100+ datasets found
  1. h

    Scimago Journal Rankings

    • hgxjs.org
    • search.webdepozit.sk
    • +9more
    csv
    Updated Oct 7, 2024
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    Scimago Lab (2024). Scimago Journal Rankings [Dataset]. http://hgxjs.org/journalrank0138.html
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    csvAvailable download formats
    Dataset updated
    Oct 7, 2024
    Dataset authored and provided by
    Scimago Lab
    Description

    Academic journals indicators developed from the information contained in the Scopus database (Elsevier B.V.). These indicators can be used to assess and analyze scientific domains.

  2. s

    Web of Science

    • scicrunch.org
    • neuinfo.org
    • +1more
    Updated Jan 21, 2025
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    (2025). Web of Science [Dataset]. http://identifiers.org/RRID:SCR_022706
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    Dataset updated
    Jan 21, 2025
    Description

    Database of bibliographic citations of multidisciplinary areas that covers various journals of medical, scientific, and social sciences including humanities.Publisher independent global citation database.

  3. Z

    An analysis of the current overlay journals

    • data.niaid.nih.gov
    • zenodo.org
    Updated Oct 18, 2022
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    Rousi, Antti M. (2022). An analysis of the current overlay journals [Dataset]. https://data.niaid.nih.gov/resources?id=zenodo_6420517
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    Dataset updated
    Oct 18, 2022
    Dataset provided by
    Laakso, Mikael
    Rousi, Antti M.
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Research data to accommodate the article "Overlay journals: a study of the current landscape" (https://doi.org/10.1177/09610006221125208)

    Identifying the sample of overlay journals was an explorative process (occurring during April 2021 to February 2022). The sample of investigated overlay journals were identified by using the websites of Episciences.org (2021), Scholastica (2021), Free Journal Network (2021), Open Journals (2021), PubPub (2022), and Wikipedia (2021). In total, this study identified 34 overlay journals. Please see the paper for more details about the excluded journal types.

    The journal ISSN numbers, manuscript source repositories, first overlay volumes, article volumes, publication languages, peer-review type, licence for published articles, author costs, publisher types, submission policy, and preprint availability policy were observed by inspecting journal editorial policies and submission guidelines found from journal websites. The overlay journals’ ISSN numbers were identified by examining journal websites and cross-checking this information with the Ulrich’s periodicals database (Ulrichsweb, 2021). Journals that published review reports, either with reviewers’ names or anonymously, were classified as operating with open peer-review. Publisher types defined by Laakso and Björk (2013) were used to categorise the findings concerning the publishers. If the journal website did not include publisher information, the editorial board was interpreted to publish the journal.

    The Organisation for Economic Co-operation and Development (OECD) field of science classification was used to categorise the journals into different domains of science. The journals’ primary OECD field of sciences were defined by the authors through examining the journal websites.

    Whether the journals were indexed in the Directory of Open Access Journals (DOAJ), Scopus, or Clarivate Analytics’ Web of Science Core collection’s journal master list was examined by searching the services with journal ISSN numbers and journal titles.

    The identified overlay journals were examined from the viewpoint of both qualitative and quantitative journal metrics. The qualitative metrics comprised the Nordic expert panel rankings of scientific journals, namely the Finnish Publication Forum, the Danish Bibliometric Research Indicator and the Norwegian Register for Scientific Journals, Series and Publishers. Searches were conducted from the web portals of the above services with both ISSN numbers and journal titles. Clarivate Analytics’ Journal Citation Reports database was searched with the use of both ISSN numbers and journal titles to identify whether the journals had a Journal Citation Indicator (JCI), Two-Year Impact Factor (IF) and an Impact Factor ranking (IF rank). The examined Journal Impact Factors and Impact Factor rankings were for the year 2020 (as released in 2021).

  4. f

    iCite Database Snapshot 2022-10

    • nih.figshare.com
    bin
    Updated Jun 4, 2023
    + more versions
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    iCite; B. Ian Hutchins; George Santangelo; Ehsanul Haque (2023). iCite Database Snapshot 2022-10 [Dataset]. http://doi.org/10.35092/yhjc21502470.v1
    Explore at:
    binAvailable download formats
    Dataset updated
    Jun 4, 2023
    Dataset provided by
    The NIH Figshare Archive
    Authors
    iCite; B. Ian Hutchins; George Santangelo; Ehsanul Haque
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    This is a database snapshot of the iCite web service (provided here as a single zipped CSV file, or compressed, tarred JSON files). In addition, citation links in the NIH Open Citation Collection are provided as a two-column CSV table in open_citation_collection.zip. iCite provides bibliometrics and metadata on publications indexed in PubMed, organized into three modules:

    Influence: Delivers metrics of scientific influence, field-adjusted and benchmarked to NIH publications as the baseline.

    Translation: Measures how Human, Animal, or Molecular/Cellular Biology-oriented each paper is; tracks and predicts citation by clinical articles

    Open Cites: Disseminates link-level, public-domain citation data from the NIH Open Citation Collection

    Definitions for individual data fields:

    pmid: PubMed Identifier, an article ID as assigned in PubMed by the National Library of Medicine

    doi: Digital Object Identifier, if available

    year: Year the article was published

    title: Title of the article

    authors: List of author names

    journal: Journal name (ISO abbreviation)

    is_research_article: Flag indicating whether the Publication Type tags for this article are consistent with that of a primary research article

    relative_citation_ratio: Relative Citation Ratio (RCR)--OPA's metric of scientific influence. Field-adjusted, time-adjusted and benchmarked against NIH-funded papers. The median RCR for NIH funded papers in any field is 1.0. An RCR of 2.0 means a paper is receiving twice as many citations per year than the median NIH funded paper in its field and year, while an RCR of 0.5 means that it is receiving half as many citations per year. Calculation details are documented in Hutchins et al., PLoS Biol. 2016;14(9):e1002541.

    provisional: RCRs for papers published in the previous two years are flagged as "provisional", to reflect that citation metrics for newer articles are not necessarily as stable as they are for older articles. Provisional RCRs are provided for papers published previous year, if they have received with 5 citations or more, despite being, in many cases, less than a year old. All papers published the year before the previous year receive provisional RCRs. The current year is considered to be the NIH Fiscal Year which starts in October. For example, in July 2019 (NIH Fiscal Year 2019), papers from 2018 receive provisional RCRs if they have 5 citations or more, and all papers from 2017 receive provisional RCRs. In October 2019, at the start of NIH Fiscal Year 2020, papers from 2019 receive provisional RCRs if they have 5 citations or more and all papers from 2018 receive provisional RCRs.

    citation_count: Number of unique articles that have cited this one

    citations_per_year: Citations per year that this article has received since its publication. If this appeared as a preprint and a published article, the year from the published version is used as the primary publication date. This is the numerator for the Relative Citation Ratio.

    field_citation_rate: Measure of the intrinsic citation rate of this paper's field, estimated using its co-citation network.

    expected_citations_per_year: Citations per year that NIH-funded articles, with the same Field Citation Rate and published in the same year as this paper, receive. This is the denominator for the Relative Citation Ratio.

    nih_percentile: Percentile rank of this paper's RCR compared to all NIH publications. For example, 95% indicates that this paper's RCR is higher than 95% of all NIH funded publications.

    human: Fraction of MeSH terms that are in the Human category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)

    animal: Fraction of MeSH terms that are in the Animal category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)

    molecular_cellular: Fraction of MeSH terms that are in the Molecular/Cellular Biology category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)

    x_coord: X coordinate of the article on the Triangle of Biomedicine

    y_coord: Y Coordinate of the article on the Triangle of Biomedicine

    is_clinical: Flag indicating that this paper meets the definition of a clinical article.

    cited_by_clin: PMIDs of clinical articles that this article has been cited by.

    apt: Approximate Potential to Translate is a machine learning-based estimate of the likelihood that this publication will be cited in later clinical trials or guidelines. Calculation details are documented in Hutchins et al., PLoS Biol. 2019;17(10):e3000416.

    cited_by: PMIDs of articles that have cited this one.

    references: PMIDs of articles in this article's reference list.

    Large CSV files are zipped using zip version 4.5, which is more recent than the default unzip command line utility in some common Linux distributions. These files can be unzipped with tools that support version 4.5 or later such as 7zip.

    Comments and questions can be addressed to iCite@mail.nih.gov

  5. H

    Data from: A study of the impact of data sharing on article citations using...

    • dataverse.harvard.edu
    • search.dataone.org
    • +2more
    application/gzip +13
    Updated Sep 4, 2020
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    Harvard Dataverse (2020). A study of the impact of data sharing on article citations using journal policies as a natural experiment [Dataset]. http://doi.org/10.7910/DVN/ORTJT5
    Explore at:
    text/x-stata-syntax(519), txt(0), png(15306), type/x-r-syntax(569), jar(21709328), pdf(65387), tsv(35864), text/markdown(125), bin(26), application/gzip(111839), text/x-python(0), application/x-stata-syntax(720), tex(3986), text/plain; charset=us-ascii(91)Available download formats
    Dataset updated
    Sep 4, 2020
    Dataset provided by
    Harvard Dataverse
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    This study estimates the effect of data sharing on the citations of academic articles, using journal policies as a natural experiment. We begin by examining 17 high-impact journals that have adopted the requirement that data from published articles be publicly posted. We match these 17 journals to 13 journals without policy changes and find that empirical articles published just before their change in editorial policy have citation rates with no statistically significant difference from those published shortly after the shift. We then ask whether this null result stems from poor compliance with data sharing policies, and use the data sharing policy changes as instrumental variables to examine more closely two leading journals in economics and political science with relatively strong enforcement of new data policies. We find that articles that make their data available receive 97 additional citations (estimate standard error of 34). We conclude that: a) authors who share data may be rewarded eventually with additional scholarly citations, and b) data-posting policies alone do not increase the impact of articles published in a journal unless those policies are enforced.

  6. Top 100-Ranked Clinical Journals' Preprint Policies as of April 23, 2020

    • data.niaid.nih.gov
    • zenodo.org
    • +1more
    zip
    Updated Sep 6, 2020
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    Dorothy Massey; Joshua Wallach; Joseph Ross; Michelle Opare; Harlan Krumholz (2020). Top 100-Ranked Clinical Journals' Preprint Policies as of April 23, 2020 [Dataset]. http://doi.org/10.5061/dryad.jdfn2z38f
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    zipAvailable download formats
    Dataset updated
    Sep 6, 2020
    Dataset provided by
    Yale School of Public Health
    Yale University
    Yale New Haven Hospital
    Authors
    Dorothy Massey; Joshua Wallach; Joseph Ross; Michelle Opare; Harlan Krumholz
    License

    https://spdx.org/licenses/CC0-1.0.htmlhttps://spdx.org/licenses/CC0-1.0.html

    Description

    Objective: To determine the top 100-ranked (by impact factor) clinical journals' policies toward publishing research previously published on preprint servers (preprints).

    Design: Cross sectional. Main outcome measures: Editorial guidelines toward preprints, journal rank by impact factor.

    Results: 86 (86%) of the journals examined will consider papers previously published as preprints (preprints), 13 (13%) determine their decision on a case-by-case basis, and 1 (1%) does not allow preprints.

    Conclusions: We found wide acceptance of publishing preprints in the clinical research community, although researchers may still face uncertainty that their preprints will be accepted by all of their target journals.

    Methods We examined journal policies of the 100 top-ranked clinical journals using the 2018 impact factors as reported by InCites Journal Citation Reports (JCR). First, we examined all journals with an impact factor greater than 5, and then we manually screened by title and category do identify the first 100 clinical journals. We included only those that publish original research. Next, we checked each journal's editorial policy on preprints. We examined, in order, the journal website, the publisher website, the Transpose Database, and the first 10 pages of a Google search with the journal name and the term "preprint." We classified each journal's policy, as shown in this dataset, as allowing preprints, determining based on preprint status on a case-by-case basis, and not allowing any preprints. We collected data on April 23, 2020.

    (Full methods can also be found in previously published paper.)

  7. Data articles in journals

    • zenodo.org
    • data.niaid.nih.gov
    bin, csv, txt
    Updated Sep 22, 2023
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    Carlota Balsa-Sanchez; Carlota Balsa-Sanchez; Vanesa Loureiro; Vanesa Loureiro (2023). Data articles in journals [Dataset]. http://doi.org/10.5281/zenodo.8367960
    Explore at:
    bin, csv, txtAvailable download formats
    Dataset updated
    Sep 22, 2023
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Carlota Balsa-Sanchez; Carlota Balsa-Sanchez; Vanesa Loureiro; Vanesa Loureiro
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Version: 5

    Authors: Carlota Balsa-Sánchez, Vanesa Loureiro

    Date of data collection: 2023/09/05

    General description: The publication of datasets according to the FAIR principles, could be reached publishing a data paper (or software paper) in data journals or in academic standard journals. The excel and CSV file contains a list of academic journals that publish data papers and software papers.
    File list:

    - data_articles_journal_list_v5.xlsx: full list of 140 academic journals in which data papers or/and software papers could be published
    - data_articles_journal_list_v5.csv: full list of 140 academic journals in which data papers or/and software papers could be published

    Relationship between files: both files have the same information. Two different formats are offered to improve reuse

    Type of version of the dataset: final processed version

    Versions of the files: 5th version
    - Information updated: number of journals, URL, document types associated to a specific journal.

    Version: 4

    Authors: Carlota Balsa-Sánchez, Vanesa Loureiro

    Date of data collection: 2022/12/15

    General description: The publication of datasets according to the FAIR principles, could be reached publishing a data paper (or software paper) in data journals or in academic standard journals. The excel and CSV file contains a list of academic journals that publish data papers and software papers.
    File list:

    - data_articles_journal_list_v4.xlsx: full list of 140 academic journals in which data papers or/and software papers could be published
    - data_articles_journal_list_v4.csv: full list of 140 academic journals in which data papers or/and software papers could be published

    Relationship between files: both files have the same information. Two different formats are offered to improve reuse

    Type of version of the dataset: final processed version

    Versions of the files: 4th version
    - Information updated: number of journals, URL, document types associated to a specific journal, publishers normalization and simplification of document types
    - Information added : listed in the Directory of Open Access Journals (DOAJ), indexed in Web of Science (WOS) and quartile in Journal Citation Reports (JCR) and/or Scimago Journal and Country Rank (SJR), Scopus and Web of Science (WOS), Journal Master List.

    Version: 3

    Authors: Carlota Balsa-Sánchez, Vanesa Loureiro

    Date of data collection: 2022/10/28

    General description: The publication of datasets according to the FAIR principles, could be reached publishing a data paper (or software paper) in data journals or in academic standard journals. The excel and CSV file contains a list of academic journals that publish data papers and software papers.
    File list:

    - data_articles_journal_list_v3.xlsx: full list of 124 academic journals in which data papers or/and software papers could be published
    - data_articles_journal_list_3.csv: full list of 124 academic journals in which data papers or/and software papers could be published

    Relationship between files: both files have the same information. Two different formats are offered to improve reuse

    Type of version of the dataset: final processed version

    Versions of the files: 3rd version
    - Information updated: number of journals, URL, document types associated to a specific journal, publishers normalization and simplification of document types
    - Information added : listed in the Directory of Open Access Journals (DOAJ), indexed in Web of Science (WOS) and quartile in Journal Citation Reports (JCR) and/or Scimago Journal and Country Rank (SJR).

    Erratum - Data articles in journals Version 3:

    Botanical Studies -- ISSN 1999-3110 -- JCR (JIF) Q2
    Data -- ISSN 2306-5729 -- JCR (JIF) n/a
    Data in Brief -- ISSN 2352-3409 -- JCR (JIF) n/a

    Version: 2

    Author: Francisco Rubio, Universitat Politècnia de València.

    Date of data collection: 2020/06/23

    General description: The publication of datasets according to the FAIR principles, could be reached publishing a data paper (or software paper) in data journals or in academic standard journals. The excel and CSV file contains a list of academic journals that publish data papers and software papers.
    File list:

    - data_articles_journal_list_v2.xlsx: full list of 56 academic journals in which data papers or/and software papers could be published
    - data_articles_journal_list_v2.csv: full list of 56 academic journals in which data papers or/and software papers could be published

    Relationship between files: both files have the same information. Two different formats are offered to improve reuse

    Type of version of the dataset: final processed version

    Versions of the files: 2nd version
    - Information updated: number of journals, URL, document types associated to a specific journal, publishers normalization and simplification of document types
    - Information added : listed in the Directory of Open Access Journals (DOAJ), indexed in Web of Science (WOS) and quartile in Scimago Journal and Country Rank (SJR)

    Total size: 32 KB

    Version 1: Description

    This dataset contains a list of journals that publish data articles, code, software articles and database articles.

    The search strategy in DOAJ and Ulrichsweb was the search for the word data in the title of the journals.
    Acknowledgements:
    Xaquín Lores Torres for his invaluable help in preparing this dataset.

  8. d

    PLOS ONE publication and citation data

    • datadryad.org
    • data.niaid.nih.gov
    • +1more
    zip
    Updated Jul 23, 2018
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    Alexander Petersen (2018). PLOS ONE publication and citation data [Dataset]. http://doi.org/10.6071/M39W8V
    Explore at:
    zipAvailable download formats
    Dataset updated
    Jul 23, 2018
    Dataset provided by
    Dryad
    Authors
    Alexander Petersen
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Time period covered
    2018
    Description

    Data enclosed in a single zipped folder:

    A) DASH-V2 : Data files for final published analysis (J. Informetrics, 2019)

    File A1: PubData_DOI_141986_Nc_0_2019.dta

    File A2: PubData_DOI_141986_Nc_0_2019_DOFILE

    B) DASH-V1 : Data files for preprint version (https://ssrn.com/abstract=2901272)

    File B1: PubData_Obs_102741_Nc_10_No2015_CitationsAnalysis.dta

    File B2: PubData_Obs_128734_Nc_10_AcceptanceTimeAnalysis.dta

    File B3: STATA13_DOFILE

    C) Data description common to all .dta files, which contain parsed and merged PLOS ONE and Web of Science metadata:

    File A3: UC-DASH_DataDescription_Petersen_V2.pdf

    File B4: UC-DASH_DataDescription_Petersen_V1.pdf

  9. iCite Database Snapshot 2023-11

    • nih.figshare.com
    bin
    Updated Dec 7, 2023
    + more versions
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    iCite; B. Ian Hutchins; George Santangelo (2023). iCite Database Snapshot 2023-11 [Dataset]. http://doi.org/10.35092/yhjc24756534.v1
    Explore at:
    binAvailable download formats
    Dataset updated
    Dec 7, 2023
    Dataset provided by
    figshare
    Authors
    iCite; B. Ian Hutchins; George Santangelo
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    This is a database snapshot of the iCite web service (provided here as a single zipped CSV file, or compressed, tarred JSON files). In addition, citation links in the NIH Open Citation Collection are provided as a two-column CSV table in open_citation_collection.zip. iCite provides bibliometrics and metadata on publications indexed in PubMed, organized into three modules:Influence: Delivers metrics of scientific influence, field-adjusted and benchmarked to NIH publications as the baseline.Translation: Measures how Human, Animal, or Molecular/Cellular Biology-oriented each paper is; tracks and predicts citation by clinical articlesOpen Cites: Disseminates link-level, public-domain citation data from the NIH Open Citation CollectionDefinitions for individual data fields:pmid: PubMed Identifier, an article ID as assigned in PubMed by the National Library of Medicinedoi: Digital Object Identifier, if availableyear: Year the article was publishedtitle: Title of the articleauthors: List of author namesjournal: Journal name (ISO abbreviation)is_research_article: Flag indicating whether the Publication Type tags for this article are consistent with that of a primary research articlerelative_citation_ratio: Relative Citation Ratio (RCR)--OPA's metric of scientific influence. Field-adjusted, time-adjusted and benchmarked against NIH-funded papers. The median RCR for NIH funded papers in any field is 1.0. An RCR of 2.0 means a paper is receiving twice as many citations per year than the median NIH funded paper in its field and year, while an RCR of 0.5 means that it is receiving half as many citations per year. Calculation details are documented in Hutchins et al., PLoS Biol. 2016;14(9):e1002541.provisional: RCRs for papers published in the previous two years are flagged as "provisional", to reflect that citation metrics for newer articles are not necessarily as stable as they are for older articles. Provisional RCRs are provided for papers published previous year, if they have received with 5 citations or more, despite being, in many cases, less than a year old. All papers published the year before the previous year receive provisional RCRs. The current year is considered to be the NIH Fiscal Year which starts in October. For example, in July 2019 (NIH Fiscal Year 2019), papers from 2018 receive provisional RCRs if they have 5 citations or more, and all papers from 2017 receive provisional RCRs. In October 2019, at the start of NIH Fiscal Year 2020, papers from 2019 receive provisional RCRs if they have 5 citations or more and all papers from 2018 receive provisional RCRs.citation_count: Number of unique articles that have cited this onecitations_per_year: Citations per year that this article has received since its publication. If this appeared as a preprint and a published article, the year from the published version is used as the primary publication date. This is the numerator for the Relative Citation Ratio.field_citation_rate: Measure of the intrinsic citation rate of this paper's field, estimated using its co-citation network.expected_citations_per_year: Citations per year that NIH-funded articles, with the same Field Citation Rate and published in the same year as this paper, receive. This is the denominator for the Relative Citation Ratio.nih_percentile: Percentile rank of this paper's RCR compared to all NIH publications. For example, 95% indicates that this paper's RCR is higher than 95% of all NIH funded publications.human: Fraction of MeSH terms that are in the Human category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)animal: Fraction of MeSH terms that are in the Animal category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)molecular_cellular: Fraction of MeSH terms that are in the Molecular/Cellular Biology category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)x_coord: X coordinate of the article on the Triangle of Biomediciney_coord: Y Coordinate of the article on the Triangle of Biomedicineis_clinical: Flag indicating that this paper meets the definition of a clinical article.cited_by_clin: PMIDs of clinical articles that this article has been cited by.apt: Approximate Potential to Translate is a machine learning-based estimate of the likelihood that this publication will be cited in later clinical trials or guidelines. Calculation details are documented in Hutchins et al., PLoS Biol. 2019;17(10):e3000416.cited_by: PMIDs of articles that have cited this one.references: PMIDs of articles in this article's reference list.Large CSV files are zipped using zip version 4.5, which is more recent than the default unzip command line utility in some common Linux distributions. These files can be unzipped with tools that support version 4.5 or later such as 7zip.Comments and questions can be addressed to iCite@mail.nih.gov

  10. d

    Data from: Market share of the largest publishers in Journal Citation...

    • search.dataone.org
    • dataverse.harvard.edu
    • +1more
    Updated Nov 22, 2023
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    Kim, Sang-Jun; Park, Kay Sook (2023). Market share of the largest publishers in Journal Citation Reports based on journal price and article processing charge [Dataset]. http://doi.org/10.7910/DVN/FZ3OIA
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    Dataset updated
    Nov 22, 2023
    Dataset provided by
    Harvard Dataverse
    Authors
    Kim, Sang-Jun; Park, Kay Sook
    Description

    Journals list of the top 10 publishers in JCR 2014 to 2018

  11. f

    iCite Database Snapshot 2024-12

    • nih.figshare.com
    bin
    Updated Jan 7, 2025
    + more versions
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    iCite; B. Ian Hutchins; George Santangelo; Ehsanul Haque (2025). iCite Database Snapshot 2024-12 [Dataset]. http://doi.org/10.35092/yhjc28147979.v1
    Explore at:
    binAvailable download formats
    Dataset updated
    Jan 7, 2025
    Dataset provided by
    The NIH Figshare Archive
    Authors
    iCite; B. Ian Hutchins; George Santangelo; Ehsanul Haque
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    This is a database snapshot of the iCite web service (provided here as a single zipped CSV file, or compressed, tarred JSON files). In addition, citation links in the NIH Open Citation Collection are provided as a two-column CSV table in open_citation_collection.zip. iCite provides bibliometrics and metadata on publications indexed in PubMed, organized into three modules:Influence: Delivers metrics of scientific influence, field-adjusted and benchmarked to NIH publications as the baseline.Translation: Measures how Human, Animal, or Molecular/Cellular Biology-oriented each paper is; tracks and predicts citation by clinical articlesOpen Cites: Disseminates link-level, public-domain citation data from the NIH Open Citation CollectionDefinitions for individual data fields:pmid: PubMed Identifier, an article ID as assigned in PubMed by the National Library of Medicinedoi: Digital Object Identifier, if availableyear: Year the article was publishedtitle: Title of the articleauthors: List of author namesjournal: Journal name (ISO abbreviation)is_research_article: Flag indicating whether the Publication Type tags for this article are consistent with that of a primary research articlerelative_citation_ratio: Relative Citation Ratio (RCR)--OPA's metric of scientific influence. Field-adjusted, time-adjusted and benchmarked against NIH-funded papers. The median RCR for NIH funded papers in any field is 1.0. An RCR of 2.0 means a paper is receiving twice as many citations per year than the median NIH funded paper in its field and year, while an RCR of 0.5 means that it is receiving half as many citations per year. Calculation details are documented in Hutchins et al., PLoS Biol. 2016;14(9):e1002541.provisional: RCRs for papers published in the previous two years are flagged as "provisional", to reflect that citation metrics for newer articles are not necessarily as stable as they are for older articles. Provisional RCRs are provided for papers published previous year, if they have received with 5 citations or more, despite being, in many cases, less than a year old. All papers published the year before the previous year receive provisional RCRs. The current year is considered to be the NIH Fiscal Year which starts in October. For example, in July 2019 (NIH Fiscal Year 2019), papers from 2018 receive provisional RCRs if they have 5 citations or more, and all papers from 2017 receive provisional RCRs. In October 2019, at the start of NIH Fiscal Year 2020, papers from 2019 receive provisional RCRs if they have 5 citations or more and all papers from 2018 receive provisional RCRs.citation_count: Number of unique articles that have cited this onecitations_per_year: Citations per year that this article has received since its publication. If this appeared as a preprint and a published article, the year from the published version is used as the primary publication date. This is the numerator for the Relative Citation Ratio.field_citation_rate: Measure of the intrinsic citation rate of this paper's field, estimated using its co-citation network.expected_citations_per_year: Citations per year that NIH-funded articles, with the same Field Citation Rate and published in the same year as this paper, receive. This is the denominator for the Relative Citation Ratio.nih_percentile: Percentile rank of this paper's RCR compared to all NIH publications. For example, 95% indicates that this paper's RCR is higher than 95% of all NIH funded publications.human: Fraction of MeSH terms that are in the Human category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)animal: Fraction of MeSH terms that are in the Animal category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)molecular_cellular: Fraction of MeSH terms that are in the Molecular/Cellular Biology category (out of this article's MeSH terms that fall into the Human, Animal, or Molecular/Cellular Biology categories)x_coord: X coordinate of the article on the Triangle of Biomediciney_coord: Y Coordinate of the article on the Triangle of Biomedicineis_clinical: Flag indicating that this paper meets the definition of a clinical article.cited_by_clin: PMIDs of clinical articles that this article has been cited by.apt: Approximate Potential to Translate is a machine learning-based estimate of the likelihood that this publication will be cited in later clinical trials or guidelines. Calculation details are documented in Hutchins et al., PLoS Biol. 2019;17(10):e3000416.cited_by: PMIDs of articles that have cited this one.references: PMIDs of articles in this article's reference list.Large CSV files are zipped using zip version 4.5, which is more recent than the default unzip command line utility in some common Linux distributions. These files can be unzipped with tools that support version 4.5 or later such as 7zip.Comments and questions can be addressed to iCite@mail.nih.gov

  12. I

    Data from: OpCitance: Citation contexts identified from the PubMed Central...

    • databank.illinois.edu
    • aws-databank-alb.library.illinois.edu
    Updated Feb 15, 2023
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    Tzu-Kun Hsiao; Vetle Torvik (2023). OpCitance: Citation contexts identified from the PubMed Central open access articles [Dataset]. http://doi.org/10.13012/B2IDB-4353270_V1
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    Dataset updated
    Feb 15, 2023
    Authors
    Tzu-Kun Hsiao; Vetle Torvik
    Dataset funded by
    U.S. National Institutes of Health (NIH)
    Description

    Sentences and citation contexts identified from the PubMed Central open access articles ---------------------------------------------------------------------- The dataset is delivered as 24 tab-delimited text files. The files contain 720,649,608 sentences, 75,848,689 of which are citation contexts. The dataset is based on a snapshot of articles in the XML version of the PubMed Central open access subset (i.e., the PMCOA subset). The PMCOA subset was collected in May 2019. The dataset is created as described in: Hsiao TK., & Torvik V. I. (manuscript) OpCitance: Citation contexts identified from the PubMed Central open access articles. Files: • A_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with A. • B_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with B. • C_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with C. • D_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with D. • E_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with E. • F_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with F. • G_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with G. • H_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with H. • I_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with I. • J_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with J. • K_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with K. • L_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with L. • M_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with M. • N_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with N. • O_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with O. • P_p1_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with P (part 1). • P_p2_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with P (part 2). • Q_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with Q. • R_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with R. • S_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with S. • T_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with T. • UV_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with U or V. • W_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with W. • XYZ_journal_IntxtCit.tsv – Sentences and citation contexts identified from articles published in journals with journal titles starting with X, Y or Z. Each row in the file is a sentence/citation context and contains the following columns: • pmcid: PMCID of the article • pmid: PMID of the article. If an article does not have a PMID, the value is NONE. • location: The article component (abstract, main text, table, figure, etc.) to which the citation context/sentence belongs. • IMRaD: The type of IMRaD section associated with the citation context/sentence. I, M, R, and D represent introduction/background, method, results, and conclusion/discussion, respectively; NoIMRaD indicates that the section type is not identifiable. • sentence_id: The ID of the citation context/sentence in the article component • total_sentences: The number of sentences in the article component. • intxt_id: The ID of the citation. • intxt_pmid: PMID of the citation (as tagged in the XML file). If a citation does not have a PMID tagged in the XML file, the value is "-". • intxt_pmid_source: The sources where the intxt_pmid can be identified. Xml represents that the PMID is only identified from the XML file; xml,pmc represents that the PMID is not only from the XML file, but also in the citation data collected from the NCBI Entrez Programming Utilities. If a citation does not have an intxt_pmid, the value is "-". • intxt_mark: The citation marker associated with the inline citation. • best_id: The best source link ID (e.g., PMID) of the citation. • best_source: The sources that confirm the best ID. • best_id_diff: The comparison result between the best_id column and the intxt_pmid column. • citation: A citation context. If no citation is found in a sentence, the value is the sentence. • progression: Text progression of the citation context/sentence. Supplementary Files • PMC-OA-patci.tsv.gz – This file contains the best source link IDs for the references (e.g., PMID). Patci [1] was used to identify the best source link IDs. The best source link IDs are mapped to the citation contexts and displayed in the *_journal IntxtCit.tsv files as the best_id column. Each row in the PMC-OA-patci.tsv.gz file is a citation (i.e., a reference extracted from the XML file) and contains the following columns: • pmcid: PMCID of the citing article. • pos: The citation's position in the reference list. • fromPMID: PMID of the citing article. • toPMID: Source link ID (e.g., PMID) of the citation. This ID is identified by Patci. • SRC: The sources that confirm the toPMID. • MatchDB: The origin bibliographic database of the toPMID. • Probability: The match probability of the toPMID. • toPMID2: PMID of the citation (as tagged in the XML file). • SRC2: The sources that confirm the toPMID2. • intxt_id: The ID of the citation. • journal: The first letter of the journal title. This maps to the *_journal_IntxtCit.tsv files. • same_ref_string: Whether the citation string appears in the reference list more than once. • DIFF: The comparison result between the toPMID column and the toPMID2 column. • bestID: The best source link ID (e.g., PMID) of the citation. • bestSRC: The sources that confirm the best ID. • Match: Matching result produced by Patci. [1] Agarwal, S., Lincoln, M., Cai, H., & Torvik, V. (2014). Patci – a tool for identifying scientific articles cited by patents. GSLIS Research Showcase 2014. http://hdl.handle.net/2142/54885 • Supplementary_File_1.zip – This file contains the code for generating the dataset.

  13. r

    Journal of Political Economy Acceptance Rate - ResearchHelpDesk

    • researchhelpdesk.org
    Updated Feb 15, 2022
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    Research Help Desk (2022). Journal of Political Economy Acceptance Rate - ResearchHelpDesk [Dataset]. https://www.researchhelpdesk.org/journal/acceptance-rate/602/journal-of-political-economy
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    Dataset updated
    Feb 15, 2022
    Dataset authored and provided by
    Research Help Desk
    Description

    Journal of Political Economy Acceptance Rate - ResearchHelpDesk - The Journal of Political Economy is a monthly peer-reviewed academic journal published by the University of Chicago Press. Established by James Laurence Laughlin in 1892, it covers both theoretical and empirical economics. In the past, the journal published quarterly from its introduction through 1905, ten issues per volume from 1906 through 1921, and bimonthly from 1922 through 2019. The editor-in-chief is Magne Mogstad (University of Chicago). Abstract & Indexing Articles that appear in the Journal of Political Economy are indexed in the following abstracting and indexing services: Ulrich's Periodicals Directory (Print) Ulrichsweb (Online) J-Gate HINARI Association for Asian Studies Bibliography of Asian Studies (Online) Business Index CABI Abstracts on Hygiene and Communicable Diseases (Online) Agricultural Economics Database CAB Abstracts (Commonwealth Agricultural Bureaux) Dairy Science Abstracts (Online) Environmental Impact Global Health Leisure Tourism Database Nutrition and Food Sciences Database Rural Development Abstracts (Online) Soil Science Database Soils and Fertilizers (Online) Tropical Diseases Bulletin (Online) World Agricultural Economics and Rural Sociology Abstracts (Online) Clarivate Analytics Current Contents Social Sciences Citation Index Web of Science De Gruyter Saur Dietrich's Index Philosophicus IBZ - Internationale Bibliographie der Geistes- und Sozialwissenschaftlichen Zeitschriftenliteratur Internationale Bibliographie der Rezensionen Geistes- und Sozialwissenschaftlicher Literatur EBSCOhost America: History and Life ATLA Religion Database (American Theological Library Association) Biography Index: Past and Present (H.W. Wilson) Book Review Digest Plus (H.W. Wilson) Business Source Alumni Edition (Full Text) Business Source Complete (Full Text) Business Source Corporate (Full Text) Business Source Corporate Plus (Full Text) Business Source Elite (Full Text) Business Source Premier (Full Text) Business Source Ultimate (Full Text) Current Abstracts EBSCO MegaFILE (Full Text) EBSCO Periodicals Collection (Full Text) EconLit with Full Text (Full Text) ERIC (Education Resources Information Center) GeoRef Historical Abstracts (Online) Humanities & Social Sciences Index Retrospective: 1907-1984 (H.W. Wilson) Humanities Index Retrospective: 1907-1984 (H.W. Wilson) Humanities Source Humanities Source Ultimate Index to Legal Periodicals Retrospective: 1908-1981 (H.W. Wilson) Legal Source Library & Information Science Source MLA International Bibliography (Modern Language Association) OmniFile Full Text Mega (H.W. Wilson) Poetry & Short Story Reference Center Political Science Complete Public Affairs Index Readers' Guide Retrospective: 1890-1982 (H.W. Wilson) Russian Academy of Sciences Bibliographies Social Sciences Abstracts Social Sciences Full Text (H.W. Wilson) Social Sciences Index Retrospective: 1907-1983 (H.W. Wilson) SocINDEX SocINDEX with Full Text TOC Premier Women's Studies International Elsevier BV GEOBASE Scopus ERIC (Education Resources Information Center) ERIC (Education Resources Information Center) Gale Academic ASAP Academic OneFile Advanced Placement Government and Social Studies Book Review Index Plus Business & Company ProFile ASAP Business ASAP Business ASAP International Business Collection Business Insights: Essentials Business Insights: Global Business, Economics and Theory Collection Expanded Academic ASAP General Business File ASAP General OneFile General Reference Center Gold General Reference Centre International InfoTrac Custom InfoTrac Student Edition MLA International Bibliography (Modern Language Association) Popular Magazines US History Collection H.W. Wilson Social Sciences Index National Library of Medicine PubMed OCLC ArticleFirst Periodical Abstracts Sociological Abstracts (Online), Selective Ovid EconLit ERIC (Education Resources Information Center) GeoRef ProQuest ABI/INFORM Collection ABI/INFORM Global (American Business Information) ABI/INFORM Research (American Business Information) Business Premium Collection EconLit ERIC (Education Resources Information Center) GeoRef Health Management Database Health Research Premium Collection Hospital Premium Collection International Bibliography of the Social Sciences, Core MLA International Bibliography (Modern Language Association) PAIS Archive Professional ABI/INFORM Complete Professional ProQuest Central ProQuest 5000 ProQuest 5000 International ProQuest Central ProQuest Pharma Collection Research Library Social Science Database Social Science Premium Collection Sociological Abstracts (Online), Selective Worldwide Political Science Abstracts, Selective SCIMP (Selective Cooperative Index of Management Periodicals) Taylor & Francis Educational Research Abstracts Online Wiley-Blackwell Publishing Asia Asian - Pacific Economic Literature (Online)

  14. d

    Data of top 50 most cited articles about COVID-19 and the complications of...

    • search.dataone.org
    • data.niaid.nih.gov
    • +2more
    Updated Jan 11, 2024
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    Tanya Singh; Jagadish Rao Padubidri; Pavanchand Shetty H; Matthew Antony Manoj; Therese Mary; Bhanu Thejaswi Pallempati (2024). Data of top 50 most cited articles about COVID-19 and the complications of COVID-19 [Dataset]. http://doi.org/10.5061/dryad.tx95x6b4m
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    Dataset updated
    Jan 11, 2024
    Dataset provided by
    Dryad Digital Repository
    Authors
    Tanya Singh; Jagadish Rao Padubidri; Pavanchand Shetty H; Matthew Antony Manoj; Therese Mary; Bhanu Thejaswi Pallempati
    Time period covered
    Jan 1, 2023
    Description

    Background This bibliometric analysis examines the top 50 most-cited articles on COVID-19 complications, offering insights into the multifaceted impact of the virus. Since its emergence in Wuhan in December 2019, COVID-19 has evolved into a global health crisis, with over 770 million confirmed cases and 6.9 million deaths as of September 2023. Initially recognized as a respiratory illness causing pneumonia and ARDS, its diverse complications extend to cardiovascular, gastrointestinal, renal, hematological, neurological, endocrinological, ophthalmological, hepatobiliary, and dermatological systems. Methods Identifying the top 50 articles from a pool of 5940 in Scopus, the analysis spans November 2019 to July 2021, employing terms related to COVID-19 and complications. Rigorous review criteria excluded non-relevant studies, basic science research, and animal models. The authors independently reviewed articles, considering factors like title, citations, publication year, journal, impact fa..., A bibliometric analysis of the most cited articles about COVID-19 complications was conducted in July 2021 using all journals indexed in Elsevier’s Scopus and Thomas Reuter’s Web of Science from November 1, 2019 to July 1, 2021. All journals were selected for inclusion regardless of country of origin, language, medical speciality, or electronic availability of articles or abstracts. The terms were combined as follows: (“COVID-19†OR “COVID19†OR “SARS-COV-2†OR “SARSCOV2†OR “SARS 2†OR “Novel coronavirus†OR “2019-nCov†OR “Coronavirus†) AND (“Complication†OR “Long Term Complication†OR “Post-Intensive Care Syndrome†OR “Venous Thromboembolism†OR “Acute Kidney Injury†OR “Acute Liver Injury†OR “Post COVID-19 Syndrome†OR “Acute Cardiac Injury†OR “Cardiac Arrest†OR “Stroke†OR “Embolism†OR “Septic Shock†OR “Disseminated Intravascular Coagulation†OR “Secondary Infection†OR “Blood Clots† OR “Cytokine Release Syndrome†OR “Paediatric Inflammatory Multisystem Syndrome†OR “Vaccine..., , # Data of top 50 most cited articles about COVID-19 and the complications of COVID-19

    This dataset contains information about the top 50 most cited articles about COVID-19 and the complications of COVID-19. We have looked into a variety of research and clinical factors for the analysis.

    Description of the data and file structure

    The data sheet offers a comprehensive analysis of the selected articles. It delves into specifics such as the publication year of the top 50 articles, the journals responsible for publishing them, and the geographical region with the highest number of citations in this elite list. Moreover, the sheet sheds light on the key players involved, including authors and their affiliated departments, in crafting the top 50 most cited articles.

    Beyond these fundamental aspects, the data sheet goes on to provide intricate details related to the study types and topics prevalent in the top 50 articles. To enrich the analysis, it incorporates clinical data, capturing...

  15. Data of the article "Journal research data sharing policies: a study of...

    • zenodo.org
    Updated May 26, 2021
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    Antti Rousi; Antti Rousi (2021). Data of the article "Journal research data sharing policies: a study of highly-cited journals in neuroscience, physics, and operations research" [Dataset]. http://doi.org/10.5281/zenodo.3635511
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    Dataset updated
    May 26, 2021
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Antti Rousi; Antti Rousi
    Description

    The journals’ author guidelines and/or editorial policies were examined on whether they take a stance with regard to the availability of the underlying data of the submitted article. The mere explicated possibility of providing supplementary material along with the submitted article was not considered as a research data policy in the present study. Furthermore, the present article excluded source codes or algorithms from the scope of the paper and thus policies related to them are not included in the analysis of the present article.

    For selection of journals within the field of neurosciences, Clarivate Analytics’ InCites Journal Citation Reports database was searched using categories of neurosciences and neuroimaging. From the results, journals with the 40 highest Impact Factor (for the year 2017) indicators were extracted for scrutiny of research data policies. Respectively, the selection journals within the field of physics was created by performing a similar search with the categories of physics, applied; physics, atomic, molecular & chemical; physics, condensed matter; physics, fluids & plasmas; physics, mathematical; physics, multidisciplinary; physics, nuclear and physics, particles & fields. From the results, journals with the 40 highest Impact Factor indicators were again extracted for scrutiny. Similarly, the 40 journals representing the field of operations research were extracted by using the search category of operations research and management.

    Journal-specific data policies were sought from journal specific websites providing journal specific author guidelines or editorial policies. Within the present study, the examination of journal data policies was done in May 2019. The primary data source was journal-specific author guidelines. If journal guidelines explicitly linked to the publisher’s general policy with regard to research data, these were used in the analyses of the present article. If journal-specific research data policy, or lack of, was inconsistent with the publisher’s general policies, the journal-specific policies and guidelines were prioritized and used in the present article’s data. If journals’ author guidelines were not openly available online due to, e.g., accepting submissions on an invite-only basis, the journal was not included in the data of the present article. Also journals that exclusively publish review articles were excluded and replaced with the journal having the next highest Impact Factor indicator so that each set representing the three field of sciences consisted of 40 journals. The final data thus consisted of 120 journals in total.

    ‘Public deposition’ refers to a scenario where researcher deposits data to a public repository and thus gives the administrative role of the data to the receiving repository. ‘Scientific sharing’ refers to a scenario where researcher administers his or her data locally and by request provides it to interested reader. Note that none of the journals examined in the present article required that all data types underlying a submitted work should be deposited into a public data repositories. However, some journals required public deposition of data of specific types. Within the journal research data policies examined in the present article, these data types are well presented by the Springer Nature policy on “Availability of data, materials, code and protocols” (Springer Nature, 2018), that is, DNA and RNA data; protein sequences and DNA and RNA sequencing data; genetic polymorphisms data; linked phenotype and genotype data; gene expression microarray data; proteomics data; macromolecular structures and crystallographic data for small molecules. Furthermore, the registration of clinical trials in a public repository was also considered as a data type in this study. The term specific data types used in the custom coding framework of the present study thus refers to both life sciences data and public registration of clinical trials. These data types have community-endorsed public repositories where deposition was most often mandated within the journals’ research data policies.

    The term ‘location’ refers to whether the journal’s data policy provides suggestions or requirements for the repositories or services used to share the underlying data of the submitted works. A mere general reference to ‘public repositories’ was not considered a location suggestion, but only references to individual repositories and services. The category of ‘immediate release of data’ examines whether the journals’ research data policy addresses the timing of publication of the underlying data of submitted works. Note that even though the journals may only encourage public deposition of the data, the editorial processes could be set up so that it leads to either publication of the research data or the research data metadata in conjunction to publishing of the submitted work.

  16. r

    American Journal of Clinical Dermatology FAQ - ResearchHelpDesk

    • researchhelpdesk.org
    Updated May 25, 2022
    + more versions
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    Research Help Desk (2022). American Journal of Clinical Dermatology FAQ - ResearchHelpDesk [Dataset]. https://www.researchhelpdesk.org/journal/faq/269/american-journal-of-clinical-dermatology
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    Dataset updated
    May 25, 2022
    Dataset authored and provided by
    Research Help Desk
    Description

    American Journal of Clinical Dermatology FAQ - ResearchHelpDesk - The American Journal of Clinical Dermatology promotes evidence-based therapy and effective patient management within the discipline of dermatology by publishing critical and comprehensive review articles and clinically focussed original research articles covering all aspects of the management of dermatological conditions. The American Journal of Clinical Dermatology offers a range of additional enhanced features designed to increase the visibility, readership and educational value of the journal’s content. Each article is accompanied by a Key Points summary, giving a time-efficient overview of the content to a wide readership. Articles may be accompanied by plain language summaries to assist readers in understanding important medical advances. The journal also provides the option to include various other types of enhanced features including slide sets, videos and animations. All enhanced features are peer reviewed to the same high standard as the article itself. Peer review is conducted using Editorial Manager, supported by a database of international experts. This database is shared with other Adis journals. Abstract & indexing Science Citation Index Expanded (SciSearch), Journal Citation Reports/Science Edition, Medline, SCOPUS, Google Scholar, Current Contents/Clinical Medicine, EBSCO Academic Search, EBSCO Advanced Placement Source, EBSCO CINAHL, EBSCO Discovery Service, EBSCO STM Source, EBSCO TOC Premier, Expanded Academic, Institute of Scientific and Technical Information of China, Japanese Science and Technology Agency (JST), Naver, OCLC WorldCat Discovery Service, Pathway Studio, ProQuest Central, ProQuest Health & Medical Collection, ProQuest Health Research Premium Collection, ProQuest Medical Database, ProQuest-ExLibris Primo, ProQuest-ExLibris Summon, Semantic Scholar

  17. Data for "Measuring Back: Bibliodiversity and the Journal Impact Factor...

    • zenodo.org
    • data.niaid.nih.gov
    bin, csv
    Updated Mar 1, 2023
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    Marjorie Bardiau; Marjorie Bardiau; Christophe Dony; Christophe Dony (2023). Data for "Measuring Back: Bibliodiversity and the Journal Impact Factor brand. A Case study of IF-journals included in the 2021 Journal Citations Report." [Dataset]. http://doi.org/10.5281/zenodo.7683744
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    csv, binAvailable download formats
    Dataset updated
    Mar 1, 2023
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Marjorie Bardiau; Marjorie Bardiau; Christophe Dony; Christophe Dony
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    This is the open data for the preprint "Measuring Back: Bibliodiversity and the Journal Impact Factor brand. A Case study of IF-journals included in the 2021 Journal Citations Report."

  18. I

    Processing and Pearson Correlation Scripts for the C&RL Article on the...

    • databank.illinois.edu
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    William Mischo; Mary C. Schlembach, Processing and Pearson Correlation Scripts for the C&RL Article on the Relationships between Publication, Citation, and Usage Metrics at the University of Illinois at Urbana-Champaign Library [Dataset]. http://doi.org/10.13012/B2IDB-0931140_V1
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    Authors
    William Mischo; Mary C. Schlembach
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Illinois
    Description

    These processing and Pearson correlational scripts were developed to support the study that examined the correlational relationships between local journal authorship, local and external citation counts, full-text downloads, link-resolver clicks, and four global journal impact factor indices within an all-disciplines journal collection of 12,200 titles and six subject subsets at the University of Illinois at Urbana-Champaign (UIUC) Library. This study shows strong correlations in the all-disciplines set and most subject subsets. Special processing scripts and web site dashboards were created, including Pearson correlational analysis scripts for reading values from relational databases and displaying tabular results. The raw data used in this analysis, in the form of relational database tables with multiple columns, is available at https://doi.org/10.13012/B2IDB-6810203_V1.

  19. T

    SWAT Literature Database for peer-reviewed journal articles

    • dataverse.tdl.org
    Updated Aug 15, 2024
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    Center for Agricultural and Rural Development; Center for Agricultural and Rural Development (2024). SWAT Literature Database for peer-reviewed journal articles [Dataset]. http://doi.org/10.18738/T8/VZH9IT
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    Dataset updated
    Aug 15, 2024
    Dataset provided by
    Texas Data Repository
    Authors
    Center for Agricultural and Rural Development; Center for Agricultural and Rural Development
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Description

    The SWAT Literature Database for Peer-Reviewed Journal Articles is repository of citation data for studies published in reputable peer-reviewed journals that describe: (1) applications of SWAT or SWAT+, (2) applications of modified SWAT or SWAT+ models, (3) review studies focused either on SWAT or comparisons of SWAT with other models, (4) studies that describe data and/or component development directly relevant to SWAT users, (5) studies which describe key predecessor or related models, and (6) literature citation or bibliometric studies.

  20. Data from: Latin American and Caribbean journals indexed in Google Scholar...

    • zenodo.org
    Updated Nov 16, 2021
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    Fabio Lorensi do Canto; Fabio Lorensi do Canto; Adilson Luiz Pinto; Adilson Luiz Pinto; Edson Mário Gavron; Edson Mário Gavron; Marcos Talau; Marcos Talau (2021). Latin American and Caribbean journals indexed in Google Scholar Metrics [Dataset]. http://doi.org/10.5281/zenodo.5704895
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    Dataset updated
    Nov 16, 2021
    Dataset provided by
    Zenodohttp://zenodo.org/
    Authors
    Fabio Lorensi do Canto; Fabio Lorensi do Canto; Adilson Luiz Pinto; Adilson Luiz Pinto; Edson Mário Gavron; Edson Mário Gavron; Marcos Talau; Marcos Talau
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Caribbean, Latin America
    Description

    Dataset from a study aiming to analyze the coverage of Latin American and Caribbean journals in Google Scholar Metrics (GSM). Data from 8,205 journals from 24 countries of the region were downloaded from Latindex database. A Python script was used for automated title search and data extraction (titles, h5-index, h5-median, URLs) in GSM. For the journals not found, a manual search was carried out, with attempts by variations of the title. It was found 3,070 journals indexed in GSM, which corresponds to 37.42% of the Latindex list. The search was performed on the 2021 edition of GSM, which considers articles published between 2016 and 2020 and citations registered until July 2021. The number of all types of documents published (productivity) in the h5-index period (2016-2020) in Scopus, Journal Citation Reports, and SciELO of 1,314 journals was also identified.

    The present dataset is the result of this study, which is under peer-review in a scientific journal.

    The dataset comprises titles, h5-index; h5-median, URLs of 3,070 publications from Latin America and the Caribbean identified in Google Scholar Metrics, and the respective editorial information of the publications was extracted from Latindex

    The original language of the content was kept, mainly Spanish in the case of editorial data from Latindex. The columns descriptors are also shown in English.

    The productivity data refer to the number of all types of documents published by the journals in the period 2016-2020. Data were extracted from the InCities Journal Citation Reports, Scopus, and SciELO Citation Index (Web of Science database).

    In this version 2, only the productivity data were changed, covering a larger number of journals (1,314) and including all types of documents. Other data are the same as in the first version (https://doi.org/10.5281/zenodo.5572873).

     

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Scimago Lab (2024). Scimago Journal Rankings [Dataset]. http://hgxjs.org/journalrank0138.html

Scimago Journal Rankings

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csvAvailable download formats
Dataset updated
Oct 7, 2024
Dataset authored and provided by
Scimago Lab
Description

Academic journals indicators developed from the information contained in the Scopus database (Elsevier B.V.). These indicators can be used to assess and analyze scientific domains.

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