Liu, ZehuaLou, HuazheXie, KaikunWang, HaoChen, NingAparicio, Oscar M.Zhang, Michael Q.Jiang, RuiChen, Ting2018-08-242018-08-242017-06-192018-08-242041-1723http://hdl.handle.net/10735.1/6029Includes supplementary materialSingle-cell mRNA sequencing, which permits whole transcriptional profiling of individual cells, has been widely applied to study growth and development of tissues and tumors. Resolving cell cycle for such groups of cells is significant, but may not be adequately achieved by commonly used approaches. Here we develop a traveling salesman problem and hidden Markov model-based computational method named reCAT, to recover cell cycle along time for unsynchronized single-cell transcriptome data. We independently test reCAT for accuracy and reliability using several data sets. We find that cell cycle genes cluster into two major waves of expression, which correspond to the two well-known checkpoints, G1 and G2. Moreover, we leverage reCAT to exhibit methylation variation along the recovered cell cycle. Thus, reCAT shows the potential to elucidate diverse profiles of cell cycle, as well as other cyclic or circadian processes (e.g., in liver), on single-cell resolution.enCC BY 4.0 (Attribution)©2017 The Authorshttp://creativecommons.org/licenses/by/4.0/Gene ExpressionSequence Analysis, RNADNA MethylationStem CellsGenetic HeterogeneityPluripotent Stem CellsData MiningCell DivisionReconstructing Cell Cycle Pseudo Time-Series Via Single-Cell Transcriptome DataarticleLiu, Zehua, Huazhe Lou, Kaikun Xie, Hao Wang, et al. 2017. "Reconstructing cell cycle pseudo time-series via single-cell transcriptome data." Nature Communications 8, doi:10.1038/s41467-017-00039-z8