Prints basic information about a cohort object, status of the information available and other information.
# S3 method for class 'rev_cohort'
print(x, ...)Nothing.
Other S3 functions:
plot.rev_cohort(),
plot.rev_cohort_fit(),
print.rev_cohort_fit()
# Data released in the 'evoverse.datasets'
data('TRACERx_NEJM_2017_REVOLVER', package = 'evoverse.datasets')
# Cancel the fits
TRACERx_NEJM_2017_REVOLVER$fit = NULL
print(TRACERx_NEJM_2017_REVOLVER)
#> [ REVOLVER - Repeated Evolution in Cancer ]
#>
#> Dataset : TRACERx NEJM 2017
#> Cohort : 99 patients, 450 variants and 79 driver events.
#>
#> Trees per patient : YES
#> Fit via TL : NO
#> REVOLVER clustering : YES
#> Jackknife statistics : YES
#>
#> For summary statistics see `?Stats_*(x)` with * = {cohort, drivers, trees, fits, clusters, ...}
#>
#> ┌───────────────────────────────────────────────────────────────────────────────────────────┐
#> │ │
#> │ WARNING - Some patients have only one clone with drivers; they will just be expanded. │
#> │ │
#> └───────────────────────────────────────────────────────────────────────────────────────────┘
#> # A tibble: 54 × 7
#> patientID numBiopsies numMutations numDriverMutations numClonesWithDriver
#> <chr> <int> <int> <int> <int>
#> 1 CRUK0007 2 3 3 1
#> 2 CRUK0010 2 3 3 1
#> 3 CRUK0012 2 1 1 1
#> 4 CRUK0018 4 4 4 1
#> 5 CRUK0019 2 1 1 1
#> 6 CRUK0021 2 4 4 1
#> 7 CRUK0025 3 3 3 1
#> 8 CRUK0026 2 4 4 1
#> 9 CRUK0028 2 2 2 1
#> 10 CRUK0029 6 4 4 1
#> # ℹ 44 more rows
#> # ℹ 2 more variables: numTruncalMutations <int>, numSubclonalMutations <int>