1. Single-cell topological RNA-seq analysis reveals insights into cellular differentiation and development.
- Author
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Rizvi AH, Camara PG, Kandror EK, Roberts TJ, Schieren I, Maniatis T, and Rabadan R
- Subjects
- Animals, Cells, Cultured, Embryonic Stem Cells cytology, Gene Expression Regulation genetics, Mice, Motor Neurons cytology, Motor Neurons physiology, Single-Cell Analysis methods, Transcriptional Activation genetics, Algorithms, Cell Differentiation genetics, Embryonic Stem Cells physiology, RNA genetics, Sequence Analysis, RNA methods, Transcription, Genetic genetics
- Abstract
Transcriptional programs control cellular lineage commitment and differentiation during development. Understanding of cell fate has been advanced by studying single-cell RNA-sequencing (RNA-seq) but is limited by the assumptions of current analytic methods regarding the structure of data. We present single-cell topological data analysis (scTDA), an algorithm for topology-based computational analyses to study temporal, unbiased transcriptional regulation. Unlike other methods, scTDA is a nonlinear, model-independent, unsupervised statistical framework that can characterize transient cellular states. We applied scTDA to the analysis of murine embryonic stem cell (mESC) differentiation in vitro in response to inducers of motor neuron differentiation. scTDA resolved asynchrony and continuity in cellular identity over time and identified four transient states (pluripotent, precursor, progenitor, and fully differentiated cells) based on changes in stage-dependent combinations of transcription factors, RNA-binding proteins, and long noncoding RNAs (lncRNAs). scTDA can be applied to study asynchronous cellular responses to either developmental cues or environmental perturbations.
- Published
- 2017
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