146 results on '"Hiltemann, Saskia"'
Search Results
2. Guidance framework to apply good practices in ecological data analysis: Lessons learned from building Galaxy-Ecology
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ROYAUX, Coline, primary, Mihoub, Jean-Baptiste, additional, Jossé, Marie, additional, Pelletier, Dominique, additional, Norvez, Olivier, additional, Reecht, Yves, additional, Fouilloux, Anne, additional, Rasche, Helena, additional, Hiltemann, Saskia, additional, Batut, Bérénice, additional, Eléaume, Marc, additional, Seguineau, Pauline, additional, Massé, Guillaume, additional, Amossé, Alan, additional, Bissery, Claire, additional, Lorrilliere, Romain, additional, Martin, Alexis, additional, Bas, Yves, additional, Virgoulay, Thimothée, additional, Chambon, Valentin, additional, Arnaud, Elie, additional, Michon, Elisa, additional, Urfer, Clara, additional, Trigodet, Eloïse, additional, Delannoy, Marie, additional, Loïs, Gregoire, additional, Julliard, Romain, additional, Grüning, Björn, additional, and Le Bras, Yvan, additional
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- 2024
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3. The Galaxy platform for accessible, reproducible, and collaborative data analyses:2024 update
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Hiltemann, Saskia, de Koning, Willem, Rasche, Helena, Hiltemann, Saskia, de Koning, Willem, and Rasche, Helena
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Galaxy (https://galaxyproject.org) is deployed globally, predominantly through free-to-use services, supporting user-driven research that broadens in scope each year. Users are attracted to public Galaxy services by platform stability, tool and reference dataset diversity, training, support and integration, which enables complex, reproducible, shareable data analysis. Applying the principles of user experience design (UXD), has driven improvements in accessibility, tool discoverability through Galaxy Labs/subdomains, and a redesigned Galaxy ToolShed. Galaxy tool capabilities are progressing in two strategic directions: integrating general purpose graphical processing units (GPGPU) access for cutting-edge methods, and licensed tool support. Engagement with global research consortia is being increased by developing more workflows in Galaxy and by resourcing the public Galaxy services to run them. The Galaxy Training Network (GTN) portfolio has grown in both size, and accessibility, through learning paths and direct integration with Galaxy tools that feature in training courses. Code development continues in line with the Galaxy Project roadmap, with improvements to job scheduling and the user interface. Environmental impact assessment is also helping engage users and developers, reminding them of their role in sustainability, by displaying estimated CO2 emissions generated by each Galaxy job.
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- 2024
4. FAIR data retrieval for sensitive clinical research data in Galaxy
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Ouwerkerk, Jasper, Rasche, Helena, Spalding, John D., Hiltemann, Saskia, Stubbs, Andrew P., Ouwerkerk, Jasper, Rasche, Helena, Spalding, John D., Hiltemann, Saskia, and Stubbs, Andrew P.
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Background: In clinical research, data have to be accessible and reproducible, but the generated data are becoming larger and analysis complex. Here we propose a platform for Findable, Accessible, Interoperable, and Reusable (FAIR) data access and creating reproducible findings. Standardized access to a major genomic repository, the European Genome-Phenome Archive (EGA), has been achieved with API services like PyEGA3. We aim to provide a FAIR data analysis service in Galaxy by retrieving genomic data from the EGA and provide a generalized “omics” platform for FAIR data analysis. Results: To demonstrate this, we implemented an end-to-end Galaxy workflow to replicate the findings from an RD-Connect synthetic dataset Beyond the 1 Million Genomes (synB1MG) available from the EGA. We developed the PyEGA3 connector within Galaxy to easily download multiple datasets from the EGA. We added the gene.iobio tool, a diagnostic environment for precision genomics, to Galaxy and demonstrate that it provides a more dynamic and interpretable view for trio analysis results. We developed a Galaxy trio analysis workflow to determine the pathogenic variants from the synB1MG trios using the GEMINI and gene.iobio tool. The complete workflow is available at WorkflowHub, and an associated tutorial was created in the Galaxy Training Network, which helps researchers unfamiliar with Galaxy to run the workflow. Conclusions: We showed the feasibility of reusing data from the EGA in Galaxy via PyEGA3 and validated the workflow by rediscovering spiked-in variants in synthetic data. Finally, we improved existing tools in Galaxy and created a workflow for trio analysis to demonstrate the value of FAIR genomics analysis in Galaxy.
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- 2024
5. Guidance framework to apply good practices in ecological data analysis: Lessons learned from building Galaxy-Ecology
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Royaux, Coline, Mihoub, Jean-baptiste, Jossé, Marie, Pelletier, Dominique, Norvez, Olivier, Reecht, Yves, Fouilloux, Anne, Rasche, Helena, Hiltemann, Saskia, Batut, Bérénice, Eléaume, Marc, Seguineau, Pauline, Massé, Guillaume, Amossé, Alan, Bissery, Claire, Lorrilliere, Romain, Martin, Alexis, Bas, Yves, Virgoulay, Thimothée, Chambon, Valentin, Arnaud, Elie, Michon, Elisa, Urfer, Clara, Trigodet, Eloïse, Delannoy, Marie, Loïs, Gregoire, Julliard, Romain, Grüning, Björn, Le Bras, Yvan, The 17 Galaxy-e Community, Royaux, Coline, Mihoub, Jean-baptiste, Jossé, Marie, Pelletier, Dominique, Norvez, Olivier, Reecht, Yves, Fouilloux, Anne, Rasche, Helena, Hiltemann, Saskia, Batut, Bérénice, Eléaume, Marc, Seguineau, Pauline, Massé, Guillaume, Amossé, Alan, Bissery, Claire, Lorrilliere, Romain, Martin, Alexis, Bas, Yves, Virgoulay, Thimothée, Chambon, Valentin, Arnaud, Elie, Michon, Elisa, Urfer, Clara, Trigodet, Eloïse, Delannoy, Marie, Loïs, Gregoire, Julliard, Romain, Grüning, Björn, Le Bras, Yvan, and The 17 Galaxy-e Community
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Numerous conceptual frameworks exist for good practices in research data and analysis (e.g. Open Science and FAIR principles). In practice, there is a need for further progress to improve transparency, reproducibility, and confidence in ecology. Here, we propose a practical and operational framework to achieve good practices for building analytical procedures based on atomisation and generalisation. We introduce the concept of atomisation to identify analytical steps which support generalisation by allowing us to go beyond single analyses. These guidelines were established during the development of the Galaxy-Ecology initiative, a web platform dedicated to data analysis in ecology. Galaxy-Ecology allows us to demonstrate a way to reach higher levels of reproducibility in ecological sciences by increasing the accessibility and reusability of analytical workflows once atomised and generalised.
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- 2024
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6. WeFaceNano: a user-friendly pipeline for complete ONT sequence assembly and detection of antibiotic resistance in multi-plasmid bacterial isolates
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Heikema, Astrid P., Jansen, Rick, Hiltemann, Saskia D., Hays, John P., and Stubbs, Andrew P.
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- 2021
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7. ELIXIR-CONVERGE D9.2 Document where code from the various regional/national data hubs is available; training documentation on data submission by the platforms - relates to tasks 9.1-9.2
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Neves, Aitana, Dolanski-Aghamanoukjan, Lorenz, Maier, Wolfgang, Pergl, Robert, Akerström, Wolmar Nyberg, Hjerde, Erik, Cuesta, Isabel, Popleteeva, Marina, Oulas, Anastasia, Mohamed, Anliat, Tonazzolli, Arianna, Pilvar, Diana, Calhoun, Erin, Åberg, Espen, Erard, Frédéric, Rasche, Helena, Messak, Imane, van Helden, Jacques, Lara, Maria, Rahman, Nadim, Karathanasis, Nestoras, Willassen, Nils-Peder, Zmora, Pawel, Monzón, Sara, Hiltemann, Saskia, Singhroha, Sunny, Klemetsen, Terje, Denecker, Thomas, and Waheed, Zahra
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COVID-19 Data Platform ,RDMKit ,COVID-19 ,SARS-COV-2 ,data brokering ,ELIXIR-CONVERGE ,COVID-19 Data Portal ,ELIXIR - Abstract
Deliverable 9.2 relates to tasks 9.1 and 9.2 on strengthening the central Covid-19 Data Portal and coordinating nascent and established data hubs in mobilising data into the central portal. To achieve this, an active network of regional and national SARS-CoV-2 data hubs managers was established. To get existing data flowing, we first organised a technical workshop on data brokering to the ENA, from which an online tutorial and RDMkit documentation were published. Then, in order to support nascent and more established nodes in mobilising data, we started addressing the various challenges and gaps identified: (i) Importance to build a case for the regional/national data hub and brokering model, also for mid- and long-term funding: a survey was conducted on 11 countries to identify use cases, funding mechanisms and assess sustainability of the developed infrastructures and tools. We aim to publish it in F1000 (ELIXIR Gateway); (ii) Maturity assessment to oversee data hub development and identify potential areas of improvement: a maturity model for pathogen data hubs was developed and is readily available online. (iii) Sensitive data remains siloed and not shared on public open data repositories, calling for the need to federate pathogen data hubs through a central system enabling privacy-preserving data queries and controlled data access following FAIR principles: an opinion paper is being finalised to present and discuss a model of Federated One Health Surveillance Platforms, beyond Covid-19. A proof-of-concept of how a data hub might be “fairified” was also conducted in the Czech Republic. (iv) Training in analytical pipelines and documentation - several actively followed workshops were organised on Galaxy and available pipelines and tools have been documented. (v) Need to better understand the legal aspects of SARS-CoV-2 data sharing: a dedicated workshop was organised to identify the common needs and start addressing them. Legal experts should be further invited to the table given the many open questions remaining. The pandemic has demonstrated the importance of genomic surveillance. This deliverable establishes the foundations to strengthen SARS-CoV-2 data hubs and importantly, scale and expand them to other pathogens and use cases serving both research and surveillance through a federation of hubs.
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- 2023
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8. Development and evaluation of a culture-free microbiota profiling platform (MYcrobiota) for clinical diagnostics
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Boers, Stefan A., Hiltemann, Saskia D., Stubbs, Andrew P., Jansen, Ruud, and Hays, John P.
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- 2018
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9. Training Infrastructure as a Service
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Rasche, Helena, Hyde, Cameron, Davis, John, Gladman, Simon, Coraor, Nate, Bretaudeau, Anthony, Cuccuru, Gianmauro, Bacon, Wendi, Serrano-Solano, Beatriz, Hillman-Jackson, Jennifer, Hiltemann, Saskia, Zhou, Miaomiao, Grüning, Björn, Stubbs, Andrew, Rasche, Helena, Hyde, Cameron, Davis, John, Gladman, Simon, Coraor, Nate, Bretaudeau, Anthony, Cuccuru, Gianmauro, Bacon, Wendi, Serrano-Solano, Beatriz, Hillman-Jackson, Jennifer, Hiltemann, Saskia, Zhou, Miaomiao, Grüning, Björn, and Stubbs, Andrew
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Background: Hands-on training, whether in bioinformatics or other domains, often requires significant technical resources and knowledge to set up and run. Instructors must have access to powerful compute infrastructure that can support resource-intensive jobs running efficiently. Often this is achieved using a private server where there is no contention for the queue. However, this places a significant prerequisite knowledge or labor barrier for instructors, who must spend time coordinating deployment and management of compute resources. Furthermore, with the increase of virtual and hybrid teaching, where learners are located in separate physical locations, it is difficult to track student progress as efficiently as during in-person courses. Findings: Originally developed by Galaxy Europe and the Gallantries project, together with the Galaxy community, we have created Training Infrastructure-as-a-Service (TIaaS), aimed at providing user-friendly training infrastructure to the global training community. TIaaS provides dedicated training resources for Galaxy-based courses and events. Event organizers register their course, after which trainees are transparently placed in a private queue on the compute infrastructure, which ensures jobs complete quickly, even when the main queue is experiencing high wait times. A built-in dashboard allows instructors to monitor student progress.Conclusions: TIaaS provides a significant improvement for instructors and learners, as well as infrastructure administrators. The instructor dashboard makes remote events not only possible but also easy. Students experience continuity of learning, as all training happens on Galaxy, which they can continue to use after the event. In the past 60 months, 504 training events with over 24,000 learners have used this infrastructure for Galaxy training.
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- 2023
10. Galaxy Training:A powerful framework for teaching!
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Hiltemann, Saskia, Rasche, Helena, Gladman, Simon, Hotz, Hans Rudolf, Larivière, Delphine, Blankenberg, Daniel, Jagtap, Pratik D., Wollmann, Thomas, Bretaudeau, Anthony, Goué, Nadia, Griffin, Timothy J., Royaux, Coline, Le Bras, Yvan, Mehta, Subina, Syme, Anna, Coppens, Frederik, Droesbeke, Bert, Soranzo, Nicola, Bacon, Wendi, Psomopoulos, Fotis, Gallardo-Alba, Cristóbal, Davis, John, Föll, Melanie Christine, Fahrner, Matthias, Doyle, Maria A., Serrano-Solano, Beatriz, Fouilloux, Anne Claire, van Heusden, Peter, Maier, Wolfgang, Clements, Dave, Heyl, Florian, Grüning, Björn, Batut, Bérénice, Hiltemann, Saskia, Rasche, Helena, Gladman, Simon, Hotz, Hans Rudolf, Larivière, Delphine, Blankenberg, Daniel, Jagtap, Pratik D., Wollmann, Thomas, Bretaudeau, Anthony, Goué, Nadia, Griffin, Timothy J., Royaux, Coline, Le Bras, Yvan, Mehta, Subina, Syme, Anna, Coppens, Frederik, Droesbeke, Bert, Soranzo, Nicola, Bacon, Wendi, Psomopoulos, Fotis, Gallardo-Alba, Cristóbal, Davis, John, Föll, Melanie Christine, Fahrner, Matthias, Doyle, Maria A., Serrano-Solano, Beatriz, Fouilloux, Anne Claire, van Heusden, Peter, Maier, Wolfgang, Clements, Dave, Heyl, Florian, Grüning, Björn, and Batut, Bérénice
- Abstract
There is an ongoing explosion of scientific datasets being generated, brought on by recent technological advances in many areas of the natural sciences. As a result, the life sciences have become increasingly computational in nature, and bioinformatics has taken on a central role in research studies. However, basic computational skills, data analysis, and stewardship are still rarely taught in life science educational programs, resulting in a skills gap in many of the researchers tasked with analysing these big datasets. In order to address this skills gap and empower researchers to perform their own data analyses, the Galaxy Training Network (GTN) has previously developed the Galaxy Training Platform (https://training.galaxyproject.org), an open access, community-driven framework for the collection of FAIR (Findable, Accessible, Interoperable, Reusable) training materials for data analysis utilizing the user-friendly Galaxy framework as its primary data analysis platform. Since its inception, this training platform has thrived, with the number of tutorials and contributors growing rapidly, and the range of topics extending beyond life sciences to include topics such as climatology, cheminformatics, and machine learning. While initially aimed at supporting researchers directly, the GTN framework has proven to be an invaluable resource for educators as well. We have focused our efforts in recent years on adding increased support for this growing community of instructors. New features have been added to facilitate the use of the materials in a classroom setting, simplifying the contribution flow for new materials, and have added a set of train-the-trainer lessons. Here, we present the latest developments in the GTN project, aimed at facilitating the use of the Galaxy Training materials by educators, and its usage in different learning environments.
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- 2023
11. CIENCA Final Report and Impact Analysis D6.3
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Mulder, Nicola, Mbiyavanga, Mamana, Hiltemann, Saskia, Gurwitz, Kim, Lloret Llinares, Marta, and Thomas Lopez, Daniel
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CINECA ,training ,learning - Abstract
In this deliverable report, we highlight outreach and training achievements in the period of January 2022 to February 2023 and also summarise overall achievements for the entire CINECA project. In total, we have delivered 59 learning interventions (including staff visits, webinars, workshops and training events, short training videos, and an overarching self-paced learning pathway) and we have reached a large and diverse audience, through both training and dissemination activities and through our website and social media channels. Below we provide further detail in terms of the diverse activities that we have developed and delivered since the beginning of the project, the wide demographic we have engaged, our reach through dissemination and training activities, and the impact that our training has had in the longer term.
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- 2023
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12. CINECA Universal FAIR Data Compliant Federated Biomarker Discovery Service D5.2
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Hiltemann, Saskia, Ouwerkerk, Jasper, and Stubbs, Andrew
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Galaxy ,CINECA ,htsget - Abstract
This deliverable (D.5.2) allows clinical researchers to access and reuse existing data from public omics databases, to integrate these data with their own data and to enable access to a suite of bioinformatics tools, via the Galaxy workflow platform, for advanced cancer biomarker discovery and for patient stratification. This deliverable (D5.2) provides FAIR data access from GA4GH public genomics data resources (e.g. European Genome Archive (EGA) using the GA4GH htsget protocol directly into Galaxy. We developed an online tutorial to explain our workflow in detail, which is associated with the Galaxy Training Network (GTN). This study shows it is feasible to adopt end-to-end (i.e. data to results) scalable FAIR analysis of clinical data, and ultimately for any future analysis on data available at the EGA. Additionally we have developed a unified resource, Cancer Galaxy, as a landing page for Cancer related workflows and tools1 which includes tools implemented/developed by CINECA and other bioinformatics groups from the EU and worldwide.
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- 2023
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13. Galaxy Training: A Powerful Framework for Teaching!
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Hiltemann, Saskia, Rasche, Helena, Gladman, Simon, Hotz, Hans-Rudolf, Larivière, Delphine, Blankenberg, Daniel, Jagtap, Pratik D., Wollmann, Thomas, Bretaudeau, Anthony, Goué, Nadia, Griffin, Timothy J., Royaux, Coline, Le Bras, Yvan, Mehta, Subina, Syme, Anna, Coppens, Frederik, Droesbeke, Bert, Soranzo, Nicola, Bacon, Wendi, Psomopoulos, Fotis, Gallardo-Alba, Cristóbal, Davis, John, Föll, Melanie Christine, Fahrner, Matthias, Doyle, Maria A., Serrano-Solano, Beatriz, Fouilloux, Anne Claire, van Heusden, Peter, Maier, Wolfgang, Clements, Dave, Heyl, Florian, on behalf of the Galaxy Training Network, [ missing ], Grüning, Björn, Batut, Bérénice, Erasmus University Medical Center [Rotterdam] (Erasmus MC), Albert-Ludwigs-Universität Freiburg, University of Melbourne, Friedrich Miescher Institute for Biomedical Research (FMI), Novartis Research Foundation, Pennsylvania State University (Penn State), Penn State System, Department of Genomic Medicine [Lerner Research Institute, Cleveland Clinic], Lerner Research Institute [Cleveland, OH, USA], Cleveland Clinic-Cleveland Clinic, University of Minnesota [Twin Cities] (UMN), University of Minnesota System, Heidelberg University, Institut de Génétique, Environnement et Protection des Plantes (IGEPP), Université de Rennes (UR)-Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE)-Institut Agro Rennes Angers, Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro)-Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro), Plateforme bioinformatique GenOuest [Rennes], Université de Rennes (UR)-Plateforme Génomique Santé Biogenouest®-Inria Rennes – Bretagne Atlantique, Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-GESTION DES DONNÉES ET DE LA CONNAISSANCE (IRISA-D7), Institut de Recherche en Informatique et Systèmes Aléatoires (IRISA), Université de Rennes (UR)-Institut National des Sciences Appliquées - Rennes (INSA Rennes), Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Université de Bretagne Sud (UBS)-École normale supérieure - Rennes (ENS Rennes)-Institut National de Recherche en Informatique et en Automatique (Inria)-CentraleSupélec-Centre National de la Recherche Scientifique (CNRS)-IMT Atlantique (IMT Atlantique), Institut Mines-Télécom [Paris] (IMT)-Institut Mines-Télécom [Paris] (IMT)-Université de Rennes (UR)-Institut National des Sciences Appliquées - Rennes (INSA Rennes), Institut Mines-Télécom [Paris] (IMT)-Institut Mines-Télécom [Paris] (IMT)-Institut de Recherche en Informatique et Systèmes Aléatoires (IRISA), Institut Mines-Télécom [Paris] (IMT)-Institut Mines-Télécom [Paris] (IMT)-Institut National des Sciences Appliquées - Rennes (INSA Rennes), Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Université de Bretagne Sud (UBS)-École normale supérieure - Rennes (ENS Rennes)-CentraleSupélec-Centre National de la Recherche Scientifique (CNRS)-IMT Atlantique (IMT Atlantique), Institut Mines-Télécom [Paris] (IMT)-Institut Mines-Télécom [Paris] (IMT), Université Clermont Auvergne (UCA), Muséum National d' Histoire Naturelle [Concarneau], Universiteit Gent = Ghent University (UGENT), Earlham Institute [Norwich], The Open University [Milton Keynes] (OU), Centre for Research and Technology Hellas (CERTH), Johns Hopkins University (JHU), University of Freiburg [Freiburg], Simula Research Laboratory [Lysaker] (SRL), South African National Bioinformatics Institute (SANBI), University of the Western Cape (UWC), Anaconda, Inc. [Austin], Plateforme Auvergne Bioinformatique (AuBi), Mésocentre Clermont Auvergne, Université Clermont Auvergne (UCA)-Université Clermont Auvergne (UCA), and Pathology
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Cellular and Molecular Neuroscience ,Computational Theory and Mathematics ,Ecology ,Modeling and Simulation ,Genetics ,Biology and Life Sciences ,ONLINE ,STUDENTS ,Molecular Biology ,[SDV.BIBS]Life Sciences [q-bio]/Quantitative Methods [q-bio.QM] ,Ecology, Evolution, Behavior and Systematics - Abstract
There is an ongoing explosion of scientific datasets being generated, brought on by recent technological advances in many areas of the natural sciences. As a result, the life sciences have become increasingly computational in nature, and bioinformatics has taken on a central role in research studies. However, basic computational skills, data analysis, and stewardship are still rarely taught in life science educational programs, resulting in a skills gap in many of the researchers tasked with analysing these big datasets. In order to address this skills gap and empower researchers to perform their own data analyses, the Galaxy Training Network (GTN) has previously developed the Galaxy Training Platform (https://training.galaxyproject.org), an open access, community-driven framework for the collection of FAIR (Findable, Accessible, Interoperable, Reusable) training materials for data analysis utilizing the user-friendly Galaxy framework as its primary data analysis platform. Since its inception, this training platform has thrived, with the number of tutorials and contributors growing rapidly, and the range of topics extending beyond life sciences to include topics such as climatology, cheminformatics, and machine learning. While initially aimed at supporting researchers directly, the GTN framework has proven to be an invaluable resource for educators as well. We have focused our efforts in recent years on adding increased support for this growing community of instructors. New features have been added to facilitate the use of the materials in a classroom setting, simplifying the contribution flow for new materials, and have added a set of train-the-trainer lessons. Here, we present the latest developments in the GTN project, aimed at facilitating the use of the Galaxy Training materials by educators, and its usage in different learning environments.
- Published
- 2023
14. Training Infrastructure as a Service
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Rasche, Helena, primary, Hyde, Cameron, additional, Davis, John, additional, Gladman, Simon, additional, Coraor, Nate, additional, Bretaudeau, Anthony, additional, Cuccuru, Gianmauro, additional, Bacon, Wendi, additional, Serrano-Solano, Beatriz, additional, Hillman-Jackson, Jennifer, additional, Hiltemann, Saskia, additional, Zhou, Miaomiao, additional, Grüning, Björn, additional, and Stubbs, Andrew, additional
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- 2022
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15. The Galaxy platform for accessible, reproducible and collaborative biomedical analyses: 2022 update
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Afgan, Enis, Nekrutenko, Anton, Grüning, Bjórn, Blankenberg, Daniel, Goecks, Jeremy, Schatz, Michael, Ostrovsky, Alexander, Mahmoud, Alexandru, Lonie, Andrew, Syme, Anna, Fouilloux, Anne, Bretaudeau, Anthony, Kumar, Anup, Eschenlauer, Arthur, Desanto, Assunta, Guerler, Aysam, Serrano-Solano, Beatriz, Batut, Bérénice, Grüning, Björn, Langhorst, Bradley, Carr, Bridget, Raubenolt, Bryan, Hyde, Cameron, Bromhead, Catherine, Barnett, Christopher, Royaux, Coline, Gallardo, Cristóbal, Fornika, Daniel, Baker, Dannon, Bouvier, Dave, Clements, Dave, de Lima Morais, David, Tabernero, David Lopez, Lariviere, Delphine, Nasr, Engy, Zambelli, Federico, Heyl, Florian, Psomopoulos, Fotis, Coppens, Frederik, Price, Gareth, Cuccuru, Gianmauro, Corguillé, Gildas Le, von Kuster, Greg, Akbulut, Gulsum Gudukbay, Rasche, Helena, Hotz, Hans-Rudolf, Eguinoa, Ignacio, Makunin, Igor, Ranawaka, Isuru, Taylor, James, Joshi, Jayadev, Hillman-Jackson, Jennifer, Chilton, John, Kamali, Kaivan, Suderman, Keith, Poterlowicz, Krzysztof, Yvan, Le Bras, Lopez-Delisle, Lucille, Sargent, Luke, Bassetti, Madeline, Tangaro, Marco Antonio, van den Beek, Marius, Čech, Martin, Bernt, Matthias, Fahrner, Matthias, Tekman, Mehmet, Föll, Melanie, Crusoe, Michael, Roncoroni, Miguel, Kucher, Natalie, Coraor, Nate, Stoler, Nicholas, Rhodes, Nick, Soranzo, Nicola, Pinter, Niko, Goonasekera, Nuwan, Moreno, Pablo, Videm, Pavankumar, Melanie, Petera, Mandreoli, Pietro, Jagtap, Pratik, Gu, Qiang, Weber, Ralf, Lazarus, Ross, Vorderman, Ruben, Hiltemann, Saskia, Golitsynskiy, Sergey, Garg, Shilpa, Bray, Simon, Gladman, Simon, Leo, Simone, Mehta, Subina, Griffin, Timothy, Jalili, Vahid, Yves, Vandenbrouck, Wen, Victor, Nagampalli, Vijay, Bacon, Wendi, de Koning, Willem, Maier, Wolfgang, Briggs, Peter, Direction de Recherche Fondamentale (CEA) (DRF (CEA)), Commissariat à l'énergie atomique et aux énergies alternatives (CEA), Pathology, Institut de Génétique, Environnement et Protection des Plantes (IGEPP), Université de Rennes (UR)-Institut National de Recherche pour l’Agriculture, l’Alimentation et l’Environnement (INRAE)-Institut Agro Rennes Angers, and Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro)-Institut national d'enseignement supérieur pour l'agriculture, l'alimentation et l'environnement (Institut Agro)
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[SDV]Life Sciences [q-bio] ,Genetics ,[SDV.BBM]Life Sciences [q-bio]/Biochemistry, Molecular Biology - Abstract
Galaxy is a mature, browser accessible workbench for scientific computing. It enables scientists to share, analyze and visualize their own data, with minimal technical impediments. A thriving global community continues to use, maintain and contribute to the project, with support from multiple national infrastructure providers that enable freely accessible analysis and training services. The Galaxy Training Network supports free, self-directed, virtual training with >230 integrated tutorials. Project engagement metrics have continued to grow over the last 2 years, including source code contributions, publications, software packages wrapped as tools, registered users and their daily analysis jobs, and new independent specialized servers. Key Galaxy technical developments include an improved user interface for launching large-scale analyses with many files, interactive tools for exploratory data analysis, and a complete suite of machine learning tools. Important scientific developments enabled by Galaxy include Vertebrate Genome Project (VGP) assembly workflows and global SARS-CoV-2 collaborations. Galaxy is a mature, browser accessible workbench for scientific computing. It enables scientists to share, analyze and visualize their own data, with minimal technical impediments. A thriving global community continues to use, maintain and contribute to the project, with support from multiple national infrastructure providers that enable freely accessible analysis and training services. The Galaxy Training Network supports free, self-directed, virtual training with >230 integrated tutorials. Project engagement metrics have continued to grow over the last 2 years, including source code contributions, publications, software packages wrapped as tools, registered users and their daily analysis jobs, and new independent specialized servers. Key Galaxy technical developments include an improved user interface for launching large-scale analyses with many files, interactive tools for exploratory data analysis, and a complete suite of machine learning tools. Important scientific developments enabled by Galaxy include Vertebrate Genome Project (VGP) assembly workflows and global SARS-CoV-2 collaborations.
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- 2022
16. The Galaxy platform for accessible, reproducible and collaborative biomedical analyses:2022 update
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Afgan, Enis, Nekrutenko, Anton, Grüning, Bjórn A., Blankenberg, Daniel, Goecks, Jeremy, Schatz, Michael C., Ostrovsky, Alexander E., Mahmoud, Alexandru, Lonie, Andrew J., Syme, Anna, Fouilloux, Anne, Bretaudeau, Anthony, Kumar, Anup, Eschenlauer, Arthur C., Desanto, Assunta D., Guerler, Aysam, Serrano-Solano, Beatriz, Batut, Bérénice, Grüning, Björn A., Langhorst, Bradley W., Carr, Bridget, Raubenolt, Bryan A., Hyde, Cameron J., Bromhead, Catherine J., Barnett, Christopher B., Royaux, Coline, Gallardo, Cristóbal, Fornika, Daniel J., Baker, Dannon, Bouvier, Dave, Clements, Dave, De Lima Morais, David A., Tabernero, D. L., Lariviere, Delphine, Nasr, Engy, Zambelli, Federico, Heyl, Florian, Psomopoulos, Fotis, Coppens, Frederik, Price, Gareth R., Cuccuru, Gianmauro, Corguillé, Gildas Le, Von Kuster, Greg, Akbulut, Gulsum Gudukbay, Rasche, Helena, Hans-Rudolf, Hotz, Eguinoa, Ignacio, Makunin, Igor, Ranawaka, Isuru J., Taylor, James P., Joshi, Jayadev, Hillman-Jackson, Jennifer, Chilton, John M., Kamali, Kaivan, Suderman, Keith, Poterlowicz, Krzysztof, Yvan, Le Bras, Lopez-Delisle, Lucille, Sargent, Luke, Bassetti, Madeline E., Tangaro, Marco Antonio, Van Den Beek, Marius, Cech, Martin, Bernt, Matthias, Fahrner, Matthias, Tekman, Mehmet, Föll, Melanie C., Crusoe, Michael R., Roncoroni, Miguel, Kucher, Natalie, Coraor, Nate, Stoler, Nicholas, Rhodes, Nick, Soranzo, Nicola, Pinter, Niko, Goonasekera, Nuwan A., Moreno, Pablo A., Videm, Pavankumar, Melanie, Petera, Mandreoli, Pietro, Jagtap, Pratik D., Gu, Qiang, Weber, Ralf J.M., Lazarus, Ross, Vorderman, Ruben H.P., Hiltemann, Saskia, Golitsynskiy, Sergey, Garg, Shilpa, Bray, Simon A., Gladman, Simon L., Leo, Simone, Mehta, Subina P., Griffin, Timothy J., Jalili, Vahid, Yves, Vandenbrouck, Wen, Victor, Nagampalli, Vijay K., Bacon, Wendi A., De Koning, Willem, Maier, Wolfgang, Briggs, Peter J., Afgan, Enis, Nekrutenko, Anton, Grüning, Bjórn A., Blankenberg, Daniel, Goecks, Jeremy, Schatz, Michael C., Ostrovsky, Alexander E., Mahmoud, Alexandru, Lonie, Andrew J., Syme, Anna, Fouilloux, Anne, Bretaudeau, Anthony, Kumar, Anup, Eschenlauer, Arthur C., Desanto, Assunta D., Guerler, Aysam, Serrano-Solano, Beatriz, Batut, Bérénice, Grüning, Björn A., Langhorst, Bradley W., Carr, Bridget, Raubenolt, Bryan A., Hyde, Cameron J., Bromhead, Catherine J., Barnett, Christopher B., Royaux, Coline, Gallardo, Cristóbal, Fornika, Daniel J., Baker, Dannon, Bouvier, Dave, Clements, Dave, De Lima Morais, David A., Tabernero, D. L., Lariviere, Delphine, Nasr, Engy, Zambelli, Federico, Heyl, Florian, Psomopoulos, Fotis, Coppens, Frederik, Price, Gareth R., Cuccuru, Gianmauro, Corguillé, Gildas Le, Von Kuster, Greg, Akbulut, Gulsum Gudukbay, Rasche, Helena, Hans-Rudolf, Hotz, Eguinoa, Ignacio, Makunin, Igor, Ranawaka, Isuru J., Taylor, James P., Joshi, Jayadev, Hillman-Jackson, Jennifer, Chilton, John M., Kamali, Kaivan, Suderman, Keith, Poterlowicz, Krzysztof, Yvan, Le Bras, Lopez-Delisle, Lucille, Sargent, Luke, Bassetti, Madeline E., Tangaro, Marco Antonio, Van Den Beek, Marius, Cech, Martin, Bernt, Matthias, Fahrner, Matthias, Tekman, Mehmet, Föll, Melanie C., Crusoe, Michael R., Roncoroni, Miguel, Kucher, Natalie, Coraor, Nate, Stoler, Nicholas, Rhodes, Nick, Soranzo, Nicola, Pinter, Niko, Goonasekera, Nuwan A., Moreno, Pablo A., Videm, Pavankumar, Melanie, Petera, Mandreoli, Pietro, Jagtap, Pratik D., Gu, Qiang, Weber, Ralf J.M., Lazarus, Ross, Vorderman, Ruben H.P., Hiltemann, Saskia, Golitsynskiy, Sergey, Garg, Shilpa, Bray, Simon A., Gladman, Simon L., Leo, Simone, Mehta, Subina P., Griffin, Timothy J., Jalili, Vahid, Yves, Vandenbrouck, Wen, Victor, Nagampalli, Vijay K., Bacon, Wendi A., De Koning, Willem, Maier, Wolfgang, and Briggs, Peter J.
- Abstract
Galaxy is a mature, browser accessible workbench for scientific computing. It enables scientists to share, analyze and visualize their own data, with minimal technical impediments. A thriving global community continues to use, maintain and contribute to the project, with support from multiple national infrastructure providers that enable freely accessible analysis and training services. The Galaxy Training Network supports free, self-directed, virtual training with >230 integrated tutorials. Project engagement metrics have continued to grow over the last 2 years, including source code contributions, publications, software packages wrapped as tools, registered users and their daily analysis jobs, and new independent specialized servers. Key Galaxy technical developments include an improved user interface for launching large-scale analyses with many files, interactive tools for exploratory data analysis, and a complete suite of machine learning tools. Important scientific developments enabled by Galaxy include Vertebrate Genome Project (VGP) assembly workflows and global SARS-CoV-2 collaborations., Galaxy is a mature, browser accessible workbench for scientific computing. It enables scientists to share, analyze and visualize their own data, with minimal technical impediments. A thriving global community continues to use, maintain and contribute to the project, with support from multiple national infrastructure providers that enable freely accessible analysis and training services. The Galaxy Training Network supports free, self-directed, virtual training with >230 integrated tutorials. Project engagement metrics have continued to grow over the last 2 years, including source code contributions, publications, software packages wrapped as tools, registered users and their daily analysis jobs, and new independent specialized servers. Key Galaxy technical developments include an improved user interface for launching large-scale analyses with many files, interactive tools for exploratory data analysis, and a complete suite of machine learning tools. Important scientific developments enabled by Galaxy include Vertebrate Genome Project (VGP) assembly workflows and global SARS-CoV-2 collaborations.
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- 2022
17. The diagnostic value of nasal microbiota and clinical parameters in a multi-parametric prediction model to differentiate bacterial versus viral infections in lower respiratory tract infections
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Li, Yunlei, Van Houten, Chantal B., Boers, Stefan A., Jansen, Ruud, Cohen, Asi, Engelhard, Dan, Kraaij, Robert, Hiltemann, Saskia D., Ju, Jie, Fernandez, David, Mankoc, Cristian, Gonzalez, Eva, De Waal, Wouter J., De Winter-De Groot, Karin M., Wolfs, Tom F.W., Meijers, Pieter, Luijk, Bart, Oosterheert, Jan Jelrik, Sankatsing, Sanjay U.C., Bossink, Aik W.J., Stein, Michal, Klein, Adi, Ashkar, Jalal, Bamberger, Ellen, Srugo, Isaac, Odeh, Majed, Dotan, Yaniv, Boico, Olga, Etshtein, Liat, Paz, Meital, Navon, Roy, Friedman, Tom, Simon, Einav, Gottlieb, Tanya M., Pri-Or, Ester, Kronenfeld, Gali, Oved, Kfir, Eden, Eran, Stubbs, Andrew P., Bont, Louis J., Hays, John P., Li, Yunlei, Van Houten, Chantal B., Boers, Stefan A., Jansen, Ruud, Cohen, Asi, Engelhard, Dan, Kraaij, Robert, Hiltemann, Saskia D., Ju, Jie, Fernandez, David, Mankoc, Cristian, Gonzalez, Eva, De Waal, Wouter J., De Winter-De Groot, Karin M., Wolfs, Tom F.W., Meijers, Pieter, Luijk, Bart, Oosterheert, Jan Jelrik, Sankatsing, Sanjay U.C., Bossink, Aik W.J., Stein, Michal, Klein, Adi, Ashkar, Jalal, Bamberger, Ellen, Srugo, Isaac, Odeh, Majed, Dotan, Yaniv, Boico, Olga, Etshtein, Liat, Paz, Meital, Navon, Roy, Friedman, Tom, Simon, Einav, Gottlieb, Tanya M., Pri-Or, Ester, Kronenfeld, Gali, Oved, Kfir, Eden, Eran, Stubbs, Andrew P., Bont, Louis J., and Hays, John P.
- Abstract
Background The ability to accurately distinguish bacterial from viral infection would help clinicians better target antimicrobial therapy during suspected lower respiratory tract infections (LRTI). Although technological developments make it feasible to rapidly generate patient-specific microbiota profiles, evidence is required to show the clinical value of using microbiota data for infection diagnosis. In this study, we investigated whether adding nasal cavity microbiota profiles to readily available clinical information could improve machine learning classifiers to distinguish bacterial from viral infection in patients with LRTI. Results Various multi-parametric Random Forests classifiers were evaluated on the clinical and microbiota data of 293 LRTI patients for their prediction accuracies to differentiate bacterial from viral infection. The most predictive variable was C-reactive protein (CRP). We observed a marginal prediction improvement when 7 most prevalent nasal microbiota genera were added to the CRP model. In contrast, adding three clinical variables, absolute neutrophil count, consolidation on X-ray, and age group to the CRP model significantly improved the prediction. The best model correctly predicted 85% of the 'bacterial' patients and 82% of the 'viral' patients using 13 clinical and 3 nasal cavity microbiota genera (Staphylococcus, Moraxella, and Streptococcus). Conclusions We developed high-accuracy multi-parametric machine learning classifiers to differentiate bacterial from viral infections in LRTI patients of various ages. We demonstrated the predictive value of four easy-to-collect clinical variables which facilitate personalized and accurate clinical decision-making. We observed that nasal cavity microbiota correlate with the clinical variables and thus may not add significant value to diagnostic algorithms that aim to differentiate bacterial from viral infections.
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- 2022
18. The diagnostic value of nasal microbiota and clinical parameters in a multi-parametric prediction model to differentiate bacterial versus viral infections in lower respiratory tract infections
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Arts-assistenten Kinderen, Child Health, Infectieziekten onderzoek1 (Bont), Longziekten patientenzorg, Infectiezieken, Infectieziekten patientenzorg, Infection & Immunity, Longziekten, MS Interne Geneeskunde, CTI Bont, Li, Yunlei, Van Houten, Chantal B., Boers, Stefan A., Jansen, Ruud, Cohen, Asi, Engelhard, Dan, Kraaij, Robert, Hiltemann, Saskia D., Ju, Jie, Fernandez, David, Mankoc, Cristian, Gonzalez, Eva, De Waal, Wouter J., De Winter-De Groot, Karin M., Wolfs, Tom F.W., Meijers, Pieter, Luijk, Bart, Oosterheert, Jan Jelrik, Sankatsing, Sanjay U.C., Bossink, Aik W.J., Stein, Michal, Klein, Adi, Ashkar, Jalal, Bamberger, Ellen, Srugo, Isaac, Odeh, Majed, Dotan, Yaniv, Boico, Olga, Etshtein, Liat, Paz, Meital, Navon, Roy, Friedman, Tom, Simon, Einav, Gottlieb, Tanya M., Pri-Or, Ester, Kronenfeld, Gali, Oved, Kfir, Eden, Eran, Stubbs, Andrew P., Bont, Louis J., Hays, John P., Arts-assistenten Kinderen, Child Health, Infectieziekten onderzoek1 (Bont), Longziekten patientenzorg, Infectiezieken, Infectieziekten patientenzorg, Infection & Immunity, Longziekten, MS Interne Geneeskunde, CTI Bont, Li, Yunlei, Van Houten, Chantal B., Boers, Stefan A., Jansen, Ruud, Cohen, Asi, Engelhard, Dan, Kraaij, Robert, Hiltemann, Saskia D., Ju, Jie, Fernandez, David, Mankoc, Cristian, Gonzalez, Eva, De Waal, Wouter J., De Winter-De Groot, Karin M., Wolfs, Tom F.W., Meijers, Pieter, Luijk, Bart, Oosterheert, Jan Jelrik, Sankatsing, Sanjay U.C., Bossink, Aik W.J., Stein, Michal, Klein, Adi, Ashkar, Jalal, Bamberger, Ellen, Srugo, Isaac, Odeh, Majed, Dotan, Yaniv, Boico, Olga, Etshtein, Liat, Paz, Meital, Navon, Roy, Friedman, Tom, Simon, Einav, Gottlieb, Tanya M., Pri-Or, Ester, Kronenfeld, Gali, Oved, Kfir, Eden, Eran, Stubbs, Andrew P., Bont, Louis J., and Hays, John P.
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- 2022
19. FAIR Genomes metadata schema promoting Next Generation Sequencing data reuse in Dutch healthcare and research
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Genetica Medische Informatica, Pathologie Moleculair, Infection & Immunity, van der Velde, K Joeri, Singh, Gurnoor, Kaliyaperumal, Rajaram, Liao, XiaoFeng, de Ridder, Sander, Rebers, Susanne, Kerstens, Hindrik H D, de Andrade, Fernanda, van Reeuwijk, Jeroen, De Gruyter, Fini E, Hiltemann, Saskia, Ligtvoet, Maarten, Weiss, Marjan M, van Deutekom, Hanneke W M, Jansen, Anne M L, Stubbs, Andrew P, Vissers, Lisenka E L M, Laros, Jeroen F J, van Enckevort, Esther, Stemkens, Daphne, 't Hoen, Peter A C, Beliën, Jeroen A M, van Gijn, Mariëlle E, Swertz, Morris A, Genetica Medische Informatica, Pathologie Moleculair, Infection & Immunity, van der Velde, K Joeri, Singh, Gurnoor, Kaliyaperumal, Rajaram, Liao, XiaoFeng, de Ridder, Sander, Rebers, Susanne, Kerstens, Hindrik H D, de Andrade, Fernanda, van Reeuwijk, Jeroen, De Gruyter, Fini E, Hiltemann, Saskia, Ligtvoet, Maarten, Weiss, Marjan M, van Deutekom, Hanneke W M, Jansen, Anne M L, Stubbs, Andrew P, Vissers, Lisenka E L M, Laros, Jeroen F J, van Enckevort, Esther, Stemkens, Daphne, 't Hoen, Peter A C, Beliën, Jeroen A M, van Gijn, Mariëlle E, and Swertz, Morris A
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- 2022
20. The diagnostic value of nasal microbiota and clinical parameters in a multi-parametric prediction model to differentiate bacterial versus viral infections in lower respiratory tract infections
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Li, Yunlei, primary, van Houten, Chantal B., additional, Boers, Stefan A., additional, Jansen, Ruud, additional, Cohen, Asi, additional, Engelhard, Dan, additional, Kraaij, Robert, additional, Hiltemann, Saskia D., additional, Ju, Jie, additional, Fernández, David, additional, Mankoc, Cristian, additional, González, Eva, additional, de Waal, Wouter J., additional, de Winter-de Groot, Karin M., additional, Wolfs, Tom F. W., additional, Meijers, Pieter, additional, Luijk, Bart, additional, Oosterheert, Jan Jelrik, additional, Sankatsing, Sanjay U. C., additional, Bossink, Aik W. J., additional, Stein, Michal, additional, Klein, Adi, additional, Ashkar, Jalal, additional, Bamberger, Ellen, additional, Srugo, Isaac, additional, Odeh, Majed, additional, Dotan, Yaniv, additional, Boico, Olga, additional, Etshtein, Liat, additional, Paz, Meital, additional, Navon, Roy, additional, Friedman, Tom, additional, Simon, Einav, additional, Gottlieb, Tanya M., additional, Pri-Or, Ester, additional, Kronenfeld, Gali, additional, Oved, Kfir, additional, Eden, Eran, additional, Stubbs, Andrew P., additional, Bont, Louis J., additional, and Hays, John P., additional
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- 2022
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21. Training Programme_Annual Report 2021 D6.5
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Mulder, Nicola, Mbiyavanga, Mamana, Hiltemann, Saskia, Matser, Vera, and Lloret Llinares, Marta
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training ,communication ,webinars ,engagement - Abstract
In this deliverable document, we report on the activities in task 6.4 - Training Programme, describe the CINECA training activities that took place in months 25-36 of the project and provide the Training Plan for the final year. The CINECA training programme aims to train people within the CINECA consortium as well as external users. Different approaches have been employed, including face-to-face and online courses, hackathons, training videos and staff exchanges. While we waited for CINECA products to be completed, many of the training efforts for the year again focused on internal learning opportunities and knowledge exchanges, but some externally facing events were held to disseminate outputs. All the training and outreach events continued to be heavily impacted by COVID-19, which removed our ability to hold face-to-face workshops and staff exchanges. The staff exchanges were suspended and replaced with virtual meet-ups.
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- 2021
22. Jigsaw Genomics: Assembling the pieces toward open and accessible bioinformatics for everyone
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Hiltemann, Saskia, van der Spek, Peter, Jenster, Guido, Stubbs, Andrew, and Pathology
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SDG 3 - Good Health and Well-being ,education - Abstract
DNA is often referred to as the source code of life; it encodes the proteins that control the functioning of our cells and plays a huge role in our health. The publication of the human reference genome in 2003, combined with sustained technological advances in genome sequencing ever since, have transformed the field of biomedical research, and have led to an explosion of the amount of data being generated. However, scientists typically are not trainedin the skills required to manage and analyse these large datasets. Furthermore, bioinformatics tools and workflows tend to be very complex, and often require programming skills to run.As a result, researchers often rely on bioinformaticians to perform the data analyses for them.
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- 2021
23. Making training materials FAIR experiences, challenges, solutions
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Hiltemann, Saskia, Swan, Anna, Ras, Verena, Doyle, Maria, Burke, Melissa, Palagi, Patricia M., and van Gelder, Celia W.G.
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FAIR, FAIR principles, training, training materials, implementation, challenges, solutions, experiences - Abstract
Sharing data has become common practice around the globe, and training is part of this trend. This PLoS 10 simple rules paper published in 2020 introduced tips and tricks on how to make training materials FAIR (Findable, Accessible, Interoperable and Reusable), which encouraged trainers to share their materials with others, and facilitated this process. The WEB (Workshop on Education for Bioinformatics) 2021 was a dedicated forum for training providers, trainers and trainees to share their experiences of making training materials FAIR. The WEB was composed of short presentations from invited speakers who have been through this process, where they have introduced their approaches, challenges and solutions., {"references":["https://journals.plos.org/ploscompbiol/article?id=10.1371/journal.pcbi.1007854"]}
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- 2021
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24. Gene fusions by chromothripsis of chromosome 5q in the VCaP prostate cancer cell line
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Teles Alves, Inês, Hiltemann, Saskia, Hartjes, Thomas, van der Spek, Peter, Stubbs, Andrew, Trapman, Jan, and Jenster, Guido
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- 2013
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25. ASaiM-MT:A validated and optimized ASaiM workflow for metatranscriptomics analysis within Galaxy framework
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Mehta, Subina, Jagtap, Pratik D., Crane, Marie, Leith, Emma, Batut, Bérénice, Hiltemann, Saskia, Arntzen, Magnus O., Kunath, Benoit J., Pope, Phillip B., Delogu, Francesco, Sajulga, Ray, Kumar, Praveen, Johnson, James E., Griffin, Timothy J., Mehta, Subina, Jagtap, Pratik D., Crane, Marie, Leith, Emma, Batut, Bérénice, Hiltemann, Saskia, Arntzen, Magnus O., Kunath, Benoit J., Pope, Phillip B., Delogu, Francesco, Sajulga, Ray, Kumar, Praveen, Johnson, James E., and Griffin, Timothy J.
- Abstract
The Earth Microbiome Project (EMP) aided in understanding the role of microbial communities and the influence of collective genetic material (the 'microbiome') and microbial diversity patterns across the habitats of our planet. With the evolution of new sequencing technologies, researchers can now investigate the microbiome and map its influence on the environment and human health. Advances in bioinformatics methods for next-generation sequencing (NGS) data analysis have helped researchers to gain an in-depth knowledge about the taxonomic and genetic composition of microbial communities. Metagenomic-based methods have been the most commonly used approaches for microbiome analysis; however, it primarily extracts information about taxonomic composition and genetic potential of the microbiome under study, lacking quantification of the gene products (RNA and proteins). On the other hand, metatranscriptomics, the study of a microbial community's RNA expression, can reveal the dynamic gene expression of individual microbial populations and the community as a whole, ultimately providing information about the active pathways in the microbiome. In order to address the analysis of NGS data, the ASaiM analysis framework was previously developed and made available via the Galaxy platform. Although developed for both metagenomics and metatranscriptomics, the original publication demonstrated the use of ASaiM only for metagenomics, while thorough testing for metatranscriptomics data was lacking. In the current study, we have focused on validating and optimizing the tools within ASaiM for metatranscriptomics data. As a result, we deliver a robust workflow that will enable researchers to understand dynamic functional response of the microbiome in a wide variety of metatranscriptomics studies. This improved and optimized ASaiM-metatranscriptomics (ASaiM-MT) workflow is publicly available via the ASaiM framework, documented and supported with training material so that users can in
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- 2021
26. Fostering accessible online education using Galaxy as an e-learning platform
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Solano, Beatriz Serrano, Föll, Melanie C., Gallardo-Alba, Cristóbal, Erxleben, Anika, Rasche, Helena, Hiltemann, Saskia, Fahrner, Matthias, Dunning, Mark J., Schulz, Marcel H., Scholtz, Beáta, Clements, Dave, Nekrutenko, Anton, Batut, Bérénice, Grüning, Björn A., Solano, Beatriz Serrano, Föll, Melanie C., Gallardo-Alba, Cristóbal, Erxleben, Anika, Rasche, Helena, Hiltemann, Saskia, Fahrner, Matthias, Dunning, Mark J., Schulz, Marcel H., Scholtz, Beáta, Clements, Dave, Nekrutenko, Anton, Batut, Bérénice, and Grüning, Björn A.
- Abstract
The COVID-19 pandemic is shifting teaching to an online setting all over the world. The Galaxy framework facilitates the online learning process and makes it accessible by providing a library of high-quality community-curated training materials, enabling easy access to data and tools, and facilitates sharing achievements and progress between students and instructors. By combining Galaxy with robust communication channels, effective instruction can be designed inclusively, regardless of the students' environments.
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- 2021
27. Jigsaw Genomics:Assembling the pieces toward open and accessible bioinformatics for everyone
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Hiltemann, Saskia and Hiltemann, Saskia
- Abstract
DNA is often referred to as the source code of life; it encodes the proteins that control the functioning of our cells and plays a huge role in our health. The publication of the human reference genome in 2003, combined with sustained technological advances in genome sequencing ever since, have transformed the field of biomedical research, and have led to an explosion of the amount of data being generated. However, scientists typically are not trainedin the skills required to manage and analyse these large datasets. Furthermore, bioinformatics tools and workflows tend to be very complex, and often require programming skills to run.As a result, researchers often rely on bioinformaticians to perform the data analyses for them.
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- 2021
28. Training Programme, Detailed D6.4
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Mulder, Nicola, Mbiyavanga, Mamana, Hiltemann, Saskia, and Matser, Vera
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training ,communication ,webinar ,engagement - Abstract
In this deliverable document, we report on the activities in task 6.4 - Training Programme, describe the CINECA training activities in the first 24 months of the project and provide the Training Plan for the next 12-24 months. As with the first 12 months of the CINECA project, many of the training efforts for the second 12 months also focused on internal learning opportunities and knowledge exchanges. However, all the training and outreach events have been heavily impacted by COVID-19, which removed our ability to hold face-to-face workshops and staff exchanges. For training interventions targeted at a broader audience, we have set up a webinar series, providing quarterly online learning interventions. We ran a total of 6 webinars (3 of these webinars in 2019, and 3 in 2020), with 23 attendees on average, 68% on average of those who registered. In addition, a series of short training videos (https://www.cineca-project.eu/short-videos) was created to facilitate the uptake of CINECA outputs. Eight short videos were produced by work packages on different topics. To increase engagement, the short videos were submitted to ELIXIR’s training portal and disseminated via CINECA’s various communication channels.
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- 2020
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29. Fostering accessible online education using Galaxy as an e-learning platform
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Serrano-Solano, Beatriz, primary, Föll, Melanie C., additional, Gallardo-Alba, Cristóbal, additional, Erxleben, Anika, additional, Rasche, Helena, additional, Hiltemann, Saskia, additional, Fahrner, Matthias, additional, Dunning, Mark J., additional, Schulz, Marcel H., additional, Scholtz, Beáta, additional, Clements, Dave, additional, Nekrutenko, Anton, additional, Batut, Bérénice, additional, and Grüning, Björn A., additional
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- 2021
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30. ASaiM-MT: a validated and optimized ASaiM workflow for metatranscriptomics analysis within Galaxy framework
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Mehta, Subina, primary, Crane, Marie, additional, Leith, Emma, additional, Batut, Bérénice, additional, Hiltemann, Saskia, additional, Arntzen, Magnus Ø, additional, Kunath, Benoit J., additional, Pope, Phillip B., additional, Delogu, Francesco, additional, Sajulga, Ray, additional, Kumar, Praveen, additional, Johnson, James E., additional, Griffin, Timothy J., additional, and Jagtap, Pratik D., additional
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- 2021
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31. Using the Galaxy Training Network tutorial library for bioinformatics training programs
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Clements, Dave, Hiltemann, Saskia, Batut, Bã©rã©nice, Rasche, Helena, Heydarian, Mohammad, and Training Network, The Galaxy
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Poster Abstracts - Abstract
Does your facility do bioinformatics training? Would your facility like to do bioinformatics training? The Galaxy Training Network library (https://training.galaxyproject.org/) is an easy way to offer bioinformatics training at your facility with minimal preparation time and startup cost. These materials feature slides, hands-on-tutorials, and training data sets. The library features well over 100 slide sets and hands-on tutorials, created by over 130 Galaxy community members, and covering a wide range of bioinformatics topics. Galaxy (https://galaxyproject.org) is a widely adopted platform for bioinformatics analysis and training, allowing trainers, learners, and researchers to focus on concepts and tools, rather than Linux systems administration and learning command line interfaces. The library of materials is free to use and adapt as needed. The GTN community is supportive and responsive to community needs. All materials are kept in GitHub and are managed in a transparent, community driven manner.
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- 2020
32. FAIR Genomes: Standardizing a meta-data schema for FAIRifying personal genome data workflows
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Singh, Gurnoor, Velde, Joeri van der, Beliën, Jeroen, Böhmer, Jasmin, Stemkens, Daphne, Vissers, Lisenka, Reeuwijk, Jeroen van, Hiltemann, Saskia, Johansson, Lennart F., Stoep, Nienke van der, Sie, Daoud, Weiss, Janneke, Frederix, Geert, Roos, Marco, Iperen, Erik van, Vrijenhoek, Terry, Asselbergs, Folkert W., Montfrans, Joris van, Sijmons, Rolf, Deutekom, Hanneke van, Neerincx, Pieter, Andrade, Fernanda de, Niehues, Anna, Kerstens, Hindrik H.D., Thompson, Mark, Kaliyaperumal, Rajaram, Jacobsen, Annika, Wolstencroft, Katy, Nijman, Ies, Nelen, Marcel, Siezen, Ariaan, Hove, Koen ten, Knoers, Nine, Gilissen, Christian, Scheffer, Hans, Willems, Stefan, Zelst-Stams, Wendy van, Ijntema, Helger, Elsink, Kim, Koning, Bart de, Ylstra, Bauke, Sistermans, Erik, Kemmeren, Patrick, Holstege, Henne, Staiger, Christine, Tops, Bastiaan, Rebers, Susanne, Zessen, David van, Retèl, Valesca, Cuppen, Edwin, Tintelen, Peter van, Enckevort, David van, Steeghs, Lieneke, Scholtens, Salome, Laros, Jeroen, Mei, Leon, Oosterwijk, Cor, Stubbs, Andrew, Hoen, Peter A.C. 't, Gijn, Mariëlle van, and Swertz, Morris
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data sharing ,meta-data ,genomics ,healthcare ,fair data principles - Abstract
The increase in personal genome data generated in diagnostics and research holds great promise for advancing personalized prevention and medicine. However, valuable genomic and associated clinical data is fragmented across many healthcare providers and research organizations, making it difficult to reuse due to lack of findability, accessibility and interoperability. This prohibits us from exploiting the potential information contained in these genomes for health benefit. FAIR Genomes aims to provide guidelines that should increase reuse of genomic data while considering the needs of all stakeholders and addressing ELSI issues. We present a standardized meta-data schema to harmonize genomic data workflows and their reporting practices. This schema is broadly segmented into five categories: general information; informed consent; personal and clinical information; material information and technical information. In face-to-face and videoconference meetings, we work towards defining the schema, which is a list of common and optional data elements with relationships and values mapped to existing ontologies such as SNOMED, DUO, HPO, UMLS and EDAM. This project aims to make all data and meta-data elements findable and interoperable to increase FAIRness and standardization in capturing genomic data. This meta-data schema provides a strong basis for digital twin data in Dutch hospitals, development of personal genetic lockers, and active Dutch participation in the European '1+ Million Genomes' Initiative. The scope of this schema goes beyond to next-generation DNA sequencing data. We expect to expand into various *omics varieties, as well as capturing analysis pipelines in FAIR terms. Hence, the FAIR Genomes meta-data framework could be used to develop other research-based infrastructures such as X-omics, BBMRI, ELIXIR, Solve-RD and European Joint Programme on Rare Diseases. The FAIR Genomes meetings are open to receive input from anyone to achieve the highest quality and usability of the resulting meta-data framework. Join us at: https://github.com/fairgenomes.  
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- 2020
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33. Comparison of Illumina versus Nanopore 16S rRNA Gene Sequencing of the Human Nasal Microbiota
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Heikema, Astrid, A Horst - Kreft, Deborah, Boers, Stefan, Jansen, Rick, Hiltemann, Saskia, de Koning, Willem, Kraaij, Robert, de Ridder, Maria, van Houten, CB, Bont, LJ, Stubbs, Andrew, Hays, John, Heikema, Astrid, A Horst - Kreft, Deborah, Boers, Stefan, Jansen, Rick, Hiltemann, Saskia, de Koning, Willem, Kraaij, Robert, de Ridder, Maria, van Houten, CB, Bont, LJ, Stubbs, Andrew, and Hays, John
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- 2020
34. NanoGalaxy: Nanopore long-read sequencing data analysis in Galaxy
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de Koning, Willem, Miladi, M, Hiltemann, Saskia, Heikema, Astrid, Hays, John, Flemming, S, van Beek, M, Mustafa, Dana, Backofen, R, Grüning, B, Stubbs, Andrew, de Koning, Willem, Miladi, M, Hiltemann, Saskia, Heikema, Astrid, Hays, John, Flemming, S, van Beek, M, Mustafa, Dana, Backofen, R, Grüning, B, and Stubbs, Andrew
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- 2020
35. Comparison of illumina versus nanopore 16s rRNA gene sequencing of the human nasal microbiota
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Arts-assistenten Kinderen, Child Health, CTI Bont, Infectiezieken, Infectieziekten onderzoek1 (Bont), Infection & Immunity, Heikema, Astrid P., Horst-Kreft, Deborah, Boers, Stefan A., Jansen, Rick, Hiltemann, Saskia D., de Koning, Willem, Kraaij, Robert, de Ridder, Maria A.J., van Houten, Chantal B., Bont, Louis J., Stubbs, Andrew P., Hays, John P., Arts-assistenten Kinderen, Child Health, CTI Bont, Infectiezieken, Infectieziekten onderzoek1 (Bont), Infection & Immunity, Heikema, Astrid P., Horst-Kreft, Deborah, Boers, Stefan A., Jansen, Rick, Hiltemann, Saskia D., de Koning, Willem, Kraaij, Robert, de Ridder, Maria A.J., van Houten, Chantal B., Bont, Louis J., Stubbs, Andrew P., and Hays, John P.
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- 2020
36. CINECA_Training Programme_D6.2a
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Mulder, Nicola, Mbiyavanga, Mamana, Hiltemann, Saskia, and Matser, Vera
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Training, webinar, stakeholder engagement - Abstract
In this deliverable document, we report on the activities in task 6.2a - Training Programme and describe the CINECA training activities in the first 12 months of the project. In the first phase of the CINECA project, many of the training efforts are focused on internal learning opportunities and knowledge exchanges. There are many interdependencies between the different CINECA work packages, so to this end we have set up a staff exchange program.For training interventions targeted at a broader audience, we have set up a webinar series, providing online learning interventions. Feedback from these webinars is collected and is used to further increase the utility of the webinars going forward.We have disseminated a survey to identify the training needs of CINECA’s stakeholder community. Additionally, we ran our first stakeholder engagement session at the International Hundred Thousand Cohorts Consortium (IHCC) Meeting in Reykjavik, Iceland in April 2019. During this session, we gathered feedback on the challenges of managing cohorts and cohort data harmonisation. More extensive face-to-face workshops and training events are being planned for 2020.
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- 2019
37. iFUSE: integrated fusion gene explorer
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Hiltemann, Saskia, McClellan, Elizabeth A., van Nijnatten, Jos, Horsman, Sebastiaan, Palli, Ivo, Alves, Ines Teles, Hartjes, Thomas, Trapman, Jan, van der Spek, Peter, Jenster, Guido, and Stubbs, Andrew
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- 2013
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38. NanoGalaxy: Nanopore long-read sequencing data analysis in Galaxy
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de Koning, Willem, primary, Miladi, Milad, additional, Hiltemann, Saskia, additional, Heikema, Astrid, additional, Hays, John P, additional, Flemming, Stephan, additional, van den Beek, Marius, additional, Mustafa, Dana A, additional, Backofen, Rolf, additional, Grüning, Björn, additional, and Stubbs, Andrew P, additional
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- 2020
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39. Comparison of Illumina versus Nanopore 16S rRNA Gene Sequencing of the Human Nasal Microbiota
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Heikema, Astrid P., primary, Horst-Kreft, Deborah, additional, Boers, Stefan A., additional, Jansen, Rick, additional, Hiltemann, Saskia D., additional, de Koning, Willem, additional, Kraaij, Robert, additional, de Ridder, Maria A. J., additional, van Houten, Chantal B., additional, Bont, Louis J., additional, Stubbs, Andrew P., additional, and Hays, John P., additional
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- 2020
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40. Fostering Accessible Online Education Using Galaxy as an e-learning Platform
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Serrano-Solano, Beatriz, primary, Erxleben, Anika, additional, Gallardo-Alba, Cristóbal, additional, Rasche, Helena, additional, Hiltemann, Saskia, additional, Föll, Melanie, additional, Fahrner, Matthias, additional, Dunning, Mark J., additional, Schulz, Marcel, additional, Scholtz, Beáta, additional, Clements, Dave, additional, Nekrutenko, Anton, additional, Batut, Bérénice, additional, and Grüning, Björn, additional
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- 2020
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41. Comparison of Illumina Versus Nanopore 16S rRNA Gene Sequencing of the Human Nasal Microbiota
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Heikema, Astrid. P., primary, Horst-Kreft, Deborah, additional, Boers, Stefan A., additional, Jansen, Rick, additional, Hiltemann, Saskia D., additional, de Koning, Willem, additional, Kraaij, Robert, additional, de Ridder, Maria A. J., additional, van Houten, Chantal B., additional, Bont, Louis J., additional, Stubbs, Andrew P., additional, and Hays, John P., additional
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- 2020
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42. Galactic Circos: User-friendly Circos plots within the Galaxy platform
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Rasche, Helena, primary and Hiltemann, Saskia, primary
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- 2020
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43. CINECA Outreach and dissemination plan D6.1
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Mulder, Nicola, Mbiyavanga, Mamana, Mendonca, Michelle, Matser, Vera, and Hiltemann, Saskia
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Training ,Dissemination ,Surveys - Abstract
In this deliverable document, we report on the activities in task 6.1 – Stakeholder analysis, with the outreach and dissemination plan, as well as the training plan presented in this report, we have completed this task. We have used a combination of surveys and face-to-face meetings to verify and extend or identify key stakeholder groups, understand their interest in the project, and identify bottlenecks that can be addressed by outreach and training. Outreach activities will be accomplished by task 6.2 and training by task 6.3.
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- 2019
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44. CINECA_D6.1_Outreach and Dissemination Plan
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Mulder, Nicola, Mbiyavanga, Mamana, Mendonca, Michelle, Matser, Vera, and Hiltemann, Saskia
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Dissemination, Outreach, Training - Abstract
In this deliverable document, we report on the activities in task 6.1 - Stakeholder analysis, with the outreach and dissemination plan, as well as the training plan presented in this report, we have completed this task. We have used a combination of surveys and face-to-face meetings to verify and extend or identify key stakeholder groups, understand their interest in the project, and identify bottlenecks that can be addressed by outreach and training. Outreach activities will be accomplished by task 6.2 and training by task 6.3. The stakeholder survey was developed and distributed within the CINECA stakeholder community; a total of 54 responses were received. While the response rate was on the low side, it is sufficient for the initial analysis, which is presented below. A CINECA competency framework was developed and validated through the survey. The competency framework has four areas of competence (generating data, finding and accessing data, analysis and clinical interpretation of data and sharing data), reflecting the research lifecycle. A total of 17 competencies have been defined. We consider both the stakeholder analysis and the competency profile to be living documents that will evolve over the course of the project. We plan to obtain additional feedback on both the competency profile as well as update the stakeholder analysis throughout the project through a range of methods, these could include interviews, discussion groups, conference workshops. A dissemination strategy was created aimed at the effective communication of CINECA activities and outcomes to all relevant partners and stakeholders. To this end, a range of dissemination channels have been set up, including a CINECA project webpage, various social media channels, a newsletter, and physical materials such as flyers and brochures. Furthermore, a set of conferences and events have been identified at which a CINECA presence (e.g. workshop, booth, talk) could benefit stakeholder engagement. Consistent branding across these different dissemination channels is achieved through the development of a logo, colour scheme, and the creation of templates for materials such as brochures, posters and slides. Furthermore, a number of CINECA areas of research and expertise have been identified that may be suitable for publication as peer-reviewed articles. A training plan was developed covering a variety of learning interventions, including webinars, staff visits, workshops and hackathons. In the early phase of the project (first ~18 months), training activities will be focused primarily on internal CINECA knowledge exchanges to allow work package interdepencies to be resolved. To this end, a regular webinar series has been started to inform CINECA project members and other interested parties of the various CINECA activities and outcomes. Furthermore, a staff exchange program was set up to allow knowledge exchanges between different interdependent work packages. CINECA members may submit staff visit requests via an online form, and after the visit a blog post about the outcomes will be posted on the CINECA website. As the project progresses, the focus of training activities will gradually shift to dissemination to a wider audience and will consist primarily of workshops (face-to-face or online) and hackathons.
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- 2019
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45. Referee report. For: MetaDEGalaxy: Galaxy workflow for differential abundance analysis of 16s metagenomic data [version 1; peer review: 1 approved with reservations]
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Hiltemann, Saskia
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- 2019
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46. Peer review of 'Transcriptome annotation in the cloud: complexity, best practices, and cost'
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Hiltemann, Saskia
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This is the open peer reviewers comments and recommendations regarding the submitted GigaScience article and/or dataset.
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- 2019
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47. Referee report. For: MetaDEGalaxy: Galaxy workflow for differential abundance analysis of 16s metagenomic data [version 2; peer review: 2 approved]
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Hiltemann, Saskia
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- 2019
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48. ASaiM: a Galaxy-based framework to analyze microbiota data
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Batut, Bérénice, Gravouil, Kévin, Defois, Clémence, Hiltemann, Saskia, Brugère, Jean-François, Peyretaillade, Eric, Peyret, Pierre, Pathology, Bioinformatics Group, Department of Computer Science, University of Freiburg [Freiburg], Laboratoire Microorganismes : Génome et Environnement (LMGE), Université Clermont Auvergne [2017-2020] (UCA [2017-2020])-Centre National de la Recherche Scientifique (CNRS), Microbiologie Environnement Digestif Santé (MEDIS), INRA Clermont-Ferrand-Theix-Université Clermont Auvergne [2017-2020] (UCA [2017-2020]), Laboratoire d'Informatique, de Modélisation et d'Optimisation des Systèmes (LIMOS), Ecole Nationale Supérieure des Mines de St Etienne-Université Clermont Auvergne [2017-2020] (UCA [2017-2020])-Centre National de la Recherche Scientifique (CNRS), Conception, Ingénierie et Développement de l'Aliment et du Médicament (CIDAM), Université d'Auvergne - Clermont-Ferrand I (UdA), Artificial Evolution and Computational Biology (BEAGLE), Laboratoire de Biométrie et Biologie Evolutive - UMR 5558 (LBBE), Université Claude Bernard Lyon 1 (UCBL), Université de Lyon-Université de Lyon-Institut National de Recherche en Informatique et en Automatique (Inria)-VetAgro Sup - Institut national d'enseignement supérieur et de recherche en alimentation, santé animale, sciences agronomiques et de l'environnement (VAS)-Centre National de la Recherche Scientifique (CNRS)-Université Claude Bernard Lyon 1 (UCBL), Université de Lyon-Université de Lyon-Institut National de Recherche en Informatique et en Automatique (Inria)-VetAgro Sup - Institut national d'enseignement supérieur et de recherche en alimentation, santé animale, sciences agronomiques et de l'environnement (VAS)-Centre National de la Recherche Scientifique (CNRS)-Inria Grenoble - Rhône-Alpes, Institut National de Recherche en Informatique et en Automatique (Inria)-Laboratoire d'InfoRmatique en Image et Systèmes d'information (LIRIS), Institut National des Sciences Appliquées de Lyon (INSA Lyon), Université de Lyon-Institut National des Sciences Appliquées (INSA)-Université de Lyon-Institut National des Sciences Appliquées (INSA)-Centre National de la Recherche Scientifique (CNRS)-Université Claude Bernard Lyon 1 (UCBL), Université de Lyon-École Centrale de Lyon (ECL), Université de Lyon-Université Lumière - Lyon 2 (UL2)-Institut National des Sciences Appliquées de Lyon (INSA Lyon), Université de Lyon-Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Centre National de la Recherche Scientifique (CNRS)-École Centrale de Lyon (ECL), Université de Lyon-Université Lumière - Lyon 2 (UL2), Erasmus University Medical Center [Rotterdam] (Erasmus MC), Auvergne Regional Council, European Regional Development Fund, Laboratoire d'InfoRmatique en Image et Systèmes d'information (LIRIS), Université Lumière - Lyon 2 (UL2)-École Centrale de Lyon (ECL), Université de Lyon-Université de Lyon-Université Claude Bernard Lyon 1 (UCBL), Université de Lyon-Institut National des Sciences Appliquées de Lyon (INSA Lyon), Université de Lyon-Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Centre National de la Recherche Scientifique (CNRS)-Université Lumière - Lyon 2 (UL2)-École Centrale de Lyon (ECL), Université de Lyon-Institut National des Sciences Appliquées (INSA)-Institut National des Sciences Appliquées (INSA)-Centre National de la Recherche Scientifique (CNRS)-Inria Grenoble - Rhône-Alpes, Institut National de Recherche en Informatique et en Automatique (Inria)-Institut National de Recherche en Informatique et en Automatique (Inria)-Laboratoire de Biométrie et Biologie Evolutive - UMR 5558 (LBBE), Université de Lyon-Université de Lyon-Institut National de Recherche en Informatique et en Automatique (Inria)-VetAgro Sup - Institut national d'enseignement supérieur et de recherche en alimentation, santé animale, sciences agronomiques et de l'environnement (VAS)-Centre National de la Recherche Scientifique (CNRS)-VetAgro Sup - Institut national d'enseignement supérieur et de recherche en alimentation, santé animale, sciences agronomiques et de l'environnement (VAS)-Centre National de la Recherche Scientifique (CNRS), Institut National de la Recherche Agronomique (INRA)-Université Clermont Auvergne [2017-2020] (UCA [2017-2020]), and Ecole Nationale Supérieure des Mines de St Etienne (ENSM ST-ETIENNE)-Université Clermont Auvergne [2017-2020] (UCA [2017-2020])-Centre National de la Recherche Scientifique (CNRS)
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metagenomics ,Docker ,training ,Base Sequence ,Microbiota ,Statistics as Topic ,[SDV.BID]Life Sciences [q-bio]/Biodiversity ,metataxonomics ,[SDV.BIBS]Life Sciences [q-bio]/Quantitative Methods [q-bio.QM] ,[SDV.MP.PRO]Life Sciences [q-bio]/Microbiology and Parasitology/Protistology ,[SDV.MP.BAC]Life Sciences [q-bio]/Microbiology and Parasitology/Bacteriology ,Galaxy ,user-friendly ,Technical Note ,[INFO.INFO-BI]Computer Science [cs]/Bioinformatics [q-bio.QM] ,[SDV.MHEP]Life Sciences [q-bio]/Human health and pathology ,ComputingMilieux_MISCELLANEOUS ,Software - Abstract
International audience; Background: New generations of sequencing platforms coupled to numerous bioinformatics tools have led to rapid technological progress in metagenomics and metatranscriptomics to investigate complex microorganism communities. Nevertheless, a combination of different bioinformatic tools remains necessary to draw conclusions out of microbiota studies. Modular and user-friendly tools would greatly improve such studies. Findings: We therefore developed ASaiM, an Open-Source Galaxy-based framework dedicated to microbiota data analyses. ASaiM provides an extensive collection of tools to assemble, extract, explore, and visualize microbiota information from raw metataxonomic, metagenomic, or metatranscriptomic sequences. To guide the analyses, several customizable workflows are included and are supported by tutorials and Galaxy interactive tours, which guide users through the analyses step by step. ASaiM is implemented as a Galaxy Docker flavour. It is scalable to thousands of datasets but also can be used on a normal PC. The associated source code is available under Apache 2 license at https://github.com/ASaiM/framework and documentation can be found online (http://asaim.readthedocs.io). Conclusions: Based on the Galaxy framework, ASaiM offers a sophisticated environment with a variety of tools, workflows, documentation, and training to scientists working on complex microorganism communities. It makes analysis and exploration analyses of microbiota data easy, quick, transparent, reproducible, and shareable.
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- 2018
49. ASaiM: a Galaxy-based framework to analyze microbiota data
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Batut, B, Gravouil, K, Defois, C, Hiltemann, Saskia, Brugere, JF, Peyretaillade, E, Peyret, P, Batut, B, Gravouil, K, Defois, C, Hiltemann, Saskia, Brugere, JF, Peyretaillade, E, and Peyret, P
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- 2018
50. Community-Driven Data Analysis Training for Biology
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Batut, B, Hiltemann, Saskia, Bagnacani, A, Baker, D, Bhardwaj, V, Blank, C, Bretaudeau, A, Brillet-Gueguen, L, Cech, M, Chilton, J, Clements, D, Doppelt-Azeroual, O, Erxleben, A, Freeberg, MA, Gladman, S, Hoogstrate, Youri, Hotz, HR, Houwaart, T, Jagtap, P, Lariviere, D, Le Corguille, G, Manke, T, Mareuil, F, Ramirez, F, Ryan, D, Sigloch, FC, Soranzo, N, Wolff, J, Videm, P, Wolfien, M, Wubuli, A, Yusuf, D, Taylor, J, Backofen, R, Nekrutenko, A, Gruning, B, Batut, B, Hiltemann, Saskia, Bagnacani, A, Baker, D, Bhardwaj, V, Blank, C, Bretaudeau, A, Brillet-Gueguen, L, Cech, M, Chilton, J, Clements, D, Doppelt-Azeroual, O, Erxleben, A, Freeberg, MA, Gladman, S, Hoogstrate, Youri, Hotz, HR, Houwaart, T, Jagtap, P, Lariviere, D, Le Corguille, G, Manke, T, Mareuil, F, Ramirez, F, Ryan, D, Sigloch, FC, Soranzo, N, Wolff, J, Videm, P, Wolfien, M, Wubuli, A, Yusuf, D, Taylor, J, Backofen, R, Nekrutenko, A, and Gruning, B
- Published
- 2018
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