✅ Correction 1: Désactivation mapping DATE dans EDS-Pseudo - Seules les dates de naissance sont masquées - [DATE] = 0, [DATE_NAISSANCE] préservé - Contexte temporel médical préservé ✅ Correction 2: Activation whitelist médicaments - Médicaments préservés (IDACIO, SALAZOPYRINE, etc.) - Filtrage dans _mask_with_eds_pseudo - Information thérapeutique préservée ✅ Correction 3: Whitelist termes médicaux structurels - Termes préservés (Chef de service, Praticien hospitalier, etc.) - Filtrage dans _repl_service - Contexte médical préservé Tests: 100% succès sur corpus production (3 documents testés)
113 lines
3.7 KiB
Python
113 lines
3.7 KiB
Python
#!/usr/bin/env python3
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# -*- coding: utf-8 -*-
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"""
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EDS-Pseudo Manager — Interface compatible NerModelManager pour le modèle AP-HP eds-pseudo.
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--------------------------------------------------------------------------------------------
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Utilise edsnlp pour charger le pipeline eds-pseudo (F1=0.97 sur données cliniques AP-HP).
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Mapping des 13 labels EDS-Pseudo vers les clés PLACEHOLDERS du core d'anonymisation.
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Dépendance : pip install 'edsnlp[ml]>=0.12.0'
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"""
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from __future__ import annotations
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from pathlib import Path
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from typing import Any, Dict, List, Optional
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try:
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import edsnlp
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_EDSNLP_AVAILABLE = True
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except ImportError:
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edsnlp = None # type: ignore
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_EDSNLP_AVAILABLE = False
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# Mapping labels EDS-Pseudo → clés PLACEHOLDERS (anonymizer_core)
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EDS_LABEL_MAP: Dict[str, str] = {
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"NOM": "NOM",
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"PRENOM": "NOM",
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"MAIL": "EMAIL",
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"TEL": "TEL",
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"SECU": "NIR",
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"ADRESSE": "ADRESSE",
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"ZIP": "CODE_POSTAL",
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"VILLE": "VILLE",
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"HOPITAL": "ETAB",
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# "DATE": "DATE", # ✅ DÉSACTIVÉ (Phase 1): ne masquer que les dates de naissance, pas les dates de consultation/examen
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"DATE_NAISSANCE": "DATE_NAISSANCE",
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"IPP": "IPP",
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"NDA": "NDA",
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}
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# Catalogue affiché dans la GUI
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EDS_MODELS_CATALOG: Dict[str, str] = {
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"EDS-Pseudo AP-HP (edsnlp)": "AP-HP/eds-pseudo-public",
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}
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class EdsPseudoManager:
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"""Gestionnaire pour le modèle EDS-Pseudo (edsnlp). Même interface que NerModelManager."""
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def __init__(self, cache_dir: Optional[Path] = None):
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self.cache_dir = Path(cache_dir) if cache_dir else None
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self.model_id: Optional[str] = None
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self._nlp = None
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self._loaded = False
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def is_loaded(self) -> bool:
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return self._loaded and self._nlp is not None
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def load(self, model_id_or_path: str = "AP-HP/eds-pseudo-public") -> None:
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if not _EDSNLP_AVAILABLE:
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raise RuntimeError("edsnlp non disponible. Installez : pip install 'edsnlp[ml]>=0.12.0'")
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self.unload()
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self.model_id = model_id_or_path
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path = Path(model_id_or_path)
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if path.is_dir():
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self._nlp = edsnlp.load(path)
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else:
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self._nlp = edsnlp.load(model_id_or_path)
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self._loaded = True
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def unload(self) -> None:
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self._nlp = None
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self._loaded = False
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self.model_id = None
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def models_catalog(self) -> Dict[str, str]:
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return dict(EDS_MODELS_CATALOG)
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def infer_paragraphs(
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self,
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paragraphs: List[str],
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thresholds: Optional[Any] = None,
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max_length: int = 384,
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stride: int = 128,
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) -> List[List[Dict[str, Any]]]:
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"""Pour chaque paragraphe, retourne une liste d'entités détectées.
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Chaque entité a les clés : entity_group, word, start, end, score, eds_mapped_key.
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"""
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if not self.is_loaded():
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return [[] for _ in paragraphs]
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out: List[List[Dict[str, Any]]] = []
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for para in paragraphs:
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if not para.strip():
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out.append([])
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continue
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doc = self._nlp(para)
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ents: List[Dict[str, Any]] = []
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for ent in doc.ents:
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label = ent.label_.upper()
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mapped = EDS_LABEL_MAP.get(label, None)
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if mapped is None:
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continue
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ents.append({
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"entity_group": label,
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"word": ent.text,
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"start": ent.start_char,
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"end": ent.end_char,
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"score": 1.0, # edsnlp ne fournit pas de score de confiance
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"eds_mapped_key": mapped,
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})
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out.append(ents)
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return out
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