Unified cross-modality integration and analysis of T cell receptors and T cell transcriptomes by low-resource-aware representation learning.

IF 11.1 Q1 CELL BIOLOGY Cell genomics Pub Date : 2024-05-08 Epub Date: 2024-04-29 DOI:10.1016/j.xgen.2024.100553
Yicheng Gao, Kejing Dong, Yuli Gao, Xuan Jin, Jingya Yang, Gang Yan, Qi Liu
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Abstract

Single-cell RNA sequencing (scRNA-seq) and T cell receptor sequencing (TCR-seq) are pivotal for investigating T cell heterogeneity. Integrating these modalities, which is expected to uncover profound insights in immunology that might otherwise go unnoticed with a single modality, faces computational challenges due to the low-resource characteristics of the multimodal data. Herein, we present UniTCR, a novel low-resource-aware multimodal representation learning framework designed for the unified cross-modality integration, enabling comprehensive T cell analysis. By designing a dual-modality contrastive learning module and a single-modality preservation module to effectively embed each modality into a common latent space, UniTCR demonstrates versatility in connecting TCR sequences with T cell transcriptomes across various tasks, including single-modality analysis, modality gap analysis, epitope-TCR binding prediction, and TCR profile cross-modality generation, in a low-resource-aware way. Extensive evaluations conducted on multiple scRNA-seq/TCR-seq paired datasets showed the superior performance of UniTCR, exhibiting the ability of exploring the complexity of immune system.

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通过低资源感知表征学习对 T 细胞受体和 T 细胞转录组进行统一的跨模态整合与分析。
单细胞 RNA 测序(scRNA-seq)和 T 细胞受体测序(TCR-seq)是研究 T 细胞异质性的关键。由于多模态数据的低资源特性,将这些模态整合在一起面临着计算上的挑战。在此,我们提出了 UniTCR,这是一种新型的低资源感知多模态表征学习框架,旨在进行统一的跨模态整合,从而实现全面的 T 细胞分析。UniTCR 设计了双模态对比学习模块和单模态保存模块,将每种模态有效地嵌入到一个共同的潜在空间中,从而以一种低资源感知的方式在各种任务中展示了连接 TCR 序列和 T 细胞转录组的多功能性,包括单模态分析、模态差距分析、表位-TCR 结合预测和 TCR 图谱跨模态生成。在多个scRNA-seq/TCR-seq配对数据集上进行的广泛评估表明,UniTCR性能优越,具有探索免疫系统复杂性的能力。
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