Massively parallel and time-resolved RNA sequencing in single cells with scNT-seq.
Qi QiuPeng HuXiaojie QiuKiya W GovekPablo G CámaraHao WuPublished in: Nature methods (2020)
Single-cell RNA sequencing offers snapshots of whole transcriptomes but obscures the temporal RNA dynamics. Here we present single-cell metabolically labeled new RNA tagging sequencing (scNT-seq), a method for massively parallel analysis of newly transcribed and pre-existing mRNAs from the same cell. This droplet microfluidics-based method enables high-throughput chemical conversion on barcoded beads, efficiently marking newly transcribed mRNAs with T-to-C substitutions. Using scNT-seq, we jointly profiled new and old transcriptomes in ~55,000 single cells. These data revealed time-resolved transcription factor activities and cell-state trajectories at the single-cell level in response to neuronal activation. We further determined rates of RNA biogenesis and decay to uncover RNA regulatory strategies during stepwise conversion between pluripotent and rare totipotent two-cell embryo (2C)-like stem cell states. Finally, integrating scNT-seq with genetic perturbation identifies DNA methylcytosine dioxygenase as an epigenetic barrier into the 2C-like cell state. Time-resolved single-cell transcriptomic analysis thus opens new lines of inquiry regarding cell-type-specific RNA regulatory mechanisms.
Keyphrases
- single cell
- rna seq
- high throughput
- transcription factor
- stem cells
- induced apoptosis
- genome wide
- dna methylation
- nucleic acid
- machine learning
- oxidative stress
- single molecule
- cell cycle arrest
- computed tomography
- signaling pathway
- cell proliferation
- dna binding
- cell death
- mesenchymal stem cells
- brain injury
- big data
- cell free
- positron emission tomography
- blood brain barrier