meanX                package:multtest                R Documentation

_F_u_n_c_t_i_o_n_s _t_o _c_r_e_a_t_e _t_e_s_t _s_t_a_t_i_s_t_i_c _c_l_o_s_u_r_e_s _a_n_d _a_p_p_l_y _t_h_e_m _t_o _d_a_t_a

_D_e_s_c_r_i_p_t_i_o_n:

     The package 'multtest' uses closures in the function 'MTP' to
     compute test statistics. The closure used depends on the value of
     the argument 'test'. These functions create the closures for
     different tests, given any additional variables, such as outcomes
     or covariates. The function 'get.Tn' calls 'wapply' to apply one
     of these closures to observed data (and possibly weights).

_U_s_a_g_e:

     meanX(psi0 = 0, na.rm = TRUE, standardize = TRUE, 
     alternative = "two.sided", robust = FALSE)

     diffmeanX(label, psi0 = 0, var.equal = FALSE, na.rm = TRUE, 
     standardize = TRUE, alternative = "two.sided", robust = FALSE)

     FX(label, na.rm = TRUE, robust = FALSE)

     blockFX(label, na.rm = TRUE, robust = FALSE)

     lmX(Z = NULL, n, psi0 = 0, na.rm = TRUE, standardize = TRUE, 
     alternative = "two.sided", robust = FALSE)

     lmY(Y, Z = NULL, n, psi0 = 0, na.rm = TRUE, standardize = TRUE, 
     alternative = "two.sided", robust = FALSE)

     coxY(surv.obj, strata = NULL, psi0 = 0, na.rm = TRUE, standardize = TRUE, 
     alternative = "two.sided", init = NULL, method = "efron")

     get.Tn(X, stat.closure, W = NULL)

_A_r_g_u_m_e_n_t_s:

       X: A matrix, data.frame or exprSet containing the raw data. In
          the case of an exprSet, 'exprs(X)' is the data of interest
          and 'pData(X)' may contain outcomes and covariates of
          interest. For currently implemented tests, one hypothesis is
          tested for each row of the data.

       W: A vector or matrix containing non-negative weights to be used
          in computing the test statistics. If a matrix, 'W' must be
          the same dimension as 'X' with one weight for each value in
          'X'. If a vector, 'W' may contain one weight for each
          observation (i.e. column) of 'X' or one weight for each
          variable (i.e. row) of 'X'. In either case, the weights are
          duplicated apporpraiately. Weighted f-tests are not
          available. Default is 'NULL'.

   label: A vector containing the class labels for t- and f-tests. For
          the 'blockFX' function, observations may be divided into
          'n/k' blocks of 'k' observations each (for 'k' groups). The
          labels (and corresponding rows of 'Z' and columns of 'X' and
          'W') should then be ordered by block.

       Y: A vector or factor containing the outcome of interest for
          linear models. This may be a continuous or polycotomous
          dependent variable.

surv.object: A survival object as returned by the 'Surv' function, to
          be used as response in 'coxY'.

       Z: A vector, factor, or matrix containing covariate data to be
          used in the linear regression models. Each variable should be
          in one column.

  strata: A vector, factor, or matrix containing covariate data to be
          used in the Cox regression models. Covariate data will be
          converted to a factor variable (via the 'strata' function)
          for use in the 'coxph' function. Each variable should be in
          one column.

       n: The sample size, e.g. 'length(Y)' or 'nrow(Z)'.

    psi0: Hypothesized null value for the parameter of interest (e.g.
          mean or difference in means), typically zero (default).

var.equal: Indicator of whether to use t-statistics that assume equal
          variance in the two groups when computing the denominator of
          the test statistics.

   na.rm: Logical indicating whether to remove observations with an NA.
          Default is 'TRUE'.

standardize: Logical indicating whether to use the standardized version
          of the test statistics (usual t-statistics are standardized).
          Default is 'TRUE'.

alternative: Character string indicating the alternative hypotheses, by
          default 'two.sided'. For one-sided tests, use 'less' or
          'greater' for null hypotheses of 'greater than or equal'
          (i.e. alternative is 'less') and 'less than or equal',
          respectively.

  robust: Logical indicating whether to use robust versions of the test
          statistics.

    init: Vector of initial values of the iteration in 'coxY' function,
          as used in 'coxph' in the 'survival' package. Default initial
          value is zero for all variables ('init=NULL').

  method: A character string specifying the method for tie handling in
          'coxY' function, as used in 'coxph' in the 'survival'
          package. Default is "efron".

_D_e_t_a_i_l_s:

     The use of closures, in the style of the 'genefilter' package,
     allows uniform data input for all MTPs and facilitates the
     extension of the package's functionality by adding, for example,
     new types of test statistics.  Specifically, for each value of the
     'MTP' argument 'test', a closure is defined which consists of a
     function for computing the test statistic (with only two
     arguments, a data vector 'x' and a corresponding weight vector
     'w', with default value of 'NULL') and its enclosing environment,
     with bindings for relevant additional arguments. These arguments
     may include null values 'psi0', outcomes ('Y', 'label',
     'surv.object'), and covariates 'Z'. The vectors 'x' and 'w' are
     rows of the matrices 'X' and 'W'.

     In the 'MTP' function, the closure is first used to compute the
     vector of observed test statistics, and then, in each bootstrap
     iteration, to produce the estimated joint null distribution of the
     test statistics. In both cases, the function 'get.Tn' is used to
     apply the closure to rows of the matrices of data ('X') and
     weights ('W'). Thus, new test statistics can be added to
     'multtest' package by simply defining a new closure and adding a
     corresponding value for the 'test' argument to the 'MTP' function.

_V_a_l_u_e:

     For 'meanX', 'diffmeanX', 'FX', 'blockFX', 'lmX', 'lmY', and
     'coxY', a closure consisting of a function for computing test
     statistics and its enclosing environment. For 'get.Tn', the
     observed test statistics stored in a matrix 'obs' with numerator
     (possibly absolute value or negative, depending on the value of
     alternative) in the first row, denominator in the second row, and
     a 1 or -1 in the third row (depending on the value of
     alternative). The vector of observed test statistics is
     obs[1,]*obs[3,]/obs[2,].

_A_u_t_h_o_r(_s):

     Katherine S. Pollard, <URL: http://lowelab.ucsc.edu/katie/>
      with design contributions from Sandrine Dudoit and Mark J. van
     der Laan

_S_e_e _A_l_s_o:

     'MTP', 'get.Tn', 'wapply', 'boot.resample'

_E_x_a_m_p_l_e_s:

     data<-matrix(rnorm(200),nr=20)
     ttest<-meanX(psi0=0,na.rm=TRUE,standardize=TRUE,alternative="two.sided",robust=FALSE)
     obs<-wapply(data,1,ttest,W=NULL)
     statistics<-obs[1,]*obs[3,]/obs[2,]
     statistics

