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Cell-ontology guided transcriptome foundation model

About

Transcriptome foundation models TFMs hold great promises of deciphering the transcriptomic language that dictate diverse cell functions by self-supervised learning on large-scale single-cell gene expression data, and ultimately unraveling the complex mechanisms of human diseases. However, current TFMs treat cells as independent samples and ignore the taxonomic relationships between cell types, which are available in cell ontology graphs. We argue that effectively leveraging this ontology information during the TFM pre-training can improve learning biologically meaningful gene co-expression patterns while preserving TFM as a general purpose foundation model for downstream zero-shot and fine-tuning tasks. To this end, we present single cell, Cell-ontology guided TFM scCello. We introduce cell-type coherence loss and ontology alignment loss, which are minimized along with the masked gene expression prediction loss during the pre-training. The novel loss component guide scCello to learn the cell-type-specific representation and the structural relation between cell types from the cell ontology graph, respectively. We pre-trained scCello on 22 million cells from CellxGene database leveraging their cell-type labels mapped to the cell ontology graph from Open Biological and Biomedical Ontology Foundry. Our TFM demonstrates competitive generalization and transferability performance over the existing TFMs on biologically important tasks including identifying novel cell types of unseen cells, prediction of cell-type-specific marker genes, and cancer drug responses.

Xinyu Yuan, Zhihao Zhan, Zuobai Zhang, Manqi Zhou, Jianan Zhao, Boyu Han, Yue Li, Jian Tang• 2024

Related benchmarks

TaskDatasetResultRank
Cell type clusteringCurated In-Distribution (ID) (test)
NMI0.785
12
Cell type clusteringOOD Tissue Data D_s^{u2} (unseen split 2)
NMI0.839
12
Cell type clusteringCurated Out-of-Distribution (OOD) (test)
AvgBio (D^ct_1)0.769
12
Cell type clusteringCellType Data OOD D2^ct (test)
NMI0.909
12
Cell type clusteringOOD Tissue Data D_s^{u1} (unseen split 1)
NMI0.784
12
Cell type clusteringOOD CellType Data (D1^ct) (test)
NMI0.887
12
Batch integrationCellType Data OOD v1
ASW0.877
12
Batch integrationID dataset (Did) (Din) (Unseen Data)
ASWb83.4
12
Batch integrationCellType Data OOD v2
ASW0.858
12
Batch integrationTissue Data OOD tr1
ASW_s86.8
12
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