The value of center determines how column centering is
  performed.  If center is a numeric-alike vector with length equal to
  the number of columns of x, then each column of x has
  the corresponding value from center subtracted from it.  If
  center is TRUE then centering is done by subtracting the
  column means (omitting NAs) of x from their
  corresponding columns, and if center is FALSE, no
  centering is done.
The value of scale determines how column scaling is performed
  (after centering).  If scale is a numeric-alike vector with length
  equal to the number of columns of x, then each column of
  x is divided by the corresponding value from scale.
  If scale is TRUE then scaling is done by dividing the
  (centered) columns of x by their standard deviations if
  center is TRUE, and the root mean square otherwise.
  If scale is FALSE, no scaling is done.
The root-mean-square for a (possibly centered) column is defined as
  \(\sqrt{\sum(x^2)/(n-1)}\), where \(x\) is
  a vector of the non-missing values and \(n\) is the number of
  non-missing values.  In the case center = TRUE, this is the
  same as the standard deviation, but in general it is not.  (To scale
  by the standard deviations without centering, use
  scale(x, center = FALSE, scale = apply(x, 2, sd, na.rm = TRUE)).)