Unlocking cross-modal interplay of single-cell and spatial joint profiling with CellMATE

Yang Jingping, Wang Qi, Zhang Bolei, Gong Luyu, Guo Yue, Li Erguang
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Abstract

A key advantage of single-cell multimodal joint profiling is the modality interplay, which is essential for deciphering the cell fate. However, while current analytical methods can leverage the additive benefits, they fall short to explore the synergistic insights of joint profiling, thereby diminishing the advantage of joint profiling. Here, we introduce CellMATE, a Multi-head Adversarial Training-based Early-integration approach specifically developed for multimodal joint profiling. CellMATE can capture both additive and synergistic benefits inherent in joint profiling through auto-learning of multimodal distributions and simultaneously represents all features into a unified latent space. Through extensive evaluation across diverse joint profiling scenarios, CellMATE demonstrated its superiority in ensuring utility of cross-modal properties, uncovering cellular heterogeneity and plasticity, and delineating differentiation trajectories. CellMATE uniquely unlocks the full potential of joint profiling to elucidate the dynamic nature of cells during critical processes as differentiation, development and diseases.
利用 CellMATE 解锁单细胞和空间联合剖析的跨模式相互作用
单细胞多模态联合图谱分析的一个关键优势是模态间的相互作用,这对破译细胞命运至关重要。然而,虽然目前的分析方法可以利用叠加优势,但却无法探索联合剖析的协同作用,从而削弱了联合剖析的优势。在这里,我们介绍 CellMATE,这是一种基于多头对抗训练的早期整合方法,专门为多模态联合剖析而开发。CellMATE 可通过自动学习多模态分布,同时将所有特征表示到统一的潜在空间中,从而捕捉联合剖析固有的叠加和协同优势。通过对各种联合剖析方案的广泛评估,CellMATE 在确保跨模态属性的实用性、揭示细胞异质性和可塑性以及描绘分化轨迹方面显示出其优越性。CellMATE 独一无二地释放了联合剖析的全部潜力,以阐明细胞在分化、发育和疾病等关键过程中的动态性质。
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