#' @title Potential Impact Fraction
#'
#' @description Function for estimating the Potential Impact Fraction \code{pif}
#' from a cross-sectional sample of the exposure \code{X} with known Relative
#' Risk function \code{rr} with parameter \code{theta}, where the Potential
#' Impact Fraction is given by: \deqn{ PIF =
#' \frac{E_X\left[rr(X;\theta)\right] -
#' E_X\left[rr\big(\textrm{cft}(X);\theta\big)\right]}
#' {E_X\left[rr(X;\theta)\right]}. }{ PIF = (mean(rr(X; theta)) -
#' mean(rr(cft(X);theta)))/mean(rr(X; theta)) .}
#'
#' @param X Random sample (\code{data.frame}) which includes exposure
#' and covariates or sample \code{mean} if \code{"approximate"} method is
#' selected.
#'
#' @param thetahat Asymptotically consistent or Fisher consistent
#' estimator (\code{vector}) of \code{theta} for the Relative
#' Risk function.
#'
#' @param rr \code{function} for Relative Risk which uses parameter
#' \code{theta}. The order of the parameters should be \code{rr(X, theta)}.
#'
#'
#' \strong{**Optional**}
#'
#' @param cft Function \code{cft(X)} for counterfactual. Leave empty for
#' the Population Attributable Fraction \code{\link{paf}} where
#' counterfactual is that of a theoretical minimum risk exposure \code{X0}
#' such that \code{rr(X0,theta) = 1}.
#'
#' @param weights Normalized survey \code{weights} for the sample \code{X}.
#'
#' @param method Either \code{"empirical"} (default), \code{"kernel"} or
#' \code{"approximate"}.
#'
#' @param Xvar Variance of exposure levels (for \code{"approximate"}
#' method).
#'
#' @param deriv.method.args \code{method.args} for
#' \code{\link[numDeriv]{hessian}} (for \code{"approximate"} method).
#'
#' @param deriv.method \code{method} for \code{\link[numDeriv]{hessian}}.
#' Don't change this unless you know what you are doing (for
#' \code{"approximate"} method).
#'
#' @param ktype \code{kernel} type: \code{"gaussian"},
#' \code{"epanechnikov"}, \code{"rectangular"}, \code{"triangular"},
#' \code{"biweight"}, \code{"cosine"}, \code{"optcosine"} (for \code{"kernel"}
#' method). Additional information on kernels in \code{\link[stats]{density}}.
#'
#' @param bw Smoothing bandwith parameter (for
#' \code{"kernel"} method) from \code{\link[stats]{density}}. Default
#' \code{"SJ"}.
#'
#' @param adjust Adjust bandwith parameter (for \code{"kernel"}
#' method) from \code{\link[stats]{density}}.
#'
#' @param n Number of equally spaced points at which the density (for
#' \code{"kernel"} method) is to be estimated (see
#' \code{\link[stats]{density}}).
#'
#' @param check_integrals Check that counterfactual of theoretical minimum risk
#' exposure and relative risk's expected values are well defined for this
#' scenario.
#'
#' @param check_exposure Check exposure \code{X} is positive and numeric.
#'
#' @param check_rr Check that Relative Risk function \code{rr} equals
#' \code{1} when evaluated at \code{0}.
#'
#' @param is_paf Boolean forcing evaluation of \code{\link{paf}}. This forces
#' the \code{pif} function ignore the inputed counterfactual and set the
#' relative risk to the theoretical minimum risk value of \code{1}.
#'
#' @return pif Estimate of Potential Impact Fraction.
#'
#' @author Rodrigo Zepeda-Tello \email{rzepeda17@gmail.com}
#' @author Dalia Camacho-GarcĂa-FormentĂ \email{daliaf172@gmail.com}
#'
#' @note For more information on kernels see \code{\link[stats]{density}}.
#'
#' @note Do not use the \code{$} operator when using \code{"approximate"}
#' \code{method}.
#'
#' @details The \code{"empirical"} method estimates the \code{pif} by \deqn{ PIF
#' = 1 - \frac{\sum\limits_{i=1}^{n}w_i rr\big(cft(X_i);
#' \theta\big)}{\sum\limits_{i=1}^{n} w_i rr(X_i; \theta)}. }{ PIF = 1 -
#' weighted.mean(rr(cft(X), theta), weights)/ weighted.mean(rr(cft(X), theta),
#' weights). }
#'
#' The \code{"kernel"} method approximates the \code{\link[stats]{density}} of
#' the exposure \code{X} and estimates its expected value from that
#' approximation:
#' \deqn{ PIF = 1 -
#' \frac{\int\limits_{-\infty}^{\infty} rr\big(cft(X);\theta \big) \hat{f}(x) dx
#' }{
#' \int\limits_{-\infty}^{\infty} rr\big(cft(X);\theta \big) \hat{f}(x) dx}.
#' }{
#' PIF = 1 - integrate(rr(cft(X), theta)*f(x))/integrate(rr(X, theta)*f(x)).
#' }
#'
#' The \code{"approximate"} method conducts a Laplace approximation of the \code{pif}.
#' Additional information on the methods is dicussed in the package's vignette:
#' \code{browseVignettes("pifpaf")}.
#'
#' In practice \code{"approximate"} method should be the last choice.
#' Simulations have shown that \code{"empirical"}'s convergence is faster than
#' \code{"kernel"} for most functions. In addition, the scope of
#' \code{"kernel"} is limited as it does not work with multivariate exposure
#' data \code{X}.
#'
#' @examples
#'
#' #Example 1: Exponential Relative Risk
#' #--------------------------------------------
#' set.seed(18427)
#' X <- data.frame(Exposure = rnorm(100,3,1))
#' thetahat <- 0.12
#' rr <- function(X, theta){exp(theta*X)}
#'
#' #Without specifying counterfactual pif matches paf
#' pif(X, thetahat, rr)
#' paf(X, thetahat, rr)
#'
#' #Same example with kernel method
#' pif(X, thetahat, rr, method = "kernel")
#'
#' #Same example with approximate method
#' Xmean <- data.frame(Exposure = mean(X[,"Exposure"]))
#' Xvar <- var(X[,"Exposure"])
#' pif(Xmean, thetahat, rr, method = "approximate", Xvar = Xvar)
#'
#' #Same example considering counterfactual of halving exposure
#' cft <- function(X){ 0.5*X }
#' pif(X, thetahat, rr, cft, method = "empirical")
#'
#' #Example 2: Linear Relative Risk
#' #--------------------------------------------
#' set.seed(18427)
#' X <- data.frame(Exposure = rbeta(100,3,1))
#' thetahat <- 0.12
#' rr <- function(X, theta){theta*X + 1}
#' cft <- function(X){ 0.5*X }
#' weights <- runif(100)
#' normalized_weights <- weights/sum(weights)
#' pif(X, thetahat, rr, cft, weights = normalized_weights)
#'
#' #Same example with more complex counterfactual that reduces
#' #only the values > 0.75 are halved
#' cft <- function(X){
#'
#' #Indentify the ones with "a lot" of exposure:
#' where_excess_exposure <- which(X[,"Exposure"] > 0.75)
#'
#' #Halve their exposure
#' X[where_excess_exposure, "Exposure"] <-
#' X[where_excess_exposure, "Exposure"]/2
#' return(X)
#' }
#' pif(X, thetahat, rr, cft, weights = normalized_weights)
#'
#'
#' #Example 3: Multivariate Linear Relative Risk
#' #--------------------------------------------
#' set.seed(18427)
#' X1 <- rnorm(100,4,1)
#' X2 <- rnorm(100,2,0.4)
#' X <- data.frame(Exposure = X1, Covariate = X2)
#' thetahat <- c(0.12, 0.03)
#'
#' #When creating relative risks and counterfactuals avoid using $ operator
#' #as it doesn't work under approximate method
#' rr_not <- function(X, theta){
#' exp(theta[1]*X$Exposure + theta[2]*X$Covariate)
#' }
#' rr_better <- function(X, theta){
#' exp(theta[1]*X[,"Exposure"] + theta[2]*X[,"Covariate"])
#' }
#'
#' #Creating a counterfactual.
#' cft <- function(X){
#' Y <- X
#' Y[,"Exposure"] <- 0.5*X[,"Exposure"]
#' Y[,"Covariate"] <- 1.1*X[,"Covariate"] + 1
#' return(Y)
#' }
#' pif(X, thetahat, rr_better, cft)
#'
#' #Same multivariate example for approximate method calculating
#' #mean and variance
#' Xmean <- data.frame(Exposure = mean(X$Exposure),
#' Covariate = mean(X$Covariate))
#' Xvar <- var(X)
#' pif(Xmean, thetahat, rr_better, method = "approximate", Xvar = Xvar)
#'
#' \dontrun{
#' #The one with $ operators doesn't work:
#' pif(Xmean, thetahat, rr_not, method = "approximate", Xvar = Xvar)
#' }
#' \dontrun{
#' #Warning: Multivariate cases cannot be evaluated with kernel method
#' pif(X, thetahat, rr_better, method = "kernel")
#' }
#'
#' #Example 4: Categorical Relative Risk & Exposure
#' #--------------------------------------------
#' set.seed(18427)
#' mysample <- sample(c("Normal","Overweight","Obese"), 100,
#' replace = TRUE, prob = c(0.4, 0.1, 0.5))
#' X <- data.frame(Exposure = mysample)
#'
#' thetahat <- c(1, 1.2, 1.5)
#'
#' #Categorical relative risk function
#' rr <- function(X, theta){
#'
#' #Create return vector with default risk of 1
#' r_risk <- rep(1, nrow(X))
#'
#' #Assign categorical relative risk
#' r_risk[which(X[,"Exposure"] == "Normal")] <- thetahat[1]
#' r_risk[which(X[,"Exposure"] == "Overweight")] <- thetahat[2]
#' r_risk[which(X[,"Exposure"] == "Obese")] <- thetahat[3]
#'
#' return(r_risk)
#' }
#'
#' pif(X, thetahat, rr, check_rr = FALSE)
#'
#' #Counterfactual of reducing all obesity to normality
#' cft <- function(X){
#' X[which(X[,"Exposure"] == "Obese"),] <- "Normal"
#' return(X)
#' }
#'
#' pif(X, thetahat, rr, cft, check_rr = FALSE)
#'
#' #Example 5: Categorical Relative Risk & continuous exposure
#' #----------------------------------------------------------
#' set.seed(18427)
#' BMI <- data.frame(Exposure = rlnorm(100, 3.1, sdlog = 0.1))
#'
#' #Theoretical minimum risk exposure is at 20kg/m^2 in borderline "Normal" category
#' BMI_adjusted <- BMI - 20
#'
#' thetahat <- c(Malnourished = 2.2, Normal = 1, Overweight = 1.8,
#' Obese = 2.5)
#'
#' rr <- function(X, theta){
#'
#' #Create return vector with default risk of 1
#' r_risk <- rep(1, nrow(X))
#'
#' #Assign categorical relative risk
#' r_risk[which(X[,"Exposure"] < 0)] <- theta[1] #Malnourished
#' r_risk[intersect(which(X[,"Exposure"] >= 0),
#' which(X[,"Exposure"] < 5))] <- theta[2] #Normal
#' r_risk[intersect(which(X[,"Exposure"] >= 5),
#' which(X[,"Exposure"] < 10))] <- theta[3] #Overweight
#' r_risk[which(X[,"Exposure"] >= 10)] <- theta[4] #Obese
#'
#' return(r_risk)
#' }
#'
#' #Counterfactual of everyone in normal range
#' cft <- function(bmi){
#' bmi <- data.frame(rep(2.5, nrow(bmi)), ncol = 1)
#' colnames(bmi) <- c("Exposure")
#' return(bmi)
#' }
#'
#' pif(BMI_adjusted, thetahat, rr, cft,
#' check_exposure = FALSE, method = "empirical")
#'
#'
#' #Example 6: Bivariate exposure and rr ("classical PAF")
#' #------------------------------------------------------------------
#' set.seed(18427)
#' mysample <- sample(c("Exposed","Unexposed"), 1000,
#' replace = TRUE, prob = c(0.1, 0.9))
#' X <- data.frame(Exposure = mysample)
#' theta <- c("Exposed" = 2.5, "Unexposed" = 1.2)
#' rr <- function(X, theta){
#'
#' #Create relative risk function
#' r_risk <- rep(1, nrow(X))
#'
#' #Assign values of relative risk
#' r_risk[which(X[,"Exposure"] == "Unexposed")] <- theta["Unexposed"]
#' r_risk[which(X[,"Exposure"] == "Exposed")] <- theta["Exposed"]
#'
#' return(r_risk)
#' }
#'
#' #Counterfactual of reducing the exposure in half of the individuals
#' cft <- function(X){
#'
#' #Find out which ones are exposed
#' Xexp <- which(X[,"Exposure"] == "Exposed")
#'
#' #Use only half of the exposed randomly
#' reduc <- sample(Xexp, length(Xexp)/2)
#'
#' #Unexpose those individuals
#' X[reduc, "Exposure"] <- "Unexposed"
#'
#' return(X)
#' }
#'
#' pif(X, theta, rr, cft)
#'
#' #Example 7: Continuous exposure, several covariates
#' #------------------------------------------------------------------
#' X <- data.frame(Exposure = rbeta(100, 2, 3),
#' Age = runif(100, 20, 100),
#' Sex = sample(c("M","F"), 100, replace = TRUE),
#' BMI = rlnorm(100, 3.2, 0.2))
#' thetahat <- c(-0.1, 0.05, 0.2, -0.4, 0.3, 0.1)
#'
#' rr <- function(X, theta){
#' #Create risk vector
#' Risk <- rep(1, nrow(X))
#'
#' #Identify subpopulations
#' males <- which(X[,"Sex"] == "M")
#' females <- which(X[,"Sex"] == "F")
#'
#' #Calculate population specific rr
#' Risk[males] <- theta[1]*X[males,"Exposure"] +
#' theta[2]*X[males,"Age"]^2 +
#' theta[3]*X[males,"BMI"]/2
#'
#' Risk[females] <- theta[4]*X[females,"Exposure"] +
#' theta[5]*X[females,"Age"]^2 +
#' theta[6]*X[females,"BMI"]/2
#'
#' return(Risk)
#' }
#'
#' #Counterfactual of reducing BMI
#' cft <- function(X){
#' excess_bmi <- which(X[,"BMI"] > 25)
#' X[excess_bmi,"BMI"] <- 25
#' return(X)
#' }
#'
#' pif(X, thetahat, rr, cft)
#'
#' @seealso See \code{\link{pif.confidence}} for confidence interval estimation,
#' and \code{\link{paf}} for Population Attributable Fraction estimation.
#'
#' Sensitivity analysis plots can be done with \code{\link{pif.plot}},
#' \code{\link{pif.sensitivity}}, and \code{\link{pif.heatmap}}.
#'
#' @references Vander Hoorn, S., Ezzati, M., Rodgers, A., Lopez, A. D., &
#' Murray, C. J. (2004). \emph{Estimating attributable burden of disease from
#' exposure and hazard data. Comparative quantification of health risks:
#' global and regional burden of disease attributable to selected major risk
#' factors}. Geneva: World Health Organization, 2129-40.
#'
#' @export
pif <- function(X, thetahat, rr,
cft = NA,
method = "empirical",
weights = rep(1/nrow(as.matrix(X)),nrow(as.matrix(X))),
Xvar = var(X),
deriv.method.args = list(),
deriv.method = "Richardson",
adjust = 1, n = 512,
ktype = "gaussian",
bw = "SJ",
check_exposure = TRUE,
check_integrals = TRUE,
check_rr = TRUE,
is_paf = FALSE){
#Get method from vector
.method <- as.vector(method)[1]
#Check if counterfactual is na then estimate paf
if (!is.function(cft)){ is_paf <- TRUE}
#Check X is data.frame
if (!is.data.frame(X)){
warning("Exposure X should be a data.frame.")
}
switch(.method,
empirical = {
.pif <- pif.empirical(X = X, thetahat = thetahat, rr = rr, cft = cft,
weights = weights, check_exposure = check_exposure,
check_rr = check_rr, check_integrals = check_integrals,
is_paf = is_paf)
},
kernel = {
.pif <- pif.kernel(X = X, thetahat = thetahat, rr = rr, cft = cft,
weights = weights, adjust = adjust, n = n,
ktype = ktype, bw = bw,
check_exposure = check_exposure,
check_rr = check_rr, check_integrals = check_integrals,
is_paf = is_paf)
},
approximate = {
.pif <- pif.approximate(X = X, Xvar = Xvar, thetahat = thetahat, rr = rr,
cft = cft, deriv.method.args = deriv.method.args,
deriv.method = deriv.method, check_exposure = check_exposure,
check_rr = check_rr, check_integrals = check_integrals,
is_paf = is_paf)
},{
stop("Please specify method as either empirical, kernel or approximate")
}
)
return(.pif)
}
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