Health System Scale Semantic Search Across Unstructured Clinical Notes
Faith Wavinya Mutinda, Spandana Makeneni, Anna Lin, Shivaji Dutta, Irit R. Rasooly + 12 more
TLDR
A new semantic search system deployed at a large children's hospital efficiently indexes 166M clinical notes, achieving high accuracy and reducing abstraction time.
Key contributions
- Deployed a semantic search system indexing 166 million clinical notes from 1.68 million patients.
- Achieved sub-second query latency (237ms single-user) with a low monthly cost of approximately $4,000.
- Qwen3 embeddings with 300-token chunks yielded 94.6% accuracy on a clinical question-answering benchmark.
- Reduced clinical chart abstraction time by 24-89% while maintaining comparable inter-rater agreement.
Why it matters
This paper demonstrates the technical and operational feasibility of deploying semantic search across an entire health system. It significantly improves clinical information retrieval efficiency and accuracy, paving the way for advanced LLM-powered applications and better patient care.
Original Abstract
Introduction: Semantic search, which retrieves documents based on conceptual similarity rather than keyword matching, offers substantial advantages for retrieval of clinical information. However, deploying semantic search across entire health systems, comprising hundreds of millions of clinical notes, presents formidable engineering, cost, and governance challenges that have prevented adoption. Methods: We deployed a semantic search system at a large children's hospital indexing 166 million clinical notes (484 million vectors) from 1.68 million patients. The system uses instruction-tuned qwen3-embedding-0.6B embeddings, stores vectors in a managed database with storage-optimized indexing, maintains full-text metadata in a low-latency key-value store, and operates within a HIPAA-compliant governance framework. We evaluated the system through three experiments: optimization of embedding model and chunking strategy using a physician-authored benchmark dataset, characterization of full-scale performance (cost, latency, retrieval quality), and clinical utility assessment via comparison of chart abstraction efficiency across three tasks. Results: The system delivers sub-second query latency (median 237 ms single-user, 451 ms 20-user concurrency) with monthly costs of approximately USD 4,000. Qwen3 embeddings with 300-token chunk size achieved 94.6% accuracy on a clinical question-answering benchmark. In clinical utility evaluation across three abstraction tasks, semantic search reduced time-to-completion by 24 to 89% compared to clinician-performed chart review while maintaining comparable inter-rater agreement. Conclusion: Health-system-scale semantic search is both technically and operationally feasible. The system provides infrastructure supporting interactive search, cohort generation, and downstream LLM-powered clinical applications without requiring specialized informatics expertise.
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