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arXiv 提交日期: 2026-04-07
📄 Abstract - MAT-Cell: A Multi-Agent Tree-Structured Reasoning Framework for Batch-Level Single-Cell Annotation

Automated cellular reasoning faces a core dichotomy: supervised methods fall into the Reference Trap and fail to generalize to out-of-distribution cell states, while large language models (LLMs), without grounded biological priors, suffer from a Signal-to-Noise Paradox that produces spurious associations. We propose MAT-Cell, a neuro-symbolic reasoning framework that reframes single-cell analysis from black-box classification into constructive, verifiable proof generation. MAT-Cell injects symbolic constraints through adaptive Retrieval-Augmented Generation (RAG) to ground neural reasoning in biological axioms and reduce transcriptomic noise. It further employs a dialectic verification process with homogeneous rebuttal agents to audit and prune reasoning paths, forming syllogistic derivation trees that enforce logical this http URL large-scale and cross-species benchmarks, MAT-Cell significantly outperforms state-of-the-art (SOTA) models and maintains robust per-formance in challenging scenarios where baselinemethods severely degrade. Code is available at https://gith this http URL ti-Agent-Tree-Structured-Reasoni ng-Framework-for-Batch-Level-Sin gle-Cell-Annotation.

顶级标签: medical multi-modal agents
详细标签: single-cell annotation neuro-symbolic reasoning retrieval-augmented generation multi-agent systems biological reasoning 或 搜索:

MAT-Cell:一种用于批量级单细胞注释的多智能体树状结构推理框架 / MAT-Cell: A Multi-Agent Tree-Structured Reasoning Framework for Batch-Level Single-Cell Annotation


1️⃣ 一句话总结

这篇论文提出了一个名为MAT-Cell的新框架,它通过结合神经网络与符号逻辑规则,并引入多智能体辩论验证机制,显著提升了单细胞注释的准确性、可解释性和对新数据场景的适应能力,解决了现有方法容易出错或难以泛化的难题。

源自 arXiv: 2604.06269