| Literature DB >> 27110440 |
Anita Bandrowski1, Matthew Brush2, Jeffery S Grethe1, Melissa A Haendel2, David N Kennedy3, Sean Hill4, Patrick R Hof5, Maryann E Martone1, Maaike Pols6, Serena C Tan7, Nicole Washington8, Elena Zudilova-Seinstra9, Nicole Vasilevsky2.
Abstract
A central tenet in support of research reproducibility is the ability to uniquely identify research resources, that is, reagents, tools, and materials that are used to perform experiments. However, current reporting practices for research resources are insufficient to identify the exact resources that are reported or to answer basic questions such as "How did other studies use resource X?" To address this issue, the Resource Identification Initiative was launched as a pilot project to improve the reporting standards for research resources in the methods sections of papers and thereby improve identifiability and scientific reproducibility. The pilot engaged over 25 biomedical journal editors from most major publishers, as well as scientists and funding officials. Authors were asked to include Research Resource Identifiers (RRIDs) in their manuscripts prior to publication for three resource types: antibodies, model organisms, and tools (i.e., software and databases). RRIDs are assigned by an authoritative database, for example, a model organism database for each type of resource. To make it easier for authors to obtain RRIDs, resources were aggregated from the appropriate databases and their RRIDs made available in a central web portal ( http://scicrunch.org/resources). RRIDs meet three key criteria: they are machine readable, free to generate and access, and are consistent across publishers and journals. The pilot was launched in February of 2014 and over 300 papers have appeared that report RRIDs. The number of journals participating has expanded from the original 25 to more than 40 with RRIDs appearing in 62 different journals to date. Here, we present an overview of the pilot project and its outcomes to date. We show that authors are able to identify resources and are supportive of the goals of the project. Identifiability of the resources post-pilot showed a dramatic improvement for all three resource types, suggesting that the project has had a significant impact on identifiability of research resources.Entities:
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Year: 2015 PMID: 27110440 PMCID: PMC4834942 DOI: 10.1002/brb3.417
Source DB: PubMed Journal: Brain Behav Impact factor: 2.708
Source databases and registries included in the RII portal
| Resource name | Resource content | Database Identifier |
|---|---|---|
| ZIRC, Zebrafish Resource Center | Zebrafish Stocks | RRID:nif‐0000‐00242 |
| ZFIN, Zebrafish Information Network | Zebrafish Nomenclature | RRID:nif‐0000‐21427 |
| RGD, Rat Genome Database | Rat | RRID:nif‐0000‐00134 |
| CGC, Caenorhabditis Genetics Center | Worm Stocks | RRID:nif‐0000‐00240 |
| WormBase | Worm Nomenclature | RRID:nif‐0000‐00053 |
| IMSR, International Mouse Strain Resource Center | Mouse Stocks | RRID:nif‐0000‐09876 |
| BDSC, Bloomington Drosophila Stock Center | Fly Stocks | RRID:nif‐0000‐00241 |
| MGI, Mouse Genome Informatics | Mouse Nomenclature | RRID:nif‐0000‐00096 |
| BCBC, Beta Cell Biology Consortium | Mouse stocks | RRID:nlx_144143 |
| antibodyregistry.org, Antibody Registry | Antibodies | RRID:nif‐0000‐07730 |
| SciCrunch Registry | Software Tools and Databases | RRID:nlx_144509 |
Each database has a weekly or monthly scheduled frequency of update and all new data is released weekly. If available, data from both model organism authorities is served, as well as the list of strains available via particular stock centers. In most cases the stock centers maintain a link between the genotype and the stock center animal identifier.
Figure 1The Resource Identification Initiative portal containing citable Research Resource Identifiers (RRIDs). The workflow for authors is to visit http://scicrunch.org/resources, then select their resource type (see community resources box), type in search terms (note that the system attempts to expand known synonyms to improve search results) and open the “Cite This” dialog box. The dialog shown here displays the Invitrogen catalog number 80021 antibody with the RRID:AB_86329. The authors are asked to copy and paste this text into their methods section.
Figure 2RRIDs found in the published literature. (A) Google Scholar result for the anti‐tyrosine hydroxylase antibody RRID (9/2014; http://scholar.google.com/scholar?q=RRID:AB_90755). (B) The most frequently reported RRIDs in the first 100 papers, by number of papers using the identifier. All data is available in Supplementary Table and all identifiers can be accessed in Google Scholar (see also Table S1).
Journal practices in contacting authors
| Journal | Number authors contacted during submission (mechanism) | Number authors contacted during review (mechanism) | Number authors contacted during acceptance (mechanism) | Participation rate |
|---|---|---|---|---|
| Journal of Neuroscience | 1175 (letter to author) | 163 (letter to author) | 25 (letter to author) | ~12% |
| Journal of Comparative Neurology | (direct author assist) | (direct author assist) | (direct author assist) | >90% |
| Brain and Behavior | ~100 (letter to author) | ~25% | ||
| Neuroinformatics | (staff looks up RRIDs) | 100% | ||
| F1000 Research | ~50 (letter to author) | ~12% | ||
| Brain Research | 671 (letter to author) | 1% | ||
| Journal of Neuroscience Methods | 314 (letter to author) | 1% | ||
| Neurobiology of Disease | 291 (letter to author) | 3% | ||
| Experimental Neurology | 297 (letter to author) | 3% |
Different journals chose to contact authors at different stages of the publishing cycle and assist in the addition of RRIDs via different mechanisms. The participation rate was by far the lowest with only instructions to authors; these journals are not included in this table (for example BMC) and had <1% participation rates. When authors were asked by a blanket mailing containing instructions, participation rates ranged between 1 and 15%. Participation was very high if the editorial staff asked authors directly or suggested identifiers for their manuscript. Note that in some cases only an approximation could be made by the participating journals.
Figure 3Percent correctly reported RRIDs. The percentage of resources that reported an RRID that pointed to the correct resource and with the correct syntax for each resource type is shown. The total number of resources for each type during the postpilot is: primary antibodies, n = 429; organisms, n = 55; noncommercial tools, n = 78.
Figure 4Pre‐ and postpilot identifiability. Resources (primary antibodies, organisms, and tools) were considered identifiable if they contained an accurate RRID or by using the same criteria as described in (Vasilevsky et al. 2013). For tools (software and databases, which were not previously analyzed), these resources were considered identifiable if they contained an RRID or reported the manufacturer and version number. The total number of resources for each type is: primary antibodies prepilot, n = 140; primary antibodies postpilot, n = 465; organisms prepilot, n = 58; organisms postpilot, n = 139; noncommercial tools prepilot, n = 59; noncommercial tools postpilot, n = 101. The y‐axis is the average percent identifiable for each resource type. Variation from this average is shown by the bars: error bars indicate upper and lower 95% confidence intervals. Asterisks indicate significant difference by a z‐score greater than 1.96.
Figure 5An exemplar third‐party application using the RRID resolving service. The “Antibody data for this article” application developed by Elsevier enhances articles on ScienceDirect. The application is available in 211 articles in 19 journals (more information can be found at: http://www.elsevier.com/about/content-innovation/antibodies).