Datasets:
Formats:
parquet
Languages:
English
Size:
10M - 100M
Tags:
biology
chemistry
drug-discovery
clinical-trials
protein-protein-interaction
gene-essentiality
License:
| #!/usr/bin/env python3 | |
| """Build GE-L3 reasoning dataset for LLM benchmark. | |
| Generates 200 records for LLM-as-Judge reasoning evaluation. | |
| Source: Gold/silver tier non-essential gene-cell_line pairs with gene descriptions. | |
| Balance: ~50% reference non-essential, ~50% context non-essential (essential elsewhere). | |
| Split: 20 fewshot + 20 val + 160 test | |
| Output: exports/ge_llm/ge_l3_dataset.jsonl | |
| Usage: | |
| PYTHONPATH=src python scripts_depmap/build_ge_l3_dataset.py | |
| """ | |
| from __future__ import annotations | |
| import argparse | |
| import logging | |
| import sys | |
| from pathlib import Path | |
| import numpy as np | |
| import pandas as pd | |
| logging.basicConfig(level=logging.INFO, format="%(asctime)s %(levelname)s %(message)s") | |
| logger = logging.getLogger(__name__) | |
| PROJECT_ROOT = Path(__file__).resolve().parent.parent | |
| OUTPUT_DIR = PROJECT_ROOT / "exports" / "ge_llm" | |
| N_TOTAL = 200 | |
| N_REFERENCE_NE = 100 # Reference non-essential genes | |
| N_CONTEXT_NE = 100 # Context non-essential (essential elsewhere) | |
| MIN_DESC_LEN = 30 | |
| def _generate_gold_reasoning(row: pd.Series) -> str: | |
| """Generate template gold reasoning for fewshot examples.""" | |
| gene = row.get("gene_symbol", "UNKNOWN") | |
| cell_line = row.get("ccle_name") or row.get("model_id", "UNKNOWN") | |
| lineage = row.get("lineage", "unknown lineage") | |
| desc = row.get("description") or "unknown function" | |
| is_rne = row.get("is_reference_nonessential", 0) | |
| degree = row.get("gene_degree") | |
| effect = row.get("gene_effect_score") | |
| parts = [] | |
| parts.append( | |
| f"{gene} is described as: {desc[:200]}. " | |
| f"In {cell_line} ({lineage}), CRISPR knockout of {gene} shows no significant " | |
| f"effect on cell viability." | |
| ) | |
| if is_rne: | |
| parts.append( | |
| f"{gene} is part of the reference non-essential gene set, indicating " | |
| f"it is dispensable for cell survival across multiple cell types and " | |
| f"screening contexts." | |
| ) | |
| if degree and not pd.isna(degree) and degree > 100: | |
| parts.append( | |
| f"{gene} is non-essential in {int(degree)} cell lines in DepMap, " | |
| f"suggesting broad dispensability rather than lineage-specific tolerance." | |
| ) | |
| if effect is not None and not pd.isna(effect) and effect > -0.2: | |
| parts.append( | |
| f"The gene effect score ({effect:.3f}) is close to zero, indicating " | |
| f"minimal fitness impact upon knockout." | |
| ) | |
| return " ".join(parts) | |
| def main(argv: list[str] | None = None) -> int: | |
| parser = argparse.ArgumentParser(description="Build GE-L3 reasoning dataset.") | |
| parser.add_argument("--db", type=Path, default=PROJECT_ROOT / "data" / "negbiodb_depmap.db") | |
| parser.add_argument("--output", type=Path, default=OUTPUT_DIR / "ge_l3_dataset.jsonl") | |
| parser.add_argument("--seed", type=int, default=42) | |
| args = parser.parse_args(argv) | |
| from negbiodb_depmap.depmap_db import get_connection | |
| from negbiodb_depmap.llm_dataset import ( | |
| apply_max_per_gene, | |
| assign_splits, | |
| construct_l3_context, | |
| write_dataset_metadata, | |
| write_jsonl, | |
| ) | |
| rng = np.random.RandomState(args.seed) | |
| conn = get_connection(args.db) | |
| try: | |
| # Load gold/silver tier with gene descriptions | |
| df = pd.read_sql_query(""" | |
| SELECT | |
| nr.gene_id, nr.cell_line_id, | |
| g.gene_symbol, g.entrez_id, g.description, | |
| g.is_common_essential, g.is_reference_nonessential, | |
| c.model_id, c.ccle_name, c.lineage, c.primary_disease, | |
| nr.gene_effect_score, nr.dependency_probability, | |
| nr.evidence_type, nr.confidence_tier, | |
| p.gene_degree, p.cell_line_degree | |
| FROM ge_negative_results nr | |
| JOIN genes g ON nr.gene_id = g.gene_id | |
| JOIN cell_lines c ON nr.cell_line_id = c.cell_line_id | |
| LEFT JOIN gene_cell_pairs p ON nr.gene_id = p.gene_id | |
| AND nr.cell_line_id = p.cell_line_id | |
| WHERE nr.confidence_tier IN ('gold', 'silver') | |
| AND g.description IS NOT NULL | |
| AND LENGTH(g.description) >= ? | |
| ORDER BY RANDOM() | |
| LIMIT 2000 | |
| """, conn, params=(MIN_DESC_LEN,)) | |
| finally: | |
| conn.close() | |
| logger.info("Gold/silver with descriptions: %d records", len(df)) | |
| df = apply_max_per_gene(df, max_per_gene=5, seed=args.seed) | |
| # Split into reference non-essential vs context non-essential | |
| ref_ne = df[df["is_reference_nonessential"] == 1].copy() | |
| ctx_ne = df[df["is_reference_nonessential"] == 0].copy() | |
| logger.info("Reference NE: %d, Context NE: %d", len(ref_ne), len(ctx_ne)) | |
| selected = [] | |
| n_ref = min(N_REFERENCE_NE, len(ref_ne)) | |
| n_ctx = min(N_CONTEXT_NE, len(ctx_ne)) | |
| if n_ref > 0: | |
| selected.append(ref_ne.sample(n=n_ref, random_state=rng)) | |
| if n_ctx > 0: | |
| selected.append(ctx_ne.sample(n=n_ctx, random_state=rng)) | |
| # Fill remaining | |
| n_remaining = N_TOTAL - n_ref - n_ctx | |
| if n_remaining > 0: | |
| remaining = df[~df.index.isin(pd.concat(selected).index)] | |
| if len(remaining) > 0: | |
| n_fill = min(n_remaining, len(remaining)) | |
| selected.append(remaining.sample(n=n_fill, random_state=rng)) | |
| combined = pd.concat(selected, ignore_index=True) | |
| logger.info("Selected %d records for L3", len(combined)) | |
| # Assign splits | |
| combined = assign_splits(combined, ratios={"train": 0.1, "val": 0.1, "test": 0.8}) | |
| combined["split"] = combined["split"].replace({"train": "fewshot"}) | |
| # Build JSONL records | |
| records = [] | |
| for i, (_, row) in enumerate(combined.iterrows()): | |
| context = construct_l3_context(row) | |
| ne_type = "reference" if row.get("is_reference_nonessential", 0) else "context" | |
| rec = { | |
| "question_id": f"GEL3-{i:04d}", | |
| "task": "ge-l3", | |
| "split": row["split"], | |
| "difficulty": "medium", | |
| "context_text": context, | |
| "gold_answer": row.get("evidence_type", ""), | |
| "gold_category": ne_type, | |
| "metadata": { | |
| "gene_symbol": row.get("gene_symbol"), | |
| "model_id": row.get("model_id"), | |
| "lineage": row.get("lineage"), | |
| "confidence_tier": row.get("confidence_tier"), | |
| "is_reference_nonessential": int(row.get("is_reference_nonessential", 0)), | |
| "gene_degree": int(row["gene_degree"]) if pd.notna(row.get("gene_degree")) else None, | |
| }, | |
| } | |
| if row["split"] == "fewshot": | |
| rec["gold_reasoning"] = _generate_gold_reasoning(row) | |
| records.append(rec) | |
| write_jsonl(records, args.output) | |
| stats = { | |
| "n_total": len(records), | |
| "ne_type_distribution": { | |
| "reference": n_ref, | |
| "context": n_ctx, | |
| }, | |
| "split_distribution": dict(combined["split"].value_counts()), | |
| "seed": args.seed, | |
| } | |
| write_dataset_metadata(args.output.parent, "ge-l3", stats) | |
| logger.info("GE-L3 dataset built: %d records", len(records)) | |
| return 0 | |
| if __name__ == "__main__": | |
| sys.exit(main()) | |