scholarly journals Targeted transcript quantification in single disseminated cancer cells after whole transcriptome amplification

2019 ◽  
Author(s):  
Franziska C. Durst ◽  
Ana Grujovic ◽  
Iris Ganser ◽  
Martin Hoffmann ◽  
Peter Ugocsai ◽  
...  

AbstractGene expression analysis of rare or heterogeneous cell populations such as disseminated cancer cells (DCCs) requires a sensitive method allowing reliable analysis of single cells. Therefore, we developed and explored the feasibility of a quantitative PCR (qPCR) assay to analyze single-cell cDNA pre-amplified using a previously established whole transcriptome amplification (WTA) protocol. We carefully selected and optimized multiple steps of the protocol, e.g. re-amplification of WTA products, quantification of amplified cDNA yields and final qPCR quantification, to identify the most reliable and accurate workflow for quantitation of gene expression of the ERBB2 gene in DCCs. We found that absolute quantification outperforms relative quantification. We then validated the performance of our method on single cells of established breast cancer cell lines displaying distinct levels of HER2 protein. The different protein levels were faithfully reflected by transcript expression across the tested cell lines thereby proving the accuracy of our approach. Finally, we applied our method on patient-derived breast cancer DCCs. Here, we were able to measure ERBB2 expression levels in all HER2-positive DCCs. In addition, we could detect ERBB2 transcript expression even in HER2-negative DCCs, suggesting post-transcriptional mechanisms of HER2 loss in anti-HER2-treated DCCs. In summary, we developed a reliable single-cell qPCR assay applicable to measure distinct levels of ERBB2 in DCCs.

2017 ◽  
Vol 4 (S) ◽  
pp. 102
Author(s):  
Xiaoyang (Alice) Wang ◽  
Chip Lomas ◽  
Craig Betts ◽  
Aaron Walker ◽  
Christina Fan ◽  
...  

Gene expression studies performed on bulk samples might obscure the understanding of complex samples. Gene expression analyses performed on single cells, however, can offer a powerful method to resolve sample heterogeneity and reveal hidden biology. Optimal sample preparation is critical to obtain high quality gene expression data from single cells.Historically, single cells or small numbers of cells were isolated and prepared by limiting dilutions, laser capture microdissection, or microfluidics technologies, or fluorescence-activated cell sorting (FACS). FACS sorting enables highthroughput processing of a heterogeneous mixture of cells and ensures the delivery of single cells or a small number ofcells into a chosen receptacle to meet the selection criteria at a purity level that is unmatched by other approaches.Furthermore, by FACS, the single cell selection criteria can be based on surface marker expression, cell size, and granularity(represented by scatter). Sorted cells can be used for any downstream application including next generation sequencing(NGS).In this study, the new, easy-to-use BD FACSMelody™ sorter was applied to sort individual cancer cells. Jurkat cells (a Tleukemia cell line), and T47D cells (a breast cancer cell line) were mixed, stained, analyzed, and sorted on a BD FACSMelody system. The individual cell’s whole transcriptome was interrogated using BD™ Precise Single Cell WTA (whole transcriptome amplification) Assay. Principal component analysis was applied to cluster the sorted Jurkat and T47D-cell populations.


Blood ◽  
2006 ◽  
Vol 108 (11) ◽  
pp. 1269-1269
Author(s):  
Haiming Chen ◽  
Richard A. Campbell ◽  
Mingjie Li ◽  
Melinda S. Gordon ◽  
Dror Shalitin ◽  
...  

Abstract We have previously shown that multiple myeloma (MM) patients express pleiotrophin (PTN) and it is found at high levels in MM serum as well as PTN is a key factor in the transdifferentiation of monocytes into endothelial cells. We determined the level of PTN expression in myeloma and breast cancer and determined whether PTN produced by these tumor cells could induce endothelial cell expression in human monocytes. Both myeloma and breast cancer cells produced high levels of PTN and secreted this growth factor into the culture medium whereas normal bone marrow showed no expression of this protein. Next, MM cell lines, human bone marrow (BM) from MM patients or control subjects or breast cancer cells were cultured with CD14+ PBMCs using transwell culture plates coated with collagen I. CD14+ monocytes exposed to cells from MM cell lines or fresh BM or breast cancer cells showed expression of endothelial genes (Flk-1, Tie-2, CD144, and vWF) and lost expression of monocyte genes (c-fms). Induction of endothelial gene expression was blocked with an anti-PTN antibody. In contrast, CD14+ cells exposed to normal bone marrow as well as cell lines lacking PTN expression did not show endothelial gene expression. We determined whether human monocytes could be incorporated in vivo as vascular endothelium within human tumors that express PTN. Human myeloma LAGλ-1 cells which highly express and secrete PTN were mixed with THP1 monocytes transduced with the green fluorescent protein (GFP) gene and injected subcutaneously into SCID mice. Mice were sacrificed 6 weeks later and tumor was fixed and frozen sections. MM cells or THP1 monocytes alone did not demonstrate the presence of GFP+ blood vessels. Notably, GFP+ THP1 cells were found in blood vessels within the PTN-expressing LAGλ-1 tumor in animals injected with both cells together. When GFP+h2Kd- blood vessels were stained for anti-human and anti-mouse CD31, 60% of the endothelial cells stained positive for human CD31 and the remaining cells stained positive for mouse CD31 whereas none of these cells stained positive for both mouse and human markers. These results show that the blood vessels containing GFP+ cells do not result from fused cells. In addition, an anti-PTN antibody but not control IgG antibody blocks the incorporation of GFP+ cells into the vasculature of the LAGλ-1 tumors. Staining of serial sections with anti-Tie-2 and CD31 antibodies showed a similar distribution pattern. We further examined endothelial gene expression in these in vivo-generated samples using RT-PCR. The results showed that the THP1 monocytes or LAGλ-1 tumor cells alone did not express endothelial genes whereas THP1 monocytes mixed with PTN-expressing LAGλ-1 showed endothelial gene expression. This endothelial gene expression was blocked by anti-PTN antibody. These data show that hematologic and solid tumors through expression of PTN support new blood vessel formation by the transdifferentiation of monocytes into endothelial cells and provide a new potential target for inhibiting blood vessel formation in solid and liquid tumors.


Blood ◽  
2015 ◽  
Vol 126 (23) ◽  
pp. 4249-4249
Author(s):  
Amit Kumar Mitra ◽  
Ujjal Mukherjee ◽  
Taylor Harding ◽  
Holly Stessman ◽  
Ying Li ◽  
...  

Abstract Multiple myeloma (MM) is characterized by significant genetic diversity at subclonal levels that likely plays a defining role in the heterogeneity of tumor progression, clinical aggressiveness and drug sensitivity. Such heterogeneity is a driving factor in the evolution of MM, from founder clones through outgrowth of subclonal fractions. DNA Sequencing studies on MM samples have indeed demonstrated such heterogeneity in subclonal architecture at diagnosis based on recurrent mutations in pathologically relevant genes that may ultimately to lead to relapse. However, no study so far has reported a predictive gene expression signature that can identify, distinguish and quantify drug sensitive and drug-resistant subpopulations within a bulk population of myeloma cells. In recent years, our laboratory has successfully developed a gene expression profile (GEP)-based signature that could not only distinguish drug response of MM cell lines, but also was effective in stratifying patient outcomes when applied to GEP profiles from MM clinical trials using proteasome inhibitors (PI) as chemotherapeutic agents. Further, we noted myeloma cell lines that responded to the drug often contained residual sub-population of cells that did not respond, and likely were selectively propagated during drug treatment in vitro, and in patients. In this study, we performed targeted qRT-PCR analysis of single cells using a gene panel that included PI sensitivity genes and gene signatures that could discriminate between low and high-risk myeloma followed by intensive bioinformatics and statistical analysis for the classification and prediction of PI response in individual cells within bulk multiple myeloma tumors. Fluidigm's C1 Single-Cell Auto Prep System was used to perform automated single-cell capture, processing and cDNA synthesis on 576 pre-treatment cells from 12 cell lines representing a wide range of PI-sensitivity and 370 cells from 7 patient samples undergoing PI treatment followed by targeted gene expression profiling of single cells using automated, high-throughput on-chip qRT-PCR analysis using 96.96 Dynamic Array IFCs on the BioMark HD System. Probability of resistance for each individual cell was predicted using a pipeline that employed the machine learning methods Random Forest, Support Vector Machine (radial and sigmoidal), LASSO and kNN (k Nearest Neighbor) for making single-cell GEP data-driven predictions/ decisions. The weighted probabilities from each of the algorithms were used to quantify resistance of each individual cell and plotted using Ensemble forecasting algorithm. Using our drug response GEP signature at the single cell level, we could successfully identify distinct subpopulations of tumor cells that were predicted to be sensitive or resistant to PIs. Subsequently, we developed a R Statistical analysis package (http://cran.r-project.org), SCATTome (Single Cell Analysis of Targeted Transcriptome), that can restructure data obtained from Fluidigm qPCR analysis run, filter missing data, perform scaling of filtered data, build classification models and successfully predict drug response of individual cells and classify each cell's probability of response based on the targeted transcriptome. We will present the program output as graphical displays of single cell response probabilities. This package provides a novel classification method that has the potential to predict subclonal response to a variety of therapeutic agents. Disclosures Kumar: Skyline: Consultancy, Honoraria; BMS: Consultancy; Onyx: Consultancy, Research Funding; Sanofi: Consultancy, Research Funding; Janssen: Consultancy, Research Funding; Novartis: Research Funding; Takeda: Consultancy, Research Funding; Celgene: Consultancy, Research Funding.


2020 ◽  
Author(s):  
Mohsen Fathi ◽  
Robiya Joseph ◽  
Jay R T Adolacion ◽  
Melisa Martinez-Paniagua ◽  
Xingyue An ◽  
...  

Exosomes mediate intercellular communication in health and disease. Conventional assays are limited in profiling exosomes secreted from large populations of cells and are unsuitable for studying the functional consequences of individual cells exhibiting varying propensity for exosome secretion. In cancer, since exosomes can support the development of the pre-metastatic niche, cells with varying abilities to secrete exosomes can directly impact tumorigenesis. Here, we developed a high throughput single-cell technique that enabled the mapping of exosome secretion dynamics. By utilizing clinically relevant models of breast cancer, we established that non-metastatic cancer cells secrete more exosomes than metastatic cancer cells. Single-cell RNA-sequencing confirmed that pathways related to exosome secretion were enriched in the non-metastatic cells compared to the metastatic cells. We established isogenic clonal cell lines from non-metastatic cells with differing propensities for exosome secretion and showed that exosome secretion is an inheritable property preserved during cell division. Combined in vitro and in vivo studies with these cell lines suggested that exosome secretion can impede tumor formation. In human non-metastatic breast tumors, tumors with higher secretion of exosomes have a better prognosis, higher immune cytolytic activity, and enrichment of pro-inflammatory macrophages compared to tumors with lower secretion of exosomes. Our single-cell methodology can become an essential tool that enables the direct integration of exosome secretion with multiple cellular functions.


2021 ◽  
Vol 23 (1) ◽  
Author(s):  
Cédrik Labrèche ◽  
David P. Cook ◽  
John Abou-Hamad ◽  
Julia Pascoal ◽  
Benjamin R. Pryce ◽  
...  

Abstract Background Breast cancer is a highly heterogeneous disease with multiple drivers and complex regulatory networks. Periostin (Postn) is a matricellular protein involved in a plethora of cancer types and other diseases. Postn has been shown to be involved in various processes of tumor development, such as angiogenesis, invasion, cell survival and metastasis. The expression of Postn in breast cancer cells has been correlated with a more aggressive phenotype. Despite extensive research, it remains unclear how epithelial cancer cells regulate Postn expression. Methods Using murine tumor models and human TMAs, we have assessed the proportion of tumor samples that have acquired Postn expression in tumor cells. Using biochemical approaches and tumor cell lines derived from Neu+ murine primary tumors, we have identified major regulators of Postn gene expression in breast cancer cell lines. Results Here, we show that, while the stromal compartment typically always expresses Postn, about 50% of breast tumors acquire Postn expression in the epithelial tumor cells. Furthermore, using an in vitro model, we show a cross-regulation between FGFR, TGFβ and PI3K/AKT pathways to regulate Postn expression. In HER2-positive murine breast cancer cells, we found that basic FGF can repress Postn expression through a PKC-dependent pathway, while TGFβ can induce Postn expression in a SMAD-independent manner. Postn induction following the removal of the FGF-suppressive signal is dependent on PI3K/AKT signaling. Conclusion Overall, these results reveal a novel regulatory mechanism and shed light on how breast tumor cells acquire Postn expression. This complex regulation is likely to be cell type and cancer specific as well as have important therapeutic implications.


2017 ◽  
Vol 4 (9) ◽  
pp. 171060 ◽  
Author(s):  
Mamoru Kato ◽  
Daniel A. Vasco ◽  
Ryuichi Sugino ◽  
Daichi Narushima ◽  
Alexander Krasnitz

Single-cell sequencing is a promising technology that can address cancer cell evolution by identifying genetic alterations in individual cells. In a recent study, genome-wide DNA copy numbers of single cells were accurately quantified by single-cell sequencing in breast cancers. Phylogenetic-tree analysis revealed genetically distinct populations, each consisting of homogeneous cells. Bioinformatics methods based on population genetics should be further developed to quantitatively analyse the single-cell sequencing data. We developed a bioinformatics framework that was combined with molecular-evolution theories to analyse copy-number losses. This analysis revealed that most deletions in the breast cancers at the single-cell level were generated by simple stochastic processes. A non-standard type of coalescent theory, the multiple-merger coalescent model, aided by approximate Bayesian computation fit well with the data, allowing us to estimate the population-genetic parameters in addition to false-positive and false-negative rates. The estimated parameters suggest that the cancer cells underwent sweepstake evolution, where only one or very few parental cells produced a descendent cell population. We conclude that breast cancer cells successively substitute in a tumour mass, and the high reproduction of only a portion of cancer cells may confer high adaptability to this cancer.


2021 ◽  
Author(s):  
Attila Gabor ◽  
Marco Tognetti ◽  
Alice Driessen ◽  
Jovan Tanevski ◽  
Baosen Guo ◽  
...  

AbstractRecent technological developments allow us to measure the status of dozens of proteins in individual cells. This opens the way to understand the heterogeneity of complex multi-signaling networks across cells and cell-types, with important implications to understand and treat diseases such as cancer. These technologies are however limited to proteins for which antibodies are available and are fairly costly, making predictions of new markers and of existing markers under new conditions a valuable alternative. To assess our capacity to make such predictions and boost further methodological development, we organised the Single Cell Signaling in Breast Cancer DREAM challenge. We used a mass cytometry data set, covering 36 markers in over 4,000 conditions totalling 80 million single cells across 67 breast cancer cell lines. Through four increasingly difficult subchallenges, the participants predicted missing markers, new conditions, and the time course response of single cells to stimuli in the presence and absence of kinase inhibitors. The challenge results show that despite the stochastic nature of signal transduction in single cells, the signaling events are tightly controlled and machine learning methods can accurately predict new experimental data.Graphical AbstractKey pointsOver 80 million single-cell multiplexed measurements across 67 cell lines, 54 conditions and 10 time points to benchmark predictive models of single cell signaling73 approaches from 27 teams for predicting response to kinase inhibitors on single cell level, and dynamic response from unperturbed basal omics dataPredictions of single marker models correlate with measurements with a correlation coefficient of 0.76Top models of whole signaling response models perform almost as well as a biological replicateCell-line specific variation in dynamics can be predicted from basal omics


2020 ◽  
Author(s):  
Noemi Eiro ◽  
Sandra Cid ◽  
Nuria Aguado ◽  
María Fraile ◽  
Jorge Rubén Cabrera ◽  
...  

Abstract Background: Tumor-infiltrating immune cells phenotype is associated with tumor progression. However, little is known about the phenotype of the Peripheral Blood Mononuclear Cells (PBMC) from breast cancer patients. Here, we investigated the expression of MMP1 and MMP11 in PBMC from breast cancer patients and we analyzed gene expression changes upon their interaction with cancer cells and Cancer-Associated Fibroblasts (CAF). Finally, we measured the impact of PBMC in proinflammatory genes expression in normal fibroblast and CAF.Results: Gene expression of MMP1 and MMP11 in PBMC from breast cancer patients (n=54) and control (n=28), and expression of IL1A, IL6, IL17, IFNβ and NFB in breast cancer cell lines (MCF-7 and MDA-MB-231), CAF and in Normal Fibroblasts (NF) were analyzed by qRT-PCR before and after co-culture. Our results show the existence of a group of breast cancer patients (25.9%) with very high levels of MMP11 gene expression in PBMC. Also, we present evidence of increased gene expression of MMP1 and MMP11 in PBMC after co-culture with breast cancer cell lines, NF or CAF. Finally, we show a differential expression profile of inflammatory genes in NF and CAF when co-cultured with control or breast cancer PBMC.Conclusions: We have observed that MMPs expression in PBMC is regulated by the microenvironment, while the expression of inflammatory genes in NF or CAF is differentially regulated by control or breast cancer PBMC. These findings confirm the importance of the interaction and communication between stromal cells and suggest that PBMC would play a role to promote an aggressive tumor behavior.


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