Researchers have developed a new method for mapping disease classification systems, addressing the challenge of one-to-many relationships between codes. This approach, inspired by entity resolution pipelines, uses a blocking-and-matching strategy with large language models to identify valid mappings. The method aims to balance precision, recall, and coverage, showing improved performance across various ICD version pairs. AI
IMPACT This research could enhance the accuracy and efficiency of integrating health data across different classification systems.
RANK_REASON The cluster contains an academic paper detailing a new methodology for disease classification mapping.
- Hugging Face
- ICD-10 Australian Modification
- ICD-10 Clinical Modification
- ICD-11
- ICD-9-CM
- International Statistical Classification of Diseases and Related Health Problems
- large language model
- Santosh Purja Pun
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