R/amaretto_functions.R

Defines functions AMARETTO_EvaluateTestSet AMARETTO_Run AMARETTO_Initialize

Documented in AMARETTO_EvaluateTestSet AMARETTO_Initialize AMARETTO_Run

#' AMARETTO_Initialize (version: reorder and filter MA_Matrix)
#'
#' Code used to initialize the seed clusters for an AMARETTO run.
#' Requires processed gene expressiosn (rna-seq or microarray), CNV (usually from a GISTIC run), and methylation (from MethylMix, provided in this package) data.
#' Uses the function CreateRegulatorData() and results are fed into the function AMARETTO_Run().
#'
#' @param ProcessedData List of Expression, CNV and MethylMix data matrices, with genes in rows and samples in columns.
#' @param Driver_list Custom list of driver genes to be considered in analysis
#' @param NrModules How many gene co-expression modules should AMARETTO search for? Usually around 100 is acceptable, given the large number of possible driver-passenger gene combinations.
#' @param VarPercentage Minimum percentage by variance for filtering of genes; for example, 75\% would indicate that the CreateRegulatorData() function only analyses genes that have a variance above the 75th percentile across all samples.
#' @param PvalueThreshold Threshold used to find relevant driver genes with CNV alterations: maximal p-value.
#' @param RsquareThreshold Threshold used to find relevant driver genes with CNV alterations: minimal R-square value between CNV and gene expression data.
#' @param pmax 'pmax' variable for glmnet function from glmnet package; the maximum number of variables aver to be nonzero. Should not be changed by user unless she/he fully understands the AMARETTO algorithm and how its parameters choices affect model output.
#' @param OneRunStop OneRunStop
#' @param NrCores A numeric variable indicating the number of computer/server cores to use for paralellelization. Default is 1, i.e. no parallelization. Please check your computer or server's computing capacities before increasing this number.  Parallelization is done via the RParallel package. Mac vs. Windows environments may behave differently when using parallelization.
#' @param random_seeds A numeric vector of length 2, containing two seed numbers for randomization : 1st for kmeans and 2nd for glmnet
#' @param method Perform union or intersection of the driver genes evaluated from the input data matrices and custom driver gene list provided.
#' @param convergence_cutoff A numeric value (E.g. 0.01) representing the fraction of the total number of genes, in which, The algorithm is considered reaching convergence and will stop, if Nr of Gene-replacements in an iteration falls below this threshold * total number of genes.  
#'
#' @return result
#' @rawNamespace import(callr, except = run)
#' @rawNamespace import(Rcpp, except = .DollarNames)
#' @rawNamespace import(utils, except = prompt)
#' @importFrom matrixStats rowVars rowMads
#' @importFrom stats aov coef cor density dist dnorm hclust kmeans lm na.omit p.adjust phyper prcomp qqline qqnorm qqplot rgamma var
#' @examples
#' data('ProcessedDataLIHC')
#' data('Driver_Genes')
#' AMARETTOinit <- AMARETTO_Initialize(ProcessedData = ProcessedDataLIHC,
#'                                     NrModules = 2, VarPercentage = 50)
#' \dontrun{
#' AMARETTOinit <- AMARETTO_Initialize(ProcessedData = ProcessedDataLIHC,
#'                                     Driver_list = Driver_Genes[['MSigDB']],
#'                                     NrModules = 2, VarPercentage = 50)
#'}
#' @export
AMARETTO_Initialize <- function(ProcessedData = ProcessedData, Driver_list = NULL, NrModules, VarPercentage, PvalueThreshold = 0.001, 
                                RsquareThreshold = 0.1, pmax = 10, NrCores = 1, OneRunStop = 0, method = "union", random_seeds = NULL, convergence_cutoff = 0.01) {
    
    MA_matrix <- ProcessedData[[1]]
    CNV_matrix <- ProcessedData[[2]]
    MET_matrix <- ProcessedData[[3]]
    
    if (is.null(MET_matrix) & is.null(CNV_matrix) & is.null(Driver_list)) {
        stop("Please select the correct input data types")
    }
    if (is.null(CNV_matrix) & is.null(Driver_list)) {
        if (ncol(MA_matrix) < 2 || ncol(MET_matrix) == 1) {
            stop("AMARETTO cannot be run with less than two samples.\n")
        }
    }
    if (is.null(MET_matrix) & is.null(Driver_list)) {
        if (ncol(MA_matrix) < 2 || ncol(CNV_matrix) == 1) {
            stop("AMARETTO cannot be run with less than two samples.\n")
        }
    }
    
    if (!is.null(MA_matrix) & !is.null(CNV_matrix) & !is.null(MET_matrix) & !is.null(Driver_list)) {
        if (ncol(MA_matrix) < 2 || ncol(CNV_matrix) == 1 || ncol(MET_matrix) == 1) {
            stop("AMARETTO cannot be run with less than two samples.\n")
        }
    }
    MA_matrix_Var = geneFiltering("MAD", MA_matrix, VarPercentage)
    MA_matrix_Var = t(scale(t(MA_matrix_Var)))
    if (NrModules >= nrow(MA_matrix_Var)) {
        stop(paste0("The number of modules is too large compared to the number of genes. Choose a number of modules smaller than ", nrow(MA_matrix_Var), ".\n"))
    }
    if(!is.null(random_seeds)){
      set.seed(random_seeds[1])
    }
    KmeansResults = kmeans(MA_matrix_Var, NrModules, iter.max = 100)
    Clusters = as.numeric(KmeansResults$cluster)
    names(Clusters) <- rownames(MA_matrix_Var)
    AutoRegulation = 2
    Lambda2 = 1e-04
    alpha = 1 - 1e-06
    Parameters <- list(AutoRegulation = AutoRegulation, OneRunStop = OneRunStop, Lambda2 = Lambda2,
                       Mode = "larsen", pmax = pmax, alpha = alpha, NrModules = NrModules, VarPercentage = VarPercentage,
                       random_seeds = random_seeds, convergence_cutoff = convergence_cutoff)
    RegulatorInfo = CreateRegulatorData(MA_matrix = MA_matrix_Var, CNV_matrix = CNV_matrix, MET_matrix = MET_matrix,
                                        Driver_list = Driver_list, PvalueThreshold = PvalueThreshold, RsquareThreshold = RsquareThreshold, method = method)
    if (length(RegulatorInfo) > 1) {
        RegulatorData = RegulatorInfo$RegulatorData
        Alterations = RegulatorInfo$Alterations
        return(list(MA_matrix_Var = MA_matrix_Var, RegulatorData = RegulatorData, RegulatorAlterations = Alterations,
                    ModuleMembership = Clusters, Parameters = Parameters, NrCores = NrCores))
    }
}


#' AMARETTO_Run
#' Function to run AMARETTO, a statistical algorithm to identify cancer drivers by integrating a variety of omics data from cancer and normal tissue.
#' @param AMARETTOinit List output from AMARETTO_Initialize().
#' @return result
#' @importFrom doParallel registerDoParallel
#' @importFrom glmnet cv.glmnet
#' @examples
#' data('ProcessedDataLIHC')
#' AMARETTOinit <- AMARETTO_Initialize(ProcessedData = ProcessedDataLIHC,
#'                                     NrModules = 2, VarPercentage = 50)
#' AMARETTOresults <- AMARETTO_Run(AMARETTOinit)
#' @export
AMARETTO_Run <- function(AMARETTOinit) {
    if (length(AMARETTOinit) == 0) {
        cat("For give cancer site no drivers were find during the initialization step of AMARETTO")
    } else {
        if (nrow(AMARETTOinit$RegulatorData) == 1) {
            cat("For give cancer site only one driver is detected. AMARETTO cannot be run with less than two drivers.\n")
        } else {
            cat("Running AMARETTO on", length(rownames(AMARETTOinit$MA_matrix_Var)), "genes and", length(colnames(AMARETTOinit$MA_matrix_Var)), "samples.\n")
            cat("\tStopping if less then", AMARETTOinit$Parameters$convergence_cutoff * length(rownames(AMARETTOinit$MA_matrix_Var)), "genes reassigned.\n")
            result = AMARETTO_LarsenBased(AMARETTOinit$MA_matrix_Var, AMARETTOinit$ModuleMembership, AMARETTOinit$RegulatorData,
                                          AMARETTOinit$Parameters, AMARETTOinit$NrCores)
            result$ModuleData = AMARETTO_CreateModuleData(AMARETTOinit, result)
            result$RegulatoryProgramData = AMARETTO_CreateRegulatorPrograms(AMARETTOinit, result)
            return(result)
        }
    }
}

#' AMARETTO_EvaluateTestSet
#'
#' Code to evaluate AMARETTO on a new gene expression test set. Uses output from AMARETTO_Run() and CreateRegulatorData().
#' @param AMARETTOresults AMARETTO output from AMARETTO_Run().
#' @param MA_Data_TestSet Gene expression matrix from a test set (that was not used in AMARETTO_Run()).
#' @param RegulatorData_TestSet Test regulator data from CreateRegulatorData().
#'
#' @return result
#' @export
#'
#' @examples
#' data('ProcessedDataLIHC')
#' AMARETTOinit <- AMARETTO_Initialize(ProcessedData = ProcessedDataLIHC,
#'                                     NrModules = 2, VarPercentage = 50)
#'
#' AMARETTOresults <- AMARETTO_Run(AMARETTOinit)
#' AMARETTOtestReport <- AMARETTO_EvaluateTestSet(AMARETTOresults = AMARETTOresults,
#'                                                MA_Data_TestSet = AMARETTOinit$MA_matrix_Var,
#'                                                RegulatorData_TestSet = AMARETTOinit$RegulatorData)
AMARETTO_EvaluateTestSet <- function(AMARETTOresults = AMARETTOresults, MA_Data_TestSet = MA_Data_TestSet, RegulatorData_TestSet = RegulatorData_TestSet) {
    nrSamples = ncol(MA_Data_TestSet)
    RegulatorNames = rownames(RegulatorData_TestSet)
    stats = mat.or.vec(AMARETTOresults$NrModules, 9)
    Rsquare = mat.or.vec(AMARETTOresults$NrModules,1)
    RsquareAjusted = mat.or.vec(AMARETTOresults$NrModules, 1)
    modules <- list()
    for (i in seq_len(AMARETTOresults$NrModules)) {
        currentRegulators = RegulatorNames[which(AMARETTOresults$RegulatoryPrograms[i,] != 0)]
        nrPresentRegulators = sum((rownames(RegulatorData_TestSet) %in% currentRegulators))
        currentPresentRegulators = (currentRegulators %in% rownames(RegulatorData_TestSet))
        stats[i, 1] = nrPresentRegulators
        stats[i, 2] = length(currentRegulators)
        currentClusterGenes = AMARETTOresults$AllGenes[which(AMARETTOresults$ModuleMembership[,1] == i)]
        nrPresentClusterGenes = sum((rownames(MA_Data_TestSet) %in% currentClusterGenes))
        stats[i, 3] = nrPresentClusterGenes
        stats[i, 4] = length(currentClusterGenes)
        stats[i, 5] = stats[i, 3]/stats[i, 4] * 100
        currentWeights = AMARETTOresults$RegulatoryPrograms[i,which(AMARETTOresults$RegulatoryPrograms[i,] != 0)]
        totalWeights = sum(abs(currentWeights))
        presentWeights = currentWeights[currentPresentRegulators]
        presentRegulators = currentRegulators[currentPresentRegulators]
        totalWeightsPercentage = sum(abs(presentWeights))/totalWeights * 100
        modules[[i]] = intersect(currentClusterGenes,rownames(MA_Data_TestSet))
        if (nrPresentRegulators > 0) {
            predictions = (t(RegulatorData_TestSet[presentRegulators, , drop = FALSE])) %*% (presentWeights)
            # need to make sure that the first argument remains a matrix.
            predictions = data.matrix(predictions)
            if (length(modules[[i]]) != 0) {
                if (length(currentClusterGenes) > 1) {
                  outcome = colMeans(MA_Data_TestSet[currentClusterGenes,])
                } else {
                  outcome = MA_Data_TestSet[currentClusterGenes,]
                }
                residuals = predictions - outcome
                SStot = sum((outcome - mean(outcome))^2)
                SSres = sum((predictions - outcome)^2)
                Rsquare[i] = 1 - (SSres/SStot)
                RsquareAjusted[i] = Rsquare[i] - (nrPresentRegulators/(nrSamples - 1 - nrPresentRegulators)) * (1 - Rsquare[i])
                MSE = (1/nrSamples) * sum((predictions - outcome)^2)
                stats[i, 6] = totalWeightsPercentage
                stats[i, 7] = Rsquare[i]
                stats[i, 8] = RsquareAjusted[i]
                stats[i, 9] = MSE
            } else {
                stats[i, 6] = totalWeightsPercentage
                stats[i, 7] = 0
                stats[i, 8] = 0
                stats[i, 9] = 0
            }
        } else {
            stats[i, 6] = 0
            stats[i, 7] = 0
            stats[i, 8] = 0
            stats[i, 9] = 0
        }
    }
    dimnames(stats) <- list(rownames(stats, do.NULL = FALSE, prefix = "Module_"),
                            c("nrPresReg", "nrTotalReg", "nrPresGen", "nrTotGen", "percPresGen", "percWeightPresent", "Rsquare", "RsquareAdjusted", "MSE"))
    return(stats)
}
gevaertlab/AMARETTO documentation built on April 6, 2023, 2:43 p.m.