A Time Course Inferential Framework for Gene Set Enrichment Analysis Based on Functional Elastic-net

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  Gene set enrichment analyses(GSEA)are powerful inferential methods widely used in genomic research to identify significant gene sets,such as Gene Ontology terms and molecular pathways.
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