DOLPHIN advances single-cell transcriptomics beyond gene level by leveraging exon and junction reads.
Abstract
The advent of single-cell sequencing has revolutionized the study of cellular dynamics, providing unprecedented resolution into the molecular states and heterogeneity of individual cells. However, the rich potential of exon-level information and junction reads within single cells remains underutilized. Conventional gene-count methods overlook critical exon and junction data, limiting the quality of cell representation and downstream analyses such as subpopulation identification and alternative splicing detection. We introduce DOLPHIN, a deep learning method that integrates exon-level and junction read data, representing genes as graph structures. These graphs are processed by a variational graph autoencoder to improve cell embeddings. DOLPHIN not only demonstrates superior performance in cell clustering, biomarker discovery, and alternative splicing detection but also provides a distinct capability to detect subtle transcriptomic differences at the exon level that are often masked in gene-level analyses. By examining cellular dynamics with enhanced resolution, DOLPHIN provides new insights into disease mechanisms and potential therapeutic targets.
Authors: | Song K, Zheng Y, Zhao B, Eidelman DH, Tang J, Ding J, |
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Journal: | Nat Commun;2025Jul04; 16 (1) 6202. doi:10.1038/s41467-025-61580-w |
Year: | 2025 |
PubMed: | PMID: 40615408 (Go to PubMed) |