup.org/GLASS/downloads/ligands.tsv |
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``` |
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2. Select just the columns of interest |
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```bash |
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cut -d$'\t' -f6,9 ligands.tsv > ligands2.tsv |
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cut -d$'\t' -f2,5 targets.tsv > targets2.tsv |
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cut -d$'\t' -f1,2,4,5 interactions_active.tsv > interactions_active2.tsv |
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cut -d$'\t' -f1,2,4,5 interactions_inactives.tsv > interactions_inactives2.tsv |
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``` |
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3. Parse interactions |
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```python |
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import pandas as pd |
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import numpy as np |
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ligands = pd.read_csv('ligands2.tsv', sep='\t') |
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proteins = pd.read_csv('targets2.tsv', sep='\t') |
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actives = pd.read_csv('interactions_active2.tsv', sep='\t') |
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inactives = pd.read_csv('interactions_inactives2.tsv', sep='\t') |
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ligand_dict = {} |
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for index, item in ligands.iterrows(): |
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ligand_dict[item['InChI Key']] = item['Canonical SMILES'] |
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protein_dict = {} |
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for index, item in proteins.iterrows(): |
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protein_dict[item['UniProt ID']] = item['FASTA Sequence'] |
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def rehydrate_interactions(x): |
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uniprot_id = x['UniProt ID'] |
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inchi_id = x['InChI Key'] |
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smile = ligand_dict[inchi_id] |
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fasta = protein_dict[uniprot_id] |
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return smile, fasta |
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actives[["smiles", "seq"]] = actives.apply(rehydrate_interactions, axis=1, result_type="expand") |
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inactives[["smiles", "seq"]] = inactives.apply(rehydrate_interactions, axis=1, result_type="expand") |
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actives = actives.drop(columns=['UniProt ID', 'InChI Key']) |
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inactives = inactives.drop(columns=['UniProt ID', 'InChI Key']) |
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actives['Y_binary'] = len(actives) * [1] |
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inactives['Y_binary'] = len(inactives) * [0] |
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merged = pd.concat([actives, inactives], axis=0) |
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merged = merged[merged['Unit'] == 'nM'] |
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merged = merged.drop(columns=['Unit']) |
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merged = merged.reset_index() |
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merged = merged.drop(columns=['index']) |
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merged['Value'] = merged['Value'].map(lambda x: x.strip('>').strip(' ').strip('<')) |
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merged['Value'] = merged['Value'].map(lambda x: x.split(" - ")[0]) |
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merged['Value'] = pd.to_numeric(merged['Value'], errors='coerce') |
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merged = merged.rename(columns={"Value": "Y_affinity"}) |
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merged = merged[merged['Y_affinity'] != 0] |
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merged['Y_log_affinity'] = 6 - np.log(merged['Y_affinity']) / np.log(10) |
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merged = merged[merged['Y_log_affinity'] >= 0] |
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merged = merged[merged['Y_log_affinity'] <= 10] |
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shuffled = merged.sample(frac=1) |
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shuffled = shuffled.reset_index() |
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shuffled = shuffled.drop(columns=['index']) |
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``` |
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4. Convert SMILES to [SELFIES](https://github.com/aspuru-guzik-group/selfies) |
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```python |
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from datasets import Dataset, DatasetDict |
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from datasets import load_dataset |
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import selfies |
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dataset = Dataset.from_pandas(shuffled, split='train') |
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def smiles_to_selfies(dataset): |
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try: |
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return {"selfies": selfies.encoder(dataset["smiles"])} |
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except selfies.EncoderError: |
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return {"selfies": None} |
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dataset_selfies = dataset.map(smiles_to_selfies) |
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dataset_selfies = dataset_selfies.filter(lambda dataset: dataset["selfies"] != None) |
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``` |
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5. Compute protein ('prot_bert') / ligand embeddings ('SELFIES-RoBERTa-PubChem10M') |
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```python |
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from sentence_transformers import SentenceTransformer |
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import re |
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import pickle |
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import os.path |
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# Protein embeddings |
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all_proteins_shortened = dataset_selfies.unique('seq') |
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protein_sequences = [re.sub(r"[UZOB]", "X", sequence) for sequence in all_proteins_shortened] |
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protein_sequences = [" ".join(sequence) for sequence in protein_sequences] |
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protein_model = SentenceTransformer('Rostlab/prot_bert') |
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protein_model.max_seq_length = 512 |
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protein_emb = protein_model.encode(protein_sequences) |
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protein_embeddings = dict(zip(protein_sequences, protein_emb)) |
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with open('glass_protein_embeddings.pkl', "wb") as fOut: |
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pickle.dump(protein_embeddings, fOut, protocol=pickle.HIGHEST_PROTOCOL) |
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# Ligand embeddings |
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all_selfies_shortened = dataset_selfies.unique('selfies') |
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ligand_sequences = [sequence for sequence in all_selfies_shortened] |
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ligand_model = SentenceTransformer('ejy/SELFIES-RoBERTa-PubChem10M') |
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ligand_model.max_seq_length = 128 |
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ligand_emb = ligand_model.encode(ligand_sequences) |
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ligand_embeddings = dict(zip(ligand_sequences, ligand_emb)) |
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with open('glass_ligand_embeddings.pkl', "wb") as fOut: |
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pickle.dump(ligand_embeddings, fOut, protocol=pickle.HIGHEST_PROTOCOL) |
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``` |