An artificial intelligence framework for end-to-end rare disease phenotyping from clinical notes using large language models
Cathy Shyr, Yan Hu, Rory J. Tinker, Thomas A. Cassini, Kevin W. Byram, Rizwan Hamid, Daniel V. Fabbri, Adam Wright, Josh F. Peterson, Lisa Bastarache, Hua Xu

TL;DR
This paper introduces RARE-PHENIX, an end-to-end AI framework utilizing large language models for efficient, standardized, and prioritized rare disease phenotyping from clinical notes, improving diagnostic workflows.
Contribution
The paper presents a novel integrated AI system that automates the full phenotyping process, including extraction, standardization, and prioritization, outperforming existing methods.
Findings
RARE-PHENIX outperforms PhenoBERT in similarity and precision-recall metrics.
Adding each module improves overall performance.
The framework aligns well with clinician curation and supports real-world diagnosis.
Abstract
Phenotyping is fundamental to rare disease diagnosis, but manual curation of structured phenotypes from clinical notes is labor-intensive and difficult to scale. Existing artificial intelligence approaches typically optimize individual components of phenotyping but do not operationalize the full clinical workflow of extracting features from clinical text, standardizing them to Human Phenotype Ontology (HPO) terms, and prioritizing diagnostically informative HPO terms. We developed RARE-PHENIX, an end-to-end AI framework for rare disease phenotyping that integrates large language model-based phenotype extraction, ontology-grounded standardization to HPO terms, and supervised ranking of diagnostically informative phenotypes. We trained RARE-PHENIX using data from 2,671 patients across 11 Undiagnosed Diseases Network clinical sites, and externally validated it on 16,357 real-world clinical…
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Taxonomy
TopicsGenomics and Rare Diseases · Biomedical Text Mining and Ontologies · Topic Modeling
