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      Single-cell transcriptome analysis of endometrial tissue

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          Abstract

          STUDY QUESTION

          How can we study the full transcriptome of endometrial stromal and epithelial cells at the single-cell level?

          SUMMARY ANSWER

          By compiling and developing novel analytical tools for biopsy, tissue cryopreservation and disaggregation, single-cell sorting, library preparation, RNA sequencing (RNA-seq) and statistical data analysis.

          WHAT IS KNOWN ALREADY

          Although single-cell transcriptome analyses from various biopsied tissues have been published recently, corresponding protocols for human endometrium have not been described.

          STUDY DESIGN, SIZE, DURATION

          The frozen-thawed endometrial biopsies were fluorescence-activated cell sorted (FACS) to distinguish CD13-positive stromal and CD9-positive epithelial cells and single-cell transcriptome analysis performed from biopsied tissues without culturing the cells. We studied gene transcription, applying a modern and efficient RNA-seq protocol. In parallel, endometrial stromal cells were cultured and global expression profiles were compared with uncultured cells.

          PARTICIPANTS/MATERIALS, SETTING, METHODS

          For method validation, we used two endometrial biopsies, one from mid-secretory phase (Day 21, LH+8) and another from late-secretory phase (Day 25). The samples underwent single-cell FACS sorting, single-cell RNA-seq library preparation and Illumina sequencing.

          MAIN RESULTS AND THE ROLE OF CHANCE

          Here we present a complete pipeline for single-cell gene-expression studies, from clinical sampling to statistical data analysis. Tissue manipulation, starting from disaggregation and cell-type-specific labelling and ending with single-cell automated sorting, is managed within 90 min at low temperature to minimize changes in the gene expression profile. The single living stromal and epithelial cells were sorted using CD13- and CD9-specific antibodies, respectively. Of the 8622 detected genes, 2661 were more active in cultured stromal cells than in biopsy cells. In the comparison of biopsy versus cultured cells, 5603 commonly expressed genes were detected, with 241 significantly differentially expressed genes. Of these, 231 genes were up- and 10 down-regulated in cultured cells, respectively. In addition, we performed a gene ontology analysis of the differentially expressed genes and found that these genes are mainly related to cell cycle, translational processes and metabolism.

          LIMITATIONS, REASONS FOR CAUTION

          Although CD9-positive single epithelial cells sorting was successfully established in our laboratory, the amount of transcriptome data per individual epithelial cell was low, complicating further analysis. This step most likely failed due to the high dose of RNases that are released by the cells' natural processes, or due to rapid turnaround time or the apoptotic conditions in freezing- or single-cell solutions. Since only the cells from the late-secretory phase were subject to more focused analysis, further studies including larger sample size from the different time-points of the natural menstrual cycle are needed. The methodology also needs further optimization to examine different cell types at high quality.

          WIDER IMPLICATIONS OF THE FINDINGS

          The symbiosis between clinical biopsy and the sophisticated laboratory and bioinformatic protocols described here brings together clinical diagnostic needs and modern laboratory and bioinformatic solutions, enabling us to implement a precise analytical toolbox for studying the endometrial tissue even at the single-cell level.

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          Most cited references18

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          • Abstract: found
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          Characterization of the single-cell transcriptional landscape by highly multiplex RNA-seq.

          Our understanding of the development and maintenance of tissues has been greatly aided by large-scale gene expression analysis. However, tissues are invariably complex, and expression analysis of a tissue confounds the true expression patterns of its constituent cell types. Here we describe a novel strategy to access such complex samples. Single-cell RNA-seq expression profiles were generated, and clustered to form a two-dimensional cell map onto which expression data were projected. The resulting cell map integrates three levels of organization: the whole population of cells, the functionally distinct subpopulations it contains, and the single cells themselves-all without need for known markers to classify cell types. The feasibility of the strategy was demonstrated by analyzing the transcriptomes of 85 single cells of two distinct types. We believe this strategy will enable the unbiased discovery and analysis of naturally occurring cell types during development, adult physiology, and disease.
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            Highly multiplexed and strand-specific single-cell RNA 5' end sequencing.

            Single-cell analysis of gene expression is increasingly important for the analysis of complex tissues, including cancer, developing organs and adult stem cell niches. Here we present a detailed protocol for quantitative gene expression analysis in single cells, by the sequencing of mRNA 5' ends. In all, 96 cells are lysed, and their mRNA is converted to cDNA. By using a template-switching mechanism, a bar code and an upstream primer-binding sequence are introduced simultaneously with reverse transcription. All cDNA is pooled and then prepared for 5' end sequencing, including fragmentation, adapter ligation and PCR amplification. The chief advantage of this approach is the great reduction in cost and time, afforded by the early bar-coding strategy. Compared with previous methods, it is more suitable for large-scale quantitative analysis, as well as for the characterization of transcription start sites, but it is unsuitable for the detection of alternatively spliced transcripts. Sample preparation takes 3 d, and two sets of 96 cells can be prepared in parallel. Finally, the sequencing and data analysis can take an additional 4 d altogether.
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              SSEA-1 isolates human endometrial basal glandular epithelial cells: phenotypic and functional characterization and implications in the pathogenesis of endometriosis.

              Can the basal epithelial compartment of the human endometrium be defined by specific markers?
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                Author and article information

                Journal
                Hum Reprod
                Hum. Reprod
                humrep
                humrep
                Human Reproduction (Oxford, England)
                Oxford University Press
                0268-1161
                1460-2350
                April 2016
                13 February 2016
                13 February 2016
                : 31
                : 4
                : 844-853
                Affiliations
                [1 ]Competence Centre on Health Technologies , Tartu 50410, Estonia
                [2 ]Department of Biosciences and Nutrition, and Center for Innovative Medicine, Karolinska Institutet , Huddinge 141 83, Sweden
                [3 ]Department of Obstetrics and Gynaecology, University of Tartu , Tartu 51014, Estonia
                [4 ]Igenomix , Valencia 46980, Spain
                [5 ]Institute of Molecular and Cell Biology, University of Tartu , Tartu 51010, Estonia
                [6 ]Molecular Neurology Research Program, University of Helsinki and Folkhälsan Institute of Genetics , Helsinki 00014, Finland
                [7 ]Institute of Biomedicine and Translational Medicine, University of Tartu , Tartu 50411, Estonia
                Author notes
                [* ]Correspondence address. Tel: +372-7330401 (K.K.)/+46-852481057 (S.K.); Fax: +46-8311101 (K.K.)/+46-8311101 (S.K.); E-mail: kaarel.krjutshkov@ 123456ki.se (K.K.)/ shintaro.katayama@ 123456ki.se (S.K.)
                [†]

                The first two authors should be regarded as joint first authors

                Article
                dew008
                10.1093/humrep/dew008
                4791917
                26874359
                a9f92546-44a9-4c23-a004-96f93c69929c
                © The Author 2016. Published by Oxford University Press on behalf of the European Society of Human Reproduction and Embryology

                This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License ( http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com

                History
                : 8 July 2015
                : 19 December 2015
                : 11 January 2016
                Funding
                Funded by: EU
                Award ID: FP7-PEOPLE-2012-IAPP
                Award ID: 324509
                Funded by: Karolinska Institutet http://dx.doi.org/10.13039/501100004047
                Funded by: Swedish Research Council
                Funded by: Uppsala Multidisciplinary Center for Advanced Computational Science (UPPMAX)
                Award ID: b2014069
                Funded by: Karolinska Institutet http://dx.doi.org/10.13039/501100004047
                Funded by: Estonian Ministry of Education and Research
                Award ID: IUT34-16
                Funded by: Enterprise Estonia
                Award ID: EU30020
                Award ID: EU48695
                Funded by: EU-FP7 Eurostars
                Award ID: EU41564
                Funded by: Swedish Institute Visby Program
                Categories
                Original Articles
                Reproductive Biology

                Human biology
                clinical sampling,single-cell facs,endometrial biopsy,endometrial receptivity,biopsy cryopreservation

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