Literature DB >> 23587310

Large and linked in scientific publishing.

Laurie Goodman1, Scott C Edmunds, Alexandra T Basford.   

Abstract

We are delighted to announce the launch of GigaScience, an online open-access journal that focuses on research using or producing large datasets in all areas of biological and biomedical sciences. GigaScience is a new type of journal that provides standard scientific publishing linked directly to a database that hosts all the relevant data. The primary goals for the journal, detailed in this editorial, are to promote more rapid data release, broader use and reuse of data, improved reproducibility of results, and direct, easy access between analyses and their data. Direct and permanent connections of scientific analyses and their data (achieved by assigning all hosted data a citable DOI) will enable better analysis and deeper interpretation of the data in the future.

Entities:  

Year:  2012        PMID: 23587310      PMCID: PMC3617448          DOI: 10.1186/2047-217X-1-1

Source DB:  PubMed          Journal:  Gigascience        ISSN: 2047-217X            Impact factor:   6.524


GigaScience goals and scope

“Big-data” science has been growing by leaps and bounds over the last decade. While data availability has provided myriad new opportunities for research, full use of these data across all the life sciences requires more focused mechanisms to reach the promise of community resource projects. This is especially true for smaller labs that do not have the computational facilities to take full advantage of such resources, which are intended to speed work and provoke novel hypotheses for testing. Unique to GigaScience—and essential to achieving community-wide goals for taking full advantage of large, sharable datasets across the board—is the creation of a system that more easily links publications to their complete datasets, provides citable, countable credit for data producers, and makes data more accessible and useable to the entire life-science community. To address some of these issues, we have devised a new journal model that integrates manuscript publication with a database that houses and provides tools for the data used in these publications. The database, GigaDB, provides all included datasets with reference-section citable DOIs; GigaDB data have already been referenced in several top tier journals (for details, see [1]). Additionally, although the “omics” communities have well-established data sharing mechanisms and standards, there are many fields that produce equal if not larger data sets that are not readily sharable and that require more work for establishing standards and sharing. Thus, GigaScience and GigaDB are especially interested in supporting non-omics type research, as these typically have sharable data but no broadly accepted public repositories or completely established means to promote the widest free sharing of data. We do want to stress, as this has been an issue raised by many, that if there are permanent or community-agreed upon databases available (e.g. NCBI, EBI databases, and similar), we require that the data be submitted to those as well. The reasoning is simple: broader data sharing and permanence means broader data usage—and usage is key.

Peer review

In addition to trying to make the availability and use of data associated with our papers more transparent, we are also focusing on doing the same with our peer-review model. We are using an opt-out open peer review system, a system that is becoming increasingly accepted in the medical community. Reviewers’ names are included with their reviews unless a reviewer has reasons not to be named and opts out. The reviews will be available in the pre-publication history section of our papers so that the entire set of comments and history can be seen by anyone interested in the additional insight that may come from the behind-the-scenes discussions surrounding the review. We also are taking steps to avoid what might be called the “science du jour’ phenomenon, where reviewers might indicate the work is sound but not of ‘interest’. At GigaScience, the Editors, in consultation with our Editorial Board when needed, will make the overall decision on whether the work is of interest. Editorial decisions in this regard will be based on scope and relative amount of data created or used (see http://blogs.openaccesscentral.com/blogs/gigablog/?page=2 for information on what constitutes “big data”). Assessing the potential impact of research is extremely difficult and can be subjective, and there are huge technical challenges in assessing data supporting large-scale research studies. What is much easier to do is to assess transparency and compliance with best-practice guidelines for reporting and presenting data. Our reviewers are specifically asked to report on these issues, and all data are given what we refer to as a ‘sanity check’ by our curators to determine if the data themselves are sound. Thus, peer review at GigaScience focuses on whether the biological conclusions are well supported, and if the data are sound and follow appropriate community standards. The level of ‘interest’ of the work will ultimately be determined via the best means of determining data and research quality: its use by the community.

In this issue

Our launch issue contains a variety of papers that highlight several of the aims for publications in GigaScience. This issue shows two types of the journal’s research articles: standard Research articles and Technical Notes. Standard research papers present novel data and analyses, exemplified here by an article from the laboratory of one of the members of our excellent editorial board and that describes a novel analysis pathway and creates a unique methylomic resource [2]. The work by Daniel McDonald et al.[3] in this issue is a technical note and presents a novel data format that facilitates the interoperability of bioinformatics tools. The issue also includes several Commentaries, including one that is associated with a research paper in this issue: Jonathan Eisen’s commentary on ‘badomics’ terminology [4], which focuses on the explosion of “omes” (good and bad) noted in the McDonald et al. study. The first article in our thematic series covering the best practices in genomics research, done in concert with the Genomic Standards Consortium, is a commentary detailing several of the challenges for developing community standards and data-sharing policies [5], which are key to maximizing data reuse. Furthermore, the issues surrounding the handling of large-scale data are not just affecting the omics community, and a more broadly focused commentary on data sharing for neuroimaging [6] highlights this as well as the fact that our scope also covers areas such as neuroscience, imaging, biomedicine and ecology. Along a different vein, we have a commentary promoting the development of a digital immune system to serve as a global sequencing based pathogen monitoring system as increasing sensitivity and decreasing costs of sequencing technologies increase utility of sequencing as a sensor [7]. This issue also has several Reviews, which are typically more in-depth than commentaries and which serve to provoke forward-thinking with regards to what steps are required next to advance projects or overcome large-data handling issues. One of the reviews focuses on the difficulties of and potential solutions for sustainable archiving of the ever-growing amount of sequencing data [8]. Another review is a white paper from the G10K vertebrate project that details the strategies and best practices for sample collection [9]. The last raises the idea of developing ‘Genome Observatories’ [10] to provide a digital means to characterize whole ecosystems with the purpose of promoting more contextual information to accompany genomic data. We hope you enjoy this issue. We encourage you to contact any of the editors to begin conversations about specific needs in your research communities for promoting large-data access, sharing, use, and reuse.

Competing interests

All authors are employees of GigaScience and BGI.

Authors’ contributions

All authors have been working on GigaScience and GigaDB, and have contributed to this editorial. All authors read and approved the final manuscript.
  10 in total

1.  On the evolving portfolio of community-standards and data sharing policies: turning challenges into new opportunities.

Authors:  Susanna-Assunta Sansone; Philippe Rocca-Serra
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

2.  Data sharing and publishing in the field of neuroimaging.

Authors:  Janis L Breeze; Jean-Baptiste Poline; David N Kennedy
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

3.  GigaDB: announcing the GigaScience database.

Authors:  Tam P Sneddon; Peter Li; Scott C Edmunds
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

4.  Tissue sampling methods and standards for vertebrate genomics.

Authors:  Pamela By Wong; Edward O Wiley; Warren E Johnson; Oliver A Ryder; Stephen J O'Brien; David Haussler; Klaus-Peter Koepfli; Marlys L Houck; Polina Perelman; Gabriela Mastromonaco; Andrew C Bentley; Byrappa Venkatesh; Ya-Ping Zhang; Robert W Murphy
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

5.  Resources for methylome analysis suitable for gene knockout studies of potential epigenome modifiers.

Authors:  Gareth A Wilson; Pawandeep Dhami; Andrew Feber; Daniel Cortázar; Yuka Suzuki; Reiner Schulz; Primo Schär; Stephan Beck
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

6.  The rise of a digital immune system.

Authors:  Michael C Schatz; Adam M Phillippy
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

7.  Badomics words and the power and peril of the ome-meme.

Authors:  Jonathan A Eisen
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

8.  The Biological Observation Matrix (BIOM) format or: how I learned to stop worrying and love the ome-ome.

Authors:  Daniel McDonald; Jose C Clemente; Justin Kuczynski; Jai Ram Rideout; Jesse Stombaugh; Doug Wendel; Andreas Wilke; Susan Huse; John Hufnagle; Folker Meyer; Rob Knight; J Gregory Caporaso
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

9.  The future of DNA sequence archiving.

Authors:  Guy Cochrane; Charles E Cook; Ewan Birney
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

10.  A call for an international network of genomic observatories (GOs).

Authors:  Neil Davies; Chris Meyer; Jack A Gilbert; Linda Amaral-Zettler; John Deck; Mesude Bicak; Philippe Rocca-Serra; Susanna Assunta-Sansone; Kathy Willis; Dawn Field
Journal:  Gigascience       Date:  2012-07-12       Impact factor: 6.524

  10 in total
  5 in total

1.  A Decade of GigaScience: Milestones in Open Science.

Authors:  Scott C Edmunds; Hans Zauner; Nicole A Nogoy; Hongling Zhou; Hongfang Zhang; Laurie Goodman
Journal:  Gigascience       Date:  2022-07-12       Impact factor: 7.658

2.  Looking back: forward looking.

Authors:  Scott C Edmunds; Nicole A Nogoy; Hans Zauner; Peter Li; Christopher I Hunter; Xiao Si Zhe; Laurie Goodman
Journal:  Gigascience       Date:  2017-09-01       Impact factor: 6.524

3.  Interactive Toxicogenomics: Gene set discovery, clustering and analysis in Toxygates.

Authors:  Johan Nyström-Persson; Yayoi Natsume-Kitatani; Yoshinobu Igarashi; Daisuke Satoh; Kenji Mizuguchi
Journal:  Sci Rep       Date:  2017-05-03       Impact factor: 4.379

4.  GigaDB: promoting data dissemination and reproducibility.

Authors:  Tam P Sneddon; Xiao Si Zhe; Scott C Edmunds; Peter Li; Laurie Goodman; Christopher I Hunter
Journal:  Database (Oxford)       Date:  2014-03-12       Impact factor: 3.451

5.  Computer Simulation, Visualization, and Image Processing of Cancer Data and Processes.

Authors:  David Johnson; James Osborne; Zhihui Wang; Kostas Marias
Journal:  Cancer Inform       Date:  2016-01-12
  5 in total

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