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40-nsduh.Rmd
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40-nsduh.Rmd
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# National Study on Drug Use and Health (NSDUH) {-}
[![Build Status](https://travis-ci.org/asdfree/nsduh.svg?branch=master)](https://travis-ci.org/asdfree/nsduh) [![Build status](https://ci.appveyor.com/api/projects/status/github/asdfree/nsduh?svg=TRUE)](https://ci.appveyor.com/project/ajdamico/nsduh)
The National Study on Drug Use and Health measures the prevalence and correlates of drug use in the United States.
* One table with one row per sampled respondent.
* A complex sample survey designed to generalize to the civilian, noninstitutionalized population of the United States aged 12 and older.
* Released periodically since 1979 and annually since 1990.
* Administered by the [Substance Abuse and Mental Health Services Administration](http://www.samhsa.gov/).
## Simplified Download and Importation {-}
The R `lodown` package easily downloads and imports all available NSDUH microdata by simply specifying `"nsduh"` with an `output_dir =` parameter in the `lodown()` function. Depending on your internet connection and computer processing speed, you might prefer to run this step overnight.
```{r eval = FALSE }
library(lodown)
lodown( "nsduh" , output_dir = file.path( path.expand( "~" ) , "NSDUH" ) )
```
`lodown` also provides a catalog of available microdata extracts with the `get_catalog()` function. After requesting the NSDUH catalog, you could pass a subsetted catalog through the `lodown()` function in order to download and import specific extracts (rather than all available extracts).
```{r eval = FALSE , results = "hide" }
library(lodown)
# examine all available NSDUH microdata files
nsduh_cat <-
get_catalog( "nsduh" ,
output_dir = file.path( path.expand( "~" ) , "NSDUH" ) )
# 2016 only
nsduh_cat <- subset( nsduh_cat , year == 2016 )
# download the microdata to your local computer
nsduh_cat <- lodown( "nsduh" , nsduh_cat )
```
## Analysis Examples with the `survey` library \ {-}
Construct a complex sample survey design:
```{r eval = FALSE }
```
```{r eval = FALSE }
library(survey)
nsduh_df <-
readRDS( file.path( path.expand( "~" ) , "NSDUH" , "2016 main.rds" ) )
variables_to_keep <-
c( 'verep' , 'vestr' , 'analwt_c' , 'health' , 'cigtry' , 'cocage' ,
'mjever' , 'coutyp4' , 'preg' )
nsduh_df <- nsduh_df[ variables_to_keep ] ; gc()
nsduh_design <-
svydesign(
id = ~ verep ,
strata = ~ vestr ,
data = nsduh_df ,
weights = ~ analwt_c ,
nest = TRUE
)
```
### Variable Recoding {-}
Add new columns to the data set:
```{r eval = FALSE }
nsduh_design <-
update(
nsduh_design ,
one = 1 ,
health =
factor(
health ,
levels = 1:5 ,
labels = c( "excellent" , "very good" , "good" ,
"fair" , "poor" )
) ,
age_tried_first_cigarette = ifelse( cigtry > 99 , NA , cigtry ) ,
age_tried_cocaine = ifelse( cocage > 99 , NA , cocage ) ,
ever_used_marijuana = as.numeric( mjever == 1 ) ,
county_type =
factor(
coutyp4 ,
levels = 1:3 ,
labels = c( "large metro" , "small metro" , "nonmetro" )
)
)
```
### Unweighted Counts {-}
Count the unweighted number of records in the survey sample, overall and by groups:
```{r eval = FALSE , results = "hide" }
sum( weights( nsduh_design , "sampling" ) != 0 )
svyby( ~ one , ~ county_type , nsduh_design , unwtd.count )
```
### Weighted Counts {-}
Count the weighted size of the generalizable population, overall and by groups:
```{r eval = FALSE , results = "hide" }
svytotal( ~ one , nsduh_design )
svyby( ~ one , ~ county_type , nsduh_design , svytotal )
```
### Descriptive Statistics {-}
Calculate the mean (average) of a linear variable, overall and by groups:
```{r eval = FALSE , results = "hide" }
svymean( ~ age_tried_first_cigarette , nsduh_design , na.rm = TRUE )
svyby( ~ age_tried_first_cigarette , ~ county_type , nsduh_design , svymean , na.rm = TRUE )
```
Calculate the distribution of a categorical variable, overall and by groups:
```{r eval = FALSE , results = "hide" }
svymean( ~ health , nsduh_design , na.rm = TRUE )
svyby( ~ health , ~ county_type , nsduh_design , svymean , na.rm = TRUE )
```
Calculate the sum of a linear variable, overall and by groups:
```{r eval = FALSE , results = "hide" }
svytotal( ~ age_tried_first_cigarette , nsduh_design , na.rm = TRUE )
svyby( ~ age_tried_first_cigarette , ~ county_type , nsduh_design , svytotal , na.rm = TRUE )
```
Calculate the weighted sum of a categorical variable, overall and by groups:
```{r eval = FALSE , results = "hide" }
svytotal( ~ health , nsduh_design , na.rm = TRUE )
svyby( ~ health , ~ county_type , nsduh_design , svytotal , na.rm = TRUE )
```
Calculate the median (50th percentile) of a linear variable, overall and by groups:
```{r eval = FALSE , results = "hide" }
svyquantile( ~ age_tried_first_cigarette , nsduh_design , 0.5 , na.rm = TRUE )
svyby(
~ age_tried_first_cigarette ,
~ county_type ,
nsduh_design ,
svyquantile ,
0.5 ,
ci = TRUE ,
keep.var = TRUE ,
na.rm = TRUE
)
```
Estimate a ratio:
```{r eval = FALSE , results = "hide" }
svyratio(
numerator = ~ age_tried_first_cigarette ,
denominator = ~ age_tried_cocaine ,
nsduh_design ,
na.rm = TRUE
)
```
### Subsetting {-}
Restrict the survey design to individuals who are pregnant:
```{r eval = FALSE , results = "hide" }
sub_nsduh_design <- subset( nsduh_design , preg == 1 )
```
Calculate the mean (average) of this subset:
```{r eval = FALSE , results = "hide" }
svymean( ~ age_tried_first_cigarette , sub_nsduh_design , na.rm = TRUE )
```
### Measures of Uncertainty {-}
Extract the coefficient, standard error, confidence interval, and coefficient of variation from any descriptive statistics function result, overall and by groups:
```{r eval = FALSE , results = "hide" }
this_result <- svymean( ~ age_tried_first_cigarette , nsduh_design , na.rm = TRUE )
coef( this_result )
SE( this_result )
confint( this_result )
cv( this_result )
grouped_result <-
svyby(
~ age_tried_first_cigarette ,
~ county_type ,
nsduh_design ,
svymean ,
na.rm = TRUE
)
coef( grouped_result )
SE( grouped_result )
confint( grouped_result )
cv( grouped_result )
```
Calculate the degrees of freedom of any survey design object:
```{r eval = FALSE , results = "hide" }
degf( nsduh_design )
```
Calculate the complex sample survey-adjusted variance of any statistic:
```{r eval = FALSE , results = "hide" }
svyvar( ~ age_tried_first_cigarette , nsduh_design , na.rm = TRUE )
```
Include the complex sample design effect in the result for a specific statistic:
```{r eval = FALSE , results = "hide" }
# SRS without replacement
svymean( ~ age_tried_first_cigarette , nsduh_design , na.rm = TRUE , deff = TRUE )
# SRS with replacement
svymean( ~ age_tried_first_cigarette , nsduh_design , na.rm = TRUE , deff = "replace" )
```
Compute confidence intervals for proportions using methods that may be more accurate near 0 and 1. See `?svyciprop` for alternatives:
```{r eval = FALSE , results = "hide" }
svyciprop( ~ ever_used_marijuana , nsduh_design ,
method = "likelihood" , na.rm = TRUE )
```
### Regression Models and Tests of Association {-}
Perform a design-based t-test:
```{r eval = FALSE , results = "hide" }
svyttest( age_tried_first_cigarette ~ ever_used_marijuana , nsduh_design )
```
Perform a chi-squared test of association for survey data:
```{r eval = FALSE , results = "hide" }
svychisq(
~ ever_used_marijuana + health ,
nsduh_design
)
```
Perform a survey-weighted generalized linear model:
```{r eval = FALSE , results = "hide" }
glm_result <-
svyglm(
age_tried_first_cigarette ~ ever_used_marijuana + health ,
nsduh_design
)
summary( glm_result )
```
## Analysis Examples with `srvyr` \ {-}
The R `srvyr` library calculates summary statistics from survey data, such as the mean, total or quantile using [dplyr](https://github.com/tidyverse/dplyr/)-like syntax. [srvyr](https://github.com/gergness/srvyr) allows for the use of many verbs, such as `summarize`, `group_by`, and `mutate`, the convenience of pipe-able functions, the `tidyverse` style of non-standard evaluation and more consistent return types than the `survey` package. [This vignette](https://cran.r-project.org/web/packages/srvyr/vignettes/srvyr-vs-survey.html) details the available features. As a starting point for NSDUH users, this code replicates previously-presented examples:
```{r eval = FALSE , results = "hide" }
library(srvyr)
nsduh_srvyr_design <- as_survey( nsduh_design )
```
Calculate the mean (average) of a linear variable, overall and by groups:
```{r eval = FALSE , results = "hide" }
nsduh_srvyr_design %>%
summarize( mean = survey_mean( age_tried_first_cigarette , na.rm = TRUE ) )
nsduh_srvyr_design %>%
group_by( county_type ) %>%
summarize( mean = survey_mean( age_tried_first_cigarette , na.rm = TRUE ) )
```
---
## Replication Example {-}
```{r eval = FALSE , results = "hide" }
```