+In this work we demonstrate how integration of Large Language Model (LLM)-derived clinical text embeddings from the MDS-UPDRS questionnaire with molecular genomics data can enhance patient classification and interpretability in Parkinsons Disease. By combining genomic modalities encoded using an interpretable biological architecture with a patient similarity network constructed from clinical text embeddings, we leverage clinical and genomic information to provide a robust, interpretable model for disease classification and molecular insights. This work demonstrates that the combination of clinical text embeddings with genomic features is critical for classification and interpretation.
0 commit comments