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We are analyzing https://link.springer.com/article/10.1186/gb-2014-15-1-r14.

Title:
Dissecting the expression landscape of RNA-binding proteins in human cancers | Genome Biology
Description:
Background RNA-binding proteins (RBPs) play important roles in cellular homeostasis by controlling gene expression at the post-transcriptional level. Results We explore the expression of more than 800 RBPs in sixteen healthy human tissues and their patterns of dysregulation in cancer genomes from The Cancer Genome Atlas project. We show that genes encoding RBPs are consistently and significantly highly expressed compared with other classes of genes, including those encoding regulatory components such as transcription factors, miRNAs and long non-coding RNAs. We also demonstrate that a set of RBPs, numbering approximately 30, are strongly upregulated (SUR) across at least two-thirds of the nine cancers profiled in this study. Analysis of the protein–protein interaction network properties for the SUR and non-SUR groups of RBPs suggests that path length distributions between SUR RBPs is significantly lower than those observed for non-SUR RBPs. We further find that the mean path lengths between SUR RBPs increases in proportion to their contribution to prognostic impact. We also note that RBPs exhibiting higher variability in the extent of dysregulation across breast cancer patients have a higher number of protein–protein interactions. We propose that fluctuating RBP levels might result in an increase in non-specific protein interactions, potentially leading to changes in the functional consequences of RBP binding. Finally, we show that the expression variation of a gene within a patient group is inversely correlated with prognostic impact. Conclusions Overall, our results provide a roadmap for understanding the impact of RBPs on cancer pathogenesis.
Website Age:
28 years and 1 months (reg. 1997-05-29).

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  • Education
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Content Management System {šŸ“}

What CMS is link.springer.com built with?

Custom-built

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Traffic Estimate {šŸ“ˆ}

What is the average monthly size of link.springer.com audience?

🌠 Phenomenal Traffic: 5M - 10M visitors per month


Based on our best estimate, this website will receive around 7,625,932 visitors per month in the current month.

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How Does Link.springer.com Make Money? {šŸ’ø}

The income method remains a mystery to us.

Not all websites focus on profit; some are designed to educate, connect people, or share useful tools. People create websites for numerous reasons. And this could be one such example. Link.springer.com might be making money, but it's not detectable how they're doing it.

Keywords {šŸ”}

rbps, expression, sur, cancer, article, google, scholar, rnabinding, proteins, levels, cancers, rbp, protein, human, nonsur, patients, analysis, tissues, path, figure, rna, test, network, data, file, genes, upregulated, additional, found, level, lengths, posttranscriptional, significantly, gene, dysregulation, variability, breast, high, healthy, interactions, compared, regulatory, strongly, interaction, prognostic, cell, survival, low, impact, higher,

Topics {āœ’ļø}

cell-specific rna-binding proteins dna double-strand breaks sarath chandra janga median absolute deviation recent genome-wide screens ubiquitin-activating enzyme uba1 ubiquitin-activating enzyme e1 rna-binding protein rbmx calais-da-silva fm calais-da-silva fe dysregulated rna-binding proteins mammalian mrna-binding proteins sur rna-binding proteins rna-binding protein rbm3 t-tests comparing tumor recent system-wide study photoactivatable-ribonucleoside-enhanced clip rna-binding protein network wnt–β-catenin signaling article download pdf bƶrjeson-forssman-lehmann syndrome borjeson-forssman-lehmann syndrome anti-apoptotic protein form early-stage human papillomavirus protein–protein interaction network fas apoptosis-promoting receptor articleĀ numberĀ r14 rna-binding protein nono t-test comparing tumor rna-binding proteins rna-binding proteins rna binding proteins transcriptome search search extensive post-transcriptional control nucleotide binding tumour progression articleĀ  google scholar poor relapse-free survival full size image rbp–rna interaction networks global rna-binding role negative log-ratios represent post-transcriptional regulatory control shorter path length article kechavarzi protein–protein interactions documented average path length moorhead gb rna binding protein rna-binding protein

Questions {ā“}

  • Ciesla J: Metabolic enzymes that bind RNA: yet another level of cellular regulatory network?

Schema {šŸ—ŗļø}

WebPage:
      mainEntity:
         headline:Dissecting the expression landscape of RNA-binding proteins in human cancers
         description:RNA-binding proteins (RBPs) play important roles in cellular homeostasis by controlling gene expression at the post-transcriptional level. We explore the expression of more than 800 RBPs in sixteen healthy human tissues and their patterns of dysregulation in cancer genomes from The Cancer Genome Atlas project. We show that genes encoding RBPs are consistently and significantly highly expressed compared with other classes of genes, including those encoding regulatory components such as transcription factors, miRNAs and long non-coding RNAs. We also demonstrate that a set of RBPs, numbering approximately 30, are strongly upregulated (SUR) across at least two-thirds of the nine cancers profiled in this study. Analysis of the protein–protein interaction network properties for the SUR and non-SUR groups of RBPs suggests that path length distributions between SUR RBPs is significantly lower than those observed for non-SUR RBPs. We further find that the mean path lengths between SUR RBPs increases in proportion to their contribution to prognostic impact. We also note that RBPs exhibiting higher variability in the extent of dysregulation across breast cancer patients have a higher number of protein–protein interactions. We propose that fluctuating RBP levels might result in an increase in non-specific protein interactions, potentially leading to changes in the functional consequences of RBP binding. Finally, we show that the expression variation of a gene within a patient group is inversely correlated with prognostic impact. Overall, our results provide a roadmap for understanding the impact of RBPs on cancer pathogenesis.
         datePublished:2014-01-10T00:00:00Z
         dateModified:2014-01-10T00:00:00Z
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            Protein Interaction Network
            Short Path Length
            Median Absolute Deviation
            Path Length Distribution
            Animal Genetics and Genomics
            Human Genetics
            Plant Genetics and Genomics
            Microbial Genetics and Genomics
            Bioinformatics
            Evolutionary Biology
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      headline:Dissecting the expression landscape of RNA-binding proteins in human cancers
      description:RNA-binding proteins (RBPs) play important roles in cellular homeostasis by controlling gene expression at the post-transcriptional level. We explore the expression of more than 800 RBPs in sixteen healthy human tissues and their patterns of dysregulation in cancer genomes from The Cancer Genome Atlas project. We show that genes encoding RBPs are consistently and significantly highly expressed compared with other classes of genes, including those encoding regulatory components such as transcription factors, miRNAs and long non-coding RNAs. We also demonstrate that a set of RBPs, numbering approximately 30, are strongly upregulated (SUR) across at least two-thirds of the nine cancers profiled in this study. Analysis of the protein–protein interaction network properties for the SUR and non-SUR groups of RBPs suggests that path length distributions between SUR RBPs is significantly lower than those observed for non-SUR RBPs. We further find that the mean path lengths between SUR RBPs increases in proportion to their contribution to prognostic impact. We also note that RBPs exhibiting higher variability in the extent of dysregulation across breast cancer patients have a higher number of protein–protein interactions. We propose that fluctuating RBP levels might result in an increase in non-specific protein interactions, potentially leading to changes in the functional consequences of RBP binding. Finally, we show that the expression variation of a gene within a patient group is inversely correlated with prognostic impact. Overall, our results provide a roadmap for understanding the impact of RBPs on cancer pathogenesis.
      datePublished:2014-01-10T00:00:00Z
      dateModified:2014-01-10T00:00:00Z
      pageStart:1
      pageEnd:16
      license:http://creativecommons.org/licenses/by/2.0/
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      keywords:
         Prognostic Impact
         Protein Interaction Network
         Short Path Length
         Median Absolute Deviation
         Path Length Distribution
         Animal Genetics and Genomics
         Human Genetics
         Plant Genetics and Genomics
         Microbial Genetics and Genomics
         Bioinformatics
         Evolutionary Biology
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               type:PostalAddress
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      email:[email protected]
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      name:Department of Biohealth Informatics, School of Informatics and Computing, Indiana University – Purdue University, Indianapolis, USA
      name:Department of Biohealth Informatics, School of Informatics and Computing, Indiana University – Purdue University, Indianapolis, USA
      name:Center for Computational Biology and Bioinformatics, Indiana University School of Medicine, 5021 Health Information and Translational Sciences (HITS), Indianapolis, USA
      name:Department of Medical and Molecular Genetics, Indiana University School of Medicine, Indianapolis, USA

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