Comparison of HCV-associated gene expression and cell signaling pathways in cells with or without HCV replicon and in replicon-cured cells

2009 ◽  
Vol 45 (5) ◽  
pp. 523-536 ◽  
Author(s):  
Yuki Nishimura-Sakurai ◽  
Naoya Sakamoto ◽  
Kaoru Mogushi ◽  
Satoshi Nagaie ◽  
Mina Nakagawa ◽  
...  
2010 ◽  
Vol 52 ◽  
pp. S258
Author(s):  
Y. Nishimura-Sakurai ◽  
N. Sakamoto ◽  
K. Mogushi ◽  
S. Nagaie ◽  
M. Nakagawa ◽  
...  

2017 ◽  
Vol 35 (15_suppl) ◽  
pp. e23162-e23162
Author(s):  
Konstantin Volyanskyy ◽  
Minghao Zhong ◽  
Payal Keswarpu ◽  
John T Fallon ◽  
Michael Paul Fanucchi ◽  
...  

e23162 Background: Cancer is characterized by a variety of heterogeneous genomic and transcriptomic patterns involving highly complex signaling biological pathways. The problem of identification of the factors driving tumor progression becomes even more challenging due to intricate interaction mechanisms between these pathways. Using novel approaches in machine learning, we demonstrate the ability to quantitatively describe characteristic signaling patterns in cancer based on transcriptomic data Methods: We used RNASeq data from 20531 genes in 174 samples of GBM from The Cancer Genome Atlas including 5 major histological subtypes – Classical, G-CIMP, Mesenchymal, Neural, and Proneural, anddeveloped predictive computational framework for molecular subtype differentiation from normal tissue relying on variance based gene selection and random forest algorithm. Results: We obtained a few key findings – (1) genes from cell signaling pathways alone differentiate each subtype from normal tissue with 100% accuracy; (2) predictive genes are specific to each subtype; (3) inferred pathway interactions are also specific to each subtype; (4) typically most of the predictive genes involved in signaling are down-regulated in tumor compared to normal tissue (MAPT, PRKCG, PDE2A, RYR2, ATP1B1, GRN1, GNAO1), however, in each subtype we observed a smaller subset of predictive genes which are highly up-regulated in tumor (ID3, FN1, JAG1, F2R, COL4A1, EDAR, CDK2, CDK4, MFNG, BIRC5, CCNB2). We detected and quantitatively evaluated characteristic signaling pathway involvement across the GBM subtypes for MAPK, RAP1, RAS, Notch, PI3K-Akt, mTOR, FoxO, Jak-STAT, Wnt, cAMP, and Calcium Signaling, providing a unique approximation for each subtype signaling profile. Conclusions: In this study, we identified gene expression profiles and associated signaling pathways for distinguishing GBM Multiforme subtypes from normal tissue. We observed and described a dense complex picture of interacting signaling pathways. The detected interactions may provide clinical insights and could be used to identify potential therapeutic targets, however, more research is needed to confirm this.


2021 ◽  
Author(s):  
Marta Sloniecka ◽  
Andre Vicente ◽  
Berit Bystrom ◽  
Jingxia Liu ◽  
Fatima Pedrosa-Domellof

Background: To study aniridia-related keratopathy (ARK) relevant cell signaling pathways (Notch1, Wnt/β-catenin, Sonic hedgehog (SHH) and mTOR) in normal human fetal corneas in comparison with normal human adult corneas. Results: 20 wg fetal and normal adult corneas showed similar staining patterns for Notch1, however 10-11 wg fetal corneas showed increased presence of Notch1. Numb and Dlk1 had an enhanced presence in the fetal corneas compared to the adult corneas. Fetal corneas showed stronger immunolabeling with antibodies against β-catenin, Wnt5a and Wnt7a, Gli1, Hes1, p-rpS6, and mTOR when compared to the adult corneas. Gene expression of Notch1, Wnt5A, Wnt7A, β-catenin, Hes1, mTOR and rps6 was higher in the 9-12 wg fetal corneas when compared to adult corneas. Conclusions: The cell signaling pathway differences found between human fetal and adult corneas were similar to those previously found in ARK corneas with the exception of Notch1. Analogous profiles of cell signaling pathway activation between human fetal corneas and ARK corneas suggests that there is a less differentiated host milieu in ARK.


2019 ◽  
Author(s):  
Tinghua Huang ◽  
Min Yang ◽  
Kaihui Dong ◽  
Mingjiang Xu ◽  
Jinhui Liu ◽  
...  

Abstract Background: Gene expression regulators identified in transcriptome profiling experiment may be selected as targets for genetic manipulations in farm animals. Results: In this study, we developed a gene expression profile of 76,000+ unique transcripts for 224 porcine samples from 28 normal tissues collected from 32 animals using Super deepSAGE technology. Excellent sequencing depth has been achieved for each multiplexed library, and replicated samples from the same tissues cluster together, demonstrating the high quality of the Super deepSAGE data. Comparison with previous research indicated that our results not only have excellent reproducibility but also have greatly extended the coverage of the sample types as well as the number of genes. Clustering analysis discovered ten groups of genes showing distinct expression patterns among those samples. Binding motif over representative analysis identified 41 regulators and finally, we demonstrate a potential application of this dataset to infectious and immune research by identifying an LPS-dependent transcription factor, runt-related transcription factor 1 (RUNX1), in peripheral blood mononuclear cells (PBMCs). The selected genes are specifically responsible for the transcription of toll-like receptor 2 (TLR2), lymphocyte-specific protein tyrosine kinase (LCK), and vav1 oncogene (VAV1), which belong to the T and B cell signaling pathways. Conclusions: the Super deepSAGE technology and tissue specific expression profiles are valuable resources for investigating the porcine gene expression regulations. The identified RUNX1 target genes belong to the T and B cell signaling pathways, making it a potential novel targets for the diagnostic and therapy of bacterial infections and other immune disorders.


2021 ◽  
Vol 160 ◽  
pp. 103277
Author(s):  
Ana Carolina B. da C. Rodrigues ◽  
Rafaela G.A. Costa ◽  
Suellen L.R. Silva ◽  
Ingrid R.S.B. Dias ◽  
Rosane B. Dias ◽  
...  

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