Literature DB >> 27160975

Single-cell genomics: coming of age.

Sten Linnarsson1, Sarah A Teichmann2.   

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Year:  2016        PMID: 27160975      PMCID: PMC4862185          DOI: 10.1186/s13059-016-0960-x

Source DB:  PubMed          Journal:  Genome Biol        ISSN: 1474-7596            Impact factor:   13.583


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Single-cell genomics is the study of the individuality of cells using omics approaches. Although young, the field has now entered its teenage years and is beginning to show clear signs of maturity. Its origins can be traced back to pioneering experiments that allowed the detection of gene expression in single cells by microarrays (reviewed in [1]). However, it was with the emergence of “next-generation” DNA sequencing that single-cell genomics really took off [2-4]. Although initial experiments were modest in size and resulted in noisy and incomplete data, they immediately revealed the great potential for biological discoveries. It soon became clear that the substantial technical and biological variability required data from many single cells in order to allow meaningful data mining and interpretation of the data [5]. Thus, the following years were spent pursuing a few lines of development: improvements in the accuracy and scope of single-cell methods and increasing throughput and reducing cost. Today, we are in a position to routinely measure gene expression in tens of thousands of single cells with high accuracy in terms of quantification of gene expression (albeit sensitivity in terms of detection of mRNAs varies significantly depending on protocol and sequencing depth). The costs are at least manageable and continue to decrease. While single-cell RNA-seq is now mature and almost routine, technological development has shifted to other modalities: DNA, protein, chromatin modifications, and more. Single-cell whole-genome DNA sequencing is challenging because loss of material causes dropouts in the sequence and because sequencing errors are difficult to distinguish from real mutations. Despite these challenges, single human cortical neurons have been used to reconstruct lineages based on somatic mutations that had accumulated during development [6]. Similarly, clonal evolution within solid tumors can be revealed by detecting somatic copy number variations in single cells (reviewed in [7]). Another trend is the extension of single-cell analysis to measure epigenetic states such as DNA accessibility [8-10], methylation [11], and chromosome conformation [12]. Generally these methods pose similar challenges to DNA sequencing but offer access to pure cellular epigenetic states that are simply inaccessible by bulk methods. Single-cell protein analysis occupies a different niche, where smaller numbers of proteins can be analyzed but in very large numbers of cells, classically using fluorescence-activated cell sorting (FACS) for up to eight targets but more recently with mass cytometry targeting up to hundreds of proteins [13]. A limiting factor for protein analysis remains the requirement for high-quality affinity reagents such as antibodies. Finally, a recent development (but see [14]) is the combination of methods to simultaneously measure two or more modalities in single cells. For example, genome and transcriptome [15, 16], transcriptome and methylome [17, 18], and RNA and protein [19]. In the near future, such experiments will be able to link the phenotypes of single cells evolving in tumors to their genotypes. Due to the speed with which single-cell genomics technologies are evolving, computational analysis methods are racing to keep up. Statistical and computational methods are at the heart of single-cell genomics and are critical to extracting meaningful information and biology from the data. Much work has focused on transcriptomic data analysis (e.g., reviewed in [20]) and in this special issue of Genome Biology there are examples of areas that benefit from bespoke computational approaches at the levels of both cells and genes. In terms of individual genes, a method to define significant differences in the cell-to-cell variation in gene expression (as opposed to mean expression levels) is reported [21] and one paper addresses expression states of long noncoding RNAs [22]. In terms of cell-to-cell variation at the DNA level, there is clearly tremendous scope for computational method innovation in the area of tumor heterogeneity, addressed by Beerenwinkel and colleagues [23], and Markowetz and Ross [24] in this issue.

Recent applications

Single-cell RNA sequencing has had a profound impact on our understanding of neuronal and hematopoietic cell types, as well as the immune system. Examples of novel insights in immunity include a window on to an unexpected plethora of dendritic cells in mouse immunity [25] and new regulators and subpopulations of CD4+ T cells [26-28]. In hematopoiesis, much single-cell transcriptomics work has focused on hematopoetic stem cells and the single-cell perspective has provided resolution of proliferation phenotypes [29-31]. A broader view of early specification of hematopoietic cell types was recently provided by Paul et al. [32]. Mead and colleagues [33] provide new insights into the erythroid–myeloid decision in this special issue. While these publications all focus on mouse as a model, the unbiased nature of single-cell RNA sequencing provides great discovery potential in less-well-studied animals. An example of this is the profiling of platelets (thrombocytes) from hematopoietic stem cells in zebrafish by Macaulay et al. [34]. In this issue, Pearson and Molinaro profile single cells in planarian regeneration [35]. Looking to the future, this type of approach can be expanded to comparative studies of many organisms across the animal kingdom in order to gain insight into the evolution of cell types. The applicability of single-cell transcriptomics to nonadherent cells, such as those of hematopoiesis and immunity, is perhaps not surprising: these cells naturally exist as individual cells and remain stable after single-cell capture by FACS or in microfluidic devices. In the area of neurobiology and neuronal cell populations, the success of single-cell RNA sequencing is more surprising as these cells are bound up within networks of adherent junctions. Recently, comprehensive maps of cell types and subtypes have been produced for a number of key brain regions, including developing and adult cerebral cortex, and the day will come when we will have a full catalog of molecularly defined cell types in the whole nervous system. A particularly appealing application of such a reference atlas is in the use of human cerebral organoids to model human brain (which is otherwise inaccessible) in development and disease [36]. The fact that novel cell states, cell populations, and factors have been validated in this domain bodes well for a broader remit of single-cell transcriptomics to solid organs and tissues. The DNA dimension, i.e., tracking mutations, copy number variations, and chromosomal aberrations at the single-cell level, has been important in both somatic cell populations such as neurons, as well as in cancer. In this issue, Park and colleagues show how single-cell dissection of tumor heterogeneity can translate directly into new combinatorial therapies in a xenograft model [37].

Future prospects

Gazing into our crystal ball, it is easy to predict an ever-increasing role for single-cell genomics in discovery science, translational applications, and even ecology. The major driver of the single-cell genomics revolution is the step change in resolution of DNA and epigenetic and RNA sequencing down to the level of an individual cell. Since the cell is the basic building block of an organism, sequencing each cell in isolation provides information that is fundamentally different from genomic data that relates to ensembles of cells. In terms of single-cell transcriptomics, the RNA content of a cell is deeply informative about its phenotype and function. This technique is so powerful and informative that it is likely that the community will ultimately map all mammalian organs, tissues, and cell types at single-cell resolution. A comprehensive resource such as this, effectively a “human cell atlas”, would be a tremendously useful and unique reference data set for biology and medicine. Like many previous waves of biotechnology, single-cell genomics started in academia and basic research but is now set to move into pharma and the clinic. Once an atlas of human cell types is available, any diseased tissue can be compared with it. Cancer, in particular, the prototypical single-cell disease, will be particularly apt for a single-cell analysis overhaul. Diagnostic assays, which are currently based on crude bulk methods, will be tremendously more powerful once they are brought down to the level of the individual transformed cell, in the context of its surrounding tissue, with cell-type specificity and a full understanding of somatic mutations. We are excited to be part of a community that has already achieved a lot, as showcased in this special issue, yet clearly still has a long and interesting journey ahead of it.
  36 in total

Review 1.  Design and Analysis of Single-Cell Sequencing Experiments.

Authors:  Dominic Grün; Alexander van Oudenaarden
Journal:  Cell       Date:  2015-11-05       Impact factor: 41.582

2.  Single-Cell Genomics Unveils Critical Regulators of Th17 Cell Pathogenicity.

Authors:  Jellert T Gaublomme; Nir Yosef; Youjin Lee; Rona S Gertner; Li V Yang; Chuan Wu; Pier Paolo Pandolfi; Tak Mak; Rahul Satija; Alex K Shalek; Vijay K Kuchroo; Hongkun Park; Aviv Regev
Journal:  Cell       Date:  2015-11-19       Impact factor: 41.582

3.  Somatic mutation in single human neurons tracks developmental and transcriptional history.

Authors:  Michael A Lodato; Mollie B Woodworth; Semin Lee; Gilad D Evrony; Bhaven K Mehta; Amir Karger; Soohyun Lee; Thomas W Chittenden; Alissa M D'Gama; Xuyu Cai; Lovelace J Luquette; Eunjung Lee; Peter J Park; Christopher A Walsh
Journal:  Science       Date:  2015-10-02       Impact factor: 47.728

4.  G&T-seq: parallel sequencing of single-cell genomes and transcriptomes.

Authors:  Iain C Macaulay; Wilfried Haerty; Parveen Kumar; Yang I Li; Tim Xiaoming Hu; Mabel J Teng; Mubeen Goolam; Nathalie Saurat; Paul Coupland; Lesley M Shirley; Miriam Smith; Niels Van der Aa; Ruby Banerjee; Peter D Ellis; Michael A Quail; Harold P Swerdlow; Magdalena Zernicka-Goetz; Frederick J Livesey; Chris P Ponting; Thierry Voet
Journal:  Nat Methods       Date:  2015-04-27       Impact factor: 28.547

5.  The first five years of single-cell cancer genomics and beyond.

Authors:  Nicholas E Navin
Journal:  Genome Res       Date:  2015-10       Impact factor: 9.043

6.  Single-cell RNA-seq reveals changes in cell cycle and differentiation programs upon aging of hematopoietic stem cells.

Authors:  Monika S Kowalczyk; Itay Tirosh; Dirk Heckl; Tata Nageswara Rao; Atray Dixit; Brian J Haas; Rebekka K Schneider; Amy J Wagers; Benjamin L Ebert; Aviv Regev
Journal:  Genome Res       Date:  2015-10-01       Impact factor: 9.043

7.  Single-cell chromatin accessibility reveals principles of regulatory variation.

Authors:  Jason D Buenrostro; Beijing Wu; Ulrike M Litzenburger; Dave Ruff; Michael L Gonzales; Michael P Snyder; Howard Y Chang; William J Greenleaf
Journal:  Nature       Date:  2015-06-17       Impact factor: 49.962

8.  In silico lineage tracing through single cell transcriptomics identifies a neural stem cell population in planarians.

Authors:  Alyssa M Molinaro; Bret J Pearson
Journal:  Genome Biol       Date:  2016-04-27       Impact factor: 13.583

9.  Single-cell transcriptomic reconstruction reveals cell cycle and multi-lineage differentiation defects in Bcl11a-deficient hematopoietic stem cells.

Authors:  Jason C H Tsang; Yong Yu; Shannon Burke; Florian Buettner; Cui Wang; Aleksandra A Kolodziejczyk; Sarah A Teichmann; Liming Lu; Pentao Liu
Journal:  Genome Biol       Date:  2015-09-21       Impact factor: 13.583

10.  Genome-wide detection of DNase I hypersensitive sites in single cells and FFPE tissue samples.

Authors:  Wenfei Jin; Qingsong Tang; Mimi Wan; Kairong Cui; Yi Zhang; Gang Ren; Bing Ni; Jeffrey Sklar; Teresa M Przytycka; Richard Childs; David Levens; Keji Zhao
Journal:  Nature       Date:  2015-12-03       Impact factor: 49.962

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  35 in total

Review 1.  Bringing precision oncology to cellular resolution with single-cell genomics.

Authors:  Yuntao Xia; Charles Gawad
Journal:  Clin Exp Metastasis       Date:  2021-11-22       Impact factor: 5.150

2.  SPCS: a spatial and pattern combined smoothing method for spatial transcriptomic expression.

Authors:  Yusong Liu; Tongxin Wang; Ben Duggan; Michael Sharpnack; Kun Huang; Jie Zhang; Xiufen Ye; Travis S Johnson
Journal:  Brief Bioinform       Date:  2022-05-13       Impact factor: 13.994

3.  Single-Cell Analysis of Quiescent HIV Infection Reveals Host Transcriptional Profiles that Regulate Proviral Latency.

Authors:  Todd Bradley; Guido Ferrari; Barton F Haynes; David M Margolis; Edward P Browne
Journal:  Cell Rep       Date:  2018-10-02       Impact factor: 9.423

Review 4.  Integrative Methods and Practical Challenges for Single-Cell Multi-omics.

Authors:  Anjun Ma; Adam McDermaid; Jennifer Xu; Yuzhou Chang; Qin Ma
Journal:  Trends Biotechnol       Date:  2020-03-26       Impact factor: 19.536

Review 5.  Using single cell analysis for translational studies in immune mediated diseases: Opportunities and challenges.

Authors:  Siddhartha Sharma; Louis Gioia; Brian Abe; Marie Holt; Anne Costanzo; Lisa Kain; Andrew Su; Luc Teyton
Journal:  Mol Immunol       Date:  2018-10-06       Impact factor: 4.407

6.  scRNASeqDB: A Database for RNA-Seq Based Gene Expression Profiles in Human Single Cells.

Authors:  Yuan Cao; Junjie Zhu; Peilin Jia; Zhongming Zhao
Journal:  Genes (Basel)       Date:  2017-12-05       Impact factor: 4.096

Review 7.  Sea Anemones: Quiet Achievers in the Field of Peptide Toxins.

Authors:  Peter J Prentis; Ana Pavasovic; Raymond S Norton
Journal:  Toxins (Basel)       Date:  2018-01-08       Impact factor: 4.546

8.  DTWscore: differential expression and cell clustering analysis for time-series single-cell RNA-seq data.

Authors:  Zhuo Wang; Shuilin Jin; Guiyou Liu; Xiurui Zhang; Nan Wang; Deliang Wu; Yang Hu; Chiping Zhang; Qinghua Jiang; Li Xu; Yadong Wang
Journal:  BMC Bioinformatics       Date:  2017-05-23       Impact factor: 3.169

9.  Parasite genomics-Time to think bigger.

Authors:  Carlos Talavera-López; Björn Andersson
Journal:  PLoS Negl Trop Dis       Date:  2017-04-20

10.  New library construction method for single-cell genomes.

Authors:  Larry Xi; Alexander Belyaev; Sandra Spurgeon; Xiaohui Wang; Haibiao Gong; Robert Aboukhalil; Richard Fekete
Journal:  PLoS One       Date:  2017-07-19       Impact factor: 3.240

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