0

The following code extracts one attribute (or all) from an XML file:

library(xml2);library(magrittr);library(readr);library(tibble);library(knitr)   
fname<-'https://raw.githubusercontent.com/wardblonde/ODM-to-i2b2/master/odm/examples/CDISC_ODM_example_3.xml'
fname
x<-read_xml(fname)
xpath="//d1:ItemDef"
itemsNames <- x %>% xml_find_all(xpath, ns=xml_ns(x)) %>%  xml_attr('Name')
items <- x %>% xml_find_all(xpath, ns=xml_ns(x))

Item looks like this:

<ItemDef OID="IT.ABNORM" Name="Normal/Abnormal/Not Done" DataType="integer" Length="1" ...

Sample file can be viewed here: https://raw.githubusercontent.com/wardblonde/ODM-to-i2b2/master/odm/examples/CDISC_ODM_example_3.xml

Using pipes and xml_attr, what is the best way to extract both the Name and DataType attributes and have them rbinded?

Ideally it would be a single line of super efficient piped code. I can extract names and types and have 'data.frame(name=names,type=types)' but that seems not the best and most modern.

The result should be a tibble with columns name and data type.

2
library(purrr)

map(items, xml_attrs) %>% 
  map_df(as.list) %>% 
  select(Name, DataType)
## # A tibble: 94 × 2
##                                   Name DataType
##                                  <chr>    <chr>
## 1             Normal/Abnormal/Not Done  integer
## 2          Actions taken re study drug     text
## 3                 Actions taken, other     text
## 4    Stop Day - Enter Two Digits 01-31     text
## 5                    Derived Stop Date     text
## 6  Stop Month - Enter Two Digits 01-12     text
## 7    Stop Year - Enter Four Digit Year     text
## 8                              Outcome     text
## 9           Relationship to study drug     text
## 10                            Severity     text
## # ... with 84 more rows

One "base" version:

lapply(items, xml_attrs) %>% 
  lapply(function(x) as.data.frame(as.list(x))[,c("Name", "DataType")]) %>% 
  do.call(rbind, .) %>%
  tbl_df()

NOTE: an issue with ^^ is that if Name or DataType is missing then you're SOL. You can mitigate that with:

lapply(items, xml_attrs) %>% 
  lapply(function(x) as.data.frame(as.list(x))[,c("Name", "DataType")]) %>% 
  data.table::rbindlist(fill=TRUE) %>% 
  tbl_df()

or:

lapply(items, xml_attrs) %>% 
  lapply(function(x) as.data.frame(as.list(x))[,c("Name", "DataType")]) %>% 
  bind_rows() %>% 
  tbl_df()

if you don't like purrr.

1
  • I do like purrr. Thank you.
    – userJT
    Nov 29 '17 at 18:56

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.