{"slug": "primary-icd-category-prediction-using-llm-based-probing", "title": "Primary ICD Category Prediction using LLM-based Probing", "summary": "Researchers used frozen medical large language model (LLM) representations to predict primary ICD categories from both clinical narratives and structured EHR data, achieving 87.69% strict accuracy on MIMIC-IV. The multimodal probe outperformed single-modality models and baselines, and a small adapter enabled cross-dataset transfer to MIMIC-III with only 5% of target labels.", "body_md": "arXiv:2606.28798v1 Announce Type: new\nAbstract: Objective: ICD codes are central to reimbursement, research, and population health surveillance, yet automated coding systems often struggle to integrate diagnostic signals from both clinical narratives and structured electronic health record (EHR) variables. We evaluated whether frozen medical large language model (LLM) representations can serve as a shared embedding space for multimodal primary diagnosis category prediction.\nMaterials and Methods: We constructed a MIMIC-IV cohort of 13,645 admissions from the 10 most frequent primary ICD-10 codes, consolidated into seven categories. Structured variables were serialized into clinical narratives and combined with leakage-pruned discharge notes. Using a frozen MedFound-Llama3-8B-finetuned backbone, we extracted hidden states from five transformer layers and trained linear probes for structured-only, unstructured-only, and combined inputs, comparing against XGBoost and information-matched PLM-ICD baselines and evaluating MIMIC-III adaptation with a compact bottleneck adapter.\nResults: The combined probe performed best on MIMIC-IV (87.69% strict; 91.45% medical accuracy), exceeding both single-modality probes and baselines. The structured-only probe outperformed its standard baseline by 6.19 points in medical accuracy. Diagnostic information became increasingly linearly separable in deeper layers, and a 2M-parameter adapter restored cross-dataset transfer to MIMIC-III using only 5% of target labels.\nDiscussion: LLM embeddings can unify structured and narrative EHR information for multimodal diagnosis prediction, supporting efficient reuse of clinical representations across modalities and datasets through a small representation-level module.\nConclusion: Multimodal probing of frozen medical LLM representations provides a practical approach for studying EHR modalities and adapting clinical representations across datasets.", "url": "https://wpnews.pro/news/primary-icd-category-prediction-using-llm-based-probing", "canonical_source": "https://arxiv.org/abs/2606.28798", "published_at": "2026-06-30 04:00:00+00:00", "updated_at": "2026-06-30 04:32:02.491985+00:00", "lang": "en", "topics": ["large-language-models", "natural-language-processing", "ai-research"], "entities": ["MIMIC-IV", "MIMIC-III", "MedFound-Llama3-8B", "PLM-ICD", "XGBoost"], "alternates": {"html": "https://wpnews.pro/news/primary-icd-category-prediction-using-llm-based-probing", "markdown": "https://wpnews.pro/news/primary-icd-category-prediction-using-llm-based-probing.md", "text": "https://wpnews.pro/news/primary-icd-category-prediction-using-llm-based-probing.txt", "jsonld": "https://wpnews.pro/news/primary-icd-category-prediction-using-llm-based-probing.jsonld"}}