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faersquarterlydata

The goal of faersquarterlydata is to provide an easy framework to read and analyse FAERS XML/ASCII files. The package faersquarterlydata for R programming language provides easy access and analysis to FDA Adverse Event Report System (FAERS) database. This database contains information on the reported Adverse Drug Events (ADRs) in the United States since 2004. The available data format in FDA website is in XML or ASCII format, and therefore, the users need to be familiar with creation of relational databases. This package allows the reading of these files and transform them into tabular format, computing summary counts and estimating some useful statistics like the Reporting Odds Ratio (ROR) and Proportional Reporting Ratio (PRR), and therefore, enabling reproducible research on this topic.

Installation

You can install the development version of faersquarterlydata like so:

install.packages(faersquarterlydata)  

License

The license is GPL-3 (https://cran.r-project.org/web/licenses/GPL-3).

FDA Adverse Event Reporting System

The Latest Quarterly Data Files from FAERS can be retrieved here: https://www.fda.gov/drugs/questions-and-answers-fdas-adverse-event-reporting-system-faers/fda-adverse-event-reporting-system-faers-latest-quarterly-data-files

Basic Usage

First Step: Unzipping the .zip folders

FAERS database files are typically distributed in .zip files which contain text files within. In order to facilitate the opening of these files, we provided here this function:

unzip_faerszip(zip_folders_dir= "directory_with_zip_files", ex_dir = "directory_with_text_files")

Second Step: Reading and Filtering files

Each quarterly ASCII file will result in seven tables containing diverse information. In order for the Demographic information and others to be binded into one single table, and the same for the other types of text files, the following function is available:

als_faers_data <- retrieve_faersascii(ascii_dir = "directory_with_text_files/ascii", drug_indication_pattern =  "Amyothrophic lateral sclerosis|Motor neuron disease", primary_suspect = TRUE, duplicates_dir = "directory_with_text_files/deleted" )

Third Step: Unify text files into a single table

In order to merge all these seven tables into one, and therefore, allow more meaningful analysis, the package makes available the following function:

als_faers_data_unified <- unify_tabular_ascii(ascii_list = als_faers_data)

Fourth Step: Database description

The filtered database can be described based on demographic information, drug-related characteristics, ADR description, report source, outcome or counts based on the date of the event. This description is computed, partly, by tableone package . The following code was used to describe the filtered database:

summary_faers <- summary_faersdata(als_faers_data_unified)

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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