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      Cell Cycle and Cell Size Dependent Gene Expression Reveals Distinct Subpopulations at Single-Cell Level

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          Abstract

          Cell proliferation includes a series of events that is tightly regulated by several checkpoints and layers of control mechanisms. Most studies have been performed on large cell populations, but detailed understanding of cell dynamics and heterogeneity requires single-cell analysis. Here, we used quantitative real-time PCR, profiling the expression of 93 genes in single-cells from three different cell lines. Individual unsynchronized cells from three different cell lines were collected in different cell cycle phases (G0/G1 – S – G2/M) with variable cell sizes. We found that the total transcript level per cell and the expression of most individual genes correlated with progression through the cell cycle, but not with cell size. By applying the random forests algorithm, a supervised machine learning approach, we show how a multi-gene signature that classifies individual cells into their correct cell cycle phase and cell size can be generated. To identify the most predictive genes we used a variable selection strategy. Detailed analysis of cell cycle predictive genes allowed us to define subpopulations with distinct gene expression profiles and to calculate a cell cycle index that illustrates the transition of cells between cell cycle phases. In conclusion, we provide useful experimental approaches and bioinformatics to identify informative and predictive genes at the single-cell level, which opens up new means to describe and understand cell proliferation and subpopulation dynamics.

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          Most cited references26

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          A human cell line from a pleural effusion derived from a breast carcinoma.

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            Functional roles of pulsing in genetic circuits.

            A fundamental problem in biology is to understand how genetic circuits implement core cellular functions. Time-lapse microscopy techniques are beginning to provide a direct view of circuit dynamics in individual living cells. Unexpectedly, we are discovering that key transcription and regulatory factors pulse on and off repeatedly, and often stochastically, even when cells are maintained in constant conditions. This type of spontaneous dynamic behavior is pervasive, appearing in diverse cell types from microbes to mammalian cells. Here, we review recent work showing how pulsing is generated and controlled by underlying regulatory circuits and how it provides critical capabilities to cells in stress response, signaling, and development. A major theme is the ability of pulsing to enable time-based regulation analogous to strategies used in engineered systems. Thus, pulsatile dynamics is emerging as a central, and still largely unexplored, layer of temporal organization in the cell.
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              Gene expression profiling in single cells from the pancreatic islets of Langerhans reveals lognormal distribution of mRNA levels.

              The transcriptional machinery in individual cells is controlled by a relatively small number of molecules, which may result in stochastic behavior in gene activity. Because of technical limitations in current collection and recording methods, most gene expression measurements are carried out on populations of cells and therefore reflect average mRNA levels. The variability of the transcript levels between different cells remains undefined, although it may have profound effects on cellular activities. Here we have measured gene expression levels of the five genes ActB, Ins1, Ins2, Abcc8, and Kcnj11 in individual cells from mouse pancreatic islets. Whereas Ins1 and Ins2 expression show a strong cell-cell correlation, this is not the case for the other genes. We further found that the transcript levels of the different genes are lognormally distributed. Hence, the geometric mean of expression levels provides a better estimate of gene activity of the typical cell than does the arithmetic mean measured on a cell population.

                Author and article information

                Contributors
                Journal
                Front Genet
                Front Genet
                Front. Genet.
                Frontiers in Genetics
                Frontiers Media S.A.
                1664-8021
                25 January 2017
                2017
                : 8
                : 1
                Affiliations
                [1] 1Department of Pathology and Genetics, Sahlgrenska Cancer Center, Institute of Biomedicine, University of Gothenburg Gothenburg, Sweden
                [2] 2Center for Human Immunology, Autoimmunity and Inflammation, National Institutes of Health Bethesda, MD, USA
                [3] 3Department of Physics, University of Maryland College Park, MD, USA
                Author notes

                Edited by: Xinghua Pan, Yale University, USA

                Reviewed by: David Loose, University of Texas Medical School, USA; Haiying Zhu, Second Military Medical University, China

                *Correspondence: Julián Candia julian.candia@ 123456nih.gov

                This article was submitted to Genomic Assay Technology, a section of the journal Frontiers in Genetics

                Article
                10.3389/fgene.2017.00001
                5263129
                28179914
                5529c7b4-47b5-44ac-ba93-b7a656d44a6f
                Copyright © 2017 Dolatabadi, Candia, Akrap, Vannas, Tesan Tomic, Losert, Landberg, Åman and Ståhlberg.

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 07 June 2016
                : 06 January 2017
                Page count
                Figures: 6, Tables: 1, Equations: 0, References: 39, Pages: 11, Words: 8108
                Funding
                Funded by: Cancerfonden 10.13039/501100002794
                Funded by: Barncancerfonden 10.13039/501100006313
                Funded by: VINNOVA 10.13039/501100001858
                Funded by: Sahlgrenska Akademin 10.13039/501100005761
                Funded by: Stiftelsen Assar Gabrielssons Fond 10.13039/501100005009
                Funded by: Stiftelserna Wilhelm och Martina Lundgrens 10.13039/501100003745
                Funded by: Vetenskapsrådet 10.13039/501100004359
                Funded by: Svenska Sällskapet för Medicinsk Forskning 10.13039/501100003748
                Funded by: Svenska Läkaresällskapet 10.13039/501100007687
                Categories
                Genetics
                Original Research

                Genetics
                cell cycle,cell size,single-cell gene expression,machine learning,variable selection,random forests,cell subpopulations,cell transitions

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