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π― HippoTarget
A curated drug-target interaction dataset, teaching LLMs which molecules bind to which proteins.
π‘ Overview
Welcome to HippoTarget, the fifth member of the ZemResearch Hippo Ecosystem. Before a drug can do anything useful in the body, it first has to bind to the right protein β like a key fitting into a lock. HippoTarget teaches LLMs exactly that: given a small molecule, which protein does it interact with?
This dataset combines real binding interaction data with a curated list of FDA-approved drugs and their known protein targets, giving models exposure to both experimental binding relationships and clinically validated drug-target pairs.
𧬠Part of the Hippo Ecosystem
HippoTarget is designed to work alongside the other Hippo datasets, together forming an end-to-end drug discovery pipeline:
| Dataset | Focus | Size |
|---|---|---|
| 𧬠HippoCrates | Molecular structures & SMILES | 1.46M rows |
| βοΈ HippoSynth | Chemical reactions & synthesis | 50K rows |
| π― HippoTarget (you are here) | Drug-target interaction | 15.5K rows |
| π« HippoLv | ADMET & drug behavior in the body | ~9.4K rows |
| β οΈ HippoXic | Toxicology & clinical safety | ~10.6K rows |
The pipeline flows naturally: HippoCrates (what the molecule looks like) β HippoSynth (how it's made) β HippoTarget (what it binds to) β HippoLv (how it behaves in the body) β HippoXic (whether it's safe).
π§Ό Curation Process
- Multi-source aggregation: We combined real experimental binding interaction data with a clinically curated list of FDA-approved drugs and their protein targets.
- Text parsing: Binding interaction sentences were parsed to extract SMILES structures and protein sequences using pattern matching, handling multiple sentence format variations found in the source data.
- RDKit validation: Every SMILES string was validated using RDKit to confirm it represents a chemically valid molecule.
- Protein sequence validation: Every protein sequence was checked to contain only standard amino acid characters within a reasonable length range.
- Deduplication: We removed 199 duplicate rows based on input/output content.
- Result: 15,520 clean, validated drug-target interaction rows.
π¦ Data Sources
HippoTarget was built by merging and curating data from the following public sources:
| Source | Type | Contribution |
|---|---|---|
jablonkagroup/chempile-lift (uniprot_binding_single) |
Experimental binding interactions | ~6.4K rows |
alimotahharynia/approved_drug_target |
FDA-approved drugs & their protein targets | ~9.4K rows |
All sources are publicly available. The approved drug target data was curated with pharmacist and physician review, sourced from DrugBank, ChEMBL, ZINC20, and UniProt.
π Data Structure
HippoTarget uses the standard Alpaca instruction-tuning format. Each row has three columns:
instruction: What the model is being asked to do (determine binding, identify target, etc.)input: The context β compound SMILES and/or protein sequenceoutput: The expected answer
Example Rows
Binding Interaction:
{
"instruction": "Determine whether this molecule interacts with the specified protein sequence.",
"input": "Compound SMILES: COc1ccccc1N1CCN(CCN2C=CC3(CCCC3)CC2=O)CC1\nProtein sequence: MSLEQKKGADIISKILQIQNSIGKTTSPSTLKTKLSEISRKEQENARIQSKLSDLQKKKIDIDNKLLKEKQNLIKEEILERKKL...",
"output": "Yes, this compound binds to the given protein target. The SMILES structure COc1ccccc1N1CCN(CCN2C=CC3(CCCC3)CC2=O)CC1 has documented binding affinity with the specified peptide sequence."
}
Approved Drug-Target Identification:
{
"instruction": "Identify the protein target for the following approved drug compound.",
"input": "Drug SMILES: CC(=O)Oc1ccccc1C(=O)O",
"output": "This approved drug compound targets the protein with sequence: MDHQDPYSVQATAAIAAAITFLILFTIFGNALVILAV..."
}
π» How to Use
from datasets import load_dataset
dataset = load_dataset("ZemResearch/HippoTarget")
print(f"Total drug-target pairs: {len(dataset['train'])}")
print(dataset['train'][0])
β οΈ Intended Use & Limitations
HippoTarget is designed for research and educational purposes β fine-tuning chemistry and bioinformatics LLMs, exploring drug-target interaction prediction, and building cheminformatics tools.
A few things to keep in mind:
- Protein sequences in this dataset are truncated to 200 characters for practical instruction-tuning purposes. For full-length sequences, refer to the original UniProt source.
- Binding interactions represent documented relationships from the source data, not experimentally verified binding affinity values (Kd, IC50, Ki are not included in this version).
- This dataset should not be used as a substitute for proper computational docking or wet-lab validation in real drug discovery pipelines.
- Always validate model predictions with proper bioinformatics tools before applying them to real research.
π€ Citation & Collaboration
Created with β€οΈ by ZemResearch. If you use HippoTarget in your research or projects, we'd love to hear about it! Feel free to open a discussion in the community tab.
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