Single-cell multi-omics integration for unpaired data by a siamese network with graph-based contrastive loss.
Chaozhong LiuLinhua WangZhandong LiuPublished in: BMC bioinformatics (2023)
MinNet is a novel deep-learning framework for single-cell multi-omics sequencing data integration. It ranked top among other methods in benchmarking and is especially suitable for integrating datasets with batch and biological variances. With the single-cell resolution integration results, analysis of the interplay between genome and transcriptome can be done to help researchers understand their data and question.