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Capture first match

2024-09-20

Capture first match in each character vector element

Consider the following vector which contains genome position strings,

pos.vec <- c(
  "chr10:213,054,000-213,055,000",
  "chrM:111,000",
  "chr1:110-111 chr2:220-222") # two possible matches.

To capture the first genome position in each string, we use the following syntax. The first argument is the subject character vector, and the other arguments are pasted together to make a capturing regular expression. Each named argument generates a capture group; the R argument name is used for the column name of the result.

(chr.dt <- nc::capture_first_vec(
  pos.vec, 
  chrom="chr.*?",
  ":",
  chromStart="[0-9,]+"))
#>     chrom  chromStart
#>    <char>      <char>
#> 1:  chr10 213,054,000
#> 2:   chrM     111,000
#> 3:   chr1         110
str(chr.dt)
#> Classes 'data.table' and 'data.frame':   3 obs. of  2 variables:
#>  $ chrom     : chr  "chr10" "chrM" "chr1"
#>  $ chromStart: chr  "213,054,000" "111,000" "110"
#>  - attr(*, ".internal.selfref")=<externalptr>

We can add type conversion functions on the same line as each named argument:

keep.digits <- function(x)as.integer(gsub("[^0-9]", "", x))
(int.dt <- nc::capture_first_vec(
  pos.vec, 
  chrom="chr.*?",
  ":",
  chromStart="[0-9,]+", keep.digits))
#>     chrom chromStart
#>    <char>      <int>
#> 1:  chr10  213054000
#> 2:   chrM     111000
#> 3:   chr1        110
str(int.dt)
#> Classes 'data.table' and 'data.frame':   3 obs. of  2 variables:
#>  $ chrom     : chr  "chr10" "chrM" "chr1"
#>  $ chromStart: int  213054000 111000 110
#>  - attr(*, ".internal.selfref")=<externalptr>

Below we use list variables to create patterns which are re-usable, and we use an un-named list to generate a non-capturing optional group:

pos.pattern <- list("[0-9,]+", keep.digits)
range.pattern <- list(
  chrom="chr.*?",
  ":",
  chromStart=pos.pattern,
  list(
    "-",
    chromEnd=pos.pattern
  ), "?")
nc::capture_first_vec(pos.vec, range.pattern)
#>     chrom chromStart  chromEnd
#>    <char>      <int>     <int>
#> 1:  chr10  213054000 213055000
#> 2:   chrM     111000        NA
#> 3:   chr1        110       111

In summary, nc::capture_first_vec takes a variable number of arguments:

View generated regex

To see the generated regular expression pattern string, call nc::var_args_list with the variable number of arguments that specify the pattern:

nc::var_args_list(range.pattern)
#> $fun.list
#> $fun.list$chrom
#> function (x) 
#> x
#> <bytecode: 0x00000282b8043378>
#> <environment: namespace:base>
#> 
#> $fun.list$chromStart
#> function(x)as.integer(gsub("[^0-9]", "", x))
#> <bytecode: 0x00000282bda93680>
#> 
#> $fun.list$chromEnd
#> function(x)as.integer(gsub("[^0-9]", "", x))
#> <bytecode: 0x00000282bda93680>
#> 
#> 
#> $pattern
#> [1] "(?:(chr.*?):([0-9,]+)(?:-([0-9,]+))?)"

The generated regex is the pattern element of the resulting list above. The other element fun.list indicates the names and type conversion functions to use with the capture groups.

Error/NA if any subjects do not match

The default is to stop with an error if any subject does not match:

bad.vec <- c(bad="does not match", pos.vec)
nc::capture_first_vec(bad.vec, range.pattern)
#> Error in stop_for_na(make.na): subject(s) 1 (1 total) did not match regex below; to output missing rows use nomatch.error=FALSE
#> (?:(?:(chr.*?):([0-9,]+)(?:-([0-9,]+))?))

Sometimes you want to instead report a row of NA when a subject does not match. In that case, use nomatch.error=FALSE:

nc::capture_first_vec(bad.vec, range.pattern, nomatch.error=FALSE)
#>     chrom chromStart  chromEnd
#>    <char>      <int>     <int>
#> 1:   <NA>         NA        NA
#> 2:  chr10  213054000 213055000
#> 3:   chrM     111000        NA
#> 4:   chr1        110       111

Other regex engines

By default nc uses the PCRE regex engine. Other choices include ICU and RE2. Each engine has different features, which are discussed in my R journal paper.

The engine is configurable via the engine argument or the nc.engine option:

u.subject <- "a\U0001F60E#"
u.pattern <- list(emoji="\\p{EMOJI_Presentation}")
old.opt <- options(nc.engine="ICU")
nc::capture_first_vec(u.subject, u.pattern)
#>     emoji
#>    <char>
#> 1:      😎
nc::capture_first_vec(u.subject, u.pattern, engine="PCRE") 
#>     emoji
#>    <char>
#> 1:      😎
nc::capture_first_vec(u.subject, u.pattern, engine="RE2")
#> re2google/re2/re2.cc:205: Error parsing '(?:(?:(\p{EMOJI_Presentation})))': invalid character class range: \p{EMOJI_Presentation}
#> Error in value[[3L]](cond): (?:(?:(\p{EMOJI_Presentation})))
#> when matching pattern above with RE2 engine, an error occured: invalid character class range: \p{EMOJI_Presentation}
options(old.opt)

For more details see the “engines” vignette,

vignette("v6-engines", package="nc")

Capture first match from one or more character columns in a table

We also provide nc::capture_first_df which extracts text from several columns of a data.frame, using a different regular expression for each column.

This function can greatly simplify the code required to create numeric data columns from character data columns. For example consider the following data which was output from the sacct program.

(sacct.df <- data.frame(
  Elapsed = c(
    "07:04:42", "07:04:42", "07:04:49",
    "00:00:00", "00:00:00"),
  JobID=c(
    "13937810_25",
    "13937810_25.batch",
    "13937810_25.extern",
    "14022192_[1-3]",
    "14022204_[4]"),
  stringsAsFactors=FALSE))
#>    Elapsed              JobID
#> 1 07:04:42        13937810_25
#> 2 07:04:42  13937810_25.batch
#> 3 07:04:49 13937810_25.extern
#> 4 00:00:00     14022192_[1-3]
#> 5 00:00:00       14022204_[4]

Say we want to filter by the total Elapsed time (which is reported as hours:minutes:seconds), and base job id (which is the number before the underscore in the JobID column). We could start by converting those character columns to integers via:

int.pattern <- list("[0-9]+", as.integer)
range.pattern <- list(
  "\\[",
  task1=int.pattern,
  list(
    "-",#begin optional end of range.
    taskN=int.pattern
  ), "?", #end is optional.
  "\\]")
nc::capture_first_df(sacct.df, JobID=range.pattern, nomatch.error=FALSE)
#>     Elapsed              JobID task1 taskN
#>      <char>             <char> <int> <int>
#> 1: 07:04:42        13937810_25    NA    NA
#> 2: 07:04:42  13937810_25.batch    NA    NA
#> 3: 07:04:49 13937810_25.extern    NA    NA
#> 4: 00:00:00     14022192_[1-3]     1     3
#> 5: 00:00:00       14022204_[4]     4    NA

The result shown above is another data frame with an additional column for each capture group. Next, we define another pattern that matches either one task ID or the previously defined range pattern:

task.pattern <- list(
  "_",
  list(
    task=int.pattern,
    "|",#either one task(above) or range(below)
    range.pattern))
nc::capture_first_df(sacct.df, JobID=task.pattern)
#>     Elapsed              JobID  task task1 taskN
#>      <char>             <char> <int> <int> <int>
#> 1: 07:04:42        13937810_25    25    NA    NA
#> 2: 07:04:42  13937810_25.batch    25    NA    NA
#> 3: 07:04:49 13937810_25.extern    25    NA    NA
#> 4: 00:00:00     14022192_[1-3]    NA     1     3
#> 5: 00:00:00       14022204_[4]    NA     4    NA

Below we match the complete JobID column:

job.pattern <- list(
  job=int.pattern,
  task.pattern,
  list(
    "[.]",
    type=".*"
  ), "?")
nc::capture_first_df(sacct.df, JobID=job.pattern)
#>     Elapsed              JobID      job  task task1 taskN   type
#>      <char>             <char>    <int> <int> <int> <int> <char>
#> 1: 07:04:42        13937810_25 13937810    25    NA    NA       
#> 2: 07:04:42  13937810_25.batch 13937810    25    NA    NA  batch
#> 3: 07:04:49 13937810_25.extern 13937810    25    NA    NA extern
#> 4: 00:00:00     14022192_[1-3] 14022192    NA     1     3       
#> 5: 00:00:00       14022204_[4] 14022204    NA     4    NA

Below we match the Elapsed column with a different regex:

elapsed.pattern <- list(
  hours=int.pattern,
  ":",
  minutes=int.pattern,
  ":",
  seconds=int.pattern)
nc::capture_first_df(sacct.df, JobID=job.pattern, Elapsed=elapsed.pattern)
#>     Elapsed              JobID      job  task task1 taskN   type hours minutes
#>      <char>             <char>    <int> <int> <int> <int> <char> <int>   <int>
#> 1: 07:04:42        13937810_25 13937810    25    NA    NA            7       4
#> 2: 07:04:42  13937810_25.batch 13937810    25    NA    NA  batch     7       4
#> 3: 07:04:49 13937810_25.extern 13937810    25    NA    NA extern     7       4
#> 4: 00:00:00     14022192_[1-3] 14022192    NA     1     3            0       0
#> 5: 00:00:00       14022204_[4] 14022204    NA     4    NA            0       0
#>    seconds
#>      <int>
#> 1:      42
#> 2:      42
#> 3:      49
#> 4:       0
#> 5:       0

Overall the result is another data table with an additional column for each capture group. Note in the code below that the input sacct.df was not modified, but if the input is data.table then it is modified:

nc::capture_first_df(sacct.df, JobID=job.pattern)
#>     Elapsed              JobID      job  task task1 taskN   type
#>      <char>             <char>    <int> <int> <int> <int> <char>
#> 1: 07:04:42        13937810_25 13937810    25    NA    NA       
#> 2: 07:04:42  13937810_25.batch 13937810    25    NA    NA  batch
#> 3: 07:04:49 13937810_25.extern 13937810    25    NA    NA extern
#> 4: 00:00:00     14022192_[1-3] 14022192    NA     1     3       
#> 5: 00:00:00       14022204_[4] 14022204    NA     4    NA
sacct.df
#>    Elapsed              JobID
#> 1 07:04:42        13937810_25
#> 2 07:04:42  13937810_25.batch
#> 3 07:04:49 13937810_25.extern
#> 4 00:00:00     14022192_[1-3]
#> 5 00:00:00       14022204_[4]
(sacct.DT <- data.table::as.data.table(sacct.df))
#>     Elapsed              JobID
#>      <char>             <char>
#> 1: 07:04:42        13937810_25
#> 2: 07:04:42  13937810_25.batch
#> 3: 07:04:49 13937810_25.extern
#> 4: 00:00:00     14022192_[1-3]
#> 5: 00:00:00       14022204_[4]
nc::capture_first_df(sacct.DT, JobID=job.pattern)
#>     Elapsed              JobID      job  task task1 taskN   type
#>      <char>             <char>    <int> <int> <int> <int> <char>
#> 1: 07:04:42        13937810_25 13937810    25    NA    NA       
#> 2: 07:04:42  13937810_25.batch 13937810    25    NA    NA  batch
#> 3: 07:04:49 13937810_25.extern 13937810    25    NA    NA extern
#> 4: 00:00:00     14022192_[1-3] 14022192    NA     1     3       
#> 5: 00:00:00       14022204_[4] 14022204    NA     4    NA
sacct.DT
#>     Elapsed              JobID      job  task task1 taskN   type
#>      <char>             <char>    <int> <int> <int> <int> <char>
#> 1: 07:04:42        13937810_25 13937810    25    NA    NA       
#> 2: 07:04:42  13937810_25.batch 13937810    25    NA    NA  batch
#> 3: 07:04:49 13937810_25.extern 13937810    25    NA    NA extern
#> 4: 00:00:00     14022192_[1-3] 14022192    NA     1     3       
#> 5: 00:00:00       14022204_[4] 14022204    NA     4    NA

Complex example: fsa file names

In this section we explain how to use various features to parse the fsa file names in PROVEDIt. Here are a few representative examples:

fsa.vec <- c(#control samples:
  "A01-Ladder-PP16-001.10sec.fsa",
  "D07_Ladder-IP_004.5sec.fsa",
  "A12_RB121514ADG_001.10sec.fsa", 
  "A10_RB102191515LEA-IP_001.10sec.fsa",
  ##single-source samples:
  "A02-RD12-0002-35-0.5PP16-001.10sec.fsa", 
  "G01_RD14-0003-35d3S30-0.01563P-Q10.0_003.10sec.fsa",
  "A06_RD14-0003-24d3a-0.0625IP-Q0.8_001.10sec.fsa", 
  "A08-RD12-0002-01d-0.125PP16-001.10sec.fsa",
  "A10-RD12-0002-04d1-0.0625PP16-001.10sec.fsa", 
  "C02_RD14-0003-15d2b-0.25IP-Q0.5_003.5sec.fsa",
  ##mixture samples:
  "A02-RD12-0002-1_2-1;9-0.125PP16-001.10sec.fsa", 
  "H07_RD14-0003-35_36_37_38_39-1;4;4;4;1-M2I35-0.75IP-QLAND_004.5sec.fsa")

The goal is to build a regex that can convert this character vector to a data table with different columns for the different variables. The structure of the file names is explained in the supplementary materials PDF. We will build a complex regex in terms of simpler sub-patterns. First let’s just match the start of each file name, which has the row/column of the 96-well plate in which the sample was tested:

well.pattern <- list(
  "^",
  well.letter="[A-H]",
  well.number="[0-9]+", as.integer)
nc::capture_first_vec(fsa.vec, well.pattern)
#>     well.letter well.number
#>          <char>       <int>
#>  1:           A           1
#>  2:           D           7
#>  3:           A          12
#>  4:           A          10
#>  5:           A           2
#>  6:           G           1
#>  7:           A           6
#>  8:           A           8
#>  9:           A          10
#> 10:           C           2
#> 11:           A           2
#> 12:           H           7

Now, let’s match the end of each file name:

end.pattern <- list(
  "[-_]",
  capillary="[0-9]+", as.integer,
  "[.]",
  seconds="[0-9]+", as.integer,
  "sec[.]fsa$")
nc::capture_first_vec(fsa.vec, end.pattern)
#>     capillary seconds
#>         <int>   <int>
#>  1:         1      10
#>  2:         4       5
#>  3:         1      10
#>  4:         1      10
#>  5:         1      10
#>  6:         3      10
#>  7:         1      10
#>  8:         1      10
#>  9:         1      10
#> 10:         3       5
#> 11:         1      10
#> 12:         4       5

Now, let’s take a look at what’s in between:

between.dt <- nc::capture_first_vec(
  fsa.vec, well.pattern, between=".*?", end.pattern)
between.dt$between
#>  [1] "-Ladder-PP16"                                          
#>  [2] "_Ladder-IP"                                            
#>  [3] "_RB121514ADG"                                          
#>  [4] "_RB102191515LEA-IP"                                    
#>  [5] "-RD12-0002-35-0.5PP16"                                 
#>  [6] "_RD14-0003-35d3S30-0.01563P-Q10.0"                     
#>  [7] "_RD14-0003-24d3a-0.0625IP-Q0.8"                        
#>  [8] "-RD12-0002-01d-0.125PP16"                              
#>  [9] "-RD12-0002-04d1-0.0625PP16"                            
#> [10] "_RD14-0003-15d2b-0.25IP-Q0.5"                          
#> [11] "-RD12-0002-1_2-1;9-0.125PP16"                          
#> [12] "_RD14-0003-35_36_37_38_39-1;4;4;4;1-M2I35-0.75IP-QLAND"

Notice that PP16/P/IP are the kit types. There may optionally be a DNA template mass before, and optionally a Q score after. Let’s match those:

mass.pattern <- list(
  template.nanograms="[0-9.]*", as.numeric)
kit.pattern <- nc::quantifier(
  kit=nc::alternatives("PP16", "IP", "P"),
  "?")
q.pattern <- nc::quantifier(
  "-Q",
  Q.chr=nc::alternatives("LAND", "[0-9.]+"),
  "?")
old.opt <- options(width=100)
(before.dt <- nc::capture_first_vec(
  between.dt$between,
  "^",
  before=".*?",
  mass.pattern, kit.pattern, q.pattern, "$"))
#>                                         before template.nanograms    kit  Q.chr
#>                                         <char>              <num> <char> <char>
#>  1:                                   -Ladder-                 NA   PP16       
#>  2:                                   _Ladder-                 NA     IP       
#>  3:                               _RB121514ADG                 NA              
#>  4:                           _RB102191515LEA-                 NA     IP       
#>  5:                             -RD12-0002-35-            0.50000   PP16       
#>  6:                        _RD14-0003-35d3S30-            0.01563      P   10.0
#>  7:                          _RD14-0003-24d3a-            0.06250     IP    0.8
#>  8:                            -RD12-0002-01d-            0.12500   PP16       
#>  9:                           -RD12-0002-04d1-            0.06250   PP16       
#> 10:                          _RD14-0003-15d2b-            0.25000     IP    0.5
#> 11:                        -RD12-0002-1_2-1;9-            0.12500   PP16       
#> 12: _RD14-0003-35_36_37_38_39-1;4;4;4;1-M2I35-            0.75000     IP   LAND
options(old.opt)

Now to match the before column, we need some alternatives. The first four rows are controls, and the other rows are samples which are indicated by a project ID (prefix RD) and then a sample ID. The mixture samples at the bottom contain semicolon-delimited mixture proportions.

project.pattern <- list(project="RD[0-9]+-[0-9]+", "-")
single.pattern <- list(id="[0-9]+", as.integer)
mixture.pattern <- list(
  ids.chr="[0-9_]+",
  "-",
  parts.chr="[0-9;]+",
  "-")
single.or.mixture <- list(
  project.pattern,
  nc::alternatives(mixture.pattern, single.pattern))
control.pattern <- list(control="[^-_]+")
single.mixture.control <- list("[-_]", nc::alternatives(
  single.or.mixture, control.pattern))
(rest.dt <- nc::capture_first_vec(
  before.dt$before, single.mixture.control, rest=".*"))
#>       project        ids.chr parts.chr    id        control   rest
#>        <char>         <char>    <char> <int>         <char> <char>
#>  1:                                       NA         Ladder      -
#>  2:                                       NA         Ladder      -
#>  3:                                       NA    RB121514ADG       
#>  4:                                       NA RB102191515LEA      -
#>  5: RD12-0002                             35                     -
#>  6: RD14-0003                             35                d3S30-
#>  7: RD14-0003                             24                  d3a-
#>  8: RD12-0002                              1                    d-
#>  9: RD12-0002                              4                   d1-
#> 10: RD14-0003                             15                  d2b-
#> 11: RD12-0002            1_2       1;9    NA                      
#> 12: RD14-0003 35_36_37_38_39 1;4;4;4;1    NA                M2I35-

The rest may contain some information related to the dilution and treatment, which we can parse as follows:

dilution.pattern <- nc::quantifier(
  "[dM]",
  dilution.number="[0-9]?", as.integer,
  "?")
treatment.pattern <- nc::quantifier(
  treatment.letter="[a-zA-Z]",
  nc::quantifier(treatment.number="[0-9]+", as.integer, "?"),
  "?")
dilution.treatment <- list(
  dilution.pattern,
  treatment.pattern,
  "[_-]?")
nc::capture_first_vec(rest.dt$rest, "^", dilution.treatment, "$")
#>     dilution.number treatment.letter treatment.number
#>               <int>           <char>            <int>
#>  1:              NA                                NA
#>  2:              NA                                NA
#>  3:              NA                                NA
#>  4:              NA                                NA
#>  5:              NA                                NA
#>  6:               3                S               30
#>  7:               3                a               NA
#>  8:              NA                                NA
#>  9:               1                                NA
#> 10:               2                b               NA
#> 11:              NA                                NA
#> 12:               2                I               35

Now we just have to put all of those patterns together to get a full match:

fsa.pattern <- list(
  well.pattern,
  single.mixture.control,
  dilution.treatment,
  mass.pattern, kit.pattern, q.pattern,  
  end.pattern)
(match.dt <- nc::capture_first_vec(fsa.vec, fsa.pattern))
#>     well.letter well.number   project        ids.chr parts.chr    id
#>          <char>       <int>    <char>         <char>    <char> <int>
#>  1:           A           1                                       NA
#>  2:           D           7                                       NA
#>  3:           A          12                                       NA
#>  4:           A          10                                       NA
#>  5:           A           2 RD12-0002                             35
#>  6:           G           1 RD14-0003                             35
#>  7:           A           6 RD14-0003                             24
#>  8:           A           8 RD12-0002                              1
#>  9:           A          10 RD12-0002                              4
#> 10:           C           2 RD14-0003                             15
#> 11:           A           2 RD12-0002            1_2       1;9    NA
#> 12:           H           7 RD14-0003 35_36_37_38_39 1;4;4;4;1    NA
#>            control dilution.number treatment.letter treatment.number
#>             <char>           <int>           <char>            <int>
#>  1:         Ladder              NA                                NA
#>  2:         Ladder              NA                                NA
#>  3:    RB121514ADG              NA                                NA
#>  4: RB102191515LEA              NA                                NA
#>  5:                             NA                                NA
#>  6:                              3                S               30
#>  7:                              3                a               NA
#>  8:                             NA                                NA
#>  9:                              1                                NA
#> 10:                              2                b               NA
#> 11:                             NA                                NA
#> 12:                              2                I               35
#>     template.nanograms    kit  Q.chr capillary seconds
#>                  <num> <char> <char>     <int>   <int>
#>  1:                 NA   PP16                1      10
#>  2:                 NA     IP                4       5
#>  3:                 NA                       1      10
#>  4:                 NA     IP                1      10
#>  5:            0.50000   PP16                1      10
#>  6:            0.01563      P   10.0         3      10
#>  7:            0.06250     IP    0.8         1      10
#>  8:            0.12500   PP16                1      10
#>  9:            0.06250   PP16                1      10
#> 10:            0.25000     IP    0.5         3       5
#> 11:            0.12500   PP16                1      10
#> 12:            0.75000     IP   LAND         4       5

And to verify we parsed everything correctly we print the subjects next to each row:

disp.dt <- data.table::data.table(match.dt)
names(disp.dt) <- paste(1:ncol(disp.dt))
old.opt <- options("datatable.print.colnames"="none")
split(disp.dt, fsa.vec)
#> $`A01-Ladder-PP16-001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 1       NA Ladder NA   NA NA PP16     1 10
#> 
#> $`A02-RD12-0002-1_2-1;9-0.125PP16-001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 2 RD12-0002 1_2 1;9 NA   NA   NA 0.125 PP16     1 10
#> 
#> $`A02-RD12-0002-35-0.5PP16-001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 2 RD12-0002     35   NA   NA 0.5 PP16     1 10
#> 
#> $`A06_RD14-0003-24d3a-0.0625IP-Q0.8_001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 6 RD14-0003     24   3 a NA 0.0625 IP 0.8  1 10
#> 
#> $`A08-RD12-0002-01d-0.125PP16-001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 8 RD12-0002     1   NA   NA 0.125 PP16     1 10
#> 
#> $`A10-RD12-0002-04d1-0.0625PP16-001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 10 RD12-0002     4   1   NA 0.0625 PP16     1 10
#> 
#> $`A10_RB102191515LEA-IP_001.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 10       NA RB102191515LEA NA   NA NA IP     1 10
#> 
#> $A12_RB121514ADG_001.10sec.fsa
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: A 12       NA RB121514ADG NA   NA NA        1 10
#> 
#> $`C02_RD14-0003-15d2b-0.25IP-Q0.5_003.5sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: C 2 RD14-0003     15   2 b NA 0.25 IP 0.5  3  5
#> 
#> $`D07_Ladder-IP_004.5sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: D 7       NA Ladder NA   NA NA IP     4  5
#> 
#> $`G01_RD14-0003-35d3S30-0.01563P-Q10.0_003.10sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: G 1 RD14-0003     35   3 S 30 0.01563  P 10.0  3 10
#> 
#> $`H07_RD14-0003-35_36_37_38_39-1;4;4;4;1-M2I35-0.75IP-QLAND_004.5sec.fsa`
#> Warning in print.data.table(x): Column classes will be suppressed when
#> col.names is 'none'
#> 1: H 7 RD14-0003 35_36_37_38_39 1;4;4;4;1 NA   2 I 35 0.75 IP LAND  4  5
options(old.opt)

Incidentally, if you print the regex as a string it looks like something that would be essentially impossible to write/maintain by hand (without nc helper functions):

nc::var_args_list(fsa.pattern)$pattern
#> [1] "(?:(?:^([A-H])([0-9]+))(?:[-_](?:(?:(?:(RD[0-9]+-[0-9]+)-)(?:(?:([0-9_]+)-([0-9;]+)-)|(?:([0-9]+))))|(?:([^-_]+))))(?:(?:(?:[dM]([0-9]?))?)(?:(?:([a-zA-Z])(?:(?:([0-9]+))?))?)[_-]?)(?:([0-9.]*))(?:(?:(PP16|IP|P))?)(?:(?:-Q(LAND|[0-9.]+))?)(?:[-_]([0-9]+)[.]([0-9]+)sec[.]fsa$))"

In conclusion, we have shown how nc can help build complex regex patterns from simple, understandable sub-patterns in R code. The general workflow we have followed in this section can be generalized to other projects. First, identify a small set of subjects to use for testing (fsa.vec in the code above). Second, create some sub-patterns for the start/end of the subjects, and create a sub-pattern that will capture everything else in between. Third, create some more sub-patterns to match the “everything else” in the previous step (e.g. before.dt$before, between.dt$between, rest.dt$rest above). Repeat the process until there is nothing left to match, and then concatenate the sub-patterns to match the whole subject.

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