## Create a header using devtools::use_vignette("my-vignette") ## knitr configuration: https://yihui.name/knitr/options#chunk_options library(knitr) showMessage <- FALSE showWarning <- FALSE set_alias(w = "fig.width", h = "fig.height", res = "results") opts_chunk$set(comment = "", error= TRUE, warning = showWarning, message = showMessage, tidy = FALSE, cache = F, echo = T, fig.width = 10, fig.height = 10) ## R configuration options(width = 130, scipen = 5)
The standardized (mean) difference is a measure of distance between two group means in terms of one or more variables. In practice it is often used as a balance measure of individual covariates before and after propensity score matching. As it is standardized, comparison across variables on different scales is possible. For definitions see https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3144483/#s11title.
Standardized mean differences can be easily calculated with tableone. All standardized mean differences in this package are absolute values, thus, there is no directionality.
## tableone package itself library(tableone) ## PS matching library(Matching) ## Weighted analysis library(survey) ## Reorganizing data library(reshape2) ## plotting library(ggplot2)
The right heart catheterization dataset is available at https://biostat.app.vumc.org/wiki/Main/DataSets. This dataset was originally used in Connors et al. JAMA 1996;276:889-897, and has been made publicly available.
## Right heart cath dataset rhc <- read.csv("https://biostat.app.vumc.org/wiki/pub/Main/DataSets/rhc.csv")
Out of the 50 covariates, 32 have standardized mean differences of greater than 0.1, which is often considered the sign of important covariate imbalance (https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3144483/#s11title).
## Covariates vars <- c("age","sex","race","edu","income","ninsclas","cat1","das2d3pc","dnr1", "ca","surv2md1","aps1","scoma1","wtkilo1","temp1","meanbp1","resp1", "hrt1","pafi1","paco21","ph1","wblc1","hema1","sod1","pot1","crea1", "bili1","alb1","resp","card","neuro","gastr","renal","meta","hema", "seps","trauma","ortho","cardiohx","chfhx","dementhx","psychhx", "chrpulhx","renalhx","liverhx","gibledhx","malighx","immunhx", "transhx","amihx") ## Construct a table tabUnmatched <- CreateTableOne(vars = vars, strata = "swang1", data = rhc, test = FALSE) ## Show table with SMD print(tabUnmatched, smd = TRUE) ## Count covariates with important imbalance addmargins(table(ExtractSmd(tabUnmatched) > 0.1))
Usually a logistic regression model is used to estimate individual propensity scores. The model here is taken from "How To Use Propensity Score Analysis". Predicted probabilities of being assigned to right heart catheterization, being assigned no right heart catheterization, being assigned to the true assignment, as well as the smaller of the probabilities of being assigned to right heart catheterization or no right heart catheterization are calculated for later use in propensity score matching and weighting.
rhc$swang1 <- factor(rhc$swang1, levels = c("No RHC", "RHC")) ## Fit model psModel <- glm(formula = swang1 ~ age + sex + race + edu + income + ninsclas + cat1 + das2d3pc + dnr1 + ca + surv2md1 + aps1 + scoma1 + wtkilo1 + temp1 + meanbp1 + resp1 + hrt1 + pafi1 + paco21 + ph1 + wblc1 + hema1 + sod1 + pot1 + crea1 + bili1 + alb1 + resp + card + neuro + gastr + renal + meta + hema + seps + trauma + ortho + cardiohx + chfhx + dementhx + psychhx + chrpulhx + renalhx + liverhx + gibledhx + malighx + immunhx + transhx + amihx, family = binomial(link = "logit"), data = rhc) ## Predicted probability of being assigned to RHC rhc$pRhc <- predict(psModel, type = "response") ## Predicted probability of being assigned to no RHC rhc$pNoRhc <- 1 - rhc$pRhc ## Predicted probability of being assigned to the ## treatment actually assigned (either RHC or no RHC) rhc$pAssign <- NA rhc$pAssign[rhc$swang1 == "RHC"] <- rhc$pRhc[rhc$swang1 == "RHC"] rhc$pAssign[rhc$swang1 == "No RHC"] <- rhc$pNoRhc[rhc$swang1 == "No RHC"] ## Smaller of pRhc vs pNoRhc for matching weight rhc$pMin <- pmin(rhc$pRhc, rhc$pNoRhc)
The Matching package can be used for propensity score matching. The logit of the propensity score is often used as the matching scale, and the matching caliper is often 0.2 $\times$ SD(logit(PS)). See https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3144483/#s5title for suggestions. After matching, all the standardized mean differences are below 0.1.
listMatch <- Match(Tr = (rhc$swang1 == "RHC"), # Need to be in 0,1 ## logit of PS,i.e., log(PS/(1-PS)) as matching scale X = log(rhc$pRhc / rhc$pNoRhc), ## 1:1 matching M = 1, ## caliper = 0.2 * SD(logit(PS)) caliper = 0.2, replace = FALSE, ties = TRUE, version = "fast") ## Extract matched data rhcMatched <- rhc[unlist(listMatch[c("index.treated","index.control")]), ] ## Construct a table tabMatched <- CreateTableOne(vars = vars, strata = "swang1", data = rhcMatched, test = FALSE) ## Show table with SMD print(tabMatched, smd = TRUE) ## Count covariates with important imbalance addmargins(table(ExtractSmd(tabMatched) > 0.1))
The matching weight method is a weighting analogue to the 1:1 pairwise algorithmic matching (https://pubmed.ncbi.nlm.nih.gov/23902694/). The matching weight is defined as the smaller of the predicted probabilities of receiving or not receiving the treatment over the predicted probability of being assigned to the arm the patient is actually in. After weighting, all the standardized mean differences are below 0.1. The standardized mean differences in weighted data are explained in https://pubmed.ncbi.nlm.nih.gov/26238958/.
## Matching weight rhc$mw <- rhc$pMin / rhc$pAssign ## Weighted data rhcSvy <- svydesign(ids = ~ 1, data = rhc, weights = ~ mw) ## Construct a table (This is a bit slow.) tabWeighted <- svyCreateTableOne(vars = vars, strata = "swang1", data = rhcSvy, test = FALSE) ## Show table with SMD print(tabWeighted, smd = TRUE) ## Count covariates with important imbalance addmargins(table(ExtractSmd(tabWeighted) > 0.1))
The overlap weight method is another alternative weighting method (https://amstat.tandfonline.com/doi/abs/10.1080/01621459.2016.1260466). After weighting, all the standardized mean differences are below 0.1.
## Overlap weight rhc$ow <- (rhc$pAssign * (1 - rhc$pAssign)) / rhc$pAssign ## Weighted data rhcSvyOw <- svydesign(ids = ~ 1, data = rhc, weights = ~ ow) ## Construct a table (This is a bit slow.) tabWeightedOw <- svyCreateTableOne(vars = vars, strata = "swang1", data = rhcSvyOw, test = FALSE) ## Show table with SMD print(tabWeightedOw, smd = TRUE) ## Count covariates with important imbalance addmargins(table(ExtractSmd(tabWeightedOw) > 0.1))
A plot showing covariate balance is often constructed to demonstrate the balancing effect of matching and/or weighting. Given the same propensity score model, the matching weight method often achieves better covariate balance than matching.
## Construct a data frame containing variable name and SMD from all methods dataPlot <- data.frame(variable = rownames(ExtractSmd(tabUnmatched)), Unmatched = as.numeric(ExtractSmd(tabUnmatched)), Matched = as.numeric(ExtractSmd(tabMatched)), Weighted = as.numeric(ExtractSmd(tabWeighted)), WeightedOw = as.numeric(ExtractSmd(tabWeightedOw))) ## Create long-format data for ggplot2 dataPlotMelt <- melt(data = dataPlot, id.vars = c("variable"), variable.name = "Method", value.name = "SMD") ## Order variable names by magnitude of SMD varNames <- as.character(dataPlot$variable)[order(dataPlot$Unmatched)] ## Order factor levels in the same order dataPlotMelt$variable <- factor(dataPlotMelt$variable, levels = varNames) ## Plot using ggplot2 ggplot(data = dataPlotMelt, mapping = aes(x = variable, y = SMD, group = Method, color = Method)) + geom_line() + geom_point() + geom_hline(yintercept = 0.1, color = "black", size = 0.1) + coord_flip() + theme_bw() + theme(legend.key = element_blank())
To construct a side-by-side table, data can be extracted as a matrix and combined using the print()
method, which actually invisibly returns a matrix.
## Column bind tables resCombo <- cbind(print(tabUnmatched, printToggle = FALSE), print(tabMatched, printToggle = FALSE), print(tabWeighted, printToggle = FALSE), print(tabWeightedOw, printToggle = FALSE)) ## Add group name row, and rewrite column names resCombo <- rbind(Group = rep(c("No RHC","RHC"), 4), resCombo) colnames(resCombo) <- c("Unmatched","","Matched","","MW","","OW","") print(resCombo, quote = FALSE)
The final analysis can be conducted using matched and weighted data. The results from the matching and matching weight are similar. The ShowRegTable()
function may come in handy.
## Unmatched model (unadjusted) glmUnmatched <- glm(formula = (death == "Yes") ~ swang1, family = binomial(link = "logit"), data = rhc) ## Matched model glmMatched <- glm(formula = (death == "Yes") ~ swang1, family = binomial(link = "logit"), data = rhcMatched) ## Weighted model glmWeighted <- svyglm(formula = (death == "Yes") ~ swang1, family = binomial(link = "logit"), design = rhcSvy) ## Show results together resTogether <- list(Unmatched = ShowRegTable(glmUnmatched, printToggle = FALSE), Matched = ShowRegTable(glmMatched, printToggle = FALSE), Weighted = ShowRegTable(glmWeighted, printToggle = FALSE)) print(resTogether, quote = FALSE)
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