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tern Tabulation

The tern R package provides functions to create common analyses from clinical trials in R. The core functionality for tabulation is built on the more general purpose rtables package. New users should first begin by reading the “Introduction to tern” and “Introduction to rtables vignettes.

The packages used in this vignette are:

library(rtables)
library(tern)
library(dplyr)

tables.R

The datasets used in this vignette are:

adsl <- ex_adsl
adae <- ex_adae
adrs <- ex_adrs

tables.R

tern Analyze Functions

Analyze functions are used in combination with the rtables layout functions, in the pipeline which creates the rtables table. They apply some statistical logic to the layout of the rtables table. The table layout is materialized with the rtables::build_table function and the data.

The tern analyze functions are wrappers around rtables::analyze function, they offer various methods useful from the perspective of clinical trials and other statistical projects.

Examples of the tern analyze functions are count_occurrences, summarize_ancova or analyze_vars. As there is no one prefix to identify all tern analyze functions it is recommended to use the the tern website functions reference.

Internals of tern Analyze Functions

Please skip this subsection if you are not interested in the internals of tern analyze functions.

Internally tern analyze functions like summarize_ancova are mainly built in the 4 elements chain:

h_ancova() -> tern:::s_ancova() -> tern:::a_ancova() -> summarize_ancova()

The descriptions for each function type:

  • analysis helper functions h_*. These functions are useful to help define the analysis.
  • statistics function s_*. Statistics functions should do the computation of the numbers that are tabulated later. In order to separate computation from formatting, they should not take care of rcell type formatting themselves.
  • formatted analysis functions a_*. These have the same arguments as the corresponding statistics functions, and can be further customized by calling rtables::make_afun() on them. They are used as afun in rtables::analyze().
  • analyze functions rtables::analyze(..., afun = make_afun(tern::a_*)). Analyze functions are used in combination with the rtables layout functions, in the pipeline which creates the table. They are the last element of the chain.

We will use the native rtables::analyze function with the tern formatted analysis functions as a afun parameter.

l <- basic_table() %>%
    split_cols_by(var = "ARM") %>%
    split_rows_by(var = "AVISIT") %>%
    analyze(vars = "AVAL", afun = a_summary)

build_table(l, df = adrs)

The rtables::make_afun function is helpful when somebody wants to attach some format to the formatted analysis function.

afun <- make_afun(
    a_summary,
    .stats = NULL,
    .formats = c(median = "xx."),
    .labels = c(median = "My median"),
    .indent_mods = c(median = 1L)
)

l2 <- basic_table() %>%
    split_cols_by(var = "ARM") %>%
    split_rows_by(var = "AVISIT") %>%
    analyze(vars = "AVAL", afun = afun)

build_table(l2, df = adrs)

Tabulation Examples

We are going to create 3 different tables using tern analyze functions and the rtables interface.

Table tern analyze functions
Demographic Table analyze_vars() and summarize_num_patients()
Adverse event Table count_occurrences()
Response Table estimate_proportion(), estimate_proportion_diff() and test_proportion_diff()

Demographic Table

Demographic tables provide a summary of the characteristics of patients enrolled in a clinical trial. Typically the table columns represent treatment arms and variables summarized in the table are demographic properties such as age, sex, race, etc.

In the example below the only function from tern is analyze_vars() and the remaining layout functions are from rtables.

# Select variables to include in table.
vars <- c("AGE", "SEX")
var_labels <- c("Age (yr)", "Sex")

basic_table() %>%
  split_cols_by(var = "ARM") %>%
  add_overall_col("All Patients") %>%
  add_colcounts() %>%
  analyze_vars(
    vars = vars,
    var_labels = var_labels
  ) %>%
  build_table(adsl)
#>                       A: Drug X    B: Placebo    C: Combination   All Patients
#>                        (N=134)       (N=134)        (N=132)         (N=400)   
#> ——————————————————————————————————————————————————————————————————————————————
#> Age (yr)                                                                      
#>   n                      134           134            132             400     
#>   Mean (SD)          33.8 (6.6)    35.4 (7.9)      35.4 (7.7)      34.9 (7.4) 
#>   Median                33.0          35.0            35.0            34.0    
#>   Min - Max          21.0 - 50.0   21.0 - 62.0    20.0 - 69.0     20.0 - 69.0 
#> Sex                                                                           
#>   n                      134           134            132             400     
#>   F                   79 (59%)     77 (57.5%)       66 (50%)      222 (55.5%) 
#>   M                  51 (38.1%)     55 (41%)       60 (45.5%)     166 (41.5%) 
#>   U                   3 (2.2%)      2 (1.5%)         4 (3%)         9 (2.2%)  
#>   UNDIFFERENTIATED    1 (0.7%)          0           2 (1.5%)        3 (0.8%)

tables.R

To change the display order of categorical variables in a table use factor variables and explicitly set the order of the levels. This is the case for the display order in columns and rows. Note that the forcats package has many useful functions to help with these types of data processing steps (not used below).

# Reorder the levels in the ARM variable.
adsl$ARM <- factor(adsl$ARM, levels = c("B: Placebo", "A: Drug X", "C: Combination"))

# Reorder the levels in the SEX variable.
adsl$SEX <- factor(adsl$SEX, levels = c("M", "F", "U", "UNDIFFERENTIATED"))

basic_table() %>%
  split_cols_by(var = "ARM") %>%
  add_overall_col("All Patients") %>%
  add_colcounts() %>%
  analyze_vars(
    vars = vars,
    var_labels = var_labels
  ) %>%
  build_table(adsl)
#>                      B: Placebo     A: Drug X    C: Combination   All Patients
#>                        (N=134)       (N=134)        (N=132)         (N=400)   
#> ——————————————————————————————————————————————————————————————————————————————
#> Age (yr)                                                                      
#>   n                      134           134            132             400     
#>   Mean (SD)          35.4 (7.9)    33.8 (6.6)      35.4 (7.7)      34.9 (7.4) 
#>   Median                35.0          33.0            35.0            34.0    
#>   Min - Max          21.0 - 62.0   21.0 - 50.0    20.0 - 69.0     20.0 - 69.0 
#> Sex                                                                           
#>   n                      134           134            132             400     
#>   M                   55 (41%)     51 (38.1%)      60 (45.5%)     166 (41.5%) 
#>   F                  77 (57.5%)     79 (59%)        66 (50%)      222 (55.5%) 
#>   U                   2 (1.5%)      3 (2.2%)         4 (3%)         9 (2.2%)  
#>   UNDIFFERENTIATED        0         1 (0.7%)        2 (1.5%)        3 (0.8%)

tables.R

The tern package includes many functions similar to analyze_vars(). These functions are called layout creating functions and are used in combination with other rtables layout functions just like in the examples above. Layout creating functions are wrapping calls to rtables analyze(), analyze_colvars() and summarize_row_groups() and provide options for easy formatting and analysis modifications.

To customize the display for the demographics table, we can do so via the arguments in analyze_vars(). Most layout creating functions in tern include the standard arguments .stats, .formats, .labels and .indent_mods which control which statistics are displayed and how the numbers are formatted. Refer to the package help with help("analyze_vars") or ?analyze_vars to see the full set of options.

For this example we will change the default summary for numeric variables to include the number of records, and the mean and standard deviation (in a single statistic, i.e. within a single cell). For categorical variables we modify the summary to include the number of records and the counts of categories. We also modify the display format for the mean and standard deviation to print two decimal places instead of just one.

# Select statistics and modify default formats.
basic_table() %>%
  split_cols_by(var = "ARM") %>%
  add_overall_col("All Patients") %>%
  add_colcounts() %>%
  analyze_vars(
    vars = vars,
    var_labels = var_labels,
    .stats = c("n", "mean_sd", "count"),
    .formats = c(mean_sd = "xx.xx (xx.xx)")
  ) %>%
  build_table(adsl)
#>                       B: Placebo     A: Drug X     C: Combination   All Patients
#>                        (N=134)        (N=134)         (N=132)         (N=400)   
#> ————————————————————————————————————————————————————————————————————————————————
#> Age (yr)                                                                        
#>   n                      134            134             132             400     
#>   Mean (SD)          35.43 (7.90)   33.77 (6.55)    35.43 (7.72)    34.88 (7.44)
#> Sex                                                                             
#>   n                      134            134             132             400     
#>   M                       55             51              60             166     
#>   F                       77             79              66             222     
#>   U                       2              3               4               9      
#>   UNDIFFERENTIATED        0              1               2               3

tables.R

One feature of a layout is that it can be used with different datasets to create different summaries. For example, here we can easily create the same summary of demographics for the Brazil and China subgroups, respectively:

lyt <- basic_table() %>%
  split_cols_by(var = "ARM") %>%
  add_overall_col("All Patients") %>%
  add_colcounts() %>%
  analyze_vars(
    vars = vars,
    var_labels = var_labels
  )

build_table(lyt, df = adsl %>% dplyr::filter(COUNTRY == "BRA"))
#>                      B: Placebo     A: Drug X    C: Combination   All Patients
#>                         (N=7)        (N=13)          (N=10)          (N=30)   
#> ——————————————————————————————————————————————————————————————————————————————
#> Age (yr)                                                                      
#>   n                       7            13              10              30     
#>   Mean (SD)          32.0 (6.1)    36.7 (6.4)     38.3 (10.6)      36.1 (8.1) 
#>   Median                32.0          37.0            35.0            35.5    
#>   Min - Max          25.0 - 42.0   24.0 - 47.0    25.0 - 64.0     24.0 - 64.0 
#> Sex                                                                           
#>   n                       7            13              10              30     
#>   M                   4 (57.1%)     8 (61.5%)       5 (50%)        17 (56.7%) 
#>   F                   3 (42.9%)     5 (38.5%)       5 (50%)        13 (43.3%) 
#>   U                       0             0              0               0      
#>   UNDIFFERENTIATED        0             0              0               0

build_table(lyt, df = adsl %>% dplyr::filter(COUNTRY == "CHN"))
#>                      B: Placebo     A: Drug X    C: Combination   All Patients
#>                        (N=81)        (N=74)          (N=64)         (N=219)   
#> ——————————————————————————————————————————————————————————————————————————————
#> Age (yr)                                                                      
#>   n                      81            74              64             219     
#>   Mean (SD)          35.7 (7.3)    33.0 (6.4)      35.2 (6.4)      34.6 (6.8) 
#>   Median                36.0          32.0            35.0            34.0    
#>   Min - Max          21.0 - 58.0   23.0 - 48.0    21.0 - 49.0     21.0 - 58.0 
#> Sex                                                                           
#>   n                      81            74              64             219     
#>   M                  35 (43.2%)    27 (36.5%)      30 (46.9%)       92 (42%)  
#>   F                  45 (55.6%)    44 (59.5%)      29 (45.3%)     118 (53.9%) 
#>   U                   1 (1.2%)      2 (2.7%)        3 (4.7%)        6 (2.7%)  
#>   UNDIFFERENTIATED        0         1 (1.4%)        2 (3.1%)        3 (1.4%)

tables.R

Adverse Event Table

The standard table of adverse events is a summary by system organ class and preferred term. For frequency counts by preferred term, if there are multiple occurrences of the same AE in an individual we count them only once.

To create this table we will need to use a combination of several layout creating functions in a tabulation pipeline.

We start by creating the high-level summary. The layout creating function in tern that can do this is summarize_num_patients():

basic_table() %>%
  split_cols_by(var = "ACTARM") %>%
  add_colcounts() %>%
  add_overall_col(label = "All Patients") %>%
  summarize_num_patients(
    var = "USUBJID",
    .stats = c("unique", "nonunique"),
    .labels = c(
      unique = "Total number of patients with at least one AE",
      nonunique = "Overall total number of events"
    )
  ) %>%
  build_table(
    df = adae,
    alt_counts_df = adsl
  )
#>                                                  A: Drug X    B: Placebo    C: Combination   All Patients
#>                                                   (N=134)       (N=134)        (N=132)         (N=400)   
#> —————————————————————————————————————————————————————————————————————————————————————————————————————————
#> Total number of patients with at least one AE   122 (91.0%)   123 (91.8%)    120 (90.9%)     365 (91.2%) 
#> Overall total number of events                      609           622            703             1934

tables.R

Note that for this table, the denominator used for percentages and shown in the header of the table (N = xx) is defined based on the subject-level dataset adsl. This is done by using the alt_df_counts argument in build_table(), which provides an alternative data set for deriving the counts in the header. This is often required when we work with data sets that include multiple records per patient as df, such as adae here.

Statistics Functions

Before building out the rest of the AE table it is helpful to introduce some more tern package design conventions. Each layout creating function in tern is a wrapper for a Statistics function. Statistics functions are the ones that do the actual computation of numbers in a table. These functions always return named lists whose elements are the statistics available to include in a layout via the .stats argument at the layout creating function level.

Statistics functions follow a naming convention to always begin with s_* and for ease of use are documented on the same page as their layout creating function counterpart. It is helpful to review a Statistic function to understand the logic used to calculate the numbers in a table and see what options may be available to modify the analysis.

For example, the Statistics function calculating the numbers in summarize_num_patients() is s_num_patients(). The results of this Statistics function is a list with the elements unique, nonunique and unique_count:

s_num_patients(x = adae$USUBJID, labelstr = "", .N_col = nrow(adae))
#> $unique
#> [1] 365.000000   0.188728
#> attr(,"label")
#> [1] ""
#> 
#> $nonunique
#> [1] 1934
#> attr(,"label")
#> [1] ""
#> 
#> $unique_count
#> [1] 365
#> attr(,"label")
#> [1] "(n)"

tables.R

From these results you can see that the unique and nonunique statistics are those displayed in the “All Patients” column in the initial AE table output above. Also you can see that these are raw numbers and are not formatted in any way. All formatting functionality is handled at the layout creating function level with the .formats argument.

Now that we know what types of statistics can be derived by s_num_patients(), we can try modifying the default layout returned by summarize_num_patients(). Instead of reporting the unique and nonqunie statistics, we specify that the analysis should include only the unique_count statistic. The result will show only the counts of unique patients. Note we make this update in both the .stats and .labels argument of summarize_num_patients().

basic_table() %>%
  split_cols_by(var = "ACTARM") %>%
  add_colcounts() %>%
  add_overall_col(label = "All Patients") %>%
  summarize_num_patients(
    var = "USUBJID",
    .stats = "unique_count",
    .labels = c(unique_count = "Total number of patients with at least one AE")
  ) %>%
  build_table(
    df = adae,
    alt_counts_df = adsl
  )
#>                                                 A: Drug X   B: Placebo   C: Combination   All Patients
#>                                                  (N=134)     (N=134)        (N=132)         (N=400)   
#> ——————————————————————————————————————————————————————————————————————————————————————————————————————
#> Total number of patients with at least one AE      122         123            120             365

tables.R

Let’s now continue building on the layout for the adverse event table.

After we have the top-level summary, we can repeat the same summary at each system organ class level. To do this we split the analysis data with split_rows_by() before calling again summarize_num_patients().

basic_table() %>%
  split_cols_by(var = "ACTARM") %>%
  add_colcounts() %>%
  add_overall_col(label = "All Patients") %>%
  summarize_num_patients(
    var = "USUBJID",
    .stats = c("unique", "nonunique"),
    .labels = c(
      unique = "Total number of patients with at least one AE",
      nonunique = "Overall total number of events"
    )
  ) %>%
  split_rows_by(
    "AEBODSYS",
    child_labels = "visible",
    nested = FALSE,
    indent_mod = -1L,
    split_fun = drop_split_levels
  ) %>%
  summarize_num_patients(
    var = "USUBJID",
    .stats = c("unique", "nonunique"),
    .labels = c(
      unique = "Total number of patients with at least one AE",
      nonunique = "Overall total number of events"
    )
  ) %>%
  build_table(
    df = adae,
    alt_counts_df = adsl
  )
#>                                                    A: Drug X    B: Placebo    C: Combination   All Patients
#>                                                     (N=134)       (N=134)        (N=132)         (N=400)   
#> ———————————————————————————————————————————————————————————————————————————————————————————————————————————
#> Total number of patients with at least one AE     122 (91.0%)   123 (91.8%)    120 (90.9%)     365 (91.2%) 
#> Overall total number of events                        609           622            703             1934    
#> cl A.1                                                                                                     
#>   Total number of patients with at least one AE   78 (58.2%)    75 (56.0%)      89 (67.4%)     242 (60.5%) 
#>   Overall total number of events                      132           130            160             422     
#> cl B.1                                                                                                     
#>   Total number of patients with at least one AE   47 (35.1%)    49 (36.6%)      43 (32.6%)     139 (34.8%) 
#>   Overall total number of events                      56            60              62             178     
#> cl B.2                                                                                                     
#>   Total number of patients with at least one AE   79 (59.0%)    74 (55.2%)      85 (64.4%)     238 (59.5%) 
#>   Overall total number of events                      129           138            143             410     
#> cl C.1                                                                                                     
#>   Total number of patients with at least one AE   43 (32.1%)    46 (34.3%)      43 (32.6%)     132 (33.0%) 
#>   Overall total number of events                      55            63              64             182     
#> cl C.2                                                                                                     
#>   Total number of patients with at least one AE   35 (26.1%)    48 (35.8%)      55 (41.7%)     138 (34.5%) 
#>   Overall total number of events                      48            53              65             166     
#> cl D.1                                                                                                     
#>   Total number of patients with at least one AE   79 (59.0%)    67 (50.0%)      80 (60.6%)     226 (56.5%) 
#>   Overall total number of events                      127           106            135             368     
#> cl D.2                                                                                                     
#>   Total number of patients with at least one AE   47 (35.1%)    58 (43.3%)      57 (43.2%)     162 (40.5%) 
#>   Overall total number of events                      62            72              74             208

tables.R

The table looks almost ready. For the final step, we need a layout creating function that can produce a count table of event frequencies. The layout creating function for this is count_occurrences(). Let’s first try using this function in a simpler layout without row splits:

basic_table() %>%
  split_cols_by(var = "ACTARM") %>%
  add_colcounts() %>%
  add_overall_col(label = "All Patients") %>%
  count_occurrences(vars = "AEDECOD") %>%
  build_table(
    df = adae,
    alt_counts_df = adsl
  )
#>                 A: Drug X    B: Placebo   C: Combination   All Patients
#>                  (N=134)      (N=134)        (N=132)         (N=400)   
#> ———————————————————————————————————————————————————————————————————————
#> dcd A.1.1.1.1   50 (37.3%)   45 (33.6%)     63 (47.7%)     158 (39.5%) 
#> dcd A.1.1.1.2   48 (35.8%)   48 (35.8%)     50 (37.9%)     146 (36.5%) 
#> dcd B.1.1.1.1   47 (35.1%)   49 (36.6%)     43 (32.6%)     139 (34.8%) 
#> dcd B.2.1.2.1   49 (36.6%)   44 (32.8%)     52 (39.4%)     145 (36.2%) 
#> dcd B.2.2.3.1   48 (35.8%)   54 (40.3%)     51 (38.6%)     153 (38.2%) 
#> dcd C.1.1.1.3   43 (32.1%)   46 (34.3%)     43 (32.6%)     132 (33.0%) 
#> dcd C.2.1.2.1   35 (26.1%)   48 (35.8%)     55 (41.7%)     138 (34.5%) 
#> dcd D.1.1.1.1   50 (37.3%)   42 (31.3%)     51 (38.6%)     143 (35.8%) 
#> dcd D.1.1.4.2   48 (35.8%)   42 (31.3%)     50 (37.9%)     140 (35.0%) 
#> dcd D.2.1.5.3   47 (35.1%)   58 (43.3%)     57 (43.2%)     162 (40.5%)

tables.R

Putting everything together, the final AE table looks like this:

basic_table() %>%
  split_cols_by(var = "ACTARM") %>%
  add_colcounts() %>%
  add_overall_col(label = "All Patients") %>%
  summarize_num_patients(
    var = "USUBJID",
    .stats = c("unique", "nonunique"),
    .labels = c(
      unique = "Total number of patients with at least one AE",
      nonunique = "Overall total number of events"
    )
  ) %>%
  split_rows_by(
    "AEBODSYS",
    child_labels = "visible",
    nested = FALSE,
    indent_mod = -1L,
    split_fun = drop_split_levels
  ) %>%
  summarize_num_patients(
    var = "USUBJID",
    .stats = c("unique", "nonunique"),
    .labels = c(
      unique = "Total number of patients with at least one AE",
      nonunique = "Overall total number of events"
    )
  ) %>%
  count_occurrences(vars = "AEDECOD") %>%
  build_table(
    df = adae,
    alt_counts_df = adsl
  )
#>                                                    A: Drug X    B: Placebo    C: Combination   All Patients
#>                                                     (N=134)       (N=134)        (N=132)         (N=400)   
#> ———————————————————————————————————————————————————————————————————————————————————————————————————————————
#> Total number of patients with at least one AE     122 (91.0%)   123 (91.8%)    120 (90.9%)     365 (91.2%) 
#> Overall total number of events                        609           622            703             1934    
#> cl A.1                                                                                                     
#>   Total number of patients with at least one AE   78 (58.2%)    75 (56.0%)      89 (67.4%)     242 (60.5%) 
#>   Overall total number of events                      132           130            160             422     
#>     dcd A.1.1.1.1                                 50 (37.3%)    45 (33.6%)      63 (47.7%)     158 (39.5%) 
#>     dcd A.1.1.1.2                                 48 (35.8%)    48 (35.8%)      50 (37.9%)     146 (36.5%) 
#> cl B.1                                                                                                     
#>   Total number of patients with at least one AE   47 (35.1%)    49 (36.6%)      43 (32.6%)     139 (34.8%) 
#>   Overall total number of events                      56            60              62             178     
#>     dcd B.1.1.1.1                                 47 (35.1%)    49 (36.6%)      43 (32.6%)     139 (34.8%) 
#> cl B.2                                                                                                     
#>   Total number of patients with at least one AE   79 (59.0%)    74 (55.2%)      85 (64.4%)     238 (59.5%) 
#>   Overall total number of events                      129           138            143             410     
#>     dcd B.2.1.2.1                                 49 (36.6%)    44 (32.8%)      52 (39.4%)     145 (36.2%) 
#>     dcd B.2.2.3.1                                 48 (35.8%)    54 (40.3%)      51 (38.6%)     153 (38.2%) 
#> cl C.1                                                                                                     
#>   Total number of patients with at least one AE   43 (32.1%)    46 (34.3%)      43 (32.6%)     132 (33.0%) 
#>   Overall total number of events                      55            63              64             182     
#>     dcd C.1.1.1.3                                 43 (32.1%)    46 (34.3%)      43 (32.6%)     132 (33.0%) 
#> cl C.2                                                                                                     
#>   Total number of patients with at least one AE   35 (26.1%)    48 (35.8%)      55 (41.7%)     138 (34.5%) 
#>   Overall total number of events                      48            53              65             166     
#>     dcd C.2.1.2.1                                 35 (26.1%)    48 (35.8%)      55 (41.7%)     138 (34.5%) 
#> cl D.1                                                                                                     
#>   Total number of patients with at least one AE   79 (59.0%)    67 (50.0%)      80 (60.6%)     226 (56.5%) 
#>   Overall total number of events                      127           106            135             368     
#>     dcd D.1.1.1.1                                 50 (37.3%)    42 (31.3%)      51 (38.6%)     143 (35.8%) 
#>     dcd D.1.1.4.2                                 48 (35.8%)    42 (31.3%)      50 (37.9%)     140 (35.0%) 
#> cl D.2                                                                                                     
#>   Total number of patients with at least one AE   47 (35.1%)    58 (43.3%)      57 (43.2%)     162 (40.5%) 
#>   Overall total number of events                      62            72              74             208     
#>     dcd D.2.1.5.3                                 47 (35.1%)    58 (43.3%)      57 (43.2%)     162 (40.5%)

tables.R

Response Table

A typical response table for a binary clinical trial endpoint may be composed of several different analyses:

  • Proportion of responders in each treatment group
  • Difference between proportion of responders in comparison groups vs. control group
  • Chi-Square test for difference in response rates between comparison groups vs. control group

We can build a table layout like this by following the same approach we used for the AE table: each table section will be produced using a different layout creating function from tern.

First we start with some data preparation steps to set up the analysis dataset. We select the endpoint to analyze from PARAMCD and define the logical variable is_rsp which indicates whether a patient is classified as a responder or not.

# Preprocessing to select an analysis endpoint.
anl <- adrs %>%
  dplyr::filter(PARAMCD == "BESRSPI") %>%
  dplyr::mutate(is_rsp = AVALC %in% c("CR", "PR"))

tables.R

To create a summary of the proportion of responders in each treatment group, use the estimate_proportion() layout creating function:

basic_table() %>%
  split_cols_by(var = "ARM") %>%
  add_colcounts() %>%
  estimate_proportion(
    vars = "is_rsp",
    table_names = "est_prop"
  ) %>%
  build_table(anl)
#>                                   A: Drug X      B: Placebo    C: Combination
#>                                    (N=134)        (N=134)         (N=132)    
#> —————————————————————————————————————————————————————————————————————————————
#> Responders                       114 (85.1%)     90 (67.2%)     120 (90.9%)  
#> 95% CI (Wald, with correction)   (78.7, 91.5)   (58.8, 75.5)    (85.6, 96.2)

tables.R

To specify which arm in the table should be used as the reference, use the argument ref_group from split_cols_by(). Below we change the reference arm to “B: Placebo” and so this arm is displayed as the first column:

basic_table() %>%
  split_cols_by(var = "ARM", ref_group = "B: Placebo") %>%
  add_colcounts() %>%
  estimate_proportion(
    vars = "is_rsp"
  ) %>%
  build_table(anl)
#>                                   A: Drug X      B: Placebo    C: Combination
#>                                    (N=134)        (N=134)         (N=132)    
#> —————————————————————————————————————————————————————————————————————————————
#> Responders                       114 (85.1%)     90 (67.2%)     120 (90.9%)  
#> 95% CI (Wald, with correction)   (78.7, 91.5)   (58.8, 75.5)    (85.6, 96.2)

tables.R

To further customize the analysis, we can use the method and conf_level arguments to modify the type of confidence interval that is calculated:

basic_table() %>%
  split_cols_by(var = "ARM", ref_group = "B: Placebo") %>%
  add_colcounts() %>%
  estimate_proportion(
    vars = "is_rsp",
    method = "clopper-pearson",
    conf_level = 0.9
  ) %>%
  build_table(anl)
#>                             A: Drug X      B: Placebo    C: Combination
#>                              (N=134)        (N=134)         (N=132)    
#> ———————————————————————————————————————————————————————————————————————
#> Responders                 114 (85.1%)     90 (67.2%)     120 (90.9%)  
#> 90% CI (Clopper-Pearson)   (79.1, 89.9)   (59.9, 73.9)    (85.7, 94.7)

tables.R

The next table section needed should summarize the difference in response rates between the reference arm each comparison arm. Use estimate_proportion_diff() layout creating function for this:

basic_table() %>%
  split_cols_by(var = "ARM", ref_group = "B: Placebo") %>%
  add_colcounts() %>%
  estimate_proportion_diff(
    vars = "is_rsp",
    show_labels = "visible",
    var_labels = "Unstratified Analysis"
  ) %>%
  build_table(anl)
#>                                       A: Drug X    B: Placebo   C: Combination
#>                                        (N=134)      (N=134)        (N=132)    
#> ——————————————————————————————————————————————————————————————————————————————
#> Unstratified Analysis                                                         
#>   Difference in Response rate (%)       17.9                         23.7     
#>     95% CI (Wald, with correction)   (7.2, 28.6)                 (13.7, 33.8)

tables.R

The final section needed to complete the table includes a statistical test for the difference in response rates. Use the test_proportion_diff() layout creating function for this:

basic_table() %>%
  split_cols_by(var = "ARM", ref_group = "B: Placebo") %>%
  add_colcounts() %>%
  test_proportion_diff(vars = "is_rsp") %>%
  build_table(anl)
#>                                A: Drug X   B: Placebo   C: Combination
#>                                 (N=134)     (N=134)        (N=132)    
#> ——————————————————————————————————————————————————————————————————————
#>   p-value (Chi-Squared Test)    0.0006                     <0.0001

tables.R

To customize the output, we use the method argument to select a Chi-Squared test with Schouten correction.

basic_table() %>%
  split_cols_by(var = "ARM", ref_group = "B: Placebo") %>%
  add_colcounts() %>%
  test_proportion_diff(
    vars = "is_rsp",
    method = "schouten"
  ) %>%
  build_table(anl)
#>                                                         A: Drug X   B: Placebo   C: Combination
#>                                                          (N=134)     (N=134)        (N=132)    
#> ———————————————————————————————————————————————————————————————————————————————————————————————
#>   p-value (Chi-Squared Test with Schouten Correction)    0.0008                     <0.0001

tables.R

Now we can put all the table sections together in one layout pipeline. Note there is one more small change needed. Since the primary analysis variable in all table sections is the same (is_rsp), we need to give each sub-table a unique name. This is done by adding the table_names argument and providing unique names through that:

basic_table() %>%
  split_cols_by(var = "ARM", ref_group = "B: Placebo") %>%
  add_colcounts() %>%
  estimate_proportion(
    vars = "is_rsp",
    method = "clopper-pearson",
    conf_level = 0.9,
    table_names = "est_prop"
  ) %>%
  estimate_proportion_diff(
    vars = "is_rsp",
    show_labels = "visible",
    var_labels = "Unstratified Analysis",
    table_names = "est_prop_diff"
  ) %>%
  test_proportion_diff(
    vars = "is_rsp",
    method = "schouten",
    table_names = "test_prop_diff"
  ) %>%
  build_table(anl)
#>                                                          A: Drug X      B: Placebo    C: Combination
#>                                                           (N=134)        (N=134)         (N=132)    
#> ————————————————————————————————————————————————————————————————————————————————————————————————————
#> Responders                                              114 (85.1%)     90 (67.2%)     120 (90.9%)  
#> 90% CI (Clopper-Pearson)                                (79.1, 89.9)   (59.9, 73.9)    (85.7, 94.7) 
#> Unstratified Analysis                                                                               
#>   Difference in Response rate (%)                           17.9                           23.7     
#>     95% CI (Wald, with correction)                      (7.2, 28.6)                    (13.7, 33.8) 
#>   p-value (Chi-Squared Test with Schouten Correction)      0.0008                        <0.0001

tables.R

Summary

Tabulation with tern builds on top of the the layout tabulation framework from rtables. Complex tables are built step by step in a pipeline by combining layout creating functions that perform a specific type of analysis.

The tern analyze functions introduced in this vignette are:

  • analyze_vars()
  • summarize_num_patients()
  • count_occurrences()
  • estimate_proportion()
  • estimate_proportion_diff()
  • test_proportion_diff()

Layout creating functions build a formatted layout by controlling features such as labels, numerical display formats and indentation. These functions are wrappers for the Statistics functions which calculate the raw summaries of each analysis. You can easily spot Statistics functions in the documentation because they always begin with the prefix s_. It can be helpful to inspect and run Statistics functions to understand ways an analysis can be customized.

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.