25 results on '"Hahne, Florian"'
Search Results
2. High-Throughput Flow Cytometry–Based Assay to Identify Apoptosis-Inducing Proteins
- Author
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Sauermann, Mamatha, Hahne, Florian, Schmidt, Christian, Majety, Meher, Rosenfelder, Heiko, Bechtel, Stephanie, Huber, Wolfgang, Poustka, Annemarie, Arlt, Dorit, and Wiemann, Stefan
- Published
- 2007
- Full Text
- View/download PDF
3. Identification of Dlk1-Dio3 Imprinted Gene Cluster Noncoding RNAs as Novel Candidate Biomarkers for Liver Tumor Promotion
- Author
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Lempiäinen, Harri, Couttet, Philippe, Bolognani, Federico, Müller, Arne, Dubost, Valérie, Luisier, Raphaëlle, Del Rio Espinola, Alberto, Vitry, Veronique, Unterberger, Elif B., Thomson, John P., Treindl, Fridolin, Metzger, Ute, Wrzodek, Clemens, Hahne, Florian, Zollinger, Tulipan, Brasa, Sarah, Kalteis, Magdalena, Marcellin, Magali, Giudicelli, Fanny, Braeuning, Albert, Morawiec, Laurent, Zamurovic, Natasa, Längle, Ulrich, Scheer, Nico, Schübeler, Dirk, Goodman, Jay, Chibout, Salah-Dine, Marlowe, Jennifer, Theil, Diethilde, Heard, David J., Grenet, Olivier, Zell, Andreas, Templin, Markus F., Meehan, Richard R., Wolf, Roland C., Elcombe, Clifford R., Schwarz, Michael, Moulin, Pierre, Terranova, Rémi, and Moggs, Jonathan G.
- Published
- 2013
- Full Text
- View/download PDF
4. The LIFEdb database in 2006
- Author
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Mehrle, Alexander, Rosenfelder, Heiko, Schupp, Ingo, del Val, Coral, Arlt, Dorit, Hahne, Florian, Bechtel, Stephanie, Simpson, Jeremy, Hofmann, Oliver, Hide, Winston, Glatting, Karl-Heinz, Huber, Wolfgang, Pepperkok, Rainer, Poustka, Annemarie, and Wiemann, Stefan
- Published
- 2006
5. flowClust: a Bioconductor package for automated gating of flow cytometry data
- Author
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Lo Kenneth, Hahne Florian, Brinkman Ryan R, and Gottardo Raphael
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background As a high-throughput technology that offers rapid quantification of multidimensional characteristics for millions of cells, flow cytometry (FCM) is widely used in health research, medical diagnosis and treatment, and vaccine development. Nevertheless, there is an increasing concern about the lack of appropriate software tools to provide an automated analysis platform to parallelize the high-throughput data-generation platform. Currently, to a large extent, FCM data analysis relies on the manual selection of sequential regions in 2-D graphical projections to extract the cell populations of interest. This is a time-consuming task that ignores the high-dimensionality of FCM data. Results In view of the aforementioned issues, we have developed an R package called flowClust to automate FCM analysis. flowClust implements a robust model-based clustering approach based on multivariate t mixture models with the Box-Cox transformation. The package provides the functionality to identify cell populations whilst simultaneously handling the commonly encountered issues of outlier identification and data transformation. It offers various tools to summarize and visualize a wealth of features of the clustering results. In addition, to ensure its convenience of use, flowClust has been adapted for the current FCM data format, and integrated with existing Bioconductor packages dedicated to FCM analysis. Conclusion flowClust addresses the issue of a dearth of software that helps automate FCM analysis with a sound theoretical foundation. It tends to give reproducible results, and helps reduce the significant subjectivity and human time cost encountered in FCM analysis. The package contributes to the cytometry community by offering an efficient, automated analysis platform which facilitates the active, ongoing technological advancement.
- Published
- 2009
- Full Text
- View/download PDF
6. flowCore: a Bioconductor package for high throughput flow cytometry
- Author
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Spidlen Josef, Sarkar Deepayan, Haaland Perry, Ellis Byron, Brinkman Ryan R, LeMeur Nolwenn, Hahne Florian, Strain Errol, and Gentleman Robert
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background Recent advances in automation technologies have enabled the use of flow cytometry for high throughput screening, generating large complex data sets often in clinical trials or drug discovery settings. However, data management and data analysis methods have not advanced sufficiently far from the initial small-scale studies to support modeling in the presence of multiple covariates. Results We developed a set of flexible open source computational tools in the R package flowCore to facilitate the analysis of these complex data. A key component of which is having suitable data structures that support the application of similar operations to a collection of samples or a clinical cohort. In addition, our software constitutes a shared and extensible research platform that enables collaboration between bioinformaticians, computer scientists, statisticians, biologists and clinicians. This platform will foster the development of novel analytic methods for flow cytometry. Conclusion The software has been applied in the analysis of various data sets and its data structures have proven to be highly efficient in capturing and organizing the analytic work flow. Finally, a number of additional Bioconductor packages successfully build on the infrastructure provided by flowCore, open new avenues for flow data analysis.
- Published
- 2009
- Full Text
- View/download PDF
7. Extending pathways based on gene lists using InterPro domain signatures
- Author
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Wiemann Stefan, Poustka Annemarie, Arlt Dorit, Mehrle Alexander, Hahne Florian, and Beissbarth Tim
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background High-throughput technologies like functional screens and gene expression analysis produce extended lists of candidate genes. Gene-Set Enrichment Analysis is a commonly used and well established technique to test for the statistically significant over-representation of particular pathways. A shortcoming of this method is however, that most genes that are investigated in the experiments have very sparse functional or pathway annotation and therefore cannot be the target of such an analysis. The approach presented here aims to assign lists of genes with limited annotation to previously described functional gene collections or pathways. This works by comparing InterPro domain signatures of the candidate gene lists with domain signatures of gene sets derived from known classifications, e.g. KEGG pathways. Results In order to validate our approach, we designed a simulation study. Based on all pathways available in the KEGG database, we create test gene lists by randomly selecting pathway genes, removing these genes from the known pathways and adding variable amounts of noise in the form of genes not annotated to the pathway. We show that we can recover pathway memberships based on the simulated gene lists with high accuracy. We further demonstrate the applicability of our approach on a biological example. Conclusion Results based on simulation and data analysis show that domain based pathway enrichment analysis is a very sensitive method to test for enrichment of pathways in sparsely annotated lists of genes. An R based software package domainsignatures, to routinely perform this analysis on the results of high-throughput screening, is available via Bioconductor.
- Published
- 2008
- Full Text
- View/download PDF
8. High throughput flow cytometry analysis with Bioconductor
- Author
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Le Meur, Nolwenn, Hahne, Florian, Sarkar, Deepayan, Ellis, Byron, Spidlen, Josef, Brinkman, Ryan R, Gentleman, Robert, Biological systems and models, bioinformatics and sequences (SYMBIOSE), Institut de Recherche en Informatique et Systèmes Aléatoires (IRISA), Université de Rennes 1 (UR1), Université de Rennes (UNIV-RENNES)-Université de Rennes (UNIV-RENNES)-Institut National des Sciences Appliquées - Rennes (INSA Rennes), Institut National des Sciences Appliquées (INSA)-Université de Rennes (UNIV-RENNES)-Institut National des Sciences Appliquées (INSA)-Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Université de Rennes 1 (UR1), Institut National des Sciences Appliquées (INSA)-Université de Rennes (UNIV-RENNES)-Institut National des Sciences Appliquées (INSA)-Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Inria Rennes – Bretagne Atlantique, Institut National de Recherche en Informatique et en Automatique (Inria), Fred Hutchinson Cancer Research Center [Seattle] (FHCRC), AdBrite Inc, Terry Fox Laboratory, BC Cancer Agency (BCCRC)-British Columbia Cancer Agency Research Centre, Groupe d'Etude de la Reproduction Chez l'Homme et les Mammiferes (GERHM), Institut National de la Santé et de la Recherche Médicale (INSERM)-Université de Rennes 1 (UR1), Université de Rennes (UNIV-RENNES)-Université de Rennes (UNIV-RENNES), Université de Rennes (UR)-Institut National des Sciences Appliquées - Rennes (INSA Rennes), Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Université de Rennes (UR)-Institut National des Sciences Appliquées - Rennes (INSA Rennes), Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Institut National de Recherche en Informatique et en Automatique (Inria)-Centre National de la Recherche Scientifique (CNRS)-Inria Rennes – Bretagne Atlantique, and Université de Rennes (UR)-Institut National de la Santé et de la Recherche Médicale (INSERM)
- Subjects
[INFO.INFO-BI]Computer Science [cs]/Bioinformatics [q-bio.QM] ,[SDV.BIBS]Life Sciences [q-bio]/Quantitative Methods [q-bio.QM] - Abstract
International audience; Recent advances in automation technologies have enabled the use of flow cytometry high content screening (FH-HCS), in both basic and clinical research, generating large complex data sets with any covariates. However, data management and data analysis methods have not yet progressed sufficiently far from the initial small-scale studies to support modeling in the presence of multiple covariates. To those aims, we developed a set of computational tools in the R package flowCore to facilitate the analysis of these complex data. We propose R data structures to handle flow cytometry data through the main steps of importing, storing, assessing and preprocessing data from flow cytometry experiments. For example, this package provides facilities for compensation, transformation and filtering preprocessing steps. A key component of the flowCore package is to have suitable data structures that support the application of similar operations to a collection of samples or a clinical cohort. In addition, our software constitutes a shared and extensible research platform that enables collaboration between bioinformaticians, computer scientists, statisticians and biologists. The software has been used in the analysis of various data sets and its data structures have proven to be highly efficient in capturing and organizing the analytic work flow. Finally, a number of additional Bioconductor packages successfully build on the infrastructure provided by flowCore, offers new opportunities for flow data analysis.
- Published
- 2009
9. Visualizing Genomic Data Using Gviz and Bioconductor.
- Author
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Hahne, Florian and Ivanek, Robert
- Published
- 2016
- Full Text
- View/download PDF
10. Translational Safety Genetics.
- Author
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Bhoumik, Priyasma, Del Rio-Espinola, Alberto, Hahne, Florian, Moggs, Jonathan, and Grenet, Olivier
- Subjects
GENETICS ,DRUG development ,HUMAN genetic variation ,PHYSIOLOGY - Abstract
The emerging field of translational safety genetics is providing new opportunities to enhance drug discovery and development. Genetic variation in therapeutic drug targets, off-target interactors and relevant drug metabolism/disposition pathways can contribute to diverse drug pharmacologic and toxicologic responses between different animal species, strains and geographic origins. Recent advances in the sequencing of rodent, canine, nonhuman primate, and minipig genomes have dramatically improved the ability to select the most appropriate animal species for preclinical drug toxicity studies based on genotypic characterization of drug targets/pathways and drug metabolism and/or disposition, thus avoiding inconclusive or misleading animal studies, consistent with the principles of the 3Rs (replacement, reduction and refinement). The genetic background of individual animals should also be taken into consideration when interpreting phenotypic outcomes from toxicity studies and susceptibilities to spontaneous safety-relevant background findings. [ABSTRACT FROM AUTHOR]
- Published
- 2017
- Full Text
- View/download PDF
11. Reciprocal changes in DNA methylation and hydroxymethylation and a broad repressive epigenetic switch characterize FMR1 transcriptional silencing in fragile X syndrome.
- Author
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Brasa, Sarah, Mueller, Arne, Jacquemont, Sébastien, Hahne, Florian, Rozenberg, Izabela, Peters, Thomas, Yunsheng He, McCormack, Christine, Gasparini, Fabrizio, Chibout, Salah-Dine, Grenet, Olivier, Moggs, Jonathan, Gomez-Mancilla, Baltazar, and Terranova, Rémi
- Published
- 2016
- Full Text
- View/download PDF
12. Orchestrating high-throughput genomic analysis with Bioconductor.
- Author
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Huber, Wolfgang, Carey, Vincent J, Gentleman, Robert, Anders, Simon, Carlson, Marc, Carvalho, Benilton S, Bravo, Hector Corrada, Davis, Sean, Gatto, Laurent, Girke, Thomas, Gottardo, Raphael, Hahne, Florian, Hansen, Kasper D, Irizarry, Rafael A, Lawrence, Michael, Love, Michael I, MacDonald, James, Obenchain, Valerie, Oleś, Andrzej K, and Pagès, Hervé
- Subjects
GENOMICS ,MOLECULAR biology ,PROGRAMMING languages ,BIOINFORMATICS ,RESEARCH ,COMPUTER software - Abstract
Bioconductor is an open-source, open-development software project for the analysis and comprehension of high-throughput data in genomics and molecular biology. The project aims to enable interdisciplinary research, collaboration and rapid development of scientific software. Based on the statistical programming language R, Bioconductor comprises 934 interoperable packages contributed by a large, diverse community of scientists. Packages cover a range of bioinformatic and statistical applications. They undergo formal initial review and continuous automated testing. We present an overview for prospective users and contributors. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
13. Heart Structure-Specific Transcriptomic Atlas Reveals Conserved microRNA-mRNA Interactions.
- Author
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Vacchi-Suzzi, Caterina, Hahne, Florian, Scheubel, Philippe, Marcellin, Magali, Dubost, Valerie, Westphal, Magdalena, Boeglen, Catherine, Büchmann-Møller, Stine, Cheung, Ming Sin, Cordier, André, De Benedetto, Christopher, Deurinck, Mark, Frei, Moritz, Moulin, Pierre, Oakeley, Edward, Grenet, Olivier, Grevot, Armelle, Stull, Robert, Theil, Diethilde, and Moggs, Jonathan G.
- Subjects
- *
MICRORNA , *GENE expression , *CARDIOVASCULAR diseases , *SPECIES , *MYOCARDIUM , *PATHOLOGICAL physiology - Abstract
MicroRNAs are short non-coding RNAs that regulate gene expression at the post-transcriptional level and play key roles in heart development and cardiovascular diseases. Here, we have characterized the expression and distribution of microRNAs across eight cardiac structures (left and right ventricles, apex, papillary muscle, septum, left and right atrium and valves) in rat, Beagle dog and cynomolgus monkey using microRNA sequencing. Conserved microRNA signatures enriched in specific heart structures across these species were identified for cardiac valve (miR-let-7c, miR-125b, miR-127, miR-199a-3p, miR-204, miR-320, miR-99b, miR-328 and miR-744) and myocardium (miR-1, miR-133b, miR-133a, miR-208b, miR-30e, miR-499-5p, miR-30e*). The relative abundance of myocardium-enriched (miR-1) and valve-enriched (miR-125b-5p and miR-204) microRNAs was confirmed using in situ hybridization. MicroRNA-mRNA interactions potentially relevant for cardiac functions were explored using anti-correlation expression analysis and microRNA target prediction algorithms. Interactions between miR-1/Timp3, miR-125b/Rbm24, miR-204/Tgfbr2 and miR-208b/Csnk2a2 were identified and experimentally investigated in human pulmonary smooth muscle cells and luciferase reporter assays. In conclusion, we have generated a high-resolution heart structure-specific mRNA/microRNA expression atlas for three mammalian species that provides a novel resource for investigating novel microRNA regulatory circuits involved in cardiac molecular physiopathology. [ABSTRACT FROM AUTHOR]
- Published
- 2013
- Full Text
- View/download PDF
14. Analysis of High-Throughput Flow Cytometry Data Using plateCore.
- Author
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Strain, Errol, Hahne, Florian, Brinkman, Ryan R., and Haaland, Perry
- Subjects
FLOW cytometry ,CYTOLOGICAL techniques ,COMPUTER software ,INTEGRATED software ,DATA analysis ,DATA corruption ,MODEL validation ,PROSPECTING ,BIOCONCENTRATION - Abstract
Flow cytometry (FCM) software packages from R/Bioconductor, such as flowCore and flowViz, serve as an open platform for development of new analysis tools and methods. We created plateCore, a new package that extends the functionality in these core packages to enable automated negative control-based gating and make the processing and analysis of plate-based data sets from high-throughput FCM screening experiments easier. plateCore was used to analyze data from a BD FACS CAP screening experiment where five Peripheral Blood Mononucleocyte Cell (PBMC) samples were assayed for 189 different human cell surface markers. This same data set was also manually analyzed by a cytometry expert using the FlowJo data analysis software package (TreeStar, USA). We show that the expression values for markers characterized using the automated approach in plateCore are in good agreement with those from FlowJo, and that using plateCore allows for more reproducible analyses of FCM screening data. [ABSTRACT FROM AUTHOR]
- Published
- 2009
- Full Text
- View/download PDF
15. iFlow: A Graphical User Interface for Flow Cytometry Tools in Bioconductor.
- Author
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Kyongryun Lee, Hahne, Florian, Sarkar, Deepayan, and Gentleman, Robert
- Subjects
USER interfaces ,HUMAN-computer interaction ,COMPUTER software ,MEDICAL care research ,PROGRAMMING languages ,WEB development ,COMPUTER graphics ,SYSTEMS design ,INTERNET programming - Abstract
Flow cytometry (FCM) has become an important analysis technology in health care and medical research, but the large volume of data produced by modern high-throughput experiments has presented significant new challenges for computational analysis tools. The development of an FCM software suite in Bioconductor represents one approach to overcome these challenges. In the spirit of the R programming language (Tree Star Inc., "FlowJo"), these tools are predominantly console-driven, allowing for programmatic access and rapid development of novel algorithms. Using this software requires a solid understanding of programming concepts and of the R language. However, some of these tools-in particular the statistical graphics and novel analytical methods-are also useful for nonprogrammers. To this end, we have developed an open source, extensible graphical user interface (GUI) iFlow, which sits on top of the Bioconductor backbone, enabling basic analyses by means of convenient graphical menus and wizards. We envision iFlow to be easily extensible in order to quickly integrate novel methodological developments. [ABSTRACT FROM AUTHOR]
- Published
- 2009
- Full Text
- View/download PDF
16. flowCore: a Bioconductor package for high throughput flow cytometry.
- Author
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Hahne, Florian, LeMeur, Nolwenn, Brinkman, Ryan R., Ellis, Byron, Haaland, Perry, Sarkar, Deepayan, Spidlen, Josef, Strain, Errol, and Gentleman, Robert
- Subjects
CLINICAL trials ,CLINICAL medicine research ,CYTOMETRY ,DRUG development ,PHARMACOLOGY ,BIOINFORMATICS - Abstract
Background: Recent advances in automation technologies have enabled the use of flow cytometry for high throughput screening, generating large complex data sets often in clinical trials or drug discovery settings. However, data management and data analysis methods have not advanced sufficiently far from the initial small-scale studies to support modeling in the presence of multiple covariates. Results: We developed a set of flexible open source computational tools in the R package flowCore to facilitate the analysis of these complex data. A key component of which is having suitable data structures that support the application of similar operations to a collection of samples or a clinical cohort. In addition, our software constitutes a shared and extensible research platform that enables collaboration between bioinformaticians, computer scientists, statisticians, biologists and clinicians. This platform will foster the development of novel analytic methods for flow cytometry. Conclusion: The software has been applied in the analysis of various data sets and its data structures have proven to be highly efficient in capturing and organizing the analytic work flow. Finally, a number of additional Bioconductor packages successfully build on the infrastructure provided by flowCore, open new avenues for flow data analysis. [ABSTRACT FROM AUTHOR]
- Published
- 2009
- Full Text
- View/download PDF
17. Extending pathways based on gene lists using InterPro domain signatures.
- Author
-
Hahne, Florian, Mehrle, Alexander, Arlt, Dorit, Poustka, Annemarie, Wiemann, Stefan, and Beissbarth, Tim
- Subjects
GENE expression ,COMPUTER software ,DATABASES ,DATA analysis ,GENES - Abstract
Background: High-throughput technologies like functional screens and gene expression analysis produce extended lists of candidate genes. Gene-Set Enrichment Analysis is a commonly used and well established technique to test for the statistically significant over-representation of particular pathways. A shortcoming of this method is however, that most genes that are investigated in the experiments have very sparse functional or pathway annotation and therefore cannot be the target of such an analysis. The approach presented here aims to assign lists of genes with limited annotation to previously described functional gene collections or pathways. This works by comparing InterPro domain signatures of the candidate gene lists with domain signatures of gene sets derived from known classifications, e.g. KEGG pathways. Results: In order to validate our approach, we designed a simulation study. Based on all pathways available in the KEGG database, we create test gene lists by randomly selecting pathway genes, removing these genes from the known pathways and adding variable amounts of noise in the form of genes not annotated to the pathway. We show that we can recover pathway memberships based on the simulated gene lists with high accuracy. We further demonstrate the applicability of our approach on a biological example. Conclusion: Results based on simulation and data analysis show that domain based pathway enrichment analysis is a very sensitive method to test for enrichment of pathways in sparsely annotated lists of genes. An R based software package domainsignatures, to routinely perform this analysis on the results of high-throughput screening, is available via Bioconductor. [ABSTRACT FROM AUTHOR]
- Published
- 2008
- Full Text
- View/download PDF
18. QuasR: quantification and annotation of short reads in R.
- Author
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Gaidatzis, Dimos, Lerch, Anita, Hahne, Florian, and Stadler, Michael B.
- Abstract
Summary: QuasR is a package for the integrated analysis of high-throughput sequencing data in R, covering all steps from read preprocessing, alignment and quality control to quantification. QuasR supports different experiment types (including RNA-seq, ChIP-seq and Bis-seq) and analysis variants (e.g. paired-end, stranded, spliced and allele-specific), and is integrated in Bioconductor so that its output can be directly processed for statistical analysis and visualization. [ABSTRACT FROM AUTHOR]
- Published
- 2015
- Full Text
- View/download PDF
19. Visualizing Genomic Data Using Gviz and Bioconductor.
- Author
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Hahne F and Ivanek R
- Subjects
- Databases, Genetic, High-Throughput Nucleotide Sequencing, Internet, Molecular Sequence Annotation methods, Computational Biology methods, Genomics methods, Software
- Abstract
The Gviz package offers a flexible framework to visualize genomic data in the context of a variety of different genome annotation features. Being tightly embedded in the Bioconductor genomics landscape, it nicely integrates with the existing infrastructure, but also provides direct data retrieval from external sources like Ensembl and UCSC and supports most of the commonly used annotation file types. Through carefully chosen default settings the package greatly facilitates the production of publication-ready figures of genomic loci, while still maintaining high flexibility due to its ample customization options.
- Published
- 2016
- Full Text
- View/download PDF
20. Computational methods for early predictive safety assessment from biological and chemical data.
- Author
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Nigsch F, Lounkine E, McCarren P, Cornett B, Glick M, Azzaoui K, Urban L, Marc P, Müller A, Hahne F, Heard DJ, and Jenkins JL
- Subjects
- Animals, Chemical Phenomena, Computer Simulation, Endpoint Determination, Humans, Computational Biology methods, Drug Evaluation, Preclinical methods, Drug-Related Side Effects and Adverse Reactions, Pharmaceutical Preparations metabolism
- Abstract
Introduction: The goal of early predictive safety assessment (PSA) is to keep compounds with detectable liabilities from progressing further in the pipeline. Such compounds jeopardize the core of pharmaceutical research and development and limit the timely delivery of innovative therapeutics to the patient. Computational methods are increasingly used to help understand observed data, generate new testable hypotheses of relevance to safety pharmacology, and supplement and replace costly and time-consuming experimental procedures., Areas Covered: The authors survey methods operating on different scales of both physical extension and complexity. After discussing methods used to predict liabilities associated with structures of individual compounds, the article reviews the use of adverse event data and safety profiling panels. Finally, the authors examine the complexities of toxicology data from animal experiments and how these data can be mined., Expert Opinion: A significant obstacle for data-driven safety assessment is the absence of integrated data sets due to a lack of sharing of data and of using standard ontologies for data relevant to safety assessment. Informed decisions to derive focused sets of compounds can help to avoid compound liabilities in screening campaigns, and improved hit assessment of such campaigns can benefit the early termination of undesirable compounds.
- Published
- 2011
- Full Text
- View/download PDF
21. Per-channel basis normalization methods for flow cytometry data.
- Author
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Hahne F, Khodabakhshi AH, Bashashati A, Wong CJ, Gascoyne RD, Weng AP, Seyfert-Margolis V, Bourcier K, Asare A, Lumley T, Gentleman R, and Brinkman RR
- Subjects
- Antibodies, Antigens, CD immunology, Blood Cells cytology, Blood Cells metabolism, Cell Separation, Electronic Data Processing methods, Flow Cytometry statistics & numerical data, HLA-DR Antigens immunology, Humans, Lymph Nodes cytology, Lymph Nodes metabolism, Algorithms, Flow Cytometry methods
- Abstract
Between-sample variation in high-throughput flow cytometry data poses a significant challenge for analysis of large-scale data sets, such as those derived from multicenter clinical trials. It is often hard to match biologically relevant cell populations across samples because of technical variation in sample acquisition and instrumentation differences. Thus, normalization of data is a critical step before analysis, particularly in large-scale data sets from clinical trials, where group-specific differences may be subtle and patient-to-patient variation common. We have developed two normalization methods that remove technical between-sample variation by aligning prominent features (landmarks) in the raw data on a per-channel basis. These algorithms were tested on two independent flow cytometry data sets by comparing manually gated data, either individually for each sample or using static gating templates, before and after normalization. Our results show a marked improvement in the overlap between manual and static gating when the data are normalized, thereby facilitating the use of automated analyses on large flow cytometry data sets. Such automated analyses are essential for high-throughput flow cytometry.
- Published
- 2010
- Full Text
- View/download PDF
22. iFlow: A Graphical User Interface for Flow Cytometry Tools in Bioconductor.
- Author
-
Lee K, Hahne F, Sarkar D, and Gentleman R
- Abstract
Flow cytometry (FCM) has become an important analysis technology in health care and medical research, but the large volume of data produced by modern high-throughput experiments has presented significant new challenges for computational analysis tools. The development of an FCM software suite in Bioconductor represents one approach to overcome these challenges. In the spirit of the R programming language (Tree Star Inc., "FlowJo," http://www.owjo.com), these tools are predominantly console-driven, allowing for programmatic access and rapid development of novel algorithms. Using this software requires a solid understanding of programming concepts and of the R language. However, some of these tools|in particular the statistical graphics and novel analytical methods|are also useful for nonprogrammers. To this end, we have developed an open source, extensible graphical user interface (GUI) iFlow, which sits on top of the Bioconductor backbone, enabling basic analyses by means of convenient graphical menus and wizards. We envision iFlow to be easily extensible in order to quickly integrate novel methodological developments.
- Published
- 2009
- Full Text
- View/download PDF
23. Modeling breast cell cycle regulation--overcoming drug resistance.
- Author
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Arlt D, Sahin O, Korf U, Loebke C, Beissbarth T, Hahne F, Wiemann S, and Poustka A
- Subjects
- Antineoplastic Agents, Hormonal administration & dosage, Breast Neoplasms drug therapy, Cell Cycle drug effects, Cell Line, Tumor, Computer Simulation, Drug Resistance, Neoplasm, Gene Expression Regulation, Neoplastic drug effects, Humans, Receptors, Estrogen antagonists & inhibitors, Breast Neoplasms metabolism, Breast Neoplasms pathology, Cell Cycle Proteins metabolism, Models, Biological, Neoplasm Proteins metabolism, Receptors, Estrogen metabolism, Tamoxifen administration & dosage
- Published
- 2006
- Full Text
- View/download PDF
24. Statistical methods and software for the analysis of highthroughput reverse genetic assays using flow cytometry readouts.
- Author
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Hahne F, Arlt D, Sauermann M, Majety M, Poustka A, Wiemann S, and Huber W
- Subjects
- Databases, Factual, Electronic Data Processing methods, Electronic Data Processing standards, Gene Expression Profiling, Humans, Models, Genetic, Models, Statistical, Odds Ratio, Genetic Diseases, Inborn epidemiology, Software
- Abstract
Highthroughput cell-based assays with flow cytometric readout provide a powerful technique for identifying components of biologic pathways and their interactors. Interpretation of these large datasets requires effective computational methods. We present a new approach that includes data pre-processing, visualization, quality assessment, and statistical inference. The software is freely available in the Bioconductor package prada. The method permits analysis of large screens to detect the effects of molecular interventions in cellular systems.
- Published
- 2006
- Full Text
- View/download PDF
25. Functional profiling: from microarrays via cell-based assays to novel tumor relevant modulators of the cell cycle.
- Author
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Arlt D, Huber W, Liebel U, Schmidt C, Majety M, Sauermann M, Rosenfelder H, Bechtel S, Mehrle A, Bannasch D, Schupp I, Seiler M, Simpson JC, Hahne F, Moosmayer P, Ruschhaupt M, Guilleaume B, Wellenreuther R, Pepperkok R, Sültmann H, Poustka A, and Wiemann S
- Subjects
- Animals, Cell Cycle genetics, DNA Replication, Gene Expression Profiling methods, Humans, MAP Kinase Signaling System genetics, Mice, NIH 3T3 Cells, Neoplasms metabolism, Neoplasms pathology, RNA, Messenger biosynthesis, RNA, Messenger genetics, Genes, cdc, Neoplasms genetics, Oligonucleotide Array Sequence Analysis methods
- Abstract
Cancer transcription microarray studies commonly deliver long lists of "candidate" genes that are putatively associated with the respective disease. For many of these genes, no functional information, even less their relevance in pathologic conditions, is established as they were identified in large-scale genomics approaches. Strategies and tools are thus needed to distinguish genes and proteins with mere tumor association from those causally related to cancer. Here, we describe a functional profiling approach, where we analyzed 103 previously uncharacterized genes in cancer relevant assays that probed their effects on DNA replication (cell proliferation). The genes had previously been identified as differentially expressed in genome-wide microarray studies of tumors. Using an automated high-throughput assay with single-cell resolution, we discovered seven activators and nine repressors of DNA replication. These were further characterized for effects on extracellular signal-regulated kinase 1/2 (ERK1/2) signaling (G1-S transition) and anchorage-independent growth (tumorigenicity). One activator and one inhibitor protein of ERK1/2 activation and three repressors of anchorage-independent growth were identified. Data from tumor and functional profiling make these proteins novel prime candidates for further in-depth study of their roles in cancer development and progression. We have established a novel functional profiling strategy that links genomics to cell biology and showed its potential for discerning cancer relevant modulators of the cell cycle in the candidate lists from microarray studies.
- Published
- 2005
- Full Text
- View/download PDF
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