Paper List

期刊: ArXiv Preprint
发布日期: 2026-03-12
BioinformaticsAI/ML

ELISA: An Interpretable Hybrid Generative AI Agent for Expression-Grounded Discovery in Single-Cell Genomics

No Affiliation

Omar Coser
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30秒速读

IN SHORT: This paper addresses the critical bottleneck of translating high-dimensional single-cell transcriptomic data into interpretable biological hypotheses by bridging the gap between opaque expression foundation models and natural language interfaces.

核心创新

  • Methodology Introduces a hybrid retrieval architecture with automatic query classification that dynamically routes inputs to gene marker scoring, semantic matching, or reciprocal rank fusion pipelines based on query type.
  • Methodology Unifies scGPT expression embeddings with BioBERT semantic retrieval and LLM-mediated interpretation in a single interactive framework, enabling direct operation on embedded data without original count matrices.
  • Biology Develops integrated analytical modules for pathway activity scoring (60+ gene sets), ligand-receptor interaction prediction (280+ curated pairs), condition-aware comparative analysis, and cell-type proportion estimation.

主要结论

  • ELISA significantly outperforms CellWhisperer in cell type retrieval (combined permutation test, p<0.001) with particularly large gains on gene-signature queries (Cohen's d=5.98 for MRR).
  • The system replicates published biological findings with high fidelity (mean composite score 0.90) and near-perfect pathway alignment and theme coverage (0.98 each).
  • The hybrid retrieval architecture demonstrates complementary strengths: semantic pipeline excels on ontology queries while gene marker scoring dominates expression queries, with Union mode achieving optimal performance through adaptive routing.
研究空白: Existing AI systems either lack direct access to transcriptomic representations (agentic systems) or remain opaque to natural language interfaces (expression foundation models), creating a fundamental disconnect between data exploration and biological discovery.

摘要: Translating single-cell RNA sequencing (scRNA-seq) data into mechanistic biological hypotheses remains a critical bottleneck, as agentic AI systems lack direct access to transcriptomic representations while expression foundation models remain opaque to natural language. Here we introduce ELISA (Embedding-Linked Interactive Single-cell Agent), an interpretable framework that unifies scGPT expression embeddings with BioBERT-based semantic retrieval and LLM-mediated interpretation for interactive single-cell discovery. An automatic query classifier routes inputs to gene marker scoring, semantic matching, or reciprocal rank fusion pipelines depending on whether the query is a gene signature, natural language concept, or mixture of both. Integrated analytical modules perform pathway activity scoringacross 60+ gene sets, ligand–receptor interaction prediction using 280+ curated pairs, condition-aware comparative analysis, and cell-type proportion estimation all operating directly on embedded data without access to the original count matrix. Benchmarked across six diverse scRNA-seq datasets spanning inflammatory lung disease, pediatric and adult cancers, organoid models, healthy tissue, and neurodevelopment, ELISA significantly outperforms CellWhisperer in cell type retrieval (combined permutation test, p<0.001), with particularly large gains on gene-signature queries (Cohen’s d=5.98 for MRR). ELISA replicates published biological findings (mean composite score 0.90) with near-perfect pathway alignment and theme coverage (0.98 each), and generates candidate hypotheses through grounded LLM reasoning, bridging the gap between transcriptomic data exploration and biological discovery. Code available at: https://github.com/omaruno/ELISA-An-AI-Agent-for-Expression-Grounded-Discovery-in-Single-Cell-Genomics.git (If you use ELISA in your research, please cite this work).


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