scELMo: Embeddings from Language Models are Good Learners for Single-cell Data Analysis
Hongyu Zhao,
Tianyu Liu,
Tianqi Chen
et al.
Abstract:Various Foundation Models (FMs) have been built based on the pre-training and fine-tuning framework to analyze single-cell data with different degrees of success. In this manuscript, we propose a method named scELMo (Single-cell Embedding from Language Models), to analyze single cell data that utilizes Large Language Models (LLMs) as a generator for both the description of metadata information and the embeddings for such descriptions. We combine the embeddings from LLMs with the raw data under the zero-shot le… Show more
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