R/BaseCountNormalization.R

###########################################################################/**
# @RdocClass BaseCountNormalization
#
# @title "The BaseCountNormalization class"
#
# \description{
#  @classhierarchy
#
#  This class represents a normalization method that corrects for systematic
#  effects in the probe intensities due to differences in the number of
#  A, C, G, and T:s in the probe sequences.
# }
#
# @synopsis
#
# \arguments{
#   \item{...}{Arguments passed to the constructor of
#     @see "AbstractProbeSequenceNormalization".}
#   \item{model}{A @character string specifying the model used to fit
#     the base-count effects.}
#   \item{bootstrap}{If @TRUE, the model fitting is done by bootstrap in
#     order to save memory.}
# }
#
# \section{Fields and Methods}{
#  @allmethods "public"
# }
#
# \section{Requirements}{
#   This class requires that an aroma probe sequence file is available
#   for the chip type.
# }
#
# @author "HB"
#*/###########################################################################
setConstructorS3("BaseCountNormalization", function(..., model=c("robustSmoothSpline", "lm"), bootstrap=FALSE) {
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Validate arguments
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Argument 'model':
  model <- match.arg(model)

  # Argument 'bootstrap':
  bootstrap <- Arguments$getLogical(bootstrap)

  if (bootstrap && model == "lm") {
    throw("Bootstrapping for the 'lm' model is not implemented.")
  }


  extend(AbstractProbeSequenceNormalization(...), "BaseCountNormalization",
    .model = model,
    .bootstrap=bootstrap,
    .chunkSize=as.integer(2.5e6),
    .maxIter=as.integer(50),
    .acc=0.005
  )
})


setMethodS3("getAsteriskTags", "BaseCountNormalization", function(this, collapse=NULL, ...) {
  tags <- NextMethod("getAsteriskTags", collapse=NULL)

  # Add model tag?
  model <- this$.model
  if (model != "robustSmoothSpline") {
    tags <- c(tags, model)
  }

  # Add bootstrap tag?
  if (this$.bootstrap) {
    bootstrapTag <- "B"
    tags <- c(tags, bootstrapTag)
  }

  # Collapse?
  tags <- paste(tags, collapse=collapse)

  tags
}, protected=TRUE)



setMethodS3("getParameters", "BaseCountNormalization", function(this, ...) {
  # Get parameters from super class
  params <- NextMethod("getParameters")

  params <- c(params, list(
    model = this$.model,
    bootstrap = this$.bootstrap,
    chunkSize = this$.chunkSize,
    maxIter = this$.maxIter,
    acc = this$.acc
  ))

  params
}, protected=TRUE)



setMethodS3("getDesignMatrix", "BaseCountNormalization", function(this, cells=NULL, model=NULL, ..., force=FALSE, cache=TRUE, verbose=FALSE) {
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Validate arguments
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Argument 'cells':
  if (is.null(cells)) {
  } else {
    # Validated below...
  }

  # Argument 'verbose':
  verbose <- Arguments$getVerbose(verbose)
  if (verbose) {
    pushState(verbose)
    on.exit(popState(verbose))
  }

  verbose && enter(verbose, "Retrieving design matrix")
  verbose && cat(verbose, "Cells:")
  verbose && str(verbose, cells)

  verbose && cat(verbose, "Model: ", model)

  # Retrieve nucleotide counts as raw values whenever
  # possible to save memory.
  if (model == "lm") {
    mode <- "integer"
    oneValue <- as.integer(1)
  } else if (model == "robustSmoothSpline") {
    mode <- "raw"
    oneValue <- as.raw(1)
  }


  verbose && enter(verbose, "Locating probe-sequence annotation data")
  # Locate AromaCellSequenceFile holding probe sequences
  acs <- getAromaCellSequenceFile(this, verbose=less(verbose, 5))
  verbose && exit(verbose)


  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Check file cache
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  key <- list(
    method="getDesignMatrix", class=class(this[1]),
    cells=cells,
    model=model,
    acs=list(fullname=getFullName(acs))
  )

  dirs <- c("aroma.affymetrix", getChipType(acs))
  if (!force) {
    X <- loadCache(key=key, dirs=dirs)
    if (!is.null(X)) {
      verbose && cat(verbose, "Cached results found.")
      verbose && exit(verbose)
      return(X)
    }
  }


  verbose && enter(verbose, "Count nucleotide bases for *all* cells")
  verbose && cat(verbose, "Chip type: ", getChipType(acs))
  designMatrix <- countBases(acs, mode=mode, verbose=less(verbose, 5))
  # Not needed anymore
  acs <- NULL
  verbose && cat(verbose, "Nucleotide base counts:")
  verbose && str(verbose, designMatrix)
  verbose && cat(verbose, "object.size(designMatrix): ",
                                            object.size(designMatrix))
  verbose && exit(verbose)

  if (!is.null(cells)) {
    verbose && enter(verbose, "Extracing sequences of interest")
    verbose && cat(verbose, "Cells:")
    verbose && str(verbose, cells)
    nbrOfCells <- nrow(designMatrix)
    cells <- Arguments$getIndices(cells, max=nbrOfCells)
    designMatrix <- designMatrix[cells,,drop=FALSE]
    # Not needed anymore
    cells <- NULL

    # Garbage collect
    gc <- gc()
    verbose && print(verbose, gc)

    verbose && cat(verbose, "object.size(designMatrix): ",
                                            object.size(designMatrix))
    verbose && exit(verbose)
  }

  designMatrix[,1] <- oneValue
  verbose && cat(verbose, "Design matrix:")
  verbose && str(verbose, designMatrix)
  verbose && cat(verbose, "object.size(designMatrix): ",
                                            object.size(designMatrix))

  # Garbage collect
  gc <- gc()
  verbose && print(verbose, gc)

  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Cache results?
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  if (cache) {
    saveCache(X, key=key, dirs=dirs)
  }

  verbose && exit(verbose)

  designMatrix
}, private=TRUE)



setMethodS3("fitOne", "BaseCountNormalization", function(this, df, ..., verbose=FALSE) {
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Local functions
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Arguments 'y' and 'X' must not contain NAs.
  fitBaseCounts <- function(y, X, subset=NULL, model=c("robustSmoothSpline", "lm"), ...) {
    # Argument 'y':

    # Argument 'X':
    if (nrow(X) != length(y)) {
      throw("The number of rows in design matrix 'X' does not match the number of observations in 'y': ", nrow(X), " != ", length(y))
    }

    if (!is.null(subset)) {
      y <- y[subset]
      X <- X[subset,,drop=FALSE]
      gc <- gc()
    }

    # Argument 'model':
    model <- match.arg(model)

    if (model == "lm") {
      requireNamespace("stats") || throw("Package not loaded: stats")
      lm.fit <- stats::lm.fit

      fitFcn <- function(X, y, ...) {
        fit <- lm.fit(x=X, y=y, ...)
        # Remove redundant parameters
        for (ff in c("residuals", "effects", "fitted.values", "qr")) {
          fit[[ff]] <- NULL
        }
        fit
      }
    } else if (model == "robustSmoothSpline") {
      fitFcn <- function(X, y, ...) {
        fits <- list()
        for (cc in 1:ncol(X)) {
          # Fit effect of term #cc
          if (cc == 1) {
            mu <- median(y)
            fit <- list(mu=mu)
          } else {
            # Note: 'X' may be a "raw" matrix (to save memory)
            Xcc <- as.double(X[,cc])
            fit <- .robustSmoothSpline(x=Xcc, y=y, ...)
##            # Remove redundant parameters (although really small here)
##            for (ff in c("x", "y", "w", "yin", "lev")) {
##              fit[[ff]] <- NULL
##            }
            mu <- predict(fit, x=Xcc)$y
            # Not needed anymore
            Xcc <- NULL
          }

          # Remove the effect of term #cc
          y <- y - mu
          # Not needed anymore
          mu <- NULL

          fits[[cc]] <- fit
          # Not needed anymore
          fit <- NULL
        }
        fits
      }
    }

    fit <- fitFcn(X, y)

    fit
  } # fitBaseCounts()


  fitSubset <- function(df, cells=NULL, ..., verbose) {
    verbose && enter(verbose, "Reading signals to fit")
    verbose && cat(verbose, "Cells:")
    verbose && str(verbose, cells)
    y <- extractMatrix(df, cells=cells, drop=TRUE, verbose=less(verbose, 10))
    verbose && exit(verbose)

    if (shift != 0) {
      verbose && enter(verbose, "Shifting signals")
      verbose && cat(verbose, "Shift: ", shift)
      y <- y + shift
      verbose && exit(verbose)
    }

    verbose && enter(verbose, "Log2 transforming signals")
    y <- log2(y)
    verbose && cat(verbose, "Target log2 probe signals:")
    verbose && str(verbose, y)
    verbose && exit(verbose)

    verbose && enter(verbose, "Identify finite data points")
    n <- length(y)
    # Fit only finite subset
    keep <- which(is.finite(y))
    y <- y[keep]
    cells <- cells[keep]
    # Not needed anymore
    keep <- NULL
    n2 <- length(y)
    verbose && printf(verbose, "Removed %d (%.4f%%) out of %d non-finite data points: ", n-n2, 100*(n-n2)/n, n)
    gc <- gc()
    verbose && exit(verbose)

    verbose && enter(verbose, "Fitting base-count model")
    X <- getDesignMatrix(this, cells=cells, model=model, verbose=less(verbose, 5))
    # Not needed anymore
    cells <- NULL
    verbose && cat(verbose, "Design matrix:")
    verbose && str(verbose, X)
    gc <- gc()
    verbose && print(verbose, gc)
    fit <- fitBaseCounts(y, X=X, model=model, verbose=less(verbose, 5))
    # Not needed anymore
    y <- X <- NULL
    verbose && print(verbose, fit)
    verbose && exit(verbose)

    fit
  } # fitSubset()


  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Validate arguments
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Argument 'df':
  df <- Arguments$getInstanceOf(df, "AffymetrixCelFile")

  # Argument 'verbose':
  verbose <- Arguments$getVerbose(verbose)
  if (verbose) {
    pushState(verbose)
    on.exit(popState(verbose))
  }


  verbose && enter(verbose, "Fitting normalization function for one array")
  verbose && cat(verbose, "Full name: ", getFullName(df))


  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Getting algorithm parameters
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  verbose && enter(verbose, "Getting algorithm parameters")
  params <- getParameters(this, expand=TRUE, verbose=less(verbose, 5))
  gc <- gc()
  verbose && print(verbose, gc)

  units <- params$unitsToFit
  verbose && cat(verbose, "Units:")
  verbose && str(verbose, units)
  cells <- params$cellsToFit
  stratifyBy <- params$typesToFit
  verbose && cat(verbose, "stratifyBy: ", stratifyBy)
  verbose && cat(verbose, "Cells:")
  verbose && str(verbose, cells)
  shift <- params$shift
  verbose && cat(verbose, "Shift: ", shift)

  # Other model parameters
  model <- params$model
  verbose && cat(verbose, "Model: ", model)
  bootstrap <- params$bootstrap
  chunkSize <- params$chunkSize
  maxIter <- params$maxIter
  acc <- params$acc
  verbose && exit(verbose)

  nbrOfCells <- length(cells)

  # Is bootstrapping necessary?
  if (chunkSize >= nbrOfCells) {
    verbose && cat(verbose, "Bootstrapping not really needed.")
    bootstrap <- FALSE
  }

  # Bootstrap?
  if (bootstrap) {
    verbose && enter(verbose, "Fitting model using bootstrap")

    verbose && cat(verbose, "Max number of iterations: ", maxIter)
    verbose && cat(verbose, "Accuracy threshold: ", acc)

    bb <- 0
    fit <- NULL
    deltaMax <- Inf
    while (deltaMax > acc && bb < maxIter) {
      bb <- bb + 1
      verbose && enter(verbose, sprintf("Bootstrap iteration #%d", as.integer(bb)))

      verbose && enter(verbose, "Fitting model to subset of data")
      verbose && cat(verbose, "Chunk size: ", chunkSize)
      subset <- sample(1:nbrOfCells, size=chunkSize)
      cellsChunk <- cells[subset]
      # Not needed anymore
      subset <- NULL
      cellsChunk <- sort(cellsChunk)
      verbose && cat(verbose, "Cells:")
      verbose && str(verbose, cellsChunk)
      fitB <- fitSubset(df, cells=cellsChunk, verbose=verbose)
      # Not needed anymore
      cellsChunk <- NULL
      verbose && exit(verbose)

      verbose && enter(verbose, "Updating estimates")
      if (is.null(fit)) {
        fit <- fitB
      } else {
        # Update parameters for each subfit
        deltaMax <- 0
        for (kk in seq_along(fit)) {
          fitKK <- fit[[kk]]

          fitBKK <- fitB[[kk]]
          if (kk == 1) {
            # Average mean estimates
            fitKK$mu <- mean(c(fitKK$mu, fitBKK$mu), na.rm=TRUE)
          } else {
            # Average spline estimates
            # Common x:s
            x <- sort(unique(c(fitKK$x, fitBKK$x)))
            # Predict y:s based on bootstrap pool and new fit
            y <- fitKK$y
            yB <- predict(fitBKK, x=x)$y
            # Weight them together
            yB <- ((bb-1)*y + yB)/bb
            delta <- mean(abs(y - yB), na.rm=TRUE)
            deltaMax <- max(c(deltaMax, delta), na.rm=TRUE)
            fitKK <- list(x=x, y=yB, delta=delta)
            # Not needed anymore
            x <- y <- yB <- delta <- NULL
          }

          fit[[kk]] <- fitKK

          # Not needed anymore
          fitKK <- fitBKK <- NULL
        } # for (kk ...)
      }
      # Not needed anymore
      fitB <- NULL
      verbose && exit(verbose)

      verbose && printf(verbose, "deltaMax < threshold: %.6f < %.6f\n", deltaMax, acc)
      verbose && printf(verbose, "iteration < maxIter: %d < %d\n", as.integer(bb), as.integer(maxIter))

      verbose && exit(verbose)
    } # while()
    converged <- (deltaMax <= acc)

    verbose && enter(verbose, "Creating final fit")
    for (kk in seq(from=2, to=length(fit))) {
      fitKK <- fit[[kk]]
      fitKK <- .robustSmoothSpline(x=fitKK$x, y=fitKK$y)
      fit[[kk]] <- fitKK
    }
    verbose && exit(verbose)

    fit$bootstrap <- list(iter=as.integer(bb), maxIter=maxIter, converged=converged)

    verbose && exit(verbose)
  } else {
    fit <- fitSubset(df, cells=cells, verbose=verbose)
  } # if (bootstrap)

  verbose && exit(verbose)

  fit
}, protected=TRUE)


setMethodS3("predictOne", "BaseCountNormalization", function(this, fit, ..., verbose=FALSE) {
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Local functions
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Arguments 'y' and 'X' must not contain NAs.
  predictBaseCounts <- function(fit, X, model=c("robustSmoothSpline", "lm"), ...) {
    # Argument 'model':
    model <- match.arg(model)

    if (model == "lm") {
      predictFcn <- function(fit, X, ...) {
        coefs <- coefficients(fit)
        coefs <- as.matrix(coefs)
        yPred <- X %*% coefs
        yPred
      } # predictFcn()
    } else if (model == "robustSmoothSpline") {
      predictFcn <- function(fit, X, ...) {
        fits <- fit
        yPred <- double(nrow(X))
        for (cc in 1:ncol(X)) {
          fit <- fits[[cc]]
          if (cc == 1) {
            mu <- fit$mu
          } else {
            mu <- rep(NA_real_, times=nrow(X))
            if (mode(X) == "raw") {
              # Note: 'X' may be a "raw" matrix (to save memory)
              idxs <- which(X[,cc] != as.raw(255))
            } else {
              idxs <- which(is.finite(X[,cc]))
            }
            x <- as.double(X[idxs,cc])
            mu[idxs] <- predict(fit, x=x)$y
            # Not needed anymore
            idxs <- x <- NULL
          }
          str(mu)
          yPred <- yPred + mu
          # Not needed anymore
          fit <- mu <- NULL
        } # for (cc ...)
        yPred
      } # predictFcn()
    }

    yPred <- predictFcn(fit, X)

    yPred
  } # predictBaseCounts()


  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Validate arguments
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Argument 'verbose':
  verbose <- Arguments$getVerbose(verbose)
  if (verbose) {
    pushState(verbose)
    on.exit(popState(verbose))
  }


  verbose && enter(verbose, "Predicting model for one array")

  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  # Getting algorithm parameters
  # - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - - -
  verbose && enter(verbose, "Getting algorithm parameters")
  params <- getParameters(this, expand=TRUE, verbose=less(verbose, 5))
  gc <- gc()
  verbose && print(verbose, gc)

  units <- params$unitsToUpdate
  verbose && cat(verbose, "Units:")
  verbose && str(verbose, units)
  cells <- params$cellsToUpdate
  stratifyBy <- params$typesToUpdate
  verbose && cat(verbose, "stratifyBy: ", stratifyBy)
  verbose && cat(verbose, "Cells:")
  verbose && str(verbose, cells)
  shift <- params$shift
  verbose && cat(verbose, "Shift: ", shift)

  # Other model parameters
  model <- params$model
  verbose && cat(verbose, "Model: ", model)
  bootstrap <- params$bootstrap
  chunkSize <- params$chunkSize
  maxIter <- params$maxIter
  acc <- params$acc
  verbose && exit(verbose)

  nbrOfCells <- length(cells)

  verbose && enter(verbose, "Predicting mean log2 probe signals")
  X <- getDesignMatrix(this, cells=cells, model=model, verbose=less(verbose, 5))
  # Not needed anymore
  cells <- NULL
  verbose && cat(verbose, "Design matrix:")
  verbose && str(verbose, X)

  mu <- predictBaseCounts(fit, X=X, model=model)
  # Not needed anymore
  fit <- X <- NULL
  verbose && str(verbose, "mu:")
  verbose && str(verbose, mu)
  verbose && exit(verbose)

  # Sanity check
  if (length(mu) != nbrOfCells) {
    throw("Internal error. Number of estimated means does not match the number of cells to be updated: ", length(mu), " != ", nbrOfCells)
  }

  # Garbage collection
  gc <- gc()
  verbose && print(verbose, gc)

  verbose && exit(verbose)

  mu
}, protected=TRUE)

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aroma.affymetrix documentation built on July 18, 2022, 5:07 p.m.