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lrec2026-ws-clinicalnlp-18

Night Shift Nerds at MEDIQA-SYNUR 2026: Pushing Small Large Language Model Capability for Clinical Observation Extraction and Normalization from Nurse Dictation using RLVR

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Title

Night Shift Nerds at MEDIQA-SYNUR 2026: Pushing Small Large Language Model Capability for Clinical Observation Extraction and Normalization from Nurse Dictation using RLVR

Abstract

We presented a small decoder-only language model for clinical observation extraction and normalization from nurse dictation developed using Reinforcement Learning with Verifiable Rewards (RLVR). We fine-tune Qwen3-1.7B model using a two-stage pipeline: (1) supervised fine-tuning (SFT) with an augmented chain-of-thought (CoT) dataset generated by a teacher model to mitigate RL cold-start, followed by (2) GRPO-based RLVR with multi-component reward functions that verify output format, concept presence, value type, and value correctness using the shared-task ontology (193 concepts) as a verifier. On the development set, SFT+GRPO substantially outperforms GRPO-only (F1 0.803 vs. 0.620). After the test holdout was released, our final system achieved 0.700 precision, 0.785 recall, and 0.740 F1. Error analysis shows remaining challenges in concept over-detection and missed concepts, as well as boundary errors in categorical and multi-select value type extraction. Our results demonstrates that small language models can enable accurate, cost-effective, and privacy preserving automated clinical documentation for nurse dictation, supporting scalable deployment in low-resource healthcare settings to reduce nurses’ documentation burden.


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