2019-05-31 22:13:24 +00:00
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#' Competing Risk Function Combiner
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#'
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#' Creates a CompetingRiskFunctionCombiner rJava object, which is used
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#' internally for constructing a forest. The forest uses it when creating
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#' predictions to average the cumulative incidence curves, cause-specific
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#' cumulative hazard functions, and Kaplan-Meier curves generated by each tree
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#' into individual functions.
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#'
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#' The user only needs to pass this object into \code{\link{train}} as the
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#' \code{forestResponseCombiner} parameter.
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#'
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2019-07-23 18:55:46 +00:00
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#' @param events A vector of integers specifying which competing risks event
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2019-05-31 22:13:24 +00:00
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#' functions should be processed. This should correspond to all of the
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#' competing risk events that can occur, from 1 to the largest number.
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#' @param times An optional numeric vector that forces the output functions to
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#' only update at these time points. Pre-specifying the values can result in
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#' faster performance when predicting, however if the times are not exhaustive
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#' then the resulting curves will not update at that point (they'll be flat).
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#' If left blank, the package will default to using all of the time points.
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#' @export
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#' @examples
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#' T1 <- rexp(1000)
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#' T2 <- rweibull(1000, 1, 2)
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#' C <- rexp(1000)
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#'
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#' u <- round(pmin(T1, T2, C))
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#' # ...
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#'
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#' forestCombiner <- CR_FunctionCombiner(1:2) # there are two possible events
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#' # or, since we know that u is always an integer
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#' forestCombiner <- CR_FunctionCombiner(1:2, 0:max(u))
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CR_FunctionCombiner <- function(events, times = NULL){
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# need to first change events into array of int
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eventArray <- .jarray(events, "I")
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if(is.null(times)){
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timeArray <- .jnull(class="[D")
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}
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else{
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timeArray <- .jarray(as.numeric(times), "D")
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}
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javaObject <- .jnew(.class_CompetingRiskFunctionCombiner, eventArray, timeArray)
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2019-11-14 01:07:58 +00:00
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javaObject <- .jcast(javaObject, .class_ForestResponseCombiner)
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2019-05-31 22:13:24 +00:00
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combiner <- list(javaObject=javaObject,
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call=match.call(),
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events=events,
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outputClass="CompetingRiskFunctions",
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convertToRFunction=convertCompetingRiskFunctions)
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class(combiner) <- "ResponseCombiner"
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return(combiner)
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}
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#' Competing Risk Response Combiner
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#'
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#' Creates a CompetingRiskResponseCombiner rJava object, which is used
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#' internally for constructing a forest. It is used when each tree in the forest
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#' is constructed, as it combines response level information (u & delta) into
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#' functions such as cumulative incidence curves, cause-specific cumulative
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#' hazard functions, and an overall Kaplan-Meier curve. This combination is done
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#' for each terminal node for each tree.
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#'
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#' The user only needs to pass this object into \code{\link{train}} as the
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#' \code{nodeResponseCombiner} parameter.
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#'
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2019-07-23 18:55:46 +00:00
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#' @param events A vector of integers specifying which competing risks event
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2019-05-31 22:13:24 +00:00
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#' functions should be processed. This should correspond to all of the
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#' competing risk events that can occur, from 1 to the largest number.
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#' @export
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#' @examples
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#' T1 <- rexp(1000)
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#' T2 <- rweibull(1000, 1, 2)
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#' C <- rexp(1000)
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#'
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#' u <- round(pmin(T1, T2, C))
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#' # ...
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#'
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#' forestCombiner <- CR_ResponseCombiner(1:2) # there are two possible events
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CR_ResponseCombiner <- function(events){
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# need to first change events into array of int
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eventArray <- .jarray(events, "I")
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javaObject <- .jnew(.class_CompetingRiskResponseCombiner, eventArray)
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javaObject <- .jcast(javaObject, .class_ResponseCombiner)
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combiner <- list(javaObject=javaObject,
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call=match.call(),
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outputClass="CompetingRiskFunctions",
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convertToRFunction=convertCompetingRiskFunctions
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)
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class(combiner) <- "ResponseCombiner"
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return(combiner)
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}
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#' Competing Risk Split Finders
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#'
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#' Creates a SplitFinder rJava Java object, which is then used internally when
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#' training a competing risk random forest. The split finder is responsible for
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#' finding the best split according to the logic of the split finder.
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#'
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#' These split finders require that the response be \code{\link{CR_Response}}.
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#'
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#' The user only needs to pass this object into \code{\link{train}} as the
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#' \code{splitFinder} parameter.
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#'
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#' @return An internal rJava Java object used in \code{\link{train}}.
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#' @note The Gray log-rank split finder \strong{requires} that the response
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#' include the censoring time.
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#' @param events A vector of integers specifying which competing risk events
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#' should be focused on when determining differences. Currently, equal weights
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#' will be assigned to all included groups.
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#' @param eventsOfFocus The split finder will only maximize differences
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#' between the two groups with respect to these specified events. Default is
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#' \code{NULL}, which will cause the split finder to focus on all events
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#' included in \code{events}.
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#' @details Roughly speaking, the Gray log-rank split finder looks at
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#' differences between the cumulative incidence functions of the two groups,
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#' while the plain log-rank split finder look at differences between the
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#' cause-specific hazard functions. See the references for a more detailed
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#' discussion.
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#' @references Kogalur, U., Ishwaran, H. Random Forests for Survival,
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#' Regression, and Classification: A Parallel Package for a General
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#' Implemention of Breiman's Random Forests: Theory and Specifications. URL
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#' https://kogalur.github.io/randomForestSRC/theory.html#section8.2
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#'
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#' Ishwaran, H., et. al. (2014) Random survival forests for competing risks,
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#' Biostatistics (2014), 15, 4, pp. 757–773
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#'
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#' @name CompetingRiskSplitFinders
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NULL
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#' @rdname CompetingRiskSplitFinders
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#' @export
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#' @examples splitFinder <- GrayLogRankSplitFinder(1:2)
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GrayLogRankSplitFinder <- function(events, eventsOfFocus = NULL){
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return(java.LogRankSplitFinder(events, eventsOfFocus, .class_GrayLogRankSplitFinder, match.call()))
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}
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#' @rdname CompetingRiskSplitFinders
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#' @export
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#' @examples splitFinder <- LogRankSplitFinder(1:2)
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LogRankSplitFinder <- function(events, eventsOfFocus = NULL){
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return(java.LogRankSplitFinder(events, eventsOfFocus, .class_LogRankSplitFinder, match.call()))
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}
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# Internal function for creating a competing risk split finder
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java.LogRankSplitFinder <- function(events, eventsOfFocus, java.class, call = match.call()){
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events <- sort(events)
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if(is.null(eventsOfFocus)){
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eventsOfFocus <- events
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}
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# Check the events
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if(any(diff(events) != 1) | min(events) != 1){
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stop("The events provided for creating a log rank split finder do not run from 1 to the maximum")
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}
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if(any(!(eventsOfFocus %in% events))){
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stop("There's an event of focus for the log rank split finder that's not included in the events vector")
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}
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events <- .jarray(as.integer(events))
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eventsOfFocus <- .jarray(as.integer(eventsOfFocus))
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javaObject <- .jnew(java.class, eventsOfFocus, events)
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javaObject <- .jcast(javaObject, .class_SplitFinder)
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splitFinder <- list(javaObject=javaObject, call=call)
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class(splitFinder) <- "SplitFinder"
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return(splitFinder)
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}
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