ICD-10 subgroup classifier - group B (distilled specialist)

Multi-label classifier over 3-character ICD-10 subgroups inside chapter B. This specialist was distilled from local BERT teacher models into alexyalunin/RuBioBERT. Teacher weights are not uploaded to Hugging Face.

Intended use / Назначение

  • EN: Decision-support signal for suggesting candidate ICD-10 subgroups from Russian clinical notes. Not a substitute for clinician judgment; not validated for autonomous diagnosis.
  • RU: Вспомогательный сигнал для предложения кандидатных 3-символьных кодов МКБ-10 по русскому клиническому тексту. Не заменяет врача и не предназначен для автономных клинических решений.

Training data / Обучающие данные

  • Source CSV: datasets/subgroups/group_B.csv
  • SHA-256: 596f1d3a237321d643a001d20be62a228f9a88578ccbd4a33df5a529065a8562
  • Splits: train=265 · val=57 · test=58
  • Labels: 30; rare/interface-only ids are listed in label_map.json.

Training route

  • Approach: direct_hard_training_no_distillation
  • Base model: alexyalunin/RuBioBERT
  • Direct validation hit@3: 0.9473684210526315
  • No-distillation threshold: 0.9
  • Teacher models (fallback KD only): []
  • Selected KD config (fallback only): temperature=None, hard_loss_weight=None

Metrics (test split)

metric final specialist teacher ensemble / fallback
macro_f1 0.7392
micro_f1 0.7623
weighted_f1 0.8235
subset_accuracy 0.4310
hit@1 0.8793
hit@3 0.9310
recall@3 0.8621
mrr 0.9094

Full per-label breakdown is available in metrics.json.

Inference

from transformers import AutoTokenizer, AutoModelForSequenceClassification
import torch

repo = "Dmitry43243242/icd10-ru-subgroup-b"
tok = AutoTokenizer.from_pretrained(repo)
mdl = AutoModelForSequenceClassification.from_pretrained(repo)
mdl.eval()

text = "жалобы пациента..."
inp = tok(text, return_tensors="pt", truncation=True, max_length=512)
with torch.no_grad():
    probs = torch.sigmoid(mdl(**inp).logits)[0]
preds = [mdl.config.id2label[i] for i, p in enumerate(probs.tolist()) if p >= 0.5]
top5 = sorted(
    [(mdl.config.id2label[i], p) for i, p in enumerate(probs.tolist())],
    key=lambda x: -x[1],
)[:5]
print(preds, top5)
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