--- title: "A summarised result" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{a04_summarised_result} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r, include = FALSE} knitr::opts_chunk$set( collapse = TRUE, message = FALSE, warning = FALSE, comment = "#>" ) ``` ## Introduction A summarised result is a table that contains aggregated summary statistics (that is, a result set that contains no patient-level data). Let's look at an example result in this format. Here we have just one esitmate ```{r} library(omopgenerics) library(dplyr) x <- dplyr::tibble( "result_id" = as.integer(1), "cdm_name" = "my_cdm", "group_name" = "cohort_name", "group_level" = "cohort1", "strata_name" = "sex", "strata_level" = "male", "variable_name" = "Age group", "variable_level" = "10 to 50", "estimate_name" = "count", "estimate_type" = "numeric", "estimate_value" = "5", "additional_name" = "overall", "additional_level" = "overall" ) result <- newSummarisedResult(x) result |> dplyr::glimpse() ``` We can also associate settings with our results. These will typically be used to explain how the result was created. ```{r} result <- newSummarisedResult(x, settings = dplyr::tibble(result_id = 1, package = "PatientProfiles", study = "my_characterisation_study")) result |> glimpse() settings(result) ``` ## Combining summarised results ```{r} result_1 <- dplyr::tibble( "result_id" = as.integer(1), "cdm_name" = "my_cdm", "group_name" = "cohort_name", "group_level" = "cohort1", "strata_name" = "sex", "strata_level" = "male", "variable_name" = "Age group", "variable_level" = "10 to 50", "estimate_name" = "count", "estimate_type" = "numeric", "estimate_value" = "5", "additional_name" = "overall", "additional_level" = "overall" ) result_1_settings <- dplyr::tibble(result_id = 1, package_name = "PatientProfiles", package_version = "1.0.0", study = "my_characterisation_study", result_type = "stratified_by_age_group") result_1 <- newSummarisedResult(result_1, settings = result_1_settings) result_2 <- dplyr::tibble( "result_id" = as.integer(1), "cdm_name" = "my_cdm", "group_name" = "overall", "group_level" = "overall", "strata_name" = "overall", "strata_level" = "overall", "variable_name" = "overall", "variable_level" = "overall", "estimate_name" = "count", "estimate_type" = "numeric", "estimate_value" = "55", "additional_name" = "overall", "additional_level" = "overall" ) result_2_settings <- dplyr::tibble(result_id = 1, package_name = "PatientProfiles", package_version = "1.0.0", study = "my_characterisation_study", result_type = "overall_analysis") result_2 <- newSummarisedResult(result_2, settings = result_2_settings) ``` Now we have our results we can combine them using bind. Because the two sets of results contain the same result ID, when the results are combined this will be automatically updated. ```{r} result <- bind(list(result_1, result_2)) result |> dplyr::glimpse() settings(result) ``` ## Minimum cell count suppression Once we have a summarised result, we can suppress the results based on some minimum cell count. ```{r} suppress(result, minCellCount = 7) |> glimpse() ```