The vtable
package serves the purpose of outputting
automatic variable documentation that can be easily viewed while
continuing to work with data.
vtable
contains four main functions:
vtable()
(or vt()
), sumtable()
(or st()
), labeltable()
, and
dftoHTML()
/dftoLaTeX()
. This vignette focuses
on vtable()
.
vtable()
takes a dataset and outputs a formatted
variable documentation file. This serves several purposes.
First, it allows for an easy generation of a variable documentation
file, without requiring that one has already been created and made
accessible through help(data)
, or dealing with creating and
finding R help documentation files.
Second, it produces a list of variables (and, if provided, their
labels) that can be easily viewed while working with the data,
preventing repeated calls to head()
, and making it much
easier to work with confusingly-named variables.
Third, the variable documentation file can be opened in a browser
(with option out='browser'
, saving to file and opening
directly, or by opening in the RStudio Viewer pane and clicking ‘Show in
New Window’) where it can be easily searched with standard Find-in-Page
functions like Ctrl/Cmd-F, allowsing you to search for the variable or
variable label you want.
vtable()
functionvtable()
(or vt()
for short) syntax follows
the following outline:
vtable(data,
out=NA,
file=NA,
labels=NA,
class=TRUE,
values=TRUE,
missing=FALSE,
index=FALSE,
factor.limit=5,
char.values=FALSE,
data.title=NA,
desc=NA,
note=NA,
anchor=NA,
col.width=NA,
col.align=NA,
align=NA,
note.align='l',
fit.page=NA,
summ=NA,
lush=FALSE,
opts=list())
The goal of vtable()
is to take a data set
data
and output a usually-HTML (but
data.frame
, kable
, csv
, and
latex
options are there too) file with documentation
concerning each of the variables in data
. There are several
options as to what will be included in the documentation file, and each
of these options are explained below. Throughout, the output will be
built as kable
s since this is an RMarkdown document.
However, generally you can leave out
at its default and it
will publish an HTML table to Viewer (in RStudio) or the browser
(otherwise). This will also include some additional information about
your data that can’t be demonstrated in this vignette:
data
The data
argument can take any data.frame
,
data.table
, tibble
, or matrix
, as
long as it has a valid set of variable names stored in the
colnames()
attribute. The goal of vtable()
is
to produce documentation of each of the variables in this data set and
display that documentation, one variable per row on the output
vtable
.
If data
has embedded variable or value labels, as the
data set efc
does below, vtable()
will extract
and use them automatically.
library(vtable)
#Example 1, using base data LifeCycleSavings
data(LifeCycleSavings)
vtable(LifeCycleSavings, out='kable')
Name | Class | Values |
---|---|---|
sr | numeric | Num: 0.6 to 21.1 |
pop15 | numeric | Num: 21.44 to 47.64 |
pop75 | numeric | Num: 0.56 to 4.7 |
dpi | numeric | Num: 88.94 to 4001.89 |
ddpi | numeric | Num: 0.22 to 16.71 |
#Example 2, using efc data with embedded variable labels
library(sjlabelled)
data(efc)
#Don't forget the handy shortcut vt()!
vt(efc)
Name | Class | Label | Values |
---|---|---|---|
c12hour | numeric | average number of hours of care per week | Num: 4 to 168 |
e15relat | numeric | relationship to elder | ‘1: spouse/partner’ ‘2: child’ ‘3: sibling’ ‘4: daughter or son -in-law’ ‘5: ancle/aunt’ and more |
e16sex | numeric | elder’s gender | ‘1: male’ ‘2: female’ |
e17age | numeric | elder’ age | Num: 65 to 103 |
e42dep | numeric | elder’s dependency | ‘1: independent’ ‘2: slightly dependent’ ‘3: moderately dependent’ ‘4: severely dependent’ |
c82cop1 | numeric | do you feel you cope well as caregiver? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ |
c83cop2 | numeric | do you find caregiving too demanding? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c84cop3 | numeric | does caregiving cause difficulties in your relationship with your friends? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c85cop4 | numeric | does caregiving have negative effect on your physical health? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c86cop5 | numeric | does caregiving cause difficulties in your relationship with your family? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c87cop6 | numeric | does caregiving cause financial difficulties? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c88cop7 | numeric | do you feel trapped in your role as caregiver? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c89cop8 | numeric | do you feel supported by friends/neighbours? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ |
c90cop9 | numeric | do you feel caregiving worthwhile? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ |
c160age | numeric | carer’ age | Num: 18 to 89 |
c161sex | numeric | carer’s gender | ‘1: Male’ ‘2: Female’ |
c172code | numeric | carer’s level of education | ‘1: low level of education’ ‘2: intermediate level of education’ ‘3: high level of education’ |
c175empl | numeric | are you currently employed? | ‘0: no’ ‘1: yes’ |
barthtot | numeric | Total score BARTHEL INDEX | Num: 0 to 100 |
neg_c_7 | numeric | Negative impact with 7 items | Num: 7 to 28 |
pos_v_4 | numeric | Positive value with 4 items | Num: 5 to 16 |
quol_5 | numeric | Quality of life 5 items | Num: 0 to 25 |
resttotn | numeric | Job restrictions | Num: 0 to 4 |
tot_sc_e | numeric | Services for elderly | Num: 0 to 9 |
n4pstu | numeric | Care level | ‘0: No Care Level’ ‘1: Care Level 1’ ‘2: Care Level 2’ ‘3: Care Level 3’ ‘4: Care Level 3+’ |
nur_pst | numeric | Care level | ‘1: Care Level 1’ ‘2: Care Level 2’ ‘3: Care Level 3/3+’ |
out
The out
option determines what will be done with the
resulting variable documentation file. There are several options for
out
:
Option | Result |
---|---|
browser | Loads variable documentation in web browser. |
viewer | Loads variable documentation in Viewer pane (RStudio only). |
htmlreturn | Returns HTML code for variable documentation file. |
return | Returns variable documentation table in data frame format. |
csv | Returns variable documentatoin in data.frame format and, with a
file option, saves that to CSV. |
kable | Returns a knitr::kable() |
latex | Returns a LaTeX table. |
latexpage | Returns an independently-buildable LaTeX document. |
By default, vtable
will select ‘viewer’ if running in
RStudio, and ‘browser’ otherwise. If it’s being built in an RMarkdown
document with knitr
, it will default to ‘kable’.
data(LifeCycleSavings)
vtable(LifeCycleSavings)
vtable(LifeCycleSavings,out='browser')
vtable(LifeCycleSavings,out='viewer')
<- vtable(LifeCycleSavings,out='htmlreturn')
htmlcode <- vtable(LifeCycleSavings,out='return')
vartable
#I can easily \input this into my LaTeX doc:
vt(LifeCycleSavings,out='latex',file='mytable1.tex')
file
The file
argument will write the variable documentation
file to an HTML or LaTeX file and save it. Will automatically append
‘html’ or ‘tex’ filetype if the filename does not include a period.
data(LifeCycleSavings)
vt(LifeCycleSavings,file='lifecycle_variabledocumentation')
labels
The labels
argument will attach variable labels to the
variables in data
. If variable labels are embedded in
data
and those labels are what you want, the
labels
argument is unnecessary. Set
labels='omit'
if there are embedded labels but you do not
want them in the table.
labels
can be used in any one of three formats.
labels
as a vectorlabels
can be set to be a vector of equal length to the
number of variables in data
, and in the same order.
NA
values can be used for padding if some variables do not
have labels.
#Note that LifeCycleSavings has five variables
data(LifeCycleSavings)
#These variable labels are taken from help(LifeCycleSavings)
<- c('numeric aggregate personal savings',
labs 'numeric % of population under 15',
'numeric % of population over 75',
'numeric real per-capita disposable income',
'numeric % growth rate of dpi')
vtable(LifeCycleSavings,labels=labs)
Name | Class | Label | Values |
---|---|---|---|
sr | numeric | numeric aggregate personal savings | Num: 0.6 to 21.1 |
pop15 | numeric | numeric % of population under 15 | Num: 21.44 to 47.64 |
pop75 | numeric | numeric % of population over 75 | Num: 0.56 to 4.7 |
dpi | numeric | numeric real per-capita disposable income | Num: 88.94 to 4001.89 |
ddpi | numeric | numeric % growth rate of dpi | Num: 0.22 to 16.71 |
<- c('numeric aggregate personal savings',NA,NA,NA,NA)
labs vtable(LifeCycleSavings,labels=labs)
Name | Class | Label | Values |
---|---|---|---|
sr | numeric | numeric aggregate personal savings | Num: 0.6 to 21.1 |
pop15 | numeric | NA | Num: 21.44 to 47.64 |
pop75 | numeric | NA | Num: 0.56 to 4.7 |
dpi | numeric | NA | Num: 88.94 to 4001.89 |
ddpi | numeric | NA | Num: 0.22 to 16.71 |
labels
as a two-column data setlabels
can be set to a two-column data set (any type
will do) where the first column has the variable names, and the second
column has the labels. The column names don’t matter.
This approach does not require that every variable
name in data
has a matching label.
#Note that LifeCycleSavings has five variables
#with names 'sr', 'pop15', 'pop75', 'dpi', and 'ddpi'
data(LifeCycleSavings)
#These variable labels are taken from help(LifeCycleSavings)
<- data.frame(nonsensename1 = c('sr', 'pop15', 'pop75'),
labs nonsensename2 = c('numeric aggregate personal savings',
'numeric % of population under 15',
'numeric % of population over 75'))
vt(LifeCycleSavings,labels=labs)
Name | Class | Label | Values |
---|---|---|---|
sr | numeric | numeric aggregate personal savings | Num: 0.6 to 21.1 |
pop15 | numeric | numeric % of population under 15 | Num: 21.44 to 47.64 |
pop75 | numeric | numeric % of population over 75 | Num: 0.56 to 4.7 |
dpi | numeric | NA | Num: 88.94 to 4001.89 |
ddpi | numeric | NA | Num: 0.22 to 16.71 |
labels
as a one-row data setlabels
can be set to a one-row data set in which the
column names are the variable names in data
and the first
row is the variable names. The labels
argument can take any
data type including data frame, data table, tibble, or matrix, as long
as it has a valid set of variable names stored in the
colnames()
attribute.
This approach does not require that every variable
name in data
has a matching label.
#Note that LifeCycleSavings has five variables
#with names 'sr', 'pop15', 'pop75', 'dpi', and 'ddpi'
data(LifeCycleSavings)
#These variable labels are taken from help(LifeCycleSavings)
<- data.frame(sr = 'numeric aggregate personal savings',
labs pop15 = 'numeric % of population under 15',
pop75 = 'numeric % of population over 75')
vtable(LifeCycleSavings,labels=labs)
Name | Class | Label | Values |
---|---|---|---|
sr | numeric | numeric aggregate personal savings | Num: 0.6 to 21.1 |
pop15 | numeric | numeric % of population under 15 | Num: 21.44 to 47.64 |
pop75 | numeric | numeric % of population over 75 | Num: 0.56 to 4.7 |
dpi | numeric | NA | Num: 88.94 to 4001.89 |
ddpi | numeric | NA | Num: 0.22 to 16.71 |
class
The class
flag will either report or not report the
class of each variable in the resulting variable table. By default this
is set to TRUE
.
values
The values
flag will either report or not report the
values that each variable takes. Numeric variables will report a range,
logicals will report ‘TRUE FALSE’, and factor variables will report the
first factor.limit
(default 5) factors listed.
If the variable is numeric but has value labels applied by the
sjlabelled
package, vtable()
will find them
and report the numeric-label crosswalk.
data(LifeCycleSavings)
vtable(LifeCycleSavings,values=FALSE)
Name | Class |
---|---|
sr | numeric |
pop15 | numeric |
pop75 | numeric |
dpi | numeric |
ddpi | numeric |
vtable(LifeCycleSavings)
Name | Class | Values |
---|---|---|
sr | numeric | Num: 0.6 to 21.1 |
pop15 | numeric | Num: 21.44 to 47.64 |
pop75 | numeric | Num: 0.56 to 4.7 |
dpi | numeric | Num: 88.94 to 4001.89 |
ddpi | numeric | Num: 0.22 to 16.71 |
#CO2 contains factor variables
data(CO2)
vtable(CO2)
Name | Class | Values |
---|---|---|
Plant | ordered | ‘Qn1’ ‘Qn2’ ‘Qn3’ ‘Qc1’ ‘Qc2’ and more |
Type | factor | ‘Quebec’ ‘Mississippi’ |
Treatment | factor | ‘nonchilled’ ‘chilled’ |
conc | numeric | Num: 95 to 1000 |
uptake | numeric | Num: 7.7 to 45.5 |
#efc contains labeled values
#Note that the original value labels do not easily tell you what numerical
#value each label maps to, but vtable() does.
library(sjlabelled)
data(efc)
vtable(efc)
Name | Class | Label | Values |
---|---|---|---|
c12hour | numeric | average number of hours of care per week | Num: 4 to 168 |
e15relat | numeric | relationship to elder | ‘1: spouse/partner’ ‘2: child’ ‘3: sibling’ ‘4: daughter or son -in-law’ ‘5: ancle/aunt’ and more |
e16sex | numeric | elder’s gender | ‘1: male’ ‘2: female’ |
e17age | numeric | elder’ age | Num: 65 to 103 |
e42dep | numeric | elder’s dependency | ‘1: independent’ ‘2: slightly dependent’ ‘3: moderately dependent’ ‘4: severely dependent’ |
c82cop1 | numeric | do you feel you cope well as caregiver? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ |
c83cop2 | numeric | do you find caregiving too demanding? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c84cop3 | numeric | does caregiving cause difficulties in your relationship with your friends? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c85cop4 | numeric | does caregiving have negative effect on your physical health? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c86cop5 | numeric | does caregiving cause difficulties in your relationship with your family? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c87cop6 | numeric | does caregiving cause financial difficulties? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c88cop7 | numeric | do you feel trapped in your role as caregiver? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ |
c89cop8 | numeric | do you feel supported by friends/neighbours? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ |
c90cop9 | numeric | do you feel caregiving worthwhile? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ |
c160age | numeric | carer’ age | Num: 18 to 89 |
c161sex | numeric | carer’s gender | ‘1: Male’ ‘2: Female’ |
c172code | numeric | carer’s level of education | ‘1: low level of education’ ‘2: intermediate level of education’ ‘3: high level of education’ |
c175empl | numeric | are you currently employed? | ‘0: no’ ‘1: yes’ |
barthtot | numeric | Total score BARTHEL INDEX | Num: 0 to 100 |
neg_c_7 | numeric | Negative impact with 7 items | Num: 7 to 28 |
pos_v_4 | numeric | Positive value with 4 items | Num: 5 to 16 |
quol_5 | numeric | Quality of life 5 items | Num: 0 to 25 |
resttotn | numeric | Job restrictions | Num: 0 to 4 |
tot_sc_e | numeric | Services for elderly | Num: 0 to 9 |
n4pstu | numeric | Care level | ‘0: No Care Level’ ‘1: Care Level 1’ ‘2: Care Level 2’ ‘3: Care Level 3’ ‘4: Care Level 3+’ |
nur_pst | numeric | Care level | ‘1: Care Level 1’ ‘2: Care Level 2’ ‘3: Care Level 3/3+’ |
missing
The missing
flag, set to TRUE, will report the number of
missing values in each variable. Defaults to FALSE.
index
The index
flag will either report or not report the
index number of each variable. Defaults to FALSE.
factor.limit
If values
is set to TRUE
, then
factor.limit
limits the number of factors displayed on the
variable table. factor.limit
is by default 5, to cut down
on clutter. The table will include the phrase “and more” to indicate
that some factors have been cut off.
Setting factor.limit=0
will include all factors. If
values=FALSE
, factor.limit
does nothing.
char.values
If values
is set to TRUE
, then
char.values = TRUE
instructs vtable
to list
the values that character variables take, as though they were factors.
If you only want some of the character variables to have their values
listed, use a character vector to indicate which variables.
data(USJudgeRatings)
$Judge <- row.names(USJudgeRatings)
USJudgeRatings$SecondCharacter <- 'Less Interesting'
USJudgeRatings$ThirdCharacter <- 'Less Interesting Still!'
USJudgeRatings
#Show values for all character variables
vtable(USJudgeRatings,char.values=TRUE)
#Or just for a subset
vtable(USJudgeRatings,char.values=c('Judge','SecondCharacter'))
data.title
, desc
, note
, and
anchor
data.title
will include a data title in the variable
documentation file. If not set manually, this will default to the
variable name for data
.
desc
will include a description of the data set in the
variable documentation file. This will by default include information on
the number of observations and the number of columns. To remove this,
set desc='omit'
, or include any description and then
include ‘omit’ as the last four characters.
note
will add a table note in the last row.
anchor
will add an anchor ID (<a name =
in HTML or \label{}
in LaTeX) to allow other parts of your
document to link to it, if you are including your vtable
in
a larger document.
data.title
and desc
will only show up in
full-page vtable
s. That is, you won’t get them with
out = 'return'
, out = 'csv'
, or
out = 'latex'
(although out = 'latexpage'
works). note
and anchor
will only show up in
formats that support multi-column cells and anchoring, so they won’t
work with out = 'return'
or out = 'csv'
.
out = 'kable'
is a half-exception in that it will use
data.title
as the caption for the kable
, and
will use the note
as a footnote, but won’t use
desc
or anchor
.
library(vtable)
data(LifeCycleSavings)
vtable(LifeCycleSavings)
vtable(LifeCycleSavings,data.title='Intercountry Life-Cycle Savings Data',
desc='omit')
vtable(LifeCycleSavings,data.title='Intercountry Life-Cycle Savings Data',
desc='Data on the savings ratio 1960–1970. omit')
vtable(LifeCycleSavings,data.title='Intercountry Life-Cycle Savings Data',
desc='Data on the savings ratio 1960–1970',
note='Data from Belsley, Kuh, and Welsch (1980)')
col.width
vtable()
will select default column widths for the
variable table depending on which measures
(name, class, label, values, summ)
are included.
col.width
, as a vector of percentage column widths on the
0-100 scale, will override these defaults.
library(sjlabelled)
data(efc)
#The variable names in this data set are pretty short, and the value labels are
#a little cramped, so let's move that over.
vtable(efc,col.width=c(10,10,40,40))
col.align
col.align
can be used to adjust text alignment in HTML
output. Set to ‘left’, ‘right’, or ‘center’ to align all columns, or
give a vector of column alignments to do each column separately.
If you want to get tricky, you can add a semicolon afterwards and keep putting in whatever CSS attributes you want. They will be applied to the whole column.
This option is only for HTML output and will only work with
out
values of ‘browser’, ‘viewer’, or ‘htmlreturn’.
library(sjlabelled)
data(efc)
vtable(efc,col.align = 'right')
align
, note.align
, and
fit.page
These options are used only with LaTeX output (out
is
‘latex’ or ‘latexpage’).
align
and note.align
are single strings
used for alignment. align
will be used as column alignment
in standard LaTeX syntax, for example ‘lccc’ for the left column
left-aligned and the other three centered. note.align
is an
alignment note specifically for any table notes set with
note
(or significance stars), which enters as part of a
\multicolumn
argument. These both accept ‘p{}’ and other
LaTeX column types.
Defaults to left-aligned ‘Variable’ columns and right-aligned
everything else. If col.widths
is specified,
align
defaults to ‘p{}’ columns, with widths set by
col.width
.
fit.page
can be used to ensure that the table is a
certain width, and will be used as an entry to a
\resizebox{}
. Set to \\textwidth
to set the
table to text width, or .9\\textwidth
for 90% of the page,
and so on, or any recognized width value in LaTeX.
For all of these, be sure to escape special characters, in particular backslashes.
library(sjlabelled)
data(efc)
vtable(efc,align = 'p{.3\\textwidth}cc', fit.page = '\\textwidth', out = 'latex')
summ
summ
will calculate summary statistics for all variables
that report valid output on the given summary statistics functions.
summ
is very flexible. It takes a character vector in which
each element is of the form function(x)
, where
function(x)
is any function that takes a vector and returns
a single numeric value. For example,
summ=c('mean(x)','median(x)','mean(log(x))')
would
calculate the mean, median, and mean of the log for each variable.
summ
treats as special two vtable
functions: propNA(x)
and countNA(x)
, which
give the proportion and count of NA values, and the count of non-NA
values in the variable, respectively. These two functions are always
reported first, and are the only functions that include NA values in
their calculations.
library(sjlabelled)
data(efc)
vtable(efc,summ=c('mean(x)','countNA(x)'))
Name | Class | Label | Values | Summary |
---|---|---|---|---|
c12hour | numeric | average number of hours of care per week | Num: 4 to 168 | countNA: 6, mean: 42.399 |
e15relat | numeric | relationship to elder | ‘1: spouse/partner’ ‘2: child’ ‘3: sibling’ ‘4: daughter or son -in-law’ ‘5: ancle/aunt’ and more | countNA: 7 |
e16sex | numeric | elder’s gender | ‘1: male’ ‘2: female’ | countNA: 7 |
e17age | numeric | elder’ age | Num: 65 to 103 | countNA: 17, mean: 79.121 |
e42dep | numeric | elder’s dependency | ‘1: independent’ ‘2: slightly dependent’ ‘3: moderately dependent’ ‘4: severely dependent’ | countNA: 7 |
c82cop1 | numeric | do you feel you cope well as caregiver? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ | countNA: 7 |
c83cop2 | numeric | do you find caregiving too demanding? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ | countNA: 6 |
c84cop3 | numeric | does caregiving cause difficulties in your relationship with your friends? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ | countNA: 6 |
c85cop4 | numeric | does caregiving have negative effect on your physical health? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ | countNA: 10 |
c86cop5 | numeric | does caregiving cause difficulties in your relationship with your family? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ | countNA: 6 |
c87cop6 | numeric | does caregiving cause financial difficulties? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ | countNA: 8 |
c88cop7 | numeric | do you feel trapped in your role as caregiver? | ‘1: Never’ ‘2: Sometimes’ ‘3: Often’ ‘4: Always’ | countNA: 8 |
c89cop8 | numeric | do you feel supported by friends/neighbours? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ | countNA: 7 |
c90cop9 | numeric | do you feel caregiving worthwhile? | ‘1: never’ ‘2: sometimes’ ‘3: often’ ‘4: always’ | countNA: 20 |
c160age | numeric | carer’ age | Num: 18 to 89 | countNA: 7, mean: 53.463 |
c161sex | numeric | carer’s gender | ‘1: Male’ ‘2: Female’ | countNA: 7 |
c172code | numeric | carer’s level of education | ‘1: low level of education’ ‘2: intermediate level of education’ ‘3: high level of education’ | countNA: 66 |
c175empl | numeric | are you currently employed? | ‘0: no’ ‘1: yes’ | countNA: 6 |
barthtot | numeric | Total score BARTHEL INDEX | Num: 0 to 100 | countNA: 25, mean: 64.547 |
neg_c_7 | numeric | Negative impact with 7 items | Num: 7 to 28 | countNA: 16, mean: 11.85 |
pos_v_4 | numeric | Positive value with 4 items | Num: 5 to 16 | countNA: 27, mean: 12.477 |
quol_5 | numeric | Quality of life 5 items | Num: 0 to 25 | countNA: 11, mean: 14.369 |
resttotn | numeric | Job restrictions | Num: 0 to 4 | countNA: 0, mean: 0.329 |
tot_sc_e | numeric | Services for elderly | Num: 0 to 9 | countNA: 0, mean: 1.014 |
n4pstu | numeric | Care level | ‘0: No Care Level’ ‘1: Care Level 1’ ‘2: Care Level 2’ ‘3: Care Level 3’ ‘4: Care Level 3+’ | countNA: 9 |
nur_pst | numeric | Care level | ‘1: Care Level 1’ ‘2: Care Level 2’ ‘3: Care Level 3/3+’ | countNA: 419 |
lush
The default vtable
settings may not be to your liking,
and in particular you may prefer more information. Setting
lush = TRUE
is an easy way to get more information. It will
force char.values
and missing
to
TRUE
, and will also set a default summ
value
of c('mean(x)', 'sd(x)', 'nuniq(x)')
.
opts
You can create a named list where the names are the above options and
the values are the settings for those options, and input it into
vtable
using opts=
. This is an easy way to set
the same options for many vtable
s.