Get started"

# Delete when done
library(medrxivr)
library(dplyr)

knitr::opts_chunk$set(
  collapse = TRUE,
  eval = FALSE,
  comment = "#>"
)

An increasingly important source of health-related bibliographic content are preprints - preliminary versions of research articles that have yet to undergo peer review. The two preprint repositories most relevant to health-related sciences are medRxiv and bioRxiv, both of which are operated by the Cold Spring Harbor Laboratory.

The goal of the medrxivr R package is two-fold. In the first instance, it provides programmatic access to the Cold Spring Harbour Laboratory (CSHL) API, allowing users to easily download medRxiv and bioRxiv preprint metadata (e.g. title, abstract, publication date, author list, etc) into R. The package also provides access to a maintained static snapshot of the medRxiv repository (see Data sources). Secondly, medrxivr provides functions to search the downloaded preprint records using regular expressions and Boolean logic, as well as helper functions that allow users to export their search results to a .BIB file for easy import to a reference manager and to download the full-text PDFs of preprints matching their search criteria.

Installation

You can install the development version of this package using:

devtools::install_github("mcguinlu/medrxivr")
library(medrxivr)

Data sources

medRxiv data

medrixvr provides two ways to access medRxiv data:

# Get a copy of the database from the live medRxiv API endpoint
preprint_data <- mx_api_content()  
# Get a copy of the database from the daily snapshot
preprint_data <- mx_snapshot()  

The relationship between the two methods for the medRxiv database is summarised in the figure below:

``` {r eval = TRUE, echo = FALSE, out.width = "500px", out.height = "400px"}

knitr::include_graphics("data_sources.png")

### bioRxiv data

Only one data source exists for the bioRxiv repository: 

  - `mx_api_content(server = "biorxiv")` creates a local copy of all data available from the bioRxiv API endpoint at the time the function is run. __Note__: due to it's size, downloading a complete copy of the bioRxiv repository in this manner takes a long time (~ 1 hour). 

``` {r}
# Get a copy of the database from the live bioRxiv API endpoint
preprint_data <- mx_api_content(server = "biorxiv")

Performing your search

Once you have created a local copy of either the medRxiv or bioRxiv preprint database, you can pass this object (preprint_data in the examples above) to mx_search() to search the preprint records using an advanced search strategy.

# Perform a simple search
results <- mx_search(data = preprint_data,
                     query ="dementia")

# Perform an advanced search
topic1  <- c("dementia","vascular","alzheimer's")  # Combined with Boolean OR
topic2  <- c("lipids","statins","cholesterol")     # Combined with Boolean OR
myquery <- list(topic1, topic2)                    # Combined with Boolean AND

results <- mx_search(data = preprint_data,
                     query = myquery)

Dataset description

The dataset (in this case, results) returned by the search function above contains 14 variables:

mx_variables <-
  data.frame(
    Variable = c(
         "ID"      ,
         "title"   ,
         "abstract",
         "authors" ,
         "date"    ,
         "category",
         "doi"     ,
         "version" ,
         "author_corresponding",
         "author_corresponding_institution",
         "link_page",
         "link_pdf" ,
         "license"  ,
         "published"
    ),
    Description = c(
      "Unique identifier",
      "Preprint title",
      "Preprint abstract",
      "Author list in the format 'LastName, InitalOfFirstName.' (e.g. McGuinness, L.). Authors are seperated by a semi-colon.",
      "Date the preprint was posted, in the format YYYYMMDD.",
      "On submission, medRxiv asks authors to classify their preprint into one of a set number of subject categories.",
      "Preprint Digital Object Identifier.",
      "Preprint version number. As authors can update their preprint at any time, this indicates which version of a given preprint the record refers to.", 
      "Corresponding authors name.",
      "Corresponding author's institution.",
      "Link to preprint webpage. The \"?versioned=TRUE\" is required, as otherwise, the URL will resolve to the most recent version of the article (assuming there is >1 version available).",
      "Link to preprint PDF. This is used by `mx_download()` to download a copy of the PDF for that preprint.",
      "Preprint license",
      "If the preprint was subsequently published in a peer-reviewed journal, this variable contains the DOI of the published version."
    )
  )


knitr::kable(mx_variables, format = "html") %>%
  kableExtra::kable_styling(full_width = F) %>%
  kableExtra::column_spec(1, bold = T, border_right = T) %>%
  kableExtra::column_spec(2, width = "30em")

Export records identified by your search to a .BIB file

medrxivr provides a helper function to export your search results to a .BIB file so that they can be easily imported into a reference manager (e.g. Zotero, Mendeley)

mx_export(data = mx_results,
          file = tempfile(fileext = ".bib"))

Download PDFs for records identified by your search

Pass the results of your search above (results) to the mx_download() function to download a copy of the PDF for each record.

mx_download(results,        # Object returned by mx_search
            tempdir(),      # Temporary directory to save PDFs to 
            create = TRUE)  # Create the directory if it doesn't exist

Further guidance

Please see the medrxivr website vignette for extended guidance on developing search strategies and for detailed instructions on interacting with the Cold Springs Harbour API for medRxiv and bioRxiv.



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medrxivr documentation built on Feb. 25, 2021, 1:08 a.m.