## ----tidy=TRUE,eval=FALSE----------------------------------------------------- # remotes::install_github("ohdsi/Characterization") ## ----tidy=TRUE,eval=TRUE------------------------------------------------------ library(Characterization) library(dplyr) ## ----tidy=TRUE,eval=TRUE------------------------------------------------------ connectionDetails <- Characterization::exampleOmopConnectionDetails() ## ----eval=TRUE---------------------------------------------------------------- exampleTargetIds <- c(1, 2, 4) ## ----eval=TRUE---------------------------------------------------------------- exampleCovariateSettings <- FeatureExtraction::createCovariateSettings( useDemographicsGender = TRUE, useDemographicsAge = TRUE, useCharlsonIndex = TRUE ) ## ----eval=TRUE---------------------------------------------------------------- exampleTargetBaselineSettings <- createTargetBaselineSettings( targetIds = exampleTargetIds, limitToFirstInNDays = 99999, minPriorObservation = 365, covariateSettings = exampleCovariateSettings ) ## ----eval=FALSE,results='hide',error=FALSE,warning=FALSE,message=FALSE-------- # runCharacterizationAnalyses( # connectionDetails = connectionDetails, # cdmDatabaseSchema = "main", # targetDatabaseSchema = "main", # targetTable = "cohort", # outcomeDatabaseSchema = "main", # outcomeTable = "cohort", # characterizationSettings = createCharacterizationSettings( # targetBaselineSettings = exampleTargetBaselineSettings # ), # databaseId = "Eunomia", # outputDatabaseSchema = "main", # outputTable = 'example_char_cohort', # minCharacterizationMean = 0.01, # outputDirectory = file.path(tempdir(), "example_char", "results"), # executionPath = file.path(tempdir(), "example_char", "execution"), # minCellCount = 10, # incremental = FALSE, # nTargetJobs = 1, # threads = 1 # ) ## ----eval=TRUE---------------------------------------------------------------- exampleTargetIds <- c(1, 2, 4) exampleOutcomeIds <- 3 ## ----eval=TRUE---------------------------------------------------------------- exampleCovariateSettings <- FeatureExtraction::createCovariateSettings( useDemographicsGender = TRUE, useDemographicsAge = TRUE, useCharlsonIndex = TRUE ) ## ----eval=TRUE---------------------------------------------------------------- exampleRiskFactorSettings <- createRiskFactorSettings( targetIds = exampleTargetIds, outcomeIds = exampleOutcomeIds, limitToFirstInNDays = 99999, # limit to first target exposure riskWindowStart = 1, startAnchor = "cohort start", riskWindowEnd = 365, endAnchor = "cohort start", outcomeWashoutDays = 9999, minPriorObservation = 365, covariateSettings = exampleCovariateSettings ) ## ----eval=FALSE,results='hide',error=FALSE,warning=FALSE,message=FALSE-------- # runCharacterizationAnalyses( # connectionDetails = connectionDetails, # cdmDatabaseSchema = "main", # targetDatabaseSchema = "main", # targetTable = "cohort", # outcomeDatabaseSchema = "main", # outcomeTable = "cohort", # outputDatabaseSchema = 'main', # outputTable = 'example_char_cohort', # characterizationSettings = createCharacterizationSettings( # riskFactorSettings = exampleRiskFactorSettings # ), # databaseId = "Eunomia", # minSMD = 0.1, # only keep moderate to strongly associated covariates # minCharacterizationMean = 0.01, # outputDirectory = file.path(tempdir(), "example_char", "results"), # executionPath = file.path(tempdir(), "example_char", "execution"), # minCellCount = 10, # incremental = FALSE, # nTargetJobs = 1, # threads = 1, # mode = 'CohortIncidence' # can also pick 'Efficient' and 'PatientLevelPrediction' # ) ## ----eval=TRUE---------------------------------------------------------------- exampleTargetIds <- c(1, 2, 4) exampleOutcomeIds <- 3 ## ----eval=TRUE---------------------------------------------------------------- exampleCaseCovariateSettings <- Characterization::createDuringCovariateSettings( useConditionOccurrenceDuring = TRUE, useVisitCountDuring = TRUE ) ## ----eval=TRUE---------------------------------------------------------------- exampleCaseSeriesSettings <- createCaseSeriesSettings( targetIds = exampleTargetIds, outcomeIds = exampleOutcomeIds, limitToFirstInNDays = 99999, # limit to first target index riskWindowStart = 1, startAnchor = "cohort start", riskWindowEnd = 365, endAnchor = "cohort start", outcomeWashoutDays = 9999, minPriorObservation = 365, caseCovariateSettings = exampleCaseCovariateSettings, casePreTargetDuration = 90, casePostOutcomeDuration = 90 ) ## ----eval=FALSE,results='hide',error=FALSE,warning=FALSE,message=FALSE-------- # runCharacterizationAnalyses( # connectionDetails = connectionDetails, # cdmDatabaseSchema = "main", # targetDatabaseSchema = "main", # targetTable = "cohort", # outcomeDatabaseSchema = "main", # outcomeTable = "cohort", # # outputDatabaseSchema = "main", # outputTable = 'example_char_cohort', # characterizationSettings = createCharacterizationSettings( # caseSeriesSettings = exampleCaseSeriesSettings # ), # databaseId = "Eunomia", # minCharacterizationMean = 0.01, # minCovariateCount = 2, # outputDirectory = file.path(tempdir(), "example_char", "results"), # executionPath = file.path(tempdir(), "example_char", "execution"), # minCellCount = 10, # incremental = FALSE, # nTargetJobs = 1, # threads = 1 # ) ## ----eval=TRUE---------------------------------------------------------------- exampleTargetIds <- c(1, 2, 4) exampleOutcomeIds <- 3 ## ----eval=TRUE---------------------------------------------------------------- exampleDechallengeRechallengeSettings <- createDechallengeRechallengeSettings( targetIds = exampleTargetIds, outcomeIds = exampleOutcomeIds, dechallengeStopInterval = 30, dechallengeEvaluationWindow = 31 ) ## ----eval=FALSE--------------------------------------------------------------- # dc <- computeDechallengeRechallengeAnalyses( # connectionDetails = connectionDetails, # targetDatabaseSchema = "main", # targetTable = "cohort", # settings = exampleDechallengeRechallengeSettings, # databaseId = "Eunomia", # outcomeFolder = file.path(tempdir(), "example_char", "results"), # minCellCount = 5 # ) ## ----eval=FALSE--------------------------------------------------------------- # failed <- computeRechallengeFailCaseSeriesAnalyses( # connectionDetails = connectionDetails, # targetDatabaseSchema = "main", # targetTable = "cohort", # settings = exampleDechallengeRechallengeSettings, # outcomeDatabaseSchema = "main", # outcomeTable = "cohort", # databaseId = "Eunomia", # outcomeFolder = file.path(tempdir(), "example_char", "results"), # minCellCount = 5 # ) ## ----eval=TRUE---------------------------------------------------------------- exampleTimeToEventSettings <- createTimeToEventSettings( targetIds = exampleTargetIds, outcomeIds = exampleOutcomeIds ) ## ----eval=FALSE--------------------------------------------------------------- # tte <- computeTimeToEventAnalyses( # connectionDetails = connectionDetails, # cdmDatabaseSchema = "main", # targetDatabaseSchema = "main", # targetTable = "cohort", # settings = exampleTimeToEventSettings, # databaseId = "Eunomia", # outcomefolder = file.path(tempdir(), "example_char", "results"), # minCellCount = 5 # ) ## ----eval=FALSE,results='hide',error=FALSE,warning=FALSE,message=FALSE-------- # characterizationSettings <- createCharacterizationSettings( # timeToEventSettings = list( # exampleTimeToEventSettings # ), # dechallengeRechallengeSettings = list( # exampleDechallengeRechallengeSettings # ), # aggregateCovariateSettings = exampleAggregateCovariateSettings # ) # # # save the settings using # saveCharacterizationSettings( # settings = characterizationSettings, # saveDirectory = file.path(tempdir(), "saveSettings") # ) # # # the settings can be loaded # characterizationSettings <- loadCharacterizationSettings( # saveDirectory = file.path(tempdir(), "saveSettings") # ) # # runCharacterizationAnalyses( # connectionDetails = connectionDetails, # cdmDatabaseSchema = "main", # targetDatabaseSchema = "main", # targetTable = "cohort", # outcomeDatabaseSchema = "main", # outcomeTable = "cohort", # characterizationSettings = characterizationSettings, # outputDirectory = file.path(tempdir(), "example", "results"), # executionPath = file.path(tempdir(), "example", "execution"), # csvFilePrefix = "c_", # databaseId = "1", # incremental = FALSE, # minCharacterizationMean = 0.01, # minCellCount = 5 # ) ## ----eval=FALSE--------------------------------------------------------------- # viewCharacterization( # resultFolder = file.path(tempdir(), "example", "results"), # cohortDefinitionSet = NULL # )