School of Software, Shandong University, 1500 Shunhua, Jinan, 250101, Shandong, China.
Meakins-Christie Laboratories, Department of Medicine, McGill University Health Centre, Montreal, H4A 3J1, QC, Canada.
Genome Biol. 2024 Jul 29;25(1):198. doi: 10.1186/s13059-024-03338-z.
Single-cell multi-omics data reveal complex cellular states, providing significant insights into cellular dynamics and disease. Yet, integration of multi-omics data presents challenges. Some modalities have not reached the robustness or clarity of established transcriptomics. Coupled with data scarcity for less established modalities and integration intricacies, these challenges limit our ability to maximize single-cell omics benefits. We introduce scCross, a tool leveraging variational autoencoders, generative adversarial networks, and the mutual nearest neighbors (MNN) technique for modality alignment. By enabling single-cell cross-modal data generation, multi-omics data simulation, and in silico cellular perturbations, scCross enhances the utility of single-cell multi-omics studies.
单细胞多组学数据揭示了复杂的细胞状态,为细胞动力学和疾病提供了重要的见解。然而,多组学数据的整合仍然存在挑战。一些模态尚未达到成熟的转录组学的稳健性或清晰度。再加上较不成熟模态的数据稀缺性和整合的复杂性,这些挑战限制了我们充分利用单细胞组学的能力。我们引入了 scCross,这是一种利用变分自动编码器、生成对抗网络和互最近邻(MNN)技术进行模态对齐的工具。通过实现单细胞跨模态数据生成、多组学数据模拟和计算机细胞扰动,scCross 增强了单细胞多组学研究的实用性。