CMOT: Cross-Modality Optimal Transport for multimodal inference.
Sayali Anil AlatkarDaifeng WangPublished in: Genome biology (2023)
Multimodal measurements of single-cell sequencing technologies facilitate a comprehensive understanding of specific cellular and molecular mechanisms. However, simultaneous profiling of multiple modalities of single cells is challenging, and data integration remains elusive due to missing modalities and cell-cell correspondences. To address this, we developed a computational approach, Cross-Modality Optimal Transport (CMOT), which aligns cells within available multi-modal data (source) onto a common latent space and infers missing modalities for cells from another modality (target) of mapped source cells. CMOT outperforms existing methods in various applications from developing brain, cancers to immunology, and provides biological interpretations improving cell-type or cancer classifications.
Keyphrases
- single cell
- induced apoptosis
- rna seq
- cell cycle arrest
- high throughput
- cell therapy
- electronic health record
- endoplasmic reticulum stress
- big data
- squamous cell carcinoma
- signaling pathway
- oxidative stress
- machine learning
- cell proliferation
- multiple sclerosis
- chronic pain
- white matter
- functional connectivity
- pi k akt
- blood brain barrier
- subarachnoid hemorrhage