MSc Thesis Presentation - Yi Nian (Jeffrey) Niu

Date

Name: Yi Nian (Jeffrey) Niu

Date and Time: July 25th at 1:30pm-3:00pm

Location: X530

Supervisor: Jiarui Ding

Title: Machine learning approaches for single-cell multiomics data integration and generation

Abstract:

Single-cell multiomics technologies generate paired or multiple measurements of different biological modalities, such as gene expression and chromatin accessibility. However, multiomics technologies are more expensive than their single-modality counterparts, resulting in smaller and fewer available multiomics datasets. Here, we present scPairing, a variational autoencoder model inspired by Contrastive Language-Image Pre-Training, which embeds different modalities from the same single cells onto a common embedding space. We leverage the common embedding space to generate novel multiomics data following bridge integration. Through extensive benchmarking, we show that scPairing constructs an embedding space that fully captures both coarse and fine biological structures. Then, we use scPairing to generate new multiomics data from retina and immune cells. Furthermore, we extend to co-embed three modalities and generate a new trimodal dataset of bone marrow immune cells. Researchers can use these generated multiomics datasets to discover new biological relationships across modalities or confirm existing hypotheses without the need for costly multiomics technologies.