{
  "_id": "6a11c617acfb0bcc41d00622",
  "Package": "metaumbrella",
  "Type": "Package",
  "Title": "Umbrella Review Package for R",
  "Version": "1.1.0",
  "Date": "2025-02-28",
  "Author": "Corentin J Gosling [aut, cre], Aleix Solanes [aut], Paolo\nFusar-Poli [aut], Joaquim Radua [aut]",
  "Authors@R": "c(\nperson(given = \"Corentin J\", family= \"Gosling\",  role = c(\"aut\", \"cre\"), email = \"cgosling@parisnanterre.fr\"),\nperson(given = \"Aleix\",\nfamily= \"Solanes\", role = \"aut\", email = \"al.solanes@gmail.com\"),\nperson(given = \"Paolo\",\nfamily= \"Fusar-Poli\",  role = \"aut\", email = \"Paolo.fusar-poli@kcl.ac.uk\"),\nperson(given = \"Joaquim\",\nfamily= \"Radua\",  role = \"aut\", email = \"radua@clinic.cat\"))",
  "Maintainer": "Corentin J Gosling <cgosling@parisnanterre.fr>",
  "Description": "A comprehensive range of facilities to perform umbrella\nreviews with stratification of the evidence in R. The package\naccomplishes this aim by building on three core functions that:\n(i) automatically perform all required calculations in an\numbrella review (including but not limited to meta-analyses),\n(ii) stratify evidence according to various classification\ncriteria, and (iii) generate a visual representation of the\nresults. Note that if you are not familiar with R, the core\nfeatures of this package are available from a web browser\n(<https://www.metaumbrella.org/>).",
  "License": "GPL-3",
  "Encoding": "UTF-8",
  "LazyData": "true",
  "Config/testthat/edition": "3",
  "RoxygenNote": "7.2.3",
  "VignetteBuilder": "knitr",
  "Language": "en-US",
  "NeedsCompilation": "no",
  "Packaged": {
    "Date": "2026-05-23 15:17:37 UTC",
    "User": "root"
  },
  "Repository": "https://cran.r-universe.dev",
  "Date/Publication": "2025-02-28 11:40:02 UTC",
  "RemoteUrl": "https://github.com/cran/metaumbrella",
  "RemoteRef": "HEAD",
  "RemoteSha": "90729392591edcbb965445e7b9c169bb1e40aded",
  "MD5sum": "b3ad4321f923dfd342cca750cf4657e7",
  "_user": "cran",
  "_type": "src",
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  "_created": "2026-05-23T15:17:37.000Z",
  "_published": "2026-05-23T15:21:59.302Z",
  "_distro": "noble",
  "_jobs": [
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  "_buildurl": "https://github.com/r-universe/cran/actions/runs/26336174672",
  "_status": "success",
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  "_upstream": "https://github.com/cran/metaumbrella",
  "_commit": {
    "id": "90729392591edcbb965445e7b9c169bb1e40aded",
    "author": "Corentin J Gosling <cgosling@parisnanterre.fr>",
    "committer": "cran-robot <csardi.gabor+cran@gmail.com>",
    "message": "version 1.1.0\n",
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    "name": "Corentin J Gosling",
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  "_updates": [],
  "_tags": [],
  "_stars": 11,
  "_userbio": {
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    "type": "organization",
    "name": "cran",
    "description": "Unofficial read-only mirror of all CRAN R packages"
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    "source": "https://cranlogs.r-pkg.org/downloads/total/last-month/metaumbrella"
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  "_assets": [
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    "extra/citation.html",
    "extra/citation.json",
    "extra/citation.txt",
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    "extra/metaumbrella.html",
    "extra/NEWS.html",
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  "_realowner": "cran",
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  "_releases": [
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      "date": "2021-12-20"
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      "date": "2022-01-07"
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    {
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      "date": "2022-01-26"
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    "summary.umbrella",
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    {
      "page": "metaumbrella-package",
      "title": "metaumbrella: An Umbrella Review Package for R",
      "topics": [
        "metaumbrella-package"
      ]
    },
    {
      "page": "add.evidence",
      "title": "Add evidence classes to \"umbrella\" objects",
      "topics": [
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      "title": "Meta-analyses exploring the efficacy of several interventions on a binary outcome.",
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      "page": "print.umbrella",
      "title": "Print a summary of an object of class \"umbrella\"",
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    },
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      "topics": [
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      ]
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