scholarly journals Correlation of gene expressions between nucleus and cytoplasm reflects single-cell physiology

2017 ◽  
Author(s):  
Mahmoud N. Abdelmoez ◽  
Kei Iida ◽  
Yusuke Oguchi ◽  
Hidekazu Nishikii ◽  
Ryuji Yokokawa ◽  
...  

BackgroundEukaryotes transcribe RNAs in nuclei and transport them to the cytoplasm through multiple steps of post-transcriptional regulation. Existing single-cell sequencing technologies, however, are unable to analyse nuclear (nuc) and cytoplasmic (cyt) RNAs separately and simultaneously. Hence, there remain challenges to discern correlation, localisation, and translocation between them.ResultsHere we report a microfluidic system that physically separates nucRNA and cytRNA from a single cell and enables single-cell integrated nucRNA and cytRNA-sequencing (SINC-seq). SINC-seq constructs two individual RNA-seq libraries, nucRNA and cytRNA per cell, quantifies gene expression in the subcellular compartments and combines them to create a novel single-cell RNA-seq data enabled by our system, which we here term in-silico single cell.ConclusionsLeveraging SINC-seq, we discovered three distinct natures of correlation among cytRNA and nucRNA that reflected the physiological state of single cells: The cell-cycle-related genes displayed highly correlated expression pattern with minor differences; RNA splicing genes showed lower nucRNA-to-cytRNA correlation, suggesting a retained intron may be implicated in inhibited mRNA transport; A chemical perturbation, sodium butyrate treatment, transiently distorted the correlation along differentiating human leukemic cells to erythroid cells. These data uniquely provide insights into the regulatory network of mRNA from nucleus toward cytoplasm at the single cell level.

2018 ◽  
Author(s):  
Kedar Nath Natarajan ◽  
Zhichao Miao ◽  
Miaomiao Jiang ◽  
Xiaoyun Huang ◽  
Hongpo Zhou ◽  
...  

AbstractAll single-cell RNA-seq protocols and technologies require library preparation prior to sequencing on a platform such as Illumina. Here, we present the first report to utilize the BGISEQ-500 platform for scRNA-seq, and compare the sensitivity and accuracy to Illumina sequencing. We generate a scRNA-seq resource of 468 unique single-cells and 1,297 matched single cDNA samples, performing SMARTer and Smart-seq2 protocols on mESCs and K562 cells with RNA spike-ins. We sequence these libraries on both BGISEQ-500 and Illumina HiSeq platforms using single- and paired-end reads. The two platforms have comparable sensitivity and accuracy in terms of quantification of gene expression, and low technical variability. Our study provides a standardised scRNA-seq resource to benchmark new scRNA-seq library preparation protocols and sequencing platforms.


2021 ◽  
Author(s):  
Chloe Xueqi Wang ◽  
Lin Zhang ◽  
Bo Wang

The surge of single-cell RNA sequencing technologies enables the accessibility to large single-cell RNA-seq datasets at the scale of hundreds of thousands of single cells. Integrative analysis of large-scale scRNA-seq datasets has the potential of revealing de novo cell types as well as aggregating biological information. However, most existing methods fail to integrate multiple large-scale scRNA-seq datasets in a computational and memory efficient way. We hereby propose OCAT, One Cell At a Time, a graph-based method that sparsely encodes single-cell gene expressions to integrate data from multiple sources without most variable gene selection or explicit batch effect correction. We demonstrate that OCAT efficiently integrates multiple scRNA-seq datasets and achieves the state-of-the-art performance in cell-type clustering, especially in challenging scenarios of non-overlapping cell types. In addition, OCAT facilitates a variety of downstream analyses, such as gene prioritization, trajectory inference, pseudotime inference and cell inference. OCAT is a unifying tool to simplify and expedite single-cell data analysis.


Author(s):  
Carlos F. Buen Abad Najar ◽  
Nir Yosef ◽  
Liana F. Lareau

Single cell RNA sequencing provides powerful insight into the factors that determine each cell’s unique identity, including variation in transcription and RNA splicing among diverse cell types. Previous studies led to the surprising observation that alternative splicing outcomes among single cells are highly variable and follow a bimodal pattern: a given cell consistently produces either one or the other isoform for a particular splicing choice, with few cells producing both isoforms. Here we show that this pattern arises almost entirely from technical limitations. We analyzed single cell alternative splicing in human and mouse single cell RNA-seq datasets, and modeled them with a probablistic simulator. Our simulations show that low gene expression and low capture efficiency distort the observed distribution of isoforms in single cells. This gives the appearance of a binary isoform distribution, even when the underlying reality is consistent with more than one isoform per cell. We show that accounting for the true amount of information recovered can produce biologically meaningful measurements of splicing in single cells.


2021 ◽  
Vol 7 (8) ◽  
pp. eabe3610
Author(s):  
Conor J. Kearney ◽  
Stephin J. Vervoort ◽  
Kelly M. Ramsbottom ◽  
Izabela Todorovski ◽  
Emily J. Lelliott ◽  
...  

Multimodal single-cell RNA sequencing enables the precise mapping of transcriptional and phenotypic features of cellular differentiation states but does not allow for simultaneous integration of critical posttranslational modification data. Here, we describe SUrface-protein Glycan And RNA-seq (SUGAR-seq), a method that enables detection and analysis of N-linked glycosylation, extracellular epitopes, and the transcriptome at the single-cell level. Integrated SUGAR-seq and glycoproteome analysis identified tumor-infiltrating T cells with unique surface glycan properties that report their epigenetic and functional state.


Blood ◽  
2019 ◽  
Vol 134 (Supplement_1) ◽  
pp. 2520-2520
Author(s):  
Parashar Dhapola ◽  
Mikael Sommarin ◽  
Mohamed Eldeeb ◽  
Amol Ugale ◽  
David Bryder ◽  
...  

Single-cell transcriptomics (scRNA-Seq) has accelerated the investigation of hematopoietic differentiation. Based on scRNA-Seq data, more refined models of lineage determination in stem- and progenitor cells are now available. Despite such advances, characterizing leukemic cells using single-cell approaches remains challenging. The conventional strategies of scRNA-Seq analysis map all cells on the same low dimensional space using approaches like tSNE and UMAP. However, when used for comparing normal and leukemic cells, such methods are often inadequate as the transcriptome of the leukemic cells has systematically diverged, resulting in irrelevant separation of leukemic subpopulations from their healthy counterpart. Here, we have developed a new computational approach bundled into a tool called Nabo (nabo.readthedocs.io) that has the capacity to directly compare cells that are otherwise unalignable. First, Nabo creates a shared nearest neighbor graph of the reference population, and the heterogeneity of this population is subsequently defined by performing clustering on the graph and calculating a low dimensional representation using t-SNE or UMAP. Nabo then calculates the similarity of incoming cells from a target population to each cell in the reference graph using a modified Canberra metric. The reference cells with higher similarity to the target cells obtain higher mapping scores. The built-in classifier is used to assign each target cell a reference cluster identity. We tested Nabo's accuracy on control datasets and found that Nabo's performance in terms of accuracy and robustness of projection is comparable to state-of-art methods. Moreover, Nabo is a generalized domain adaptation algorithm and hence can perform classification of target cells that are arbitrarily dissimilar to reference cells. Nabo could identify the cell-identity of sorted CD19+ B cells, CD14+ monocytes and CD56+ by projecting these unlabeled cells onto labelled peripheral blood mononuclear cells with an average specificity higher than 0.98. The general applicability of Nabo was demonstrated by successfully integrating pancreatic cells, sequenced in three different studies using different sequencing chemistries with comparable or better accuracy than existing methods. Also, it was conclusively demonstrated that Nabo can predict the identity of human HSPC subpopulations to the same accuracy as can be achieved by established cell-surface markers. Having Nabo at hand, we aimed to uncover the heterogeneity of hematopoietic cells from different stages of AML. Nabo showed that AML cells lacked the heterogeneity of normal CD34+ cells and were devoid of cells with HSC gene signature. A large patient-to-patient variability was found where leukemic cells mapped to distinct stages of myeloid progenitors. To ask whether this variability could reflect differences in leukemia-initiating cell identity, we induced leukemia in murine granulocyte-monocyte-lymphoid progenitors (GMLPs) using an inducible model for MLL-ENL-driven AML. On projection, more than 70% of MLL-ENL-activated cells mapped to a distinct Flt3+ subpopulation present within healthy GMLPs. Statistical validity of this projection was verified using two novel null models for testing cell projections: 1) ablated node model, wherein the mapping strength of target cells are evaluated after removal of high mapping score source nodes, and 2) high entropy features model, which rules out the background noise effect. By separating Flt3+ and Flt3- cells prior to activation of the fusion gene and performing in vitro replating assays, we could demonstrate that Flt3+ GMLPs contained 3-4 fold more leukemia-initiating cells (1/1.34 cells) than Flt3- GMLPs (1/4.89 cells), indicating that leukemia-initiating cells within GMLPs express Flt3. Taken together, Nabo represents a robust cell projection strategy for relevant analysis of scRNA-Seq data that permits an interpretable inference of cross-population relationships. Nabo is designed to compare disparate cellular populations by using the heterogeneity of one population as a point of reference allowing for cell-type specification even following perturbations that have resulted in large molecular changes to the cells of interest. As such, Nabo has critical implementation for delineation of leukemia heterogeneity and identification of leukemia-initiating cell population. Disclosures No relevant conflicts of interest to declare.


2019 ◽  
Author(s):  
Ning Wang ◽  
Andrew E. Teschendorff

AbstractInferring the activity of transcription factors in single cells is a key task to improve our understanding of development and complex genetic diseases. This task is, however, challenging due to the relatively large dropout rate and noisy nature of single-cell RNA-Seq data. Here we present a novel statistical inference framework called SCIRA (Single Cell Inference of Regulatory Activity), which leverages the power of large-scale bulk RNA-Seq datasets to infer high-quality tissue-specific regulatory networks, from which regulatory activity estimates in single cells can be subsequently obtained. We show that SCIRA can correctly infer regulatory activity of transcription factors affected by high technical dropouts. In particular, SCIRA can improve sensitivity by as much as 70% compared to differential expression analysis and current state-of-the-art methods. Importantly, SCIRA can reveal novel regulators of cell-fate in tissue-development, even for cell-types that only make up 5% of the tissue, and can identify key novel tumor suppressor genes in cancer at single cell resolution. In summary, SCIRA will be an invaluable tool for single-cell studies aiming to accurately map activity patterns of key transcription factors during development, and how these are altered in disease.


Author(s):  
Jinfen Wei ◽  
Zixi Chen ◽  
Meiling Hu ◽  
Ziqing He ◽  
Dawei Jiang ◽  
...  

Hypoxia is a characteristic of tumor microenvironment (TME) and is a major contributor to tumor progression. Yet, subtype identification of tumor-associated non-malignant cells at single-cell resolution and how they influence cancer progression under hypoxia TME remain largely unexplored. Here, we used RNA-seq data of 424,194 single cells from 108 patients to identify the subtypes of cancer cells, stromal cells, and immune cells; to evaluate their hypoxia score; and also to uncover potential interaction signals between these cells in vivo across six cancer types. We identified SPP1+ tumor-associated macrophage (TAM) subpopulation potentially enhanced epithelial–mesenchymal transition (EMT) by interaction with cancer cells through paracrine pattern. We prioritized SPP1 as a TAM-secreted factor to act on cancer cells and found a significant enhanced migration phenotype and invasion ability in A549 lung cancer cells induced by recombinant protein SPP1. Besides, prognostic analysis indicated that a higher expression of SPP1 was found to be related to worse clinical outcome in six cancer types. SPP1 expression was higher in hypoxia-high macrophages based on single-cell data, which was further validated by an in vitro experiment that SPP1 was upregulated in macrophages under hypoxia-cultured compared with normoxic conditions. Additionally, a differential analysis demonstrated that hypoxia potentially influences extracellular matrix remodeling, glycolysis, and interleukin-10 signal activation in various cancer types. Our work illuminates the clearer underlying mechanism in the intricate interaction between different cell subtypes within hypoxia TME and proposes the guidelines for the development of therapeutic targets specifically for patients with high proportion of SPP1+ TAMs in hypoxic lesions.


2017 ◽  
Author(s):  
Zhun Miao ◽  
Ke Deng ◽  
Xiaowo Wang ◽  
Xuegong Zhang

AbstractSummaryThe excessive amount of zeros in single-cell RNA-seq data include “real” zeros due to the on-off nature of gene transcription in single cells and “dropout” zeros due to technical reasons. Existing differential expression (DE) analysis methods cannot distinguish these two types of zeros. We developed an R package DEsingle which employed Zero-Inflated Negative Binomial model to estimate the proportion of real and dropout zeros and to define and detect 3 types of DE genes in single-cell RNA-seq data with higher accuracy.Availability and ImplementationThe R package DEsingle is freely available at https://github.com/miaozhun/DEsingle and is under Bioconductor’s consideration [email protected] informationSupplementary data are available at bioRxiv online.


2019 ◽  
Vol 10 (1) ◽  
Author(s):  
Ayshwarya Subramanian ◽  
Eriene-Heidi Sidhom ◽  
Maheswarareddy Emani ◽  
Katherine Vernon ◽  
Nareh Sahakian ◽  
...  

AbstractHuman iPSC-derived kidney organoids have the potential to revolutionize discovery, but assessing their consistency and reproducibility across iPSC lines, and reducing the generation of off-target cells remain an open challenge. Here, we profile four human iPSC lines for a total of 450,118 single cells to show how organoid composition and development are comparable to human fetal and adult kidneys. Although cell classes are largely reproducible across time points, protocols, and replicates, we detect variability in cell proportions between different iPSC lines, largely due to off-target cells. To address this, we analyze organoids transplanted under the mouse kidney capsule and find diminished off-target cells. Our work shows how single cell RNA-seq (scRNA-seq) can score organoids for reproducibility, faithfulness and quality, that kidney organoids derived from different iPSC lines are comparable surrogates for human kidney, and that transplantation enhances their formation by diminishing off-target cells.


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