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arxiv:2602.13346

CellMaster: Collaborative Cell Type Annotation in Single-Cell Analysis

Published on Feb 12
· Submitted by
Zhen Wang
on Feb 17
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Abstract

CellMaster uses LLM-encoded knowledge for zero-shot cell-type annotation in single-cell RNA sequencing, improving accuracy over existing tools through interpretable rationales without pre-training.

AI-generated summary

Single-cell RNA-seq (scRNA-seq) enables atlas-scale profiling of complex tissues, revealing rare lineages and transient states. Yet, assigning biologically valid cell identities remains a bottleneck because markers are tissue- and state-dependent, and novel states lack references. We present CellMaster, an AI agent that mimics expert practice for zero-shot cell-type annotation. Unlike existing automated tools, CellMaster leverages LLM-encoded knowledge (e.g., GPT-4o) to perform on-the-fly annotation with interpretable rationales, without pre-training or fixed marker databases. Across 9 datasets spanning 8 tissues, CellMaster improved accuracy by 7.1% over best-performing baselines (including CellTypist and scTab) in automatic mode. With human-in-the-loop refinement, this advantage increased to 18.6%, with a 22.1% gain on subtype populations. The system demonstrates particular strength in rare and novel cell states where baselines often fail. Source code and the web application are available at https://github.com/AnonymousGym/CellMaster{https://github.com/AnonymousGym/CellMaster}.

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CellMaster: Collaborative Cell Type Annotation in Single-Cell Analysis

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