7 results on '"Ciaran Evans"'
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2. Regression, Transformations, and Mixed-Effects with Marine Bryozoans
- Author
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Ciaran Evans
- Subjects
Statistics and Probability ,Management Science and Operations Research ,Education - Published
- 2022
- Full Text
- View/download PDF
3. Reply to: A balanced measure shows superior performance of pseudobulk methods in single-cell RNA-sequencing analysis
- Author
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Kip D. Zimmerman, Ciaran Evans, and Carl D. Langefeld
- Subjects
Multidisciplinary ,General Physics and Astronomy ,General Chemistry ,General Biochemistry, Genetics and Molecular Biology - Published
- 2022
- Full Text
- View/download PDF
4. Think-aloud interviews: A tool for exploring student statistical reasoning
- Author
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Alex Reinhart, Ciaran Evans, Amanda Luby, Josue Orellana, Mikaela Meyer, Jerzy Wieczorek, Peter Elliott, Philipp Burckhardt, and Rebecca Nugent
- Subjects
FOS: Computer and information sciences ,Statistics and Probability ,Statistics - Other Statistics ,Other Statistics (stat.OT) ,ComputingMilieux_COMPUTERSANDEDUCATION ,Management Science and Operations Research ,Education - Abstract
Think-aloud interviews have been a valuable but underused tool in statistics education research. Think-alouds, in which students narrate their reasoning in real time while solving problems, differ in important ways from other types of cognitive interviews and related education research methods. Beyond the uses already found in the statistics literature -- mostly validating the wording of statistical concept inventory questions and studying student misconceptions -- we suggest other possible use cases for think-alouds and summarize best-practice guidelines for designing think-aloud interview studies. Using examples from our own experiences studying the local student body for our introductory statistics courses, we illustrate how research goals should inform study-design decisions and what kinds of insights think-alouds can provide. We hope that our overview of think-alouds encourages more statistics educators and researchers to begin using this method., 29 pages, 2 tables, 2 figures
- Published
- 2019
5. Genome-Wide Transcriptional Response to Varying RpoS Levels in Escherichia coli K-12
- Author
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Joseph T. Wade, Moira Dillon, Carla J. Becker, Ciaran Evans, Lauren M. Shull, Johanna Hardin, Richard P. Bonocora, Anna J. Lee Fong, Lakshmi E. Batachari, Daniel M. Stoebel, Eliot C. Bush, Alicia N. Schep, Garrett T. Wong, and Suzannah M. Beeler
- Subjects
0301 basic medicine ,Blotting, Western ,genetic processes ,030106 microbiology ,Sigma Factor ,Biology ,medicine.disease_cause ,Microbiology ,Transcriptome ,03 medical and health sciences ,Bacterial Proteins ,Sigma factor ,Transcriptional regulation ,medicine ,Promoter Regions, Genetic ,Molecular Biology ,Escherichia coli ,Gene ,Escherichia coli K12 ,Promoter ,Gene Expression Regulation, Bacterial ,biochemical phenomena, metabolism, and nutrition ,equipment and supplies ,Cell biology ,carbohydrates (lipids) ,Regulon ,Mutation ,bacteria ,rpoS ,Research Article ,Genome-Wide Association Study - Abstract
The alternative sigma factor RpoS is a central regulator of many stress responses in Escherichia coli . The level of functional RpoS differs depending on the stress. The effect of these differing concentrations of RpoS on global transcriptional responses remains unclear. We investigated the effect of RpoS concentration on the transcriptome during stationary phase in rich media. We found that 23% of genes in the E. coli genome are regulated by RpoS, and we identified many RpoS-transcribed genes and promoters. We observed three distinct classes of response to RpoS by genes in the regulon: genes whose expression changes linearly with increasing RpoS level, genes whose expression changes dramatically with the production of only a little RpoS (“sensitive” genes), and genes whose expression changes very little with the production of a little RpoS (“insensitive”). We show that sequences outside the core promoter region determine whether an RpoS-regulated gene is sensitive or insensitive. Moreover, we show that sensitive and insensitive genes are enriched for specific functional classes and that the sensitivity of a gene to RpoS corresponds to the timing of induction as cells enter stationary phase. Thus, promoter sensitivity to RpoS is a mechanism to coordinate specific cellular processes with growth phase and may also contribute to the diversity of stress responses directed by RpoS. IMPORTANCE The sigma factor RpoS is a global regulator that controls the response to many stresses in Escherichia coli . Different stresses result in different levels of RpoS production, but the consequences of this variation are unknown. We describe how changing the level of RpoS does not influence all RpoS-regulated genes equally. The cause of this variation is likely the action of transcription factors that bind the promoters of the genes. We show that the sensitivity of a gene to RpoS levels explains the timing of expression as cells enter stationary phase and that genes with different RpoS sensitivities are enriched for specific functional groups. Thus, promoter sensitivity to RpoS is a mechanism that coordinates specific cellular processes in response to stresses.
- Published
- 2017
- Full Text
- View/download PDF
6. Selecting between-sample RNA-Seq normalization methods from the perspective of their assumptions
- Author
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Johanna Hardin, Ciaran Evans, and Daniel M. Stoebel
- Subjects
0301 basic medicine ,Normalization (statistics) ,Paper ,Differential expression analysis ,Computer science ,Machine learning ,computer.software_genre ,03 medical and health sciences ,Databases, Genetic ,False positive paradox ,Humans ,Quantitative Biology - Genomics ,Computer Simulation ,RNA, Messenger ,Molecular Biology ,Genomics (q-bio.GN) ,business.industry ,Sequence Analysis, RNA ,Gene Expression Profiling ,Computational Biology ,High-Throughput Nucleotide Sequencing ,030104 developmental biology ,FOS: Biological sciences ,Artificial intelligence ,business ,Raw data ,computer ,Information Systems - Abstract
RNA-Seq is a widely-used method for studying the behavior of genes under different biological conditions. An essential step in an RNA-Seq study is normalization, in which raw data are adjusted to account for factors that prevent direct comparison of expression measures. Errors in normalization can have a significant impact on downstream analysis, such as inflated false positives in differential expression analysis. An under-emphasized feature of normalization is the assumptions upon which the methods rely and how the validity of these assumptions can have a substantial impact on the performance of the methods. In this paper, we explain how assumptions provide the link between raw RNA-Seq read counts and meaningful measures of gene expression. We examine normalization methods from the perspective of their assumptions, as an understanding of methodological assumptions is necessary for choosing methods appropriate for the data at hand. Furthermore, we discuss why normalization methods perform poorly when their assumptions are violated and how this causes problems in subsequent analysis. To analyze a biological experiment, researchers must select a normalization method with assumptions that are met and that produces a meaningful measure of expression for the given experiment., Comment: 20 pages, 6 figures, 1 table. Supplementary information contains 9 pages, 1 table. For associated simulation code, see https://github.com/ciaranlevans/rnaSeqAssumptions
- Published
- 2017
7. The genome-wide transcriptional response to varying RpoS levels inEscherichia coliK-12
- Author
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Garrett T. Wong, Richard P. Bonocora, Alicia N. Schep, Suzannah M. Beeler, Anna J. Lee Fong, Lauren M. Shull, Lakshmi E. Batachari, Moira Dillon, Ciaran Evans, Carla J. Becker, Eliot C. Bush, Johanna Hardin, Joseph T. Wade, and Daniel M. Stoebel
- Subjects
Genetics ,genetic processes ,Promoter ,biochemical phenomena, metabolism, and nutrition ,Biology ,equipment and supplies ,medicine.disease_cause ,Genome ,carbohydrates (lipids) ,Transcriptome ,Regulon ,Sigma factor ,medicine ,bacteria ,rpoS ,Gene ,Escherichia coli - Abstract
The alternative sigma factor RpoS is a central regulator of a many stress responses inEscherichia coli.The level of functional RpoS differs depending on the stress. The effect of these differing concentrations of RpoS on global transcriptional responses remains unclear. We investigated the effect of RpoS concentration on the transcriptome during stationary phase in rich media. We show that 23% of genes in theE. coligenome are regulated by RpoS level, and we identify many RpoS-transcribed genes and promoters. We observe three distinct classes of response to RpoS by genes in the regulon: genes whose expression changes linearly with increasing RpoS level, genes whose expression changes dramatically with the production of only a little RpoS (“sensitive” genes), and genes whose expression changes very little with the production of a little RpoS (“insensitive”). We show that sequences outside the core promoter region determine whether a RpoS-regulated gene in sensitive or insensitive. Moreover, we show that sensitive and insensitive genes are enriched for specific functional classes, and that the sensitivity of a gene to RpoS corresponds to the timing of induction as cells enter stationary phase. Thus, promoter sensitivity to RpoS is a mechanism to coordinate specific cellular processes with growth phase, and may also contribute to the diversity of stress responses directed by RpoS.ImportanceThe sigma factor RpoS is a global regulator that controls the response to many stresses inEscherichia coli.Different stresses result in different levels of RpoS production, but the consequences of this variation are unknown. We describe how changing the level of RpoS does not influence all RpoS-regulated genes equally. The cause of this variation is likely the action of transcription factors that bind the promoters of the genes. We show that the sensitivity of a gene to RpoS levels explains the timing of expression as cells enter stationary phase, and that genes with different RpoS sensitivities are enriched for specific functional groups. Thus, promoter sensitivity to RpoS is a mechanism to coordinate specific cellular processes in response to stresses.
- Published
- 2016
- Full Text
- View/download PDF
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