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Aggregate and analyse information on clinical trials from public registers

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CRAN status codecov R-CMD-CHECK-win-macos-linux-duckdb-mongodb-sqlite-postgres

Main featuresInstallationOverviewDatabasesData modelExample workflowAnalysis across trialsTestsAcknowledgementsFuture

ctrdata for aggregating and analysing clinical trials

The package ctrdata provides functions for retrieving (downloading), aggregating and analysing information on clinical trials from public registers. It can be used for the

The motivation is to investigate and understand trends in design and conduct of trials, their availability for patients and to facilitate using their detailed results for research and meta-analyses. ctrdata is a package for the R system, but other systems and tools can be used with the databases created with the package. This README was reviewed on 2024-11-09 for version 1.19.4.9000.

Main features

  • Protocol- and results-related trial information is easily downloaded: Users define a query in a register’s web interface, then copy the URL and enter it into ctrdata which retrieves in one go all trials found. A script can automate copying the query URL from all registers. Personal annotations can be made when downloading trials. Also, trial documents and historic versions as available in registers on trials can be downloaded.
  • Downloaded trial information is transformed and stored in a collection of a document-centric database, for fast and offline access. Information from different registers can be accumulated in a single collection. Uses DuckDB, PostgreSQL, RSQLite or MongoDB, via R package nodbi: see section Databases below. Easily re-run any previous query in a collection to retrieve and update trial records.
  • For analyses, convenience functions in ctrdata allow find synonyms of an active substance, to identify unique (de-duplicated) trial records across all registers, to merge and recode fields as well as to easily access deeply-nested fields. Analysis can be done with R (see vignette) or other systems, using the JSON-structured information in the database.

Remember to respect the registers’ terms and conditions (see ctrOpenSearchPagesInBrowser(copyright = TRUE)). Please cite this package in any publication as follows: “Ralf Herold (2024). ctrdata: Retrieve and Analyze Clinical Trials in Public Registers. R package version 1.19.4, https://cran.r-project.org/package=ctrdata”.

References

Package ctrdata has been used for unpublished work and for:

Installation

1. Install package ctrdata in R

Package ctrdata is on CRAN and on GitHub. Within R, use the following commands to install package ctrdata:

# Install CRAN version:
install.packages("ctrdata")

# Alternatively, install development version:
install.packages("devtools")
devtools::install_github("rfhb/ctrdata", build_vignettes = TRUE)

These commands also install the package’s dependencies (jsonlite, httr, curl, clipr, xml2, nodbi, stringi, tibble, lubridate, jqr, dplyr, zip and V8).

2. Script to automatically copy user’s query from web browser

This is optional; it works with all registers supported by ctrdata but is recommended for CTIS because the URL in the web browser does not reflect the parameters the user specified for querying this register.

In the web browser, install the Tampermonkey browser extension, click on “New user script” and then on “Tools”, enter into “Import from URL” this URL: https://raw.githubusercontent.com/rfhb/ctrdata/master/tools/ctrdataURLcopier.js and then click on “Install”.

The browser extension can be disabled and enabled by the user. When enabled, the URLs to all user’s queries in the registers are automatically copied to the clipboard and can be pasted into the queryterm = ... parameter of function ctrLoadQueryIntoDb().

Additionally, this script retrieves results for CTIS search URLs such as https://euclinicaltrials.eu/ctis-public/search#searchCriteria={“status”:[3,4]}.

Overview of functions in ctrdata

The functions are listed in the approximate order of use in a user’s workflow (in bold, main functions). See also the package documentation overview.

Function name Function purpose
ctrOpenSearchPagesInBrowser() Open search pages of registers or execute search in web browser
ctrFindActiveSubstanceSynonyms() Find synonyms and alternative names for an active substance
ctrGetQueryUrl() Import from clipboard the URL of a search in one of the registers
ctrLoadQueryIntoDb() Retrieve (download) or update, and annotate, information on trials from a register and store in a collection in a database
dbQueryHistory() Show the history of queries that were downloaded into the collection
dbFindIdsUniqueTrials() Get the identifiers of de-duplicated trials in the collection
dbFindFields() Find names of variables (fields) in the collection
dbGetFieldsIntoDf() Create a data frame (or tibble) from trial records in the database with the specified fields
dfTrials2Long() Transform the data.frame from dbGetFieldsIntoDf() into a long name-value data.frame, including deeply nested fields
dfName2Value() From a long name-value data.frame, extract values for variables (fields) of interest (e.g., endpoints)
dfMergeVariablesRelevel() Merge variables into a new variable, optionally map values to a new set of levels

Databases for use with ctrdata

Package ctrdata retrieves trial information and stores it in a database collection, which has to be given as a connection object to parameter con for several ctrdata functions; this connection object is created in slightly different ways for the four supported database backends that can be used with ctrdata as shown in the table. For a speed comparison, see the nodbi documentation.

Besides ctrdata functions below, any such a connection object can equally be used with functions of other packages, such as nodbi (last row in table) or, in case of MongoDB as database backend, mongolite (see vignettes).

Purpose Function call
Create SQLite database connection dbc <- nodbi::src_sqlite(dbname = "name_of_my_database", collection = "name_of_my_collection")
Create MongoDB database connection dbc <- nodbi::src_mongo(db = "name_of_my_database", collection = "name_of_my_collection")
Create PostgreSQL database connection dbc <- nodbi::src_postgres(dbname = "name_of_my_database"); dbc[["collection"]] <- "name_of_my_collection"
Create DuckDB database connection dbc <- nodbi::src_duckdb(dbdir = "name_of_my_database", collection = "name_of_my_collection")
Use connection with ctrdata functions ctrdata::{ctrLoadQueryIntoDb, dbQueryHistory, dbFindIdsUniqueTrials, dbFindFields, dbGetFieldsIntoDf}(con = dbc, ...)
Use connection with nodbi functions e.g., nodbi::docdb_query(src = dbc, key = dbc$collection, ...)

Data model of ctrdata

Package ctrdata uses the data models that are implicit in data retrieved from the different registers. No mapping is provided for any register’s data model to a putative target data model. The reasons include that registers’ data models are notably evolving over time and that there are only few data fields with similar values and meaning between the registers.

Thus, the handling of data from different models of registers is to be done at the time of analysis. This approach allows a high level of flexibility, transparency and reproducibility. See examples in the help text for function dfMergeVariablesRelevel() and section Analysis across trials below for how to align related fields from different registers for a joint analysis.

In any of the NoSQL databases, one clinical trial is one document, corresponding to one row in a SQLite, PostgreSQL or DuckDB table, and to one document in a MongoDB collection. The NoSQL backends allow documents to have different structures, which is used here to accommodate the different data models of registers. Package ctrdata stores in every such document:

  • field _id with the trial identification as provided by the register from which it was retrieved
  • field ctrname with the name of the register (EUCTR, CTGOV, CTGOV2, ISRCTN, CTIS) from which that trial was retrieved
  • field record_last_import with the date and time when that document was last updated using ctrLoadQueryIntoDb()
  • only for CTGOV2: object history with a historic version of the trial and with history_version, which contains the fields version_number (starting from 1) and version_date
  • all original fields as provided by the register for that trial (see examples below)

For visualising the data structure for a trial, see this vignette section.

Vignettes

Example workflow

The aim is to download protocol-related trial information and tabulate the trials’ status of conduct.

  • Attach package ctrdata:
library(ctrdata)
  • See help to get started with ctrdata:
help("ctrdata")
  • Information on trial registers and how they can be used with ctrdata (last updated 2024-06-23):
help("ctrdata-registers")
  • Open registers’ advanced search pages in browser:
ctrOpenSearchPagesInBrowser()

# Please review and respect register copyrights:
ctrOpenSearchPagesInBrowser(copyright = TRUE)
q <- ctrGetQueryUrl()
# * Using clipboard content as register query URL:
#  https://www.clinicaltrialsregister.eu/ctr-search/search?query=cancer&
#  age=under-18&phase=phase-one&status=completed
# * Found search query from EUCTR: query=cancer&age=under-18&phase=phase-one&status=completed

q
#                                                   query-term  query-register
# 1 query=cancer&age=under-18&phase=phase-one&status=completed           EUCTR

🔔 Queries in the trial registers can automatically copied to the clipboard (including for “CTIS”, where the URL does not show the query) using our solution here.

  • Retrieve protocol-related information, transform and save to database:

The database collection is specified first, using nodbi (see above for how to specify PostgreSQL, RSQlite, DuckDB or MongoDB as backend, see section Databases).

Then, trial information is retrieved and loaded into the collection:

# Connect to (or create) an SQLite database
# stored in a file on the local system:
db <- nodbi::src_sqlite(
  dbname = "some_database_name.sqlite_file",
  collection = "some_collection_name"
)
# Retrieve trials from public register:
ctrLoadQueryIntoDb(
  queryterm = q,
  euctrresults = TRUE,
  con = db
)
# * Found search query from EUCTR: 
#   query=cancer&age=under-18&phase=phase-one&status=completed
# * Checking trials in EUCTR...
# Retrieved overview, multiple records of 110 trial(s) from 6 page(s) to be downloaded (estimate: 10 MB)
# (1/3) Downloading trials...
# Note: register server cannot compress data, transfer takes longer (estimate: 100 s)
# Download status: 6 done; 0 in progress. Total size: 9.83 Mb (100%)... done!             
# (2/3) Converting to NDJSON (estimate: 2 s)...
# (3/3) Importing records into database...
# = Imported or updated 452 records on 110 trial(s)
# * Checking results if available from EUCTR for 110 trials: 
# (1/4) Downloading results...
# Download status: 110 done; 0 in progress. Total size: 62.38 Mb (100%)... done!             
# Download status: 29 done; 0 in progress. Total size: 116.74 Kb (100%)... done!             
# Download status: 29 done; 0 in progress. Total size: 116.74 Kb (100%)... done!             
# - extracting results (. = data, F = file[s] and data, x = none):
# F . F F . F . . F . . . F F . . . . . . . . . . . . . . . . . F . . . F . . .
# . . . F . . . F . . . . . . . . . . F . . . . . . . . . . F . . . . . . . . . . . . 
# (2/4) Converting to NDJSON (estimate: 9 s)...
# (3/4) Importing results into database (may take some time)...
# (4/4) Results history: not retrieved (euctrresultshistory = FALSE)
# = Imported or updated results for 81 trials
# No history found in expected format.
# Updated history ("meta-info" in "some_collection_name")
# $n
# [1] 452

Under the hood, EUCTR plain text and XML files from EUCTR, CTGOV, ISRCTN are converted using Javascript via V8 in R into NDJSON, which is imported into the database collection.

  • Analyse

Tabulate the status of trials that are part of an agreed paediatric development program (paediatric investigation plan, PIP). ctrdata functions return a data.frame (or a tibble, if package tibble is loaded).

# Get all records that have values in the fields of interest:
result <- dbGetFieldsIntoDf(
  fields = c(
    "a7_trial_is_part_of_a_paediatric_investigation_plan",
    "p_end_of_trial_status",
    "a2_eudract_number"
  ),
  con = db
)

# Find unique (deduplicated) trial identifiers for trials that have more than
# one record, for example for several EU Member States or in several registers:
uniqueids <- dbFindIdsUniqueTrials(con = db)
# Searching for duplicate trials... 
# - Getting all trial identifiers (may take some time), 452 found in collection
# - Finding duplicates among registers' and sponsor ids...
# - 342 EUCTR _id were not preferred EU Member State record for 110 trials
# - Keeping 110 / 0 / 0 / 0 / 0 records from EUCTR / CTGOV / CTGOV2 / ISRCTN / CTIS
# = Returning keys (_id) of 110 records in collection "some_collection_name"

# Keep only unique / de-duplicated records:
result <- subset(
  result,
  subset = `_id` %in% uniqueids
)

# Tabulate the selected clinical trial information:
with(
  result,
  table(
    p_end_of_trial_status,
    a7_trial_is_part_of_a_paediatric_investigation_plan
  )
)
#      a7_trial_is_part_of_a_paediatric_investigation_plan
# p_end_of_trial_status      FALSE TRUE
#   Completed                   52   24
#   GB - no longer in EU/EEA     1    1
#   Ongoing                      0    2
#   Prematurely Ended            3    4
#   Restarted                    0    2
#   Temporarily Halted           1    1
#   Trial now transitioned       3    2
  • Add records from another register (CTGOV2) into the same collection

The new website and API introduced in July 2023 (https://www.clinicaltrials.gov/) is supported by ctrdata since mid-2023 and identified in ctrdata as CTGOV2.

On 2024-06-25, CTGOV has retired the classic website and API used by ctrdata since 2015. To support users, ctrdata automatically translates and redirects queries to the current website. This helps with automatically updating previously loaded queries (ctrLoadQueryIntoDb(querytoupdate = <n>)), manually migrating queries and reproducible work on clinical trials information. Going forward, users are recommended to change to use CTGOV2 queries.

As regards study data, important differences exist between field names and contents of information retrieved using CTGOV or CTGOV2; see the schema for study protocols in CTGOV, the schema for study results and the Study Data Structure for CTGOV2. For more details, call help("ctrdata-registers"). This is one of the reasons why ctrdata handles the situation as if these were two different registers and will continue to identify the current API as register = "CTGOV2", to support the analysis stage.

Note that loading trials with ctrdata overwrites the previous record with CTGOV2 data, whether the previous record was retrieved using CTGOV or CTGOV2 queries.

# Retrieve trials from another register:
ctrLoadQueryIntoDb(
  queryterm = "cond=Neuroblastoma&aggFilters=ages:child,results:with,studyType:int",
  register = "CTGOV2",
  con = db
)
# * Appears specific for CTGOV REST API 2.0
# * Found search query from CTGOV2: cond=Neuroblastoma&aggFilters=ages:child,results:with,studyType:int
# * Checking trials using CTGOV REST API 2.0, found 100 trials
# (1/3) Downloading in 1 batch(es) (max. 1000 trials each; estimate: 10 MB total)
# Download status: 1 done; 0 in progress. Total size: 9.19 Mb (805%)... done!             
# (2/3) Converting to NDJSON...
# (3/3) Importing records into database...
# JSON file #: 1 / 1                               
# = Imported or updated 100 trial(s)
# Updated history ("meta-info" in "some_collection_name")
# $n
# [1] 100
  • Using an example from classic CTGOV:
# Retrieve trials:
ctrLoadQueryIntoDb(
  queryterm = paste0(
    "https://classic.clinicaltrials.gov/ct2/results?", 
    "cond=neuroblastoma&rslt=With&recrs=e&age=0&intr=Drug"),
  con = db
)
# Appears specific for CTGOV Classic website
# Since 2024-06-25, the classic CTGOV servers are no longer available. 
# Package ctrdata has translated the classic CTGOV query URL from this call 
# of function ctrLoadQueryIntoDb(queryterm = ...) into a query URL that works 
# with the current CTGOV2. This is printed below and is also part of the return 
# value of this function, ctrLoadQueryIntoDb(...)$url. This URL can be used 
# with ctrdata functions. Note that the fields and data schema of trials differ 
# between CTGOV and CTGOV2. 
# 
# Replace this URL:
# 
# https://classic.clinicaltrials.gov/ct2/results?cond=neuroblastoma&rslt=With&recrs=e&age=0&intr=Drug
# 
# with this URL:
# 
# https://clinicaltrials.gov/search?cond=neuroblastoma&intr=Drug&aggFilters=ages:child,results:with,status:com
# 
# * Found search query from CTGOV2: cond=neuroblastoma&intr=Drug&aggFilters=
# ages:child,results:with,status:com
# * Checking trials using CTGOV REST API 2.0, found 65 trials
# (1/3) Downloading in 1 batch(es) (max. 1000 trials each; estimate: 6.5 Mb total)
# Download status: 1 done; 0 in progress. Total size: 7.30 Mb (914%)... done!             
# (2/3) Converting to NDJSON...
# (3/3) Importing records into database...
# JSON file #: 1 / 1                               
# = Imported or updated 65 trial(s)
# Updated history ("meta-info" in "some_collection_name")
# $n
# [1] 65
  • Add records from a third register (ISRCTN) into the same collection

Search used in this example: https://www.isrctn.com/search?q=neuroblastoma

# Retrieve trials from another register:
ctrLoadQueryIntoDb(
  queryterm = "https://www.isrctn.com/search?q=neuroblastoma",
  con = db
)
# * Found search query from ISRCTN: q=neuroblastoma
# * Checking trials in ISRCTN...
# Retrieved overview, records of 12 trial(s) are to be downloaded (estimate: 0.2 MB)
# (1/3) Downloading trial file... 
# Download status: 1 done; 0 in progress. Total size: 156.09 Kb (100%)... done!             
# (2/3) Converting to NDJSON (estimate: 0.07 s)...
# (3/3) Importing records into database...
# = Imported or updated 12 trial(s)                
# Updated history ("meta-info" in "some_collection_name")
# $n
# [1] 12
  • Add records from a fourth register (CTIS 🔔) into the same collection

Queries in the CTIS search interface can be automatically copied to the clipboard so that a user can paste them into queryterm, see here. Subsequent to the relaunch of CTIS on 2024-07-18, there are more than 4700 trials publicly accessible in CTIS. See below for how to download documents from CTIS.

# See how many trials are in CTIS publicly accessible:
ctrLoadQueryIntoDb(
  queryterm = "",
  register = "CTIS",
  only.count = TRUE
)
# $n
# [1] 6970

# Retrieve trials from another register:
ctrLoadQueryIntoDb(
  queryterm = paste0(
    'https://euclinicaltrials.eu/ctis-public/search#', 
    'searchCriteria={"containAny":"neonate, neonates"}'),
  con = db
)
# * Found search query from CTIS: searchCriteria={"containAny":"neonate, neonates"}
# * Checking trials in CTIS...
# (2/4) Downloading and processing trial data... (estimate: 1 Mb)
# Download status: 20 done; 0 in progress. Total size: 818.42 Kb (100%)... done!             
# (3/4) Importing records into database...
# (4/4) Updating with additional data: .           
# = Imported 20, updated 20 record(s) on 20 trial(s)
# Updated history ("meta-info" in "some_collection_name")
# $n
# [1] 20

allFields <- dbFindFields(".*", db, sample = TRUE)
# Finding fields in database collection (sampling 5 trial records per register)  .  .  .  .  .  .  .  . 
# Field names cached for this session.

length(allFields[grepl("CTIS", names(allFields))])
# [1] 628

# root field names in CTIS
ctisFields <- allFields[grepl("CTIS", names(allFields))]
ctisFields[!grepl("[.]", ctisFields)]
#                   CTIS                    CTIS                    CTIS 
#             "ageGroup"     "ageRangeSecondary" "authorizedApplication" 
#                   CTIS                    CTIS                    CTIS 
#   "correctiveMeasures"              "ctNumber"    "ctPublicStatusCode" 
#                   CTIS                    CTIS                    CTIS 
#              "ctrname"              "ctStatus"          "decisionDate" 
#                   CTIS                    CTIS                    CTIS 
#  "decisionDateOverall"             "documents"                "events" 
#                   CTIS                    CTIS                    CTIS 
#               "gender" "lastPublicationUpdate"           "lastUpdated" 
#                   CTIS                    CTIS                    CTIS 
#          "publishDate"    "record_last_import"               "results" 
#                   CTIS                    CTIS                    CTIS 
# "resultsFirstReceived"            "shortTitle"           "sponsorType" 
#                   CTIS                    CTIS                    CTIS 
#          "startDateEU"      "therapeuticAreas"   "totalNumberEnrolled" 
#                   CTIS                    CTIS                    CTIS
#       "trialCountries"            "trialPhase"           "trialRegion"
#                   CTIS 
#      "trialRegionCode" 

# use an alternative to dbGetFieldsIntoDf()
allData <- nodbi::docdb_query(
  src = db, 
  key = db$collection, 
  query = '{"ctrname":"CTIS"}'
)

# names of top-level data items
sort(names(allData))
#  [1] "_id"                   "ageGroup"              "ageRangeSecondary"
#  [4] "authorizedApplication" "correctiveMeasures"    "ctNumber"
#  [7] "ctPublicStatusCode"    "ctrname"               "ctStatus"
# [10] "decisionDate"          "decisionDateOverall"   "documents"
# [13] "events"                "gender"                "lastPublicationUpdate"
# [16] "lastUpdated"           "publishDate"           "record_last_import"
# [19] "results"               "resultsFirstReceived"  "shortTitle"
# [22] "sponsorType"           "startDateEU"           "therapeuticAreas"
# [25] "totalNumberEnrolled"   "trialCountries"        "trialPhase"
# [28] "trialRegion"           "trialRegionCode"

# use yet another alternative
oneTrial <- DBI::dbGetQuery(
  db$con, paste0(
    "SELECT json(json) FROM ", db$collection, 
    " WHERE jsonb_extract(json, '$.ctrname') == 'CTIS'",
    " LIMIT 1;")
)

# display full json tree
# remotes::install_github("hrbrmstr/jsonview")
if (require(jsonview)) json_tree_view(oneTrial[[1]])

# total size of object
format(object.size(allData), "MB")
# [1] "4 Mb"
  • Analysis across trials

Show cumulative start of trials over time.

# use helper library
library(dplyr)
library(magrittr)
library(tibble)
library(purrr)
library(tidyr)

# get names of all fields / variables in the collaction
length(dbFindFields(".*", con = db))
# [1] 1657

dbFindFields("start.*date|date.*decision", con = db)
# Using cache of fields.

# - Get trial data
result <- dbGetFieldsIntoDf(
  fields = c(
    "ctrname",
    "record_last_import",
    # CTGOV2
    "protocolSection.statusModule.startDateStruct.date",
    "protocolSection.statusModule.overallStatus",
    # EUCTR
    "n_date_of_competent_authority_decision",
    "trialInformation.recruitmentStartDate", # needs above: 'euctrresults = TRUE'
    "p_end_of_trial_status", 
    # ISRCTN
    "trialDesign.overallStartDate",
    "trialDesign.overallEndDate",
    # CTIS
    "authorizedPartI.trialDetails.trialInformation.trialDuration.estimatedRecruitmentStartDate",
    "ctStatus"
  ),
  con = db
)

# - Deduplicate trials and obtain unique identifiers 
#   for trials that have records in several registers
# - Calculate trial start date
# - Calculate simple status for ISRCTN
# - Update end of trial status for EUCTR
result %<>% 
  filter(`_id` %in% dbFindIdsUniqueTrials(con = db)) %>% 
  rowwise() %>% 
  mutate(
    start = max(c_across(matches("(date.*decision)|(start.*date)")), na.rm = TRUE),
    ctStatus = as.character(ctStatus),
    isrctnStatus = if_else(
      trialDesign.overallEndDate < record_last_import, 
      "Ongoing", "Completed"),
    p_end_of_trial_status = if_else(
      is.na(p_end_of_trial_status) & !is.na(n_date_of_competent_authority_decision), 
      "Ongoing", p_end_of_trial_status)) %>% 
  ungroup()

# - Merge fields from different registers with re-leveling
statusValues <- list(
  "ongoing" = c(
    # EUCTR
    "Recruiting", "Active", "Ongoing", 
    "Temporarily Halted", "Restarted",
    # CTGOV
    "Active, not recruiting", "Enrolling by invitation", 
    "Not yet recruiting", "ACTIVE_NOT_RECRUITING",
    # CTIS
    "Ongoing, recruiting", "Ongoing, recruitment ended", 
    "Ongoing, not yet recruiting", "Authorised, not started",
    "2", "3", "4", "5"
  ),
  "completed" = c(
    "Completed", "COMPLETED", "Ended", "8"),
  "other" = c(
    "GB - no longer in EU/EEA", "Trial now transitioned",
    "Withdrawn", "Suspended", "No longer available", 
    "Terminated", "TERMINATED", "Prematurely Ended", 
    "Under evaluation", "6", "7", "9", "10", "11", "12")
)
result[["state"]] <- dfMergeVariablesRelevel(
  df = result, 
  colnames = c(
    "p_end_of_trial_status",
    "protocolSection.statusModule.overallStatus",
    "ctStatus", "isrctnStatus"
  ),
  levelslist = statusValues
)

# - Plot example
library(ggplot2)
ggplot(result) + 
  stat_ecdf(aes(x = start, colour = state)) +
  labs(
    title = "Evolution over time of a set of trials", 
    subtitle = "Data from EUCTR, CTIS, ISRCTN, CTGOV2",
    x = "Date of start (proposed or realised)", 
    y = "Cumulative proportion of trials",
    colour = "Current status",
    caption = Sys.Date()
  )
ggsave(
  filename = "man/figures/README-ctrdata_across_registers.png",
  width = 5, height = 3, units = "in"
)

Analysis across registers

Analysis across registers
  • Result-related trial information

Analyse some simple result details, here from CTGOV2 (see this vignette for more examples):

# Get all records that have values in any of the specified fields:
result <- dbGetFieldsIntoDf(
  fields = c(
    # fields from CTGOV2 only
    "resultsSection.baselineCharacteristicsModule.denoms.counts.value",
    "resultsSection.baselineCharacteristicsModule.denoms.units",
    "resultsSection.baselineCharacteristicsModule.groups.title",
    "protocolSection.armsInterventionsModule.armGroups.type",
    "protocolSection.designModule.designInfo.allocation",
    "protocolSection.contactsLocationsModule.locations.city",
    "protocolSection.conditionsModule.conditions"
  ),
  con = db
)

# Mangle to calculate:
# - which columns with values for group counts are not labelled Total
# - what are the numbers in each of the groups etc.
result %<>% 
  rowwise() %>% 
  mutate(
    number_of_arms = stringi::stri_count_fixed(
      resultsSection.baselineCharacteristicsModule.groups.title, " / "), 
    is_randomised = case_when(
      protocolSection.designModule.designInfo.allocation == "RANDOMIZED" ~ TRUE,
      protocolSection.designModule.designInfo.allocation == "NON_RANDOMIZED" ~ FALSE, 
      number_of_arms == 1L ~ FALSE,
      .default = FALSE
    ),
    which_not_total = list(which(strsplit(
      resultsSection.baselineCharacteristicsModule.groups.title, " / ")[[1]] != "Total")),
    num_sites = length(strsplit(protocolSection.contactsLocationsModule.locations.city, " / ")[[1]]),
    num_participants = sum(as.integer(
      resultsSection.baselineCharacteristicsModule.denoms.counts.value[which_not_total])),
    num_arms_or_groups = max(number_of_arms, length(which_not_total))
  )

# Example plot:
library(ggplot2)
ggplot(data = result) +
  labs(
    title = "Trials including patients with a neuroblastoma",
    subtitle = "ClinicalTrials.Gov, trials with results"
  ) +
  geom_point(
    mapping = aes(
      x = num_sites,
      y = num_participants,
      size = num_arms_or_groups,
      colour = is_randomised
    )
  ) +
  scale_x_log10() +
  scale_y_log10() +
  labs(
    x = "Number of sites",
    y = "Total number of participants",
    colour = "Randomised?", 
    size = "# Arms / groups",
    caption = Sys.Date()
  )
ggsave(
  filename = "man/figures/README-ctrdata_results_neuroblastoma.png",
  width = 5, height = 3, units = "in"
)

Neuroblastoma trials

Neuroblastoma trials
  • Download documents: retrieve protocols, statistical analysis plans and other documents into the local folder ./files-.../
### EUCTR document files can be downloaded when results are requested
# All files are downloaded and saved (documents.regexp is not used with EUCTR) 
ctrLoadQueryIntoDb(
  queryterm = "query=cancer&age=under-18&phase=phase-one",
  register = "EUCTR",
  euctrresults = TRUE,
  documents.path = "./files-euctr/",
  con = db
)
# * Found search query from EUCTR: query=cancer&age=under-18&phase=phase-one
# [...]
# Created directory ./files-euctr/
# Downloading trials...
# [...]
# = Imported or updated results for 125 trials
# = documents saved in './files-euctr'


### CTGOV files are downloaded, here corresponding to the default of 
# documents.regexp = "prot|sample|statist|sap_|p1ar|p2ars|ctalett|lay|^[0-9]+ "
ctrLoadQueryIntoDb(
  queryterm = "cond=Neuroblastoma&type=Intr&recrs=e&phase=1&u_prot=Y&u_sap=Y&u_icf=Y",
  register = "CTGOV",
  documents.path = "./files-ctgov/",
  con = db
)
# * Checking for documents...
# - Getting links to documents
# - Downloading documents into 'documents.path' = ./files-ctgov/
# - Creating subfolder for each trial
# - Applying 'documents.regexp' to 35 missing documents
# - Downloading 35 missing documents
# Download status: 35 done; 0 in progress. Total size: 76.67 Mb (100%)... done!             
# = Newly saved 35 document(s) for 27 trial(s); 0 of such document(s) for 0 
# trial(s) already existed in ./files-ctgov


### CTGOV2 files are downloaded, using the default of documents.regexp
ctrLoadQueryIntoDb(
  queryterm = "https://clinicaltrials.gov/search?cond=neuroblastoma&aggFilters=phase:1,results:with",
  documents.path = "./files-ctgov2/",
  con = db
)
# * Checking for documents...
# - Getting links to documents
# - Downloading documents into 'documents.path' = ./files-ctgov2/
# - Created directory ./files-ctgov2
# - Creating subfolder for each trial
# - Applying 'documents.regexp' to 37 missing documents
# - Downloading 37 missing documents
# Download status: 37 done; 0 in progress. Total size: 77.70 Mb (100%)... done!             
# = Newly saved 37 document(s) for 23 trial(s); 0 of such document(s) for 0 
# trial(s) already existed in .\files-ctgov2


### ISRCTN files are downloaded, using the default of documents.regexp
ctrLoadQueryIntoDb(
  queryterm = "https://www.isrctn.com/search?q=alzheimer",
  documents.path = "./files-isrctn/",
  con = db
)
# * Found search query from ISRCTN: q=alzheimer
# [...]
# * Checking for documents...                      
# - Getting links to documents
# - Downloading documents into 'documents.path' = ./files-isrctn/
# - Created directory ./files-isrctn
# - Creating subfolder for each trial
# - Applying 'documents.regexp' to 47 missing documents
# - Downloading 29 missing documents
# Download status: 29 done; 0 in progress. Total size: 13.11 Mb (100%)... done!             
# Download status: 4 done; 0 in progress. Total size: 13.12 Kb (100%)... done!             
# Download status: 4 done; 0 in progress. Total size: 13.12 Kb (100%)... done!             
# = Newly saved 25 document(s) for 14 trial(s); 0 of such document(s) for 0 trial(s) already existed in ./files-isrctn


### CTIS files are downloaded, using the default of documents.regexp
ctrLoadQueryIntoDb(
  queryterm = paste0(
    'https://euclinicaltrials.eu/ctis-public/search#', 
    'searchCriteria={"containAny":"cancer"}'),
  documents.path = "./files-ctis/",
  documents.regexp = "sap",
  con = db
)
# * Found search query from CTIS: searchCriteria={"containAny":"cancer"}
# * Checking trials in CTIS...
# (1/4) Downloading trial list(s), found 1872 trials
# (2/4) Downloading and processing trial data... (estimate: 100 Mb)
# Download status: 1872 done; 0 in progress. Total size: 167.15 Mb (100%)... done!             
# (3/4) Importing records into database...
# (4/4) Updating with additional data: .             
# * Checking for documents: . . . . . . . . . . . . . . . . . . . 
# - Downloading documents into 'documents.path' = ./files-ctis/
# - Creating subfolder for each trial
# - Applying 'documents.regexp' to 16782 missing documents
# - Downloading 4 missing documents
# Download status: 4 done; 0 in progress. Total size: 5.62 Kb (100%)... done!             
# Redirecting to CDN...
# Download status: 4 done; 0 in progress. Total size: 3.08 Mb (100%)... done!             
# = Newly saved 4 document(s) for 3 trial(s); 0 of such document(s) for 0 
# trial(s) already existed in ./files-ctis

Tests

See also https://app.codecov.io/gh/rfhb/ctrdata/tree/master/R

tinytest::test_all()
# test_ctrdata_ctrfindactivesubstance.R    4 tests OK 1.6s
# test_ctrdata_duckdb_ctgov2.R..   50 tests OK 2.4s
# test_ctrdata_duckdb_ctis.R....  172 tests OK 15.2s
# test_ctrdata_mongo_local_ctgov.R   51 tests OK 57.7s
# test_ctrdata_other_functions.R   64 tests OK 3.8s
# test_ctrdata_postgres_ctgov2.R   50 tests OK 2.6s
# test_ctrdata_sqlite_ctgov.R...   52 tests OK 56.0s
# test_ctrdata_sqlite_ctgov2.R..   50 tests OK 2.3s
# test_ctrdata_sqlite_ctis.R....  194 tests OK 12.5s
# test_ctrdata_sqlite_euctr.R...  105 tests OK 1.3s
# test_ctrdata_sqlite_isrctn.R..   38 tests OK 21.4s
# test_euctr_error_sample.R.....    8 tests OK 0.9s
# All ok, 838 results (38m 48.8s)

covr::package_coverage(path = ".", type = "tests")
# ctrdata Coverage: 93.68%
# R/zzz.R: 80.95%
# R/ctrRerunQuery.R: 89.16%
# R/ctrLoadQueryIntoDbEuctr.R: 90.03%
# R/utils.R: 90.89%
# R/ctrLoadQueryIntoDbIsrctn.R: 92.11%
# R/dbGetFieldsIntoDf.R: 93.06%
# R/ctrLoadQueryIntoDbCtgov2.R: 94.05%
# R/ctrLoadQueryIntoDb.R: 94.12%
# R/ctrLoadQueryIntoDbCtis.R: 94.13%
# R/ctrLoadQueryIntoDbCtgov.R: 95.04%
# R/dbFindFields.R: 95.24%
# R/ctrGetQueryUrl.R: 96.00%
# R/ctrOpenSearchPagesInBrowser.R: 97.22%
# R/dfMergeVariablesRelevel.R: 97.30%
# R/dfTrials2Long.R: 97.35%
# R/dbFindIdsUniqueTrials.R: 97.77%
# R/dfName2Value.R: 98.61%
# R/ctrFindActiveSubstanceSynonyms.R: 100.00%
# R/dbQueryHistory.R: 100.00%

Future features

  • See project outline https://github.com/users/rfhb/projects/1

  • Canonical definitions, filters, calculations are in the works (since August 2023) for data mangling and analyses across registers, e.g. to define study population, identify interventional trials, calculate study duration; public collaboration on these canonical scripts will speed up harmonising analyses.

  • Merge results-related fields retrieved from different registers, such as corresponding endpoints (work not yet started). The challenge is the incomplete congruency and different structure of data fields.

  • Authentication, expected to be required by CTGOV2; specifications not yet known (work not yet started).

  • Explore further registers (exploration is continually ongoing; added value, terms and conditions for programmatic access vary; no clear roadmap is established yet).

  • Retrieve previous versions of protocol- or results-related information. The challenges include, historic versions can only be retrieved one-by-one, do not include results, or are not in structured format. The functionality available with version 1.17.3 to the extent that is possible at this time, namely for protocol- and results-related information in CTGOV2, only

Acknowledgements

Issues and notes

Trial records in databases

SQLite

It is recommended to use nodbi >= 0.10.7.9000 which builds on RSQLite >= 2.3.7.9014 (releases expected in November 2024), because these versions enable file-based imports and thus are much faster:

# install latest development versions:
devtools::install_github("ropensci/nodbi")

# requires compilation, for which under MS Windows
# automatically additional R Tools are installed:
devtools::install_github("r-dbi/RSQLite")

Example JSON representation in SQLite

Example JSON representation in SQLite

MongoDB

Example JSON representation in MongoDB

Example JSON representation in MongoDB

PostgreSQL

Example JSON representation in PostgreSQL

Example JSON representation in PostgreSQL