Zero-shot learning (ZSL) for cell-type classification in spatially resolved transcriptomics remains underexplored, particularly when integrating spatial context with marker gene semantics. Here, we introduce SPELL (Spatial Prompt-Enhanced Zero-Shot Learning), combining graph autoencoder (GAE)-derived spatial embeddings with chain-of-thought (CoT) prompting for zero-shot classification. SPELL uses a spatial k-nearest neighbor graph to encode local cellular neighborhoods and generates interpretable prompts that integrate marker gene expression and the spatial embedding norms. We evaluated SPELL across five state-of-the-art zero-shot LLM classifiers on MERFISH, MIBI-TOF, and Stereo-seq datasets for cell-type classification. Guided by only expression values and spatial context, the two BART models solved the classification task surprisingly well (distilbart-mnli-12-1i 64% accuracy on the MERFISH, bart-large-mnli achieved 52% accuracy on MIBI-TOF dataset). Interestingly, removing the spatial context from the CoT prompt revealed a significant performance drop (20 – 24 % drop in accuracy), underscoring spatial information's critical role in zero-shot learning. Our work bridges spatial omics with LLM reasoning,enabling flexible adaptation and offering robust cell-type classification across diverse datasets without task-specific fine-tuning while maintaining biological interpretability.
Track: Tiny paper track (up to 4 pages)
Abstract:
Submission Number: 82
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