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      Single-cell transcriptomes from human kidneys reveal the cellular identity of renal tumors

      1 , 1 , 2 , 3 , 1 , 4 , 5 , 6 , 6 , 1 , 2 , 7 , 8 , 8 , 6 , 1 , 8 , 1 , 1 , 9 , 10 , 1 , 1 , 6 , 1 , 2 , 3 , 3 , 9 , 2 , 9 , 2 , 7 , 8 , 2 , 11 , 12 , 11 , 2 , 2 , 3 , 9 , 10 , 2 , 13 , 8 , 14 , 1 , 2 , 6 , 1 , 2 , 7
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          Pediatric and adult kidney tumors differ

          Understanding tumor origins and the similarities and differences between organ-specific cancers is important for determining treatment options. Young et al.generated more than 72,000 single-cell transcriptomes from healthy and cancerous human kidneys. From these data, they determined that Wilms tumor, a pediatric kidney cancer, originates from aberrant fetal cells, whereas adult kidney cancers are likely derived from a specific subtype of proximal convoluted tubular cell.

          Science, this issue p. [Related article:]594

          Abstract

          Single-cell mRNAs of normal and cancerous kidney cells reveal the cellular identity of childhood and adult tumors.

          Abstract

          Messenger RNA encodes cellular function and phenotype. In the context of human cancer, it defines the identities of malignant cells and the diversity of tumor tissue. We studied 72,501 single-cell transcriptomes of human renal tumors and normal tissue from fetal, pediatric, and adult kidneys. We matched childhood Wilms tumor with specific fetal cell types, thus providing evidence for the hypothesis that Wilms tumor cells are aberrant fetal cells. In adult renal cell carcinoma, we identified a canonical cancer transcriptome that matched a little-known subtype of proximal convoluted tubular cell. Analyses of the tumor composition defined cancer-associated normal cells and delineated a complex vascular endothelial growth factor (VEGF) signaling circuit. Our findings reveal the precise cellular identities and compositions of human kidney tumors.

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          Regularization Paths for Generalized Linear Models via Coordinate Descent

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            Fast and accurate long-read alignment with Burrows–Wheeler transform

            Motivation: Many programs for aligning short sequencing reads to a reference genome have been developed in the last 2 years. Most of them are very efficient for short reads but inefficient or not applicable for reads >200 bp because the algorithms are heavily and specifically tuned for short queries with low sequencing error rate. However, some sequencing platforms already produce longer reads and others are expected to become available soon. For longer reads, hashing-based software such as BLAT and SSAHA2 remain the only choices. Nonetheless, these methods are substantially slower than short-read aligners in terms of aligned bases per unit time. Results: We designed and implemented a new algorithm, Burrows-Wheeler Aligner's Smith-Waterman Alignment (BWA-SW), to align long sequences up to 1 Mb against a large sequence database (e.g. the human genome) with a few gigabytes of memory. The algorithm is as accurate as SSAHA2, more accurate than BLAT, and is several to tens of times faster than both. Availability: http://bio-bwa.sourceforge.net Contact: rd@sanger.ac.uk
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              Pseudo-temporal ordering of individual cells reveals dynamics and regulators of cell fate decisions

              Single-cell expression profiling by RNA-Seq promises to exploit cell-to-cell variation in gene expression to reveal regulatory circuitry governing cell differentiation and other biological processes. Here, we describe Monocle, a novel unsupervised algorithm for ordering cells by progress through differentiation that dramatically increases temporal resolution of expression measurements in a model of skeletal muscle differentiation. This reordering unmasks switch-like changes in expression of key regulatory factors, reveals sequentially organized waves of gene regulation, and exposes novel regulators of cell differentiation. A loss-of function screen revealed that many of these inhibitors act through regulatory elements also used by pro-myogenic factors to activate downstream genes. This study demonstrates that single-cell expression analysis by Monocle can uncover novel regulatory interactions governing differentiation. Cell differentiation is governed by a vast and complex gene regulatory program. During differentiation, each cell makes fate decisions independently by integrating a wide array of signals from other cells, executing a complex choreography of gene regulatory changes. Recently, several studies carried out at single-cell resolution have revealed high cell-to-cell variation in most genes during differentiation 1–5 , even among key developmental regulators. Although high variability complicates analysis of such experiments 6 , it might define biological progression between cellular states, revealing regulatory modules of genes that co-vary in expression across individual cells 7 . Prior studies have used approaches from computational geometry 8,9 and supervised machine learning 10 to order bulk cell populations from time-series microarray experiments by progress through a biological process. Applying this concept to order individual cells could expose fine-grained gene expression dynamics as they differentiate. We have developed Monocle, an algorithm that harnesses single cell variation to sort cells in “pseudo time” according to progress through differentiation. Applying Monocle to the classic model of myogenesis unveiled dynamics at unprecedented resolution and exposed novel regulatory factors. Skeletal myoblasts undergo a well-characterized sequence of morphological and transcriptional changes during differentiation 11 . Global expression and epigenetic profiles have reinforced the view that a small cohort of transcription factors (e.g. MYOD, MYOG, MRF4, and MYF5) orchestrates these changes 12 . However, efforts to expand this set of factors and map the broader myogenic regulatory network have been hampered by the temporal resolution of global expression measurements, with thousands of genes following a limited number of coarse kinetic trends 13 . Single-cell measurements of markers of myogenesis have made clear that cells do not progress through differentiation in synchrony. A population of cells captured at the same time may thus cover a range of distinct intermediate differentiation states. Drawing conclusions from a group of individuals based on the properties of their average is a hazardous practice because the average can mask important trends among the individuals, resulting in phenomena such as Simpson's paradox 14 . Experimental synchronization or stringent isolation of myogenic precursors is often challenging and dramatically alters differentiation kinetics. We hypothesized that capturing complete expression profiles of individual cells might avoid these problems and dramatically increase temporal resolution in global transcriptome dynamics. In essence, a single-cell RNA-Seq experiment might constitute a time-series, with each cell representing a distinct time point along a continuum. To test this hypothesis we investigated the single cell transcriptome dynamics during myogenesis. We expanded primary human myoblasts under high mitogen conditions (GM), and then induced differentiation by switching to low-mitogen media (DM). We then captured 50–100 cells at each of four time points following serum switch using the Fluidigm C1 microfluidic system. RNA from each cell was isolated and used to construct mRNA-Seq libraries, which were then sequenced to a depth of ~4 million reads per library, resulting in a complete gene expression profile for each cell (Fig 1a, S1). Averaging expression profiles of cells collected at the same time correlated well with the corresponding bulk RNA-Seq libraries, and moderately expressed genes were detectable (≥ 1 FPKM) in a majority of individual cells (Fig 1b, S2, S3). However, markers of mature myocytes were present at all time points following serum switch, and many other genes showed similar temporal heterogeneity (Fig 1c) We speculated that the high variability in cell-to-cell gene expression levels was due to unsynchronized differentiation, with myoblasts, intermediate myocytes, and mature myotubes residing in the same well concurrently. Indeed, large, multinucleated MYH2+ cells were abundant after 72 hours in DM, but these cells were present at lower frequency even at 24 hours (Fig 1c). We reasoned that informatically ordering the cells by their progress through differentiation, rather than by the time they were collected, would distinguish genes activated early in differentiation from those activated later. To this end, we developed a novel unsupervised algorithm, Monocle, which re-ordered the cells to maximize the transcriptional similarity between successive pairs (Fig 2a). The algorithm first represents the expression profile of each cell as a point in a high-dimensional Euclidean space, with one dimension for each gene. Second, it reduces the dimensionality of this space using Independent Component Analysis 15 . Third, Monocle constructs a minimum spanning tree (MST) on the cells, an approach now commonly used in other single-cell settings, such as flow or mass cytometry 16,17 . Fourth, the algorithm finds the longest path through the MST, corresponding to the longest sequence of transcriptionally similar cells. Finally, Monocle uses this sequence to produce a “trajectory” of an individual cell's progress through differentiation. Progress along a differentiation trajectory is measured in “pseudo-time”: the total transcriptional change a cell undergoes as it differentiates. This strategy is derived from a prior algorithm for temporally ordering microarray samples 8 , but extends it to allow for multiple cell fates stemming from a single progenitor cell type. As cells progress, they may diverge along two or more separate paths. After Monocle finds the longest sequence of similar cells, it examines cells not along this path to find alternative trajectories through the MST. These sub-trajectories are ordered and connected to the main trajectory, and each cell is annotated with both a trajectory and a pseudo-time value. Monocle thus orders cells by progress through differentiation and can reconstruct branched biological processes, which might arise when a precursor cell makes cell fate decisions that govern the generation of multiple subsequent lineages. Importantly, Monocle is unsupervised and needs no prior knowledge of specific genes that distinguish cell fates, and is thus suitable for studying a wide array of dynamic biological processes. Monocle decomposed myoblast differentiation into a two-phase trajectory and isolated a branch of non-differentiating cells (Fig 2b). The first phase of the trajectory was primarily composed of cells collected under high-mitogen conditions and which expressed markers of actively proliferating cells such as CDK1, while the second mainly consisted of cells collected at 24, 48, or 72 hours following serum switch. Cells in the second phase were positive for markers of muscle differentiation such as MYOG (Fig S4). A tightly grouped third population of cells branched from the trajectory near the transition between phases. These cells lacked myogenic markers but expressed PDGFRA and SPHK1, suggesting that they are contaminating interstitial mesenchymal cells and did not arise from the myoblasts. Such cells were recently shown to stimulate muscle differentiation 18 . Monocle's estimates of the frequency and proliferative status of these cells were consistent with estimates derived from immunofluorescent stains against ANPEP/CD13 and nuclear phosphorylated H3-Ser10 (Fig S4). Monocle thus enabled analysis of the myoblast differentiation trajectory without subtracting these cells by immunopurification, maintaining in vitro differentiation kinetics that resemble physiological cell crosstalk occurring in the in vivo niche. To find genes that were dynamically regulated as the cells progressed through differentiation, we modeled each gene's expression as a nonlinear function of pseudo-time. A total of 1,061 genes were dynamically regulated during differentiation (FDR = 0.8) to their relative order within the full data set. The algorithm retained the ability to detect dynamically regulated genes with high precision (>= 95%) over all designs and with increasing recall as more of the cells were included. (Fig S7) We next grouped genes with similar trends in expression, reasoning that such groups might share common biological functions and regulators. Clustering of genes according to direction and timing revealed six distinct trends (Fig 3). Genes downregulated early or upregulated late in pseudo-time were highly enriched for biological processes central to myogenesis, including cell-cycle exit and activation of muscle-specific structural proteins. However, the other clusters included many genes with broad roles in development, including mediators of cell-cell signaling, RNA export and translational control, and remodeling of cell morphology (Fig S8). A timeseries analysis of myoblast differentiation with bulk RNA-Seq identified up and down-regulated genes, but did not identify the transient clusters or distinguish the early from late regulation visible with pseudo-temporally ordered single cells (Fig S9). Furthermore, dynamic range of expression was compressed for most genes, confirming that failure to account for variability in progress through differentiation leads directly to the effects associated with Simpson's paradox. Pseudo-temporal cell ordering thus decomposes the coarse kinetic trends produced by conventional RNA-Seq into distinct, sequential waves of transcriptional reconfiguration. To identify factors driving myoblast differentiation, we performed a cis-regulatory analysis on genes in each pseudo-temporal cluster. Cis regulatory elements were first identified based on DNaseI hypersensitive sites in HSMM cells and HSMM-derived myotubes 20 , classified according to function according to histone marks 21 , and finally annotated with conserved transcription factor binding sites. While downregulated genes were enriched at near significant levels with binding sites for genes that play roles in proliferation (e.g. MAX, E2F, and NMYC), nearly all significantly enriched motifs fell near upregulated genes. These genes were highly enriched for regulatory elements containing binding motifs for 175 transcription factors, including numerous well-known regulators of myogenesis, such as MYOD, MYOG, PBX1, MEIS1, and the MEF2 family (Fig S10). Some, but not all, of these factors were revealed by a regulatory element analysis performed using bulk RNA-Seq data, underscoring the power of increased (pseudo) temporal resolution of single-cell analysis (Fig S11). A similar analysis of microRNA target sites identified miR-1, miR-206, miR-133, and numerous others as regulators of genes activated during myogenesis (Fig S12). Of these, only miR-1/206 target sites were significantly enriched among genes found to be transiently upregulated and then sharply downregulated. This may suggest that miR-1 and miR-206, which are expressed at an intermediate stage of myoblast differentiation, may act to strongly suppress a subset of genes activated earlier. Many of the transcription factors implicated by our cis regulatory analysis to govern differentiation had no previously appreciated role in muscle development. To test potential roles of these factors we performed an RNAi mediated loss of function screen for 11 candidates. Briefly, we virally expressed proliferating myoblasts with one of 44 distinct shRNAs targeting either one of these factors or a mock (non-targeting) control, followed by serum-induced differentiation for five days. We then measured the frequency and size of myosin heavy chain 2 (MYH2)-positive cells with a high-throughput immunofluorescence pipeline. Of the targets we tested, MZF1, ZIC1, XBP1, and USF1 showed significantly altered differentiation kinetics (Fig 4a,b, Fig S13) when depleted with two or more independent hairpins (FDR < 5%). Knockdown of XBP1, USF1, ZIC1, and MZF1 enhanced myotube formation, with larger myotubes containing a higher fraction of total nuclei than mock shRNA controls. Depletion of CUX1, ARID5B, POU2F1, and AHR also increased differentiation efficiency, albeit less significantly. Importantly, whole-well nuclei counts were similar between knockdowns and mock controls, indicating that enhanced differentiation was not simply a result of higher initial cell counts or increased proliferation. With the exception of ZIC1, forced overexpression did not substantially alter differentiation kinetics (data not shown). Notably, several of these factors have binding motifs that are highly enriched in promoters and enhancers that also have motifs for known muscle regulators (Fig 4c). For example, USF1 motifs are enriched in enhancers that also have MYOD motifs. Together, these results confirm that the transcription factors identified as possible regulators in fact play a role in myoblast differentiation, and demonstrate the power of Monocle for identifying key differentiation genes. Here, we report that individual myoblasts progress through differentiation in an unsynchronized manner, but that they can be reordered according to progress through differentiation. This pseudo-time ordering pinpoints key events in differentiation that are masked both by conventional bulk cell expression profiling, and by single-cell expression profiles ordered by time collected. The reordering resolves sequentially activated transcriptional sub-programs that are regulated by common factors. The temporal resolution offered by hundreds of ordered cells might enable future efforts to computationally infer novel gene-regulatory modules. For example, the enrichment of transiently upregulated genes for common microRNA target sites raises the question of whether those microRNAs are expressed later, curtailing what would have been higher levels of expression. Sequencing-based measurements of small RNAs and mRNAs from the same cell will provide answers to such systems-level questions. Moreover, single-cell analysis distinguishes cells of interest from contaminating cell types such as interstitial mesenchymal cells without experimental isolation that might disrupt cell-cell interactions important in the in vivo niche. We identified eight previously unappreciated transcription factors that dramatically influence the course of myoblast differentiation, thus proving the principle of pseudo-temporal analysis and expanding the catalog of regulators in this well-studied system. Several of the eight factors reported here may normally repress differentiation by competing with pro-myogenic factors for these regulatory elements. Alternatively, these inhibitors may co-occupy regulatory elements with pro-myogenic factors, preventing transactivation of their targets (Fig. 4d). Previous studies in other contexts provide mechanistic data supporting both of these models. USF1 inhibits MyoD autoactivation in Xenopus by competing with MyoD at its promoter through an alternative E-box 22 . Our results suggest that USF1 may repress a broad array of targets via E-box competition. CUX1 represses targets in several developmental contexts through binding site competition 23 . XBP1 was recently reported to inhibit myoblast differentiation in mice, potentially through the mechanisms proposed here 24 . Further experiments in these HSMM cells and myoblasts from other anatomic depots will be needed to confirm the mechanism of these factors. While the positive regulators of myogenesis have been well characterized, only a handful of inhibitors have been identified. The eight inhibitors reported here may shed light on how the balance of proliferation and differentiation is maintained during development and regeneration. Ordering the expression profiles of individual cells by biological progress is thus a powerful new tool for studying cell differentiation, and could in principle be used to map regulatory networks that govern a much wider array of biological processes. Supplementary Material 1
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                Journal
                Science
                Science
                American Association for the Advancement of Science (AAAS)
                0036-8075
                1095-9203
                August 10 2018
                August 10 2018
                : 361
                : 6402
                : 594-599
                Affiliations
                [1 ]Wellcome Sanger Institute, Hinxton CB10 1SA, UK.
                [2 ]Cambridge University Hospitals NHS Foundation Trust, Cambridge CB2 0QQ, UK.
                [3 ]Department of Surgery, University of Cambridge, Cambridge CB2 0QQ, UK.
                [4 ]UCL Division of Surgery and Interventional Science, Royal Free Hospital, London NW3 2PS, UK.
                [5 ]Specialist Centre for Kidney Cancer, Royal Free Hospital, London NW3 2PS, UK.
                [6 ]Molecular Immunity Unit, Department of Medicine, University of Cambridge, MRC Laboratory of Molecular Biology, Cambridge CB2 0QQ, UK.
                [7 ]Department of Paediatrics, University of Cambridge, Cambridge CB2 0QQ, UK.
                [8 ]Institute of Cellular Medicine, Newcastle University, Newcastle upon Tyne NE2 4HH, UK.
                [9 ]Great Ormond Street Hospital for Children NHS Foundation Trust, London WC1N 3JH, UK.
                [10 ]UCL Great Ormond Street Hospital Institute of Child Health, London WC1N 1E, UK.
                [11 ]Human Developmental Biology Resource, Institute of Genetic Medicine, Newcastle University, Newcastle upon Tyne NE1 3BZ, UK.
                [12 ]Cambridge Institute for Medical Research, University of Cambridge, Cambridge CB2 0XY, UK.
                [13 ]Department of Pathology, University of Cambridge, Cambridge CB2 1QP, UK.
                [14 ]Department of Dermatology, Royal Victoria Infirmary, Newcastle Hospitals NHS Foundation Trust, Newcastle upon Tyne NE1 4LP, UK.
                Article
                10.1126/science.aat1699
                6104812
                30093597
                df557984-b05a-4010-b870-b9b4ffa429ec
                © 2018
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