After the multiple imputation of some data set using the MICE package, I would like to calculate separate linear regression models for each of the two dependent variables (score_1, score_2). The independent variables (arm, sex, age, baseline score) are identical for both models. Unfortunately, I don't manage (1) to integrate the mice::pool() function into a dplyr pipeline, and (2) I don't know how to group the mice::pool() function by the dependent variable (df_lm$score).
library(tidyverse) library(mice) # SIMULATE DATA df <- data.frame(id = 1:120, arm = sample(c('intervention', 'control'), 120, replace = TRUE), sex = sample(c('m', 'f'), 120, replace = TRUE), age = round(rnorm(120, 55, 10)), score_1 = round(rnorm(120, 50, 5)), score_2 = round(rnorm(120, 50, 7))) df <- df %>% bind_rows(df) %>% mutate(time = c(rep('baseline', 120), rep('follow_up', 120))) %>% select(id, arm, time, everything()) %>% gather(score, measure , -(id:age)) %>% spread(key = time, value = measure) # INSERT SOME MISSING VALUES df$follow_up[seq(1, 240, 5)] <- NA # IMPUTATION MODEL init <- mice(df, maxit = 0) predM <- init$predictorMatrix # remove as predictor predM[ , c('arm')] <- 0 mids_from_df <- mice(df, method = 'pmm', predictorMatrix = predM, m = 5, seed = 123, print = FALSE ) # COMPUTE MODELS fmla <- "follow_up ~ baseline + arm + sex + age" df_lm <- mids_from_df %>% mice::complete("long", include = FALSE) %>% group_by(.imp, score) %>% nest() %>% mutate(lm_model = map(data, ~lm(fmla, data = .)))
I would like to get the pooled results for each dependent variable separately. However, I don't know how to use mice::pool() along with dplyr and purr. The following code throws an error:
df_lm <- mids_from_df %>% mice::complete("long", include = FALSE) %>% group_by(.imp, score) %>% nest() %>% mutate(lm_model = map(data, ~lm(fmla, data = .))) %>% group_by(.imp, score) %>% pool(., lm_model) # does not work
The error message is: "Error: No glance method for objects of class integer"
Thanks in advance for your help!