Assessing GPT-4 for cell type annotation in single-cell RNA-seq analysis
City University of New York · Columbia University Irving Medical Center · +2 more institutions
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Abstract
Here we demonstrate that the large language model GPT-4 can accurately annotate cell types using marker gene information in single-cell RNA sequencing analysis. When evaluated across hundreds of tissue and cell types, GPT-4 generates cell type annotations exhibiting strong concordance with manual annotations. This capability can considerably reduce the effort and expertise required for cell type annotation. Additionally, we have developed an R software package GPTCelltype for GPT-4's automated cell type annotation.
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220
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Authors
2Topics & keywords
Topics
Keywords
- Annotation
- Cell type
- Cell
- RNA-Seq
- Computational biology
- RNA
- Computer science
- Software
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